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Reference range

In medicine and health-related fields, a reference range or reference interval is the range or the interval of values that is deemed normal for a physiological measurement in healthy persons (for example, the amount of creatinine in the blood, or the partial pressure of oxygen). It is a basis for comparison for a physician or other health professional to interpret a set of test results for a particular patient. Some important reference ranges in medicine are reference ranges for blood tests and reference ranges for urine tests.

The standard definition of a reference range (usually referred to if not otherwise specified) originates in what is most prevalent in a reference group taken from the general (i.e. total) population. This is the general reference range. However, there are also optimal health ranges (ranges that appear to have the optimal health impact) and ranges for particular conditions or statuses (such as pregnancy reference ranges for hormone levels).

Values within the reference range (WRR) are those within normal limits (WNL). The limits are called the upper reference limit (URL) or upper limit of normal (ULN) and the lower reference limit (LRL) or lower limit of normal (LLN). In health care–related publishing, style sheets sometimes prefer the word reference over the word normal to prevent the nontechnical senses of normal from being conflated with the statistical sense. Values outside a reference range are not necessarily pathologic, and they are not necessarily abnormal in any sense other than statistically. Nonetheless, they are indicators of probable pathosis. Sometimes the underlying cause is obvious; in other cases, challenging differential diagnosis is required to determine what is wrong and thus how to treat it.

A cutoff or threshold is a limit used for binary classification, mainly between normal versus pathological (or probably pathological). Establishment methods for cutoffs include using an upper or a lower limit of a reference range.

Standard definition edit

The standard definition of a reference range for a particular measurement is defined as the interval between which 95% of values of a reference population fall into, in such a way that 2.5% of the time a value will be less than the lower limit of this interval, and 2.5% of the time it will be larger than the upper limit of this interval, whatever the distribution of these values.[1]

Reference ranges that are given by this definition are sometimes referred as standard ranges.

Since a range is a defined statistical value (Range (statistics)) that describes the interval between the smallest and largest values, many, including the International Federation of Clinical Chemistry prefer to use the expression reference interval rather than reference range.[2]

Regarding the target population, if not otherwise specified, a standard reference range generally denotes the one in healthy individuals, or without any known condition that directly affects the ranges being established. These are likewise established using reference groups from the healthy population, and are sometimes termed normal ranges or normal values (and sometimes "usual" ranges/values). However, using the term normal may not be appropriate as not everyone outside the interval is abnormal, and people who have a particular condition may still fall within this interval.

However, reference ranges may also be established by taking samples from the whole population, with or without diseases and conditions. In some cases, diseased individuals are taken as the population, establishing reference ranges among those having a disease or condition. Preferably, there should be specific reference ranges for each subgroup of the population that has any factor that affects the measurement, such as, for example, specific ranges for each sex, age group, race or any other general determinant.

Establishment methods edit

Methods for establishing reference ranges can be based on assuming a normal distribution or a log-normal distribution, or directly from percentages of interest, as detailed respectively in following sections. When establishing reference ranges from bilateral organs (e.g., vision or hearing), both results from the same individual can be used, although intra-subject correlation must be taken into account.[3]

Normal distribution edit

 
When assuming a normal distribution, the reference range is obtained by measuring the values in a reference group and taking two standard deviations either side of the mean. This encompasses ~95% of the total population.

The 95% interval, is often estimated by assuming a normal distribution of the measured parameter, in which case it can be defined as the interval limited by 1.96[4] (often rounded up to 2) population standard deviations from either side of the population mean (also called the expected value). However, in the real world, neither the population mean nor the population standard deviation are known. They both need to be estimated from a sample, whose size can be designated n. The population standard deviation is estimated by the sample standard deviation and the population mean is estimated by the sample mean (also called mean or arithmetic mean). To account for these estimations, the 95% prediction interval (95% PI) is calculated as:

95% PI = mean ± t0.975,n−1·(n+1)/n·sd,

where   is the 97.5% quantile of a Student's t-distribution with n−1 degrees of freedom.

When the sample size is large (n≥30)  

This method is often acceptably accurate if the standard deviation, as compared to the mean, is not very large. A more accurate method is to perform the calculations on logarithmized values, as described in separate section later.

The following example of this (not logarithmized) method is based on values of fasting plasma glucose taken from a reference group of 12 subjects:[5]

Fasting plasma glucose
(FPG)
in mmol/L
Deviation from
mean m
Squared deviation
from mean m
Subject 1 5.5 0.17 0.029
Subject 2 5.2 -0.13 0.017
Subject 3 5.2 -0.13 0.017
Subject 4 5.8 0.47 0.221
Subject 5 5.6 0.27 0.073
Subject 6 4.6 -0.73 0.533
Subject 7 5.6 0.27 0.073
Subject 8 5.9 0.57 0.325
Subject 9 4.7 -0.63 0.397
Subject 10 5 -0.33 0.109
Subject 11 5.7 0.37 0.137
Subject 12 5.2 -0.13 0.017
Mean = 5.33 (m)
n=12
Mean = 0.00 Sum/(n−1) = 1.95/11 =0.18
 
= standard deviation (s.d.)

As can be given from, for example, a table of selected values of Student's t-distribution, the 97.5% percentile with (12-1) degrees of freedom corresponds to  

Subsequently, the lower and upper limits of the standard reference range are calculated as:

 
 

Thus, the standard reference range for this example is estimated to be 4.4 to 6.3 mmol/L.

Confidence interval of limit edit

The 90% confidence interval of a standard reference range limit as estimated assuming a normal distribution can be calculated by:[6]

Lower limit of the confidence interval = percentile limit - 2.81 × SDn
Upper limit of the confidence interval = percentile limit + 2.81 × SDn,

where SD is the standard deviation, and n is the number of samples.

Taking the example from the previous section, the number of samples is 12 and the standard deviation is 0.42 mmol/L, resulting in:

Lower limit of the confidence interval of the lower limit of the standard reference range = 4.4 - 2.81 × 0.4212 ≈ 4.1
Upper limit of the confidence interval of the lower limit of the standard reference range = 4.4 + 2.81 × 0.4212 ≈ 4.7

Thus, the lower limit of the reference range can be written as 4.4 (90% CI 4.1–4.7) mmol/L.

Likewise, with similar calculations, the upper limit of the reference range can be written as 6.3 (90% CI 6.0–6.6) mmol/L.

These confidence intervals reflect random error, but do not compensate for systematic error, which in this case can arise from, for example, the reference group not having fasted long enough before blood sampling.

As a comparison, actual reference ranges used clinically for fasting plasma glucose are estimated to have a lower limit of approximately 3.8[7] to 4.0,[8] and an upper limit of approximately 6.0[8] to 6.1.[9]

Log-normal distribution edit

 
Some functions of log-normal distribution (here shown with the measurements non-logarithmized), with the same means - μ (as calculated after logarithmizing) but different standard deviations - σ (after logarithmizing)

In reality, biological parameters tend to have a log-normal distribution,[10] rather than the normal distribution or Gaussian distribution.

An explanation for this log-normal distribution for biological parameters is: The event where a sample has half the value of the mean or median tends to have almost equal probability to occur as the event where a sample has twice the value of the mean or median. Also, only a log-normal distribution can compensate for the inability of almost all biological parameters to be of negative numbers (at least when measured on absolute scales), with the consequence that there is no definite limit to the size of outliers (extreme values) on the high side, but, on the other hand, they can never be less than zero, resulting in a positive skewness.

As shown in diagram at right, this phenomenon has relatively small effect if the standard deviation (as compared to the mean) is relatively small, as it makes the log-normal distribution appear similar to a normal distribution. Thus, the normal distribution may be more appropriate to use with small standard deviations for convenience, and the log-normal distribution with large standard deviations.

In a log-normal distribution, the geometric standard deviations and geometric mean more accurately estimate the 95% prediction interval than their arithmetic counterparts.

Necessity edit

Reference ranges for substances that are usually within relatively narrow limits (coefficient of variation less than 0.213, as detailed below) such as electrolytes can be estimated by assuming normal distribution, whereas reference ranges for those that vary significantly (coefficient of variation generally over 0.213) such as most hormones[11] are more accurately established by log-normal distribution.

The necessity to establish a reference range by log-normal distribution rather than normal distribution can be regarded as depending on how much difference it would make to not do so, which can be described as the ratio:

Difference ratio = | Limitlog-normal - Limitnormal |/ Limitlog-normal

where:

  • Limitlog-normal is the (lower or upper) limit as estimated by assuming log-normal distribution
  • Limitnormal is the (lower or upper) limit as estimated by assuming normal distribution.
 
Coefficient of variation versus deviation in reference ranges established by assuming normal distribution when there is actually a log-normal distribution.

This difference can be put solely in relation to the coefficient of variation, as in the diagram at right, where:

Coefficient of variation = s.d./m

where:

  • s.d. is the standard deviation
  • m is the arithmetic mean

In practice, it can be regarded as necessary to use the establishment methods of a log-normal distribution if the difference ratio becomes more than 0.1, meaning that a (lower or upper) limit estimated from an assumed normal distribution would be more than 10% different from the corresponding limit as estimated from a (more accurate) log-normal distribution. As seen in the diagram, a difference ratio of 0.1 is reached for the lower limit at a coefficient of variation of 0.213 (or 21.3%), and for the upper limit at a coefficient of variation at 0.413 (41.3%). The lower limit is more affected by increasing coefficient of variation, and its "critical" coefficient of variation of 0.213 corresponds to a ratio of (upper limit)/(lower limit) of 2.43, so as a rule of thumb, if the upper limit is more than 2.4 times the lower limit when estimated by assuming normal distribution, then it should be considered to do the calculations again by log-normal distribution.

Taking the example from previous section, the standard deviation (s.d.) is estimated at 0.42 and the arithmetic mean (m) is estimated at 5.33. Thus the coefficient of variation is 0.079. This is less than both 0.213 and 0.413, and thus both the lower and upper limit of fasting blood glucose can most likely be estimated by assuming normal distribution. More specifically, the coefficient of variation of 0.079 corresponds to a difference ratio of 0.01 (1%) for the lower limit and 0.007 (0.7%) for the upper limit.

From logarithmized sample values edit

A method to estimate the reference range for a parameter with log-normal distribution is to logarithmize all the measurements with an arbitrary base (for example e), derive the mean and standard deviation of these logarithms, determine the logarithms located (for a 95% prediction interval) 1.96 standard deviations below and above that mean, and subsequently exponentiate using those two logarithms as exponents and using the same base as was used in logarithmizing, with the two resultant values being the lower and upper limit of the 95% prediction interval.

The following example of this method is based on the same values of fasting plasma glucose as used in the previous section, using e as a base:[5]

Fasting plasma glucose
(FPG)
in mmol/L
loge(FPG) loge(FPG) deviation from
mean μlog
Squared deviation
from mean
Subject 1 5.5 1.70 0.029 0.000841
Subject 2 5.2 1.65 0.021 0.000441
Subject 3 5.2 1.65 0.021 0.000441
Subject 4 5.8 1.76 0.089 0.007921
Subject 5 5.6 1.72 0.049 0.002401
Subject 6 4.6 1.53 0.141 0.019881
Subject 7 5.6 1.72 0.049 0.002401
Subject 8 5.9 1.77 0.099 0.009801
Subject 9 4.7 1.55 0.121 0.014641
Subject 10 5.0 1.61 0.061 0.003721
Subject 11 5.7 1.74 0.069 0.004761
Subject 12 5.2 1.65 0.021 0.000441
Mean: 5.33
(m)
Mean: 1.67
(μlog)
Sum/(n-1) : 0.068/11 = 0.0062
 
= standard deviation of loge(FPG)
(σlog)

Subsequently, the still logarithmized lower limit of the reference range is calculated as:

 

and the upper limit of the reference range as:

 

Conversion back to non-logarithmized values are subsequently performed as:

 
 

Thus, the standard reference range for this example is estimated to be 4.4 to 6.4.

From arithmetic mean and variance edit

An alternative method of establishing a reference range with the assumption of log-normal distribution is to use the arithmetic mean and standard deviation. This is somewhat more tedious to perform, but may be useful in cases where a study presents only the arithmetic mean and standard deviation, while leaving out the source data. If the original assumption of normal distribution is less appropriate than the log-normal one, then, using the arithmetic mean and standard deviation may be the only available parameters to determine the reference range.

By assuming that the expected value can represent the arithmetic mean in this case, the parameters μlog and σlog can be estimated from the arithmetic mean (m) and standard deviation (s.d.) as:

 
 

Following the exampled reference group from the previous section:

 
 

Subsequently, the logarithmized, and later non-logarithmized, lower and upper limit are calculated just as by logarithmized sample values.

Directly from percentages of interest edit

Reference ranges can also be established directly from the 2.5th and 97.5th percentile of the measurements in the reference group. For example, if the reference group consists of 200 people, and counting from the measurement with lowest value to highest, the lower limit of the reference range would correspond to the 5th measurement and the upper limit would correspond to the 195th measurement.

This method can be used even when measurement values do not appear to conform conveniently to any form of normal distribution or other function.

However, the reference range limits as estimated in this way have higher variance, and therefore less reliability, than those estimated by an arithmetic or log-normal distribution (when such is applicable), because the latter ones acquire statistical power from the measurements of the whole reference group rather than just the measurements at the 2.5th and 97.5th percentiles. Still, this variance decreases with increasing size of the reference group, and therefore, this method may be optimal where a large reference group easily can be gathered, and the distribution mode of the measurements is uncertain.

Bimodal distribution edit

 
Bimodal distribution

In case of a bimodal distribution (seen at right), it is useful to find out why this is the case. Two reference ranges can be established for the two different groups of people, making it possible to assume a normal distribution for each group. This bimodal pattern is commonly seen in tests that differ between men and women, such as prostate specific antigen.

Interpretation of standard ranges in medical tests edit

In case of medical tests whose results are of continuous values, reference ranges can be used in the interpretation of an individual test result. This is primarily used for diagnostic tests and screening tests, while monitoring tests may optimally be interpreted from previous tests of the same individual instead.

Probability of random variability edit

Reference ranges aid in the evaluation of whether a test result's deviation from the mean is a result of random variability or a result of an underlying disease or condition. If the reference group used to establish the reference range can be assumed to be representative of the individual person in a healthy state, then a test result from that individual that turns out to be lower or higher than the reference range can be interpreted as that there is less than 2.5% probability that this would have occurred by random variability in the absence of disease or other condition, which, in turn, is strongly indicative for considering an underlying disease or condition as a cause.

Such further consideration can be performed, for example, by an epidemiology-based differential diagnostic procedure, where potential candidate conditions are listed that may explain the finding, followed by calculations of how probable they are to have occurred in the first place, in turn followed by a comparison with the probability that the result would have occurred by random variability.

If the establishment of the reference range could have been made assuming a normal distribution, then the probability that the result would be an effect of random variability can be further specified as follows:

The standard deviation, if not given already, can be inversely calculated by the fact that the absolute value of the difference between the mean and either the upper or lower limit of the reference range is approximately 2 standard deviations (more accurately 1.96), and thus:

Standard deviation (s.d.) ≈ | (Mean) - (Upper limit) |/2.

The standard score for the individual's test can subsequently be calculated as:

Standard score (z) = | (Mean) - (individual measurement) |/s.d..

The probability that a value is of a certain distance from the mean can subsequently be calculated from the relation between standard score and prediction intervals. For example, a standard score of 2.58 corresponds to a prediction interval of 99%,[12] corresponding to a probability of 0.5% that a result is at least such far from the mean in the absence of disease.

Example edit

Let's say, for example, that an individual takes a test that measures the ionized calcium in the blood, resulting in a value of 1.30 mmol/L, and a reference group that appropriately represents the individual has established a reference range of 1.05 to 1.25 mmol/L. The individual's value is higher than the upper limit of the reference range, and therefore has less than 2.5% probability of being a result of random variability, constituting a strong indication to make a differential diagnosis of possible causative conditions.

In this case, an epidemiology-based differential diagnostic procedure is used, and its first step is to find candidate conditions that can explain the finding.

Hypercalcemia (usually defined as a calcium level above the reference range) is mostly caused by either primary hyperparathyroidism or malignancy,[13] and therefore, it is reasonable to include these in the differential diagnosis.

Using for example epidemiology and the individual's risk factors, let's say that the probability that the hypercalcemia would have been caused by primary hyperparathyroidism in the first place is estimated to be 0.00125 (or 0.125%), the equivalent probability for cancer is 0.0002, and 0.0005 for other conditions. With a probability given as less than 0.025 of no disease, this corresponds to a probability that the hypercalcemia would have occurred in the first place of up to 0.02695. However, the hypercalcemia has occurred with a probability of 100%, resulting adjusted probabilities of at least 4.6% that primary hyperparathyroidism has caused the hypercalcemia, at least 0.7% for cancer, at least 1.9% for other conditions and up to 92.8% for that there is no disease and the hypercalcemia is caused by random variability.

In this case, further processing benefits from specification of the probability of random variability:

The value is assumed to conform acceptably to a normal distribution, so the mean can be assumed to be 1.15 in the reference group. The standard deviation, if not given already, can be inversely calculated by knowing that the absolute value of the difference between the mean and, for example, the upper limit of the reference range, is approximately 2 standard deviations (more accurately 1.96), and thus:

Standard deviation (s.d.) ≈ | (Mean) - (Upper limit) |/2 = | 1.15 - 1.25 |/2 = 0.1/2 = 0.05.

The standard score for the individual's test is subsequently calculated as:

Standard score (z) = | (Mean) - (individual measurement) |/s.d. = | 1.15 - 1.30 |/0.05 = 0.15/0.05 = 3.

The probability that a value is of so much larger value than the mean as having a standard score of 3 corresponds to a probability of approximately 0.14% (given by (100% − 99.7%)/2, with 99.7% here being given from the 68–95–99.7 rule).

Using the same probabilities that the hypercalcemia would have occurred in the first place by the other candidate conditions, the probability that hypercalcemia would have occurred in the first place is 0.00335, and given the fact that hypercalcemia has occurred gives adjusted probabilities of 37.3%, 6.0%, 14.9% and 41.8%, respectively, for primary hyperparathyroidism, cancer, other conditions and no disease.

Optimal health range edit

Optimal (health) range or therapeutic target (not to be confused with biological target) is a reference range or limit that is based on concentrations or levels that are associated with optimal health or minimal risk of related complications and diseases, rather than the standard range based on normal distribution in the population.

It may be more appropriate to use for e.g. folate, since approximately 90 percent of North Americans may actually suffer more or less from folate deficiency,[14] but only the 2.5 percent that have the lowest levels will fall below the standard reference range. In this case, the actual folate ranges for optimal health are substantially higher than the standard reference ranges. Vitamin D has a similar tendency. In contrast, for e.g. uric acid, having a level not exceeding the standard reference range still does not exclude the risk of getting gout or kidney stones. Furthermore, for most toxins, the standard reference range is generally lower than the level of toxic effect.

A problem with optimal health range is a lack of a standard method of estimating the ranges. The limits may be defined as those where the health risks exceed a certain threshold, but with various risk profiles between different measurements (such as folate and vitamin D), and even different risk aspects for one and the same measurement (such as both deficiency and toxicity of vitamin A) it is difficult to standardize. Subsequently, optimal health ranges, when given by various sources, have an additional variability caused by various definitions of the parameter. Also, as with standard reference ranges, there should be specific ranges for different determinants that affects the values, such as sex, age etc. Ideally, there should rather be an estimation of what is the optimal value for every individual, when taking all significant factors of that individual into account - a task that may be hard to achieve by studies, but long clinical experience by a physician may make this method preferable to using reference ranges.

One-sided cut-off values edit

In many cases, only one side of the range is usually of interest, such as with markers of pathology including cancer antigen 19-9, where it is generally without any clinical significance to have a value below what is usual in the population. Therefore, such targets are often given with only one limit of the reference range given, and, strictly, such values are rather cut-off values or threshold values.

They may represent both standard ranges and optimal health ranges. Also, they may represent an appropriate value to distinguish healthy person from a specific disease, although this gives additional variability by different diseases being distinguished. For example, for NT-proBNP, a lower cut-off value is used in distinguishing healthy babies from those with acyanotic heart disease, compared to the cut-off value used in distinguishing healthy babies from those with congenital nonspherocytic anemia.[15]

General drawbacks edit

For standard as well as optimal health ranges, and cut-offs, sources of inaccuracy and imprecision include:

  • Instruments and lab techniques used, or how the measurements are interpreted by observers. These may apply both to the instruments etc. used to establish the reference ranges and the instruments, etc. used to acquire the value for the individual to whom these ranges is applied. To compensate, individual laboratories should have their own lab ranges to account for the instruments used in the laboratory.
  • Determinants such as age, diet, etc. that are not compensated for. Optimally, there should be reference ranges from a reference group that is as similar as possible to each individual they are applied to, but it's practically impossible to compensate for every single determinant, often not even when the reference ranges are established from multiple measurements of the same individual they are applied to, because of test-retest variability.

Also, reference ranges tend to give the impression of definite thresholds that clearly separate "good" or "bad" values, while in reality there are generally continuously increasing risks with increased distance from usual or optimal values.

With this and uncompensated factors in mind, the ideal interpretation method of a test result would rather consist of a comparison of what would be expected or optimal in the individual when taking all factors and conditions of that individual into account, rather than strictly classifying the values as "good" or "bad" by using reference ranges from other people.

In a recent paper, Rappoport et al.[16] described a novel way to redefine reference range from an electronic health record system. In such a system, a higher population resolution can be achieved (e.g., age, sex, race and ethnicity-specific).

Examples edit

See also edit

References edit

  This article was adapted from the following source under a CC0 license (2012) (reviewer reports): Mikael Häggström (2014). "Reference ranges for estradiol, progesterone, luteinizing hormone and follicle-stimulating hormone during the menstrual cycle" (PDF). WikiJournal of Medicine. 1 (1). doi:10.15347/WJM/2014.001. ISSN 2002-4436. Wikidata Q44275619.

  1. ^ Page 19 in: Stephen K. Bangert MA MB BChir MSc MBA FRCPath; William J. Marshall MA MSc MBBS FRCP FRCPath FRCPEdin FIBiol; Marshall, William Leonard (2008). Clinical biochemistry: metabolic and clinical aspects. Philadelphia: Churchill Livingstone/Elsevier. ISBN 978-0-443-10186-1.{{cite book}}: CS1 maint: multiple names: authors list (link)
  2. ^ Dybkaer, R (November 1982). "International federation of clinical chemistry (IFCC)1),2) the theory of reference values. Part 6. Presentation of observed values related to reference values". Journal of clinical chemistry and clinical biochemistry. Zeitschrift fur klinische Chemie und klinische Biochemie. 20 (11): 841–5. PMID 7153721.
  3. ^ Davis, C.Q.; Hamilton, R. (2021). "Reference ranges for clinical electrophysiology of vision". Doc Ophthalmol. 143 (2): 155–170. doi:10.1007/s10633-021-09831-1. PMC 8494724. PMID 33880667.
  4. ^ Page 48 in: Sterne, Jonathan; Kirkwood, Betty R. (2003). Essential medical statistics. Oxford: Blackwell Science. ISBN 978-0-86542-871-3.
  5. ^ a b Table 1. Subject characteristics in: Keevil, B. G.; Kilpatrick, E. S.; Nichols, S. P.; Maylor, P. W. (1998). "Biological variation of cystatin C: Implications for the assessment of glomerular filtration rate". Clinical Chemistry. 44 (7): 1535–1539. doi:10.1093/clinchem/44.7.1535. PMID 9665434.
  6. ^ Page 65 in: Carl A. Burtis, David E. Bruns (2014). Tietz Fundamentals of Clinical Chemistry and Molecular Diagnostics (7 ed.). Elsevier Health Sciences. ISBN 9780323292061.
  7. ^ Last page of Deepak A. Rao; Le, Tao; Bhushan, Vikas (2007). First Aid for the USMLE Step 1 2008 (First Aid for the Usmle Step 1). McGraw-Hill Medical. ISBN 978-0-07-149868-5.
  8. ^ a b Reference range list from Uppsala University Hospital ("Laborationslista"). Artnr 40284 Sj74a. Issued on April 22, 2008
  9. ^ MedlinePlus Encyclopedia: Glucose tolerance test
  10. ^ Huxley, Julian S. (1932). Problems of relative growth. London. ISBN 978-0-486-61114-3. OCLC 476909537.
  11. ^ Levitt H, Smith KG, Rosner MH (2009). "Variability in calcium, phosphorus, and parathyroid hormone in patients on hemodialysis". Hemodial Int. 13 (4): 518–25. doi:10.1111/j.1542-4758.2009.00393.x. PMID 19758299. S2CID 24963421.{{cite journal}}: CS1 maint: multiple names: authors list (link)
  12. ^ Page 111 in: Kirkup, Les (2002). Data analysis with Excel: an introduction for physical scientists. Cambridge, UK: Cambridge University Press. ISBN 978-0-521-79737-5.
  13. ^ Table 20-4 in: Mitchell, Richard Sheppard; Kumar, Vinay; Abbas, Abul K.; Fausto, Nelson (2007). Robbins Basic Pathology. Philadelphia: Saunders. ISBN 978-1-4160-2973-1. 8th edition.
  14. ^ Folic Acid: Don't Be Without It! by Hans R. Larsen, MSc ChE, retrieved on July 7, 2009. In turn citing:
    • Boushey Carol J.; et al. (1995). "A quantitative assessment of plasma homocysteine as a risk factor for vascular disease". Journal of the American Medical Association. 274 (13): 1049–57. doi:10.1001/jama.274.13.1049.
    • Morrison Howard I.; et al. (1996). "Serum folate and risk of fatal coronary heart disease". Journal of the American Medical Association. 275 (24): 1893–96. doi:10.1001/jama.1996.03530480035037. PMID 8648869.
  15. ^ Screening for Congenital Heart Disease with NT-proBNP: Results By Emmanuel Jairaj Moses, Sharifah A.I. Mokhtar, Amir Hamzah, Basir Selvam Abdullah, and Narazah Mohd Yusoff. Laboratory Medicine. 2011;42(2):75–80. American Society for Clinical Pathology
  16. ^ Rappoport, Nadav; Paik, Hyojung; Oskotsky, Boris; Tor, Ruth; Ziv, Elad; Zaitlen, Noah; Butte, Atul J. (2017-11-04). "Creating ethnicity-specific reference intervals for lab tests from EHR data". bioRxiv 10.1101/213892.

Further reading edit

  • The procedures and vocabulary referring to reference intervals: CLSI (Committee for Laboratory Standards Institute) and IFCC (International Federation of Clinical Chemistry) CLSI - Defining, Establishing, and Verifying Reference Intervals in the Laboratory; Approved guideline - Third Edition. Document C28-A3 (ISBN 1-56238-682-4)Wayne, PA, USA, 2008
  • Reference Value Advisor : A free set of Excel macros allowing the determination of reference intervals in accordance with the CLSI procedures. Based on: Geffré, A.; Concordet, D.; Braun, J. P.; Trumel, C. (2011). "Reference Value Advisor: A new freeware set of macroinstructions to calculate reference intervals with Microsoft Excel" (PDF). Veterinary Clinical Pathology. 40 (1): 107–112. doi:10.1111/j.1939-165X.2011.00287.x. PMID 21366659.

reference, range, medicine, health, related, fields, reference, range, reference, interval, range, interval, values, that, deemed, normal, physiological, measurement, healthy, persons, example, amount, creatinine, blood, partial, pressure, oxygen, basis, compa. In medicine and health related fields a reference range or reference interval is the range or the interval of values that is deemed normal for a physiological measurement in healthy persons for example the amount of creatinine in the blood or the partial pressure of oxygen It is a basis for comparison for a physician or other health professional to interpret a set of test results for a particular patient Some important reference ranges in medicine are reference ranges for blood tests and reference ranges for urine tests The standard definition of a reference range usually referred to if not otherwise specified originates in what is most prevalent in a reference group taken from the general i e total population This is the general reference range However there are also optimal health ranges ranges that appear to have the optimal health impact and ranges for particular conditions or statuses such as pregnancy reference ranges for hormone levels Values within the reference range WRR are those within normal limits WNL The limits are called the upper reference limit URL or upper limit of normal ULN and the lower reference limit LRL or lower limit of normal LLN In health care related publishing style sheets sometimes prefer the word reference over the word normal to prevent the nontechnical senses of normal from being conflated with the statistical sense Values outside a reference range are not necessarily pathologic and they are not necessarily abnormal in any sense other than statistically Nonetheless they are indicators of probable pathosis Sometimes the underlying cause is obvious in other cases challenging differential diagnosis is required to determine what is wrong and thus how to treat it A cutoff or threshold is a limit used for binary classification mainly between normal versus pathological or probably pathological Establishment methods for cutoffs include using an upper or a lower limit of a reference range Contents 1 Standard definition 1 1 Establishment methods 1 1 1 Normal distribution 1 1 1 1 Confidence interval of limit 1 1 2 Log normal distribution 1 1 2 1 Necessity 1 1 2 2 From logarithmized sample values 1 1 2 3 From arithmetic mean and variance 1 1 3 Directly from percentages of interest 1 1 4 Bimodal distribution 1 2 Interpretation of standard ranges in medical tests 1 2 1 Probability of random variability 1 2 2 Example 2 Optimal health range 3 One sided cut off values 4 General drawbacks 5 Examples 6 See also 7 References 8 Further readingStandard definition editThe standard definition of a reference range for a particular measurement is defined as the interval between which 95 of values of a reference population fall into in such a way that 2 5 of the time a value will be less than the lower limit of this interval and 2 5 of the time it will be larger than the upper limit of this interval whatever the distribution of these values 1 Reference ranges that are given by this definition are sometimes referred as standard ranges Since a range is a defined statistical value Range statistics that describes the interval between the smallest and largest values many including the International Federation of Clinical Chemistry prefer to use the expression reference interval rather than reference range 2 Regarding the target population if not otherwise specified a standard reference range generally denotes the one in healthy individuals or without any known condition that directly affects the ranges being established These are likewise established using reference groups from the healthy population and are sometimes termed normal ranges or normal values and sometimes usual ranges values However using the term normal may not be appropriate as not everyone outside the interval is abnormal and people who have a particular condition may still fall within this interval However reference ranges may also be established by taking samples from the whole population with or without diseases and conditions In some cases diseased individuals are taken as the population establishing reference ranges among those having a disease or condition Preferably there should be specific reference ranges for each subgroup of the population that has any factor that affects the measurement such as for example specific ranges for each sex age group race or any other general determinant Establishment methods edit Methods for establishing reference ranges can be based on assuming a normal distribution or a log normal distribution or directly from percentages of interest as detailed respectively in following sections When establishing reference ranges from bilateral organs e g vision or hearing both results from the same individual can be used although intra subject correlation must be taken into account 3 Normal distribution edit Further information 68 95 99 7 rule nbsp When assuming a normal distribution the reference range is obtained by measuring the values in a reference group and taking two standard deviations either side of the mean This encompasses 95 of the total population The 95 interval is often estimated by assuming a normal distribution of the measured parameter in which case it can be defined as the interval limited by 1 96 4 often rounded up to 2 population standard deviations from either side of the population mean also called the expected value However in the real world neither the population mean nor the population standard deviation are known They both need to be estimated from a sample whose size can be designated n The population standard deviation is estimated by the sample standard deviation and the population mean is estimated by the sample mean also called mean or arithmetic mean To account for these estimations the 95 prediction interval 95 PI is calculated as 95 PI mean t0 975 n 1 n 1 n sd where t 0 975 n 1 displaystyle t 0 975 n 1 nbsp is the 97 5 quantile of a Student s t distribution with n 1 degrees of freedom When the sample size is large n 30 t 0 975 n 1 2 displaystyle t 0 975 n 1 simeq 2 nbsp This method is often acceptably accurate if the standard deviation as compared to the mean is not very large A more accurate method is to perform the calculations on logarithmized values as described in separate section later The following example of this not logarithmized method is based on values of fasting plasma glucose taken from a reference group of 12 subjects 5 Fasting plasma glucose FPG in mmol L Deviation from mean m Squared deviationfrom mean mSubject 1 5 5 0 17 0 029Subject 2 5 2 0 13 0 017Subject 3 5 2 0 13 0 017Subject 4 5 8 0 47 0 221Subject 5 5 6 0 27 0 073Subject 6 4 6 0 73 0 533Subject 7 5 6 0 27 0 073Subject 8 5 9 0 57 0 325Subject 9 4 7 0 63 0 397Subject 10 5 0 33 0 109Subject 11 5 7 0 37 0 137Subject 12 5 2 0 13 0 017Mean 5 33 m n 12 Mean 0 00 Sum n 1 1 95 11 0 18 0 18 0 42 displaystyle sqrt 0 18 0 42 nbsp standard deviation s d As can be given from for example a table of selected values of Student s t distribution the 97 5 percentile with 12 1 degrees of freedom corresponds to t 0 975 11 2 20 displaystyle t 0 975 11 2 20 nbsp Subsequently the lower and upper limits of the standard reference range are calculated as L o w e r l i m i t m t 0 975 11 n 1 n s d 5 33 2 20 13 12 0 42 4 4 displaystyle Lower limit m t 0 975 11 times sqrt frac n 1 n times s d 5 33 2 20 times sqrt frac 13 12 times 0 42 4 4 nbsp U p p e r l i m i t m t 0 975 11 n 1 n s d 5 33 2 20 13 12 0 42 6 3 displaystyle Upper limit m t 0 975 11 times sqrt frac n 1 n times s d 5 33 2 20 times sqrt frac 13 12 times 0 42 6 3 nbsp Thus the standard reference range for this example is estimated to be 4 4 to 6 3 mmol L Confidence interval of limit edit The 90 confidence interval of a standard reference range limit as estimated assuming a normal distribution can be calculated by 6 Lower limit of the confidence interval percentile limit 2 81 SD nUpper limit of the confidence interval percentile limit 2 81 SD n where SD is the standard deviation and n is the number of samples Taking the example from the previous section the number of samples is 12 and the standard deviation is 0 42 mmol L resulting in Lower limit of the confidence interval of the lower limit of the standard reference range 4 4 2 81 0 42 12 4 1Upper limit of the confidence interval of the lower limit of the standard reference range 4 4 2 81 0 42 12 4 7Thus the lower limit of the reference range can be written as 4 4 90 CI 4 1 4 7 mmol L Likewise with similar calculations the upper limit of the reference range can be written as 6 3 90 CI 6 0 6 6 mmol L These confidence intervals reflect random error but do not compensate for systematic error which in this case can arise from for example the reference group not having fasted long enough before blood sampling As a comparison actual reference ranges used clinically for fasting plasma glucose are estimated to have a lower limit of approximately 3 8 7 to 4 0 8 and an upper limit of approximately 6 0 8 to 6 1 9 Log normal distribution edit nbsp Some functions of log normal distribution here shown with the measurements non logarithmized with the same means m as calculated after logarithmizing but different standard deviations s after logarithmizing In reality biological parameters tend to have a log normal distribution 10 rather than the normal distribution or Gaussian distribution An explanation for this log normal distribution for biological parameters is The event where a sample has half the value of the mean or median tends to have almost equal probability to occur as the event where a sample has twice the value of the mean or median Also only a log normal distribution can compensate for the inability of almost all biological parameters to be of negative numbers at least when measured on absolute scales with the consequence that there is no definite limit to the size of outliers extreme values on the high side but on the other hand they can never be less than zero resulting in a positive skewness As shown in diagram at right this phenomenon has relatively small effect if the standard deviation as compared to the mean is relatively small as it makes the log normal distribution appear similar to a normal distribution Thus the normal distribution may be more appropriate to use with small standard deviations for convenience and the log normal distribution with large standard deviations In a log normal distribution the geometric standard deviations and geometric mean more accurately estimate the 95 prediction interval than their arithmetic counterparts Necessity edit Reference ranges for substances that are usually within relatively narrow limits coefficient of variation less than 0 213 as detailed below such as electrolytes can be estimated by assuming normal distribution whereas reference ranges for those that vary significantly coefficient of variation generally over 0 213 such as most hormones 11 are more accurately established by log normal distribution The necessity to establish a reference range by log normal distribution rather than normal distribution can be regarded as depending on how much difference it would make to not do so which can be described as the ratio Difference ratio Limitlog normal Limitnormal Limitlog normalwhere Limitlog normal is the lower or upper limit as estimated by assuming log normal distribution Limitnormal is the lower or upper limit as estimated by assuming normal distribution nbsp Coefficient of variation versus deviation in reference ranges established by assuming normal distribution when there is actually a log normal distribution This difference can be put solely in relation to the coefficient of variation as in the diagram at right where Coefficient of variation s d mwhere s d is the standard deviation m is the arithmetic meanIn practice it can be regarded as necessary to use the establishment methods of a log normal distribution if the difference ratio becomes more than 0 1 meaning that a lower or upper limit estimated from an assumed normal distribution would be more than 10 different from the corresponding limit as estimated from a more accurate log normal distribution As seen in the diagram a difference ratio of 0 1 is reached for the lower limit at a coefficient of variation of 0 213 or 21 3 and for the upper limit at a coefficient of variation at 0 413 41 3 The lower limit is more affected by increasing coefficient of variation and its critical coefficient of variation of 0 213 corresponds to a ratio of upper limit lower limit of 2 43 so as a rule of thumb if the upper limit is more than 2 4 times the lower limit when estimated by assuming normal distribution then it should be considered to do the calculations again by log normal distribution Taking the example from previous section the standard deviation s d is estimated at 0 42 and the arithmetic mean m is estimated at 5 33 Thus the coefficient of variation is 0 079 This is less than both 0 213 and 0 413 and thus both the lower and upper limit of fasting blood glucose can most likely be estimated by assuming normal distribution More specifically the coefficient of variation of 0 079 corresponds to a difference ratio of 0 01 1 for the lower limit and 0 007 0 7 for the upper limit From logarithmized sample values edit A method to estimate the reference range for a parameter with log normal distribution is to logarithmize all the measurements with an arbitrary base for example e derive the mean and standard deviation of these logarithms determine the logarithms located for a 95 prediction interval 1 96 standard deviations below and above that mean and subsequently exponentiate using those two logarithms as exponents and using the same base as was used in logarithmizing with the two resultant values being the lower and upper limit of the 95 prediction interval The following example of this method is based on the same values of fasting plasma glucose as used in the previous section using e as a base 5 Fasting plasma glucose FPG in mmol L loge FPG loge FPG deviation from mean mlog Squared deviationfrom meanSubject 1 5 5 1 70 0 029 0 000841Subject 2 5 2 1 65 0 021 0 000441Subject 3 5 2 1 65 0 021 0 000441Subject 4 5 8 1 76 0 089 0 007921Subject 5 5 6 1 72 0 049 0 002401Subject 6 4 6 1 53 0 141 0 019881Subject 7 5 6 1 72 0 049 0 002401Subject 8 5 9 1 77 0 099 0 009801Subject 9 4 7 1 55 0 121 0 014641Subject 10 5 0 1 61 0 061 0 003721Subject 11 5 7 1 74 0 069 0 004761Subject 12 5 2 1 65 0 021 0 000441Mean 5 33 m Mean 1 67 mlog Sum n 1 0 068 11 0 0062 0 0062 0 079 displaystyle sqrt 0 0062 0 079 nbsp standard deviation of loge FPG slog Subsequently the still logarithmized lower limit of the reference range is calculated as ln lower limit m log t 0 975 n 1 n 1 n s log 1 67 2 20 13 12 0 079 1 49 displaystyle begin aligned ln text lower limit amp mu log t 0 975 n 1 times sqrt frac n 1 n times sigma log amp 1 67 2 20 times sqrt frac 13 12 times 0 079 1 49 end aligned nbsp and the upper limit of the reference range as ln upper limit m log t 0 975 n 1 n 1 n s log 1 67 2 20 13 12 0 079 1 85 displaystyle begin aligned ln text upper limit amp mu log t 0 975 n 1 times sqrt frac n 1 n times sigma log amp 1 67 2 20 times sqrt frac 13 12 times 0 079 1 85 end aligned nbsp Conversion back to non logarithmized values are subsequently performed as Lower limit e ln lower limit e 1 49 4 4 displaystyle text Lower limit e ln text lower limit e 1 49 4 4 nbsp Upper limit e ln upper limit e 1 85 6 4 displaystyle text Upper limit e ln text upper limit e 1 85 6 4 nbsp Thus the standard reference range for this example is estimated to be 4 4 to 6 4 From arithmetic mean and variance edit An alternative method of establishing a reference range with the assumption of log normal distribution is to use the arithmetic mean and standard deviation This is somewhat more tedious to perform but may be useful in cases where a study presents only the arithmetic mean and standard deviation while leaving out the source data If the original assumption of normal distribution is less appropriate than the log normal one then using the arithmetic mean and standard deviation may be the only available parameters to determine the reference range By assuming that the expected value can represent the arithmetic mean in this case the parameters mlog and slog can be estimated from the arithmetic mean m and standard deviation s d as m log ln m 1 2 ln 1 s d m 2 displaystyle mu log ln m frac 1 2 ln left 1 left frac text s d m right 2 right nbsp s log ln 1 s d m 2 displaystyle sigma log sqrt ln left 1 left frac text s d m right 2 right nbsp Following the exampled reference group from the previous section m log ln 5 33 1 2 ln 1 0 42 5 33 2 1 67 displaystyle mu log ln 5 33 frac 1 2 ln left 1 left frac 0 42 5 33 right 2 right 1 67 nbsp s log ln 1 0 42 5 33 2 0 079 displaystyle sigma log sqrt ln left 1 left frac 0 42 5 33 right 2 right 0 079 nbsp Subsequently the logarithmized and later non logarithmized lower and upper limit are calculated just as by logarithmized sample values Directly from percentages of interest edit Reference ranges can also be established directly from the 2 5th and 97 5th percentile of the measurements in the reference group For example if the reference group consists of 200 people and counting from the measurement with lowest value to highest the lower limit of the reference range would correspond to the 5th measurement and the upper limit would correspond to the 195th measurement This method can be used even when measurement values do not appear to conform conveniently to any form of normal distribution or other function However the reference range limits as estimated in this way have higher variance and therefore less reliability than those estimated by an arithmetic or log normal distribution when such is applicable because the latter ones acquire statistical power from the measurements of the whole reference group rather than just the measurements at the 2 5th and 97 5th percentiles Still this variance decreases with increasing size of the reference group and therefore this method may be optimal where a large reference group easily can be gathered and the distribution mode of the measurements is uncertain Bimodal distribution edit nbsp Bimodal distributionIn case of a bimodal distribution seen at right it is useful to find out why this is the case Two reference ranges can be established for the two different groups of people making it possible to assume a normal distribution for each group This bimodal pattern is commonly seen in tests that differ between men and women such as prostate specific antigen Interpretation of standard ranges in medical tests edit In case of medical tests whose results are of continuous values reference ranges can be used in the interpretation of an individual test result This is primarily used for diagnostic tests and screening tests while monitoring tests may optimally be interpreted from previous tests of the same individual instead Probability of random variability edit Reference ranges aid in the evaluation of whether a test result s deviation from the mean is a result of random variability or a result of an underlying disease or condition If the reference group used to establish the reference range can be assumed to be representative of the individual person in a healthy state then a test result from that individual that turns out to be lower or higher than the reference range can be interpreted as that there is less than 2 5 probability that this would have occurred by random variability in the absence of disease or other condition which in turn is strongly indicative for considering an underlying disease or condition as a cause Such further consideration can be performed for example by an epidemiology based differential diagnostic procedure where potential candidate conditions are listed that may explain the finding followed by calculations of how probable they are to have occurred in the first place in turn followed by a comparison with the probability that the result would have occurred by random variability If the establishment of the reference range could have been made assuming a normal distribution then the probability that the result would be an effect of random variability can be further specified as follows The standard deviation if not given already can be inversely calculated by the fact that the absolute value of the difference between the mean and either the upper or lower limit of the reference range is approximately 2 standard deviations more accurately 1 96 and thus Standard deviation s d Mean Upper limit 2 The standard score for the individual s test can subsequently be calculated as Standard score z Mean individual measurement s d The probability that a value is of a certain distance from the mean can subsequently be calculated from the relation between standard score and prediction intervals For example a standard score of 2 58 corresponds to a prediction interval of 99 12 corresponding to a probability of 0 5 that a result is at least such far from the mean in the absence of disease Example edit The method is described in further detail at differential diagnosis Let s say for example that an individual takes a test that measures the ionized calcium in the blood resulting in a value of 1 30 mmol L and a reference group that appropriately represents the individual has established a reference range of 1 05 to 1 25 mmol L The individual s value is higher than the upper limit of the reference range and therefore has less than 2 5 probability of being a result of random variability constituting a strong indication to make a differential diagnosis of possible causative conditions In this case an epidemiology based differential diagnostic procedure is used and its first step is to find candidate conditions that can explain the finding Hypercalcemia usually defined as a calcium level above the reference range is mostly caused by either primary hyperparathyroidism or malignancy 13 and therefore it is reasonable to include these in the differential diagnosis Using for example epidemiology and the individual s risk factors let s say that the probability that the hypercalcemia would have been caused by primary hyperparathyroidism in the first place is estimated to be 0 00125 or 0 125 the equivalent probability for cancer is 0 0002 and 0 0005 for other conditions With a probability given as less than 0 025 of no disease this corresponds to a probability that the hypercalcemia would have occurred in the first place of up to 0 02695 However the hypercalcemia has occurred with a probability of 100 resulting adjusted probabilities of at least 4 6 that primary hyperparathyroidism has caused the hypercalcemia at least 0 7 for cancer at least 1 9 for other conditions and up to 92 8 for that there is no disease and the hypercalcemia is caused by random variability In this case further processing benefits from specification of the probability of random variability The value is assumed to conform acceptably to a normal distribution so the mean can be assumed to be 1 15 in the reference group The standard deviation if not given already can be inversely calculated by knowing that the absolute value of the difference between the mean and for example the upper limit of the reference range is approximately 2 standard deviations more accurately 1 96 and thus Standard deviation s d Mean Upper limit 2 1 15 1 25 2 0 1 2 0 05 The standard score for the individual s test is subsequently calculated as Standard score z Mean individual measurement s d 1 15 1 30 0 05 0 15 0 05 3 The probability that a value is of so much larger value than the mean as having a standard score of 3 corresponds to a probability of approximately 0 14 given by 100 99 7 2 with 99 7 here being given from the 68 95 99 7 rule Using the same probabilities that the hypercalcemia would have occurred in the first place by the other candidate conditions the probability that hypercalcemia would have occurred in the first place is 0 00335 and given the fact that hypercalcemia has occurred gives adjusted probabilities of 37 3 6 0 14 9 and 41 8 respectively for primary hyperparathyroidism cancer other conditions and no disease Optimal health range editOptimal health range or therapeutic target not to be confused with biological target is a reference range or limit that is based on concentrations or levels that are associated with optimal health or minimal risk of related complications and diseases rather than the standard range based on normal distribution in the population It may be more appropriate to use for e g folate since approximately 90 percent of North Americans may actually suffer more or less from folate deficiency 14 but only the 2 5 percent that have the lowest levels will fall below the standard reference range In this case the actual folate ranges for optimal health are substantially higher than the standard reference ranges Vitamin D has a similar tendency In contrast for e g uric acid having a level not exceeding the standard reference range still does not exclude the risk of getting gout or kidney stones Furthermore for most toxins the standard reference range is generally lower than the level of toxic effect A problem with optimal health range is a lack of a standard method of estimating the ranges The limits may be defined as those where the health risks exceed a certain threshold but with various risk profiles between different measurements such as folate and vitamin D and even different risk aspects for one and the same measurement such as both deficiency and toxicity of vitamin A it is difficult to standardize Subsequently optimal health ranges when given by various sources have an additional variability caused by various definitions of the parameter Also as with standard reference ranges there should be specific ranges for different determinants that affects the values such as sex age etc Ideally there should rather be an estimation of what is the optimal value for every individual when taking all significant factors of that individual into account a task that may be hard to achieve by studies but long clinical experience by a physician may make this method preferable to using reference ranges One sided cut off values editIn many cases only one side of the range is usually of interest such as with markers of pathology including cancer antigen 19 9 where it is generally without any clinical significance to have a value below what is usual in the population Therefore such targets are often given with only one limit of the reference range given and strictly such values are rather cut off values or threshold values They may represent both standard ranges and optimal health ranges Also they may represent an appropriate value to distinguish healthy person from a specific disease although this gives additional variability by different diseases being distinguished For example for NT proBNP a lower cut off value is used in distinguishing healthy babies from those with acyanotic heart disease compared to the cut off value used in distinguishing healthy babies from those with congenital nonspherocytic anemia 15 General drawbacks editFor standard as well as optimal health ranges and cut offs sources of inaccuracy and imprecision include Instruments and lab techniques used or how the measurements are interpreted by observers These may apply both to the instruments etc used to establish the reference ranges and the instruments etc used to acquire the value for the individual to whom these ranges is applied To compensate individual laboratories should have their own lab ranges to account for the instruments used in the laboratory Determinants such as age diet etc that are not compensated for Optimally there should be reference ranges from a reference group that is as similar as possible to each individual they are applied to but it s practically impossible to compensate for every single determinant often not even when the reference ranges are established from multiple measurements of the same individual they are applied to because of test retest variability Also reference ranges tend to give the impression of definite thresholds that clearly separate good or bad values while in reality there are generally continuously increasing risks with increased distance from usual or optimal values With this and uncompensated factors in mind the ideal interpretation method of a test result would rather consist of a comparison of what would be expected or optimal in the individual when taking all factors and conditions of that individual into account rather than strictly classifying the values as good or bad by using reference ranges from other people In a recent paper Rappoport et al 16 described a novel way to redefine reference range from an electronic health record system In such a system a higher population resolution can be achieved e g age sex race and ethnicity specific Examples editReference ranges for blood tests Reference ranges for urine testsSee also editClinical pathology Joint Committee for Traceability in Laboratory Medicine Medical technologist Reference ranges for blood testsReferences edit nbsp This article was adapted from the following source under a CC0 license 2012 reviewer reports Mikael Haggstrom 2014 Reference ranges for estradiol progesterone luteinizing hormone and follicle stimulating hormone during the menstrual cycle PDF WikiJournal of Medicine 1 1 doi 10 15347 WJM 2014 001 ISSN 2002 4436 Wikidata Q44275619 Page 19 in Stephen K Bangert MA MB BChir MSc MBA FRCPath William J Marshall MA MSc MBBS FRCP FRCPath FRCPEdin FIBiol Marshall William Leonard 2008 Clinical biochemistry metabolic and clinical aspects Philadelphia Churchill Livingstone Elsevier ISBN 978 0 443 10186 1 a href Template Cite book html title Template Cite book cite book a CS1 maint multiple names authors list link Dybkaer R November 1982 International federation of clinical chemistry IFCC 1 2 the theory of reference values Part 6 Presentation of observed values related to reference values Journal of clinical chemistry and clinical biochemistry Zeitschrift fur klinische Chemie und klinische Biochemie 20 11 841 5 PMID 7153721 Davis C Q Hamilton R 2021 Reference ranges for clinical electrophysiology of vision Doc Ophthalmol 143 2 155 170 doi 10 1007 s10633 021 09831 1 PMC 8494724 PMID 33880667 Page 48 in Sterne Jonathan Kirkwood Betty R 2003 Essential medical statistics Oxford Blackwell Science ISBN 978 0 86542 871 3 a b Table 1 Subject characteristics in Keevil B G Kilpatrick E S Nichols S P Maylor P W 1998 Biological variation of cystatin C Implications for the assessment of glomerular filtration rate Clinical Chemistry 44 7 1535 1539 doi 10 1093 clinchem 44 7 1535 PMID 9665434 Page 65 in Carl A Burtis David E Bruns 2014 Tietz Fundamentals of Clinical Chemistry and Molecular Diagnostics 7 ed Elsevier Health Sciences ISBN 9780323292061 Last page of Deepak A Rao Le Tao Bhushan Vikas 2007 First Aid for the USMLE Step 1 2008 First Aid for the Usmle Step 1 McGraw Hill Medical ISBN 978 0 07 149868 5 a b Reference range list from Uppsala University Hospital Laborationslista Artnr 40284 Sj74a Issued on April 22 2008 MedlinePlus Encyclopedia Glucose tolerance test Huxley Julian S 1932 Problems of relative growth London ISBN 978 0 486 61114 3 OCLC 476909537 Levitt H Smith KG Rosner MH 2009 Variability in calcium phosphorus and parathyroid hormone in patients on hemodialysis Hemodial Int 13 4 518 25 doi 10 1111 j 1542 4758 2009 00393 x PMID 19758299 S2CID 24963421 a href Template Cite journal html title Template Cite journal cite journal a CS1 maint multiple names authors list link Page 111 in Kirkup Les 2002 Data analysis with Excel an introduction for physical scientists Cambridge UK Cambridge University Press ISBN 978 0 521 79737 5 Table 20 4 in Mitchell Richard Sheppard Kumar Vinay Abbas Abul K Fausto Nelson 2007 Robbins Basic Pathology Philadelphia Saunders ISBN 978 1 4160 2973 1 8th edition Folic Acid Don t Be Without It by Hans R Larsen MSc ChE retrieved on July 7 2009 In turn citing Boushey Carol J et al 1995 A quantitative assessment of plasma homocysteine as a risk factor for vascular disease Journal of the American Medical Association 274 13 1049 57 doi 10 1001 jama 274 13 1049 Morrison Howard I et al 1996 Serum folate and risk of fatal coronary heart disease Journal of the American Medical Association 275 24 1893 96 doi 10 1001 jama 1996 03530480035037 PMID 8648869 Screening for Congenital Heart Disease with NT proBNP Results By Emmanuel Jairaj Moses Sharifah A I Mokhtar Amir Hamzah Basir Selvam Abdullah and Narazah Mohd Yusoff Laboratory Medicine 2011 42 2 75 80 American Society for Clinical Pathology Rappoport Nadav Paik Hyojung Oskotsky Boris Tor Ruth Ziv Elad Zaitlen Noah Butte Atul J 2017 11 04 Creating ethnicity specific reference intervals for lab tests from EHR data bioRxiv 10 1101 213892 Further reading editThe procedures and vocabulary referring to reference intervals CLSI Committee for Laboratory Standards Institute and IFCC International Federation of Clinical Chemistry CLSI Defining Establishing and Verifying Reference Intervals in the Laboratory Approved guideline Third Edition Document C28 A3 ISBN 1 56238 682 4 Wayne PA USA 2008 Reference Value Advisor A free set of Excel macros allowing the determination of reference intervals in accordance with the CLSI procedures Based on Geffre A Concordet D Braun J P Trumel C 2011 Reference Value Advisor A new freeware set of macroinstructions to calculate reference intervals with Microsoft Excel PDF Veterinary Clinical Pathology 40 1 107 112 doi 10 1111 j 1939 165X 2011 00287 x PMID 21366659 Retrieved from https en wikipedia org w index php title Reference range amp oldid 1187581802, wikipedia, wiki, book, books, library,

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