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Confounding

In causal inference, a confounder (also confounding variable, confounding factor, extraneous determinant or lurking variable) is a variable that influences both the dependent variable and independent variable, causing a spurious association. Confounding is a causal concept, and as such, cannot be described in terms of correlations or associations.[1][2][3] The existence of confounders is an important quantitative explanation why correlation does not imply causation. Some notations are explicitly designed to identify the existence, possible existence, or non-existence of confounders in causal relationships between elements of a system.

Whereas a mediator is a factor in the causal chain (above), a confounder is a spurious factor incorrectly implying causation (bottom)

Confounds are threats to internal validity.[4]

Definition Edit

Confounding is defined in terms of the data generating model. Let X be some independent variable, and Y some dependent variable. To estimate the effect of X on Y, the statistician must suppress the effects of extraneous variables that influence both X and Y. We say that X and Y are confounded by some other variable Z whenever Z causally influences both X and Y.

Let   be the probability of event Y = y under the hypothetical intervention X = x. X and Y are not confounded if and only if the following holds:

 

 

 

 

 

(1)

for all values X = x and Y = y, where   is the conditional probability upon seeing X = x. Intuitively, this equality states that X and Y are not confounded whenever the observationally witnessed association between them is the same as the association that would be measured in a controlled experiment, with x randomized.

In principle, the defining equality   can be verified from the data generating model, assuming we have all the equations and probabilities associated with the model. This is done by simulating an intervention   (see Bayesian network) and checking whether the resulting probability of Y equals the conditional probability  . It turns out, however, that graph structure alone is sufficient for verifying the equality  .

Control Edit

Consider a researcher attempting to assess the effectiveness of drug X, from population data in which drug usage was a patient's choice. The data shows that gender (Z) influences a patient's choice of drug as well as their chances of recovery (Y). In this scenario, gender Z confounds the relation between X and Y since Z is a cause of both X and Y:

 
Causal diagram of Gender as common cause of Drug use and Recovery

We have that

 

 

 

 

 

(2)

because the observational quantity contains information about the correlation between X and Z, and the interventional quantity does not (since X is not correlated with Z in a randomized experiment). It can be shown [5] that, in cases where only observational data is available, an unbiased estimate of the desired quantity  , can be obtained by "adjusting" for all confounding factors, namely, conditioning on their various values and averaging the result. In the case of a single confounder Z, this leads to the "adjustment formula":

 

 

 

 

 

(3)

which gives an unbiased estimate for the causal effect of X on Y. The same adjustment formula works when there are multiple confounders except, in this case, the choice of a set Z of variables that would guarantee unbiased estimates must be done with caution. The criterion for a proper choice of variables is called the Back-Door [5][6] and requires that the chosen set Z "blocks" (or intercepts) every path between X and Y that contains an arrow into X. Such sets are called "Back-Door admissible" and may include variables which are not common causes of X and Y, but merely proxies thereof.

Returning to the drug use example, since Z complies with the Back-Door requirement (i.e., it intercepts the one Back-Door path  ), the Back-Door adjustment formula is valid:

 

 

 

 

 

(4)

In this way the physician can predict the likely effect of administering the drug from observational studies in which the conditional probabilities appearing on the right-hand side of the equation can be estimated by regression.

Contrary to common beliefs, adding covariates to the adjustment set Z can introduce bias.[7] A typical counterexample occurs when Z is a common effect of X and Y,[8] a case in which Z is not a confounder (i.e., the null set is Back-door admissible) and adjusting for Z would create bias known as "collider bias" or "Berkson's paradox." Controls that are not good confounders are sometimes called bad controls.

In general, confounding can be controlled by adjustment if and only if there is a set of observed covariates that satisfies the Back-Door condition. Moreover, if Z is such a set, then the adjustment formula of Eq. (3) is valid.[5][6] Pearl's do-calculus provides all possible conditions under which   can be estimated, not necessarily by adjustment.[9]

History Edit

According to Morabia (2011),[10] the word confounding derives from the Medieval Latin verb "confundere", which meant "mixing", and was probably chosen to represent the confusion (from Latin: con=with + fusus=mix or fuse together) between the cause one wishes to assess and other causes that may affect the outcome and thus confuse, or stand in the way of the desired assessment. Greenland, Robins and Pearl[11] note an early use of the term "confounding" in causal inference by John Stuart Mill in 1843.

Fisher introduced the word "confounding" in his 1935 book "The Design of Experiments"[12] to refer specifically to a consequence of blocking (i.e., partitioning) the set of treatment combinations in a factorial experiment, whereby certain interactions may be "confounded with blocks". This popularized the notion of confounding in statistics, although Fisher was concerned with the control of heterogeneity in experimental units, not with causal inference.

According to Vandenbroucke (2004)[13] it was Kish[14] who used the word "confounding" in the sense of "incomparability" of two or more groups (e.g., exposed and unexposed) in an observational study. Formal conditions defining what makes certain groups "comparable" and others "incomparable" were later developed in epidemiology by Greenland and Robins (1986)[15] using the counterfactual language of Neyman (1935)[16] and Rubin (1974).[17] These were later supplemented by graphical criteria such as the Back-Door condition (Pearl 1993; Greenland, Robins and Pearl 1999).[11][5]

Graphical criteria were shown to be formally equivalent to the counterfactual definition[18] but more transparent to researchers relying on process models.

Types Edit

In the case of risk assessments evaluating the magnitude and nature of risk to human health, it is important to control for confounding to isolate the effect of a particular hazard such as a food additive, pesticide, or new drug. For prospective studies, it is difficult to recruit and screen for volunteers with the same background (age, diet, education, geography, etc.), and in historical studies, there can be similar variability. Due to the inability to control for variability of volunteers and human studies, confounding is a particular challenge. For these reasons, experiments offer a way to avoid most forms of confounding.

In some disciplines, confounding is categorized into different types. In epidemiology, one type is "confounding by indication",[19] which relates to confounding from observational studies. Because prognostic factors may influence treatment decisions (and bias estimates of treatment effects), controlling for known prognostic factors may reduce this problem, but it is always possible that a forgotten or unknown factor was not included or that factors interact complexly. Confounding by indication has been described as the most important limitation of observational studies. Randomized trials are not affected by confounding by indication due to random assignment.

Confounding variables may also be categorised according to their source. The choice of measurement instrument (operational confound), situational characteristics (procedural confound), or inter-individual differences (person confound).

  • An operational confounding can occur in both experimental and non-experimental research designs. This type of confounding occurs when a measure designed to assess a particular construct inadvertently measures something else as well.[20]
  • A procedural confounding can occur in a laboratory experiment or a quasi-experiment. This type of confound occurs when the researcher mistakenly allows another variable to change along with the manipulated independent variable.[20]
  • A person confounding occurs when two or more groups of units are analyzed together (e.g., workers from different occupations), despite varying according to one or more other (observed or unobserved) characteristics (e.g., gender).[21]

Examples Edit

Say one is studying the relation between birth order (1st child, 2nd child, etc.) and the presence of Down Syndrome in the child. In this scenario, maternal age would be a confounding variable:

  1. Higher maternal age is directly associated with Down Syndrome in the child
  2. Higher maternal age is directly associated with Down Syndrome, regardless of birth order (a mother having her 1st vs 3rd child at age 50 confers the same risk)
  3. Maternal age is directly associated with birth order (the 2nd child, except in the case of twins, is born when the mother is older than she was for the birth of the 1st child)
  4. Maternal age is not a consequence of birth order (having a 2nd child does not change the mother's age)

In risk assessments, factors such as age, gender, and educational levels often affect health status and so should be controlled. Beyond these factors, researchers may not consider or have access to data on other causal factors. An example is on the study of smoking tobacco on human health. Smoking, drinking alcohol, and diet are lifestyle activities that are related. A risk assessment that looks at the effects of smoking but does not control for alcohol consumption or diet may overestimate the risk of smoking.[22] Smoking and confounding are reviewed in occupational risk assessments such as the safety of coal mining.[23] When there is not a large sample population of non-smokers or non-drinkers in a particular occupation, the risk assessment may be biased towards finding a negative effect on health.

Decreasing the potential for confounding Edit

A reduction in the potential for the occurrence and effect of confounding factors can be obtained by increasing the types and numbers of comparisons performed in an analysis. If measures or manipulations of core constructs are confounded (i.e. operational or procedural confounds exist), subgroup analysis may not reveal problems in the analysis. Additionally, increasing the number of comparisons can create other problems (see multiple comparisons).

Peer review is a process that can assist in reducing instances of confounding, either before study implementation or after analysis has occurred. Peer review relies on collective expertise within a discipline to identify potential weaknesses in study design and analysis, including ways in which results may depend on confounding. Similarly, replication can test for the robustness of findings from one study under alternative study conditions or alternative analyses (e.g., controlling for potential confounds not identified in the initial study).

Confounding effects may be less likely to occur and act similarly at multiple times and locations.[citation needed] In selecting study sites, the environment can be characterized in detail at the study sites to ensure sites are ecologically similar and therefore less likely to have confounding variables. Lastly, the relationship between the environmental variables that possibly confound the analysis and the measured parameters can be studied. The information pertaining to environmental variables can then be used in site-specific models to identify residual variance that may be due to real effects.[24]

Depending on the type of study design in place, there are various ways to modify that design to actively exclude or control confounding variables:[25]

  • Case-control studies assign confounders to both groups, cases and controls, equally. For example, if somebody wanted to study the cause of myocardial infarct and thinks that the age is a probable confounding variable, each 67-year-old infarct patient will be matched with a healthy 67-year-old "control" person. In case-control studies, matched variables most often are the age and sex. Drawback: Case-control studies are feasible only when it is easy to find controls, i.e. persons whose status vis-à-vis all known potential confounding factors is the same as that of the case's patient: Suppose a case-control study attempts to find the cause of a given disease in a person who is 1) 45 years old, 2) African-American, 3) from Alaska, 4) an avid football player, 5) vegetarian, and 6) working in education. A theoretically perfect control would be a person who, in addition to not having the disease being investigated, matches all these characteristics and has no diseases that the patient does not also have—but finding such a control would be an enormous task.
  • Cohort studies: A degree of matching is also possible and it is often done by only admitting certain age groups or a certain sex into the study population, creating a cohort of people who share similar characteristics and thus all cohorts are comparable in regard to the possible confounding variable. For example, if age and sex are thought to be confounders, only 40 to 50 years old males would be involved in a cohort study that would assess the myocardial infarct risk in cohorts that either are physically active or inactive. Drawback: In cohort studies, the overexclusion of input data may lead researchers to define too narrowly the set of similarly situated persons for whom they claim the study to be useful, such that other persons to whom the causal relationship does in fact apply may lose the opportunity to benefit from the study's recommendations. Similarly, "over-stratification" of input data within a study may reduce the sample size in a given stratum to the point where generalizations drawn by observing the members of that stratum alone are not statistically significant.
  • Double blinding: conceals from the trial population and the observers the experiment group membership of the participants. By preventing the participants from knowing if they are receiving treatment or not, the placebo effect should be the same for the control and treatment groups. By preventing the observers from knowing of their membership, there should be no bias from researchers treating the groups differently or from interpreting the outcomes differently.
  • Randomized controlled trial: A method where the study population is divided randomly in order to mitigate the chances of self-selection by participants or bias by the study designers. Before the experiment begins, the testers will assign the members of the participant pool to their groups (control, intervention, parallel), using a randomization process such as the use of a random number generator. For example, in a study on the effects of exercise, the conclusions would be less valid if participants were given a choice if they wanted to belong to the control group which would not exercise or the intervention group which would be willing to take part in an exercise program. The study would then capture other variables besides exercise, such as pre-experiment health levels and motivation to adopt healthy activities. From the observer's side, the experimenter may choose candidates who are more likely to show the results the study wants to see or may interpret subjective results (more energetic, positive attitude) in a way favorable to their desires.
  • Stratification: As in the example above, physical activity is thought to be a behaviour that protects from myocardial infarct; and age is assumed to be a possible confounder. The data sampled is then stratified by age group – this means that the association between activity and infarct would be analyzed per each age group. If the different age groups (or age strata) yield much different risk ratios, age must be viewed as a confounding variable. There exist statistical tools, among them Mantel–Haenszel methods, that account for stratification of data sets.
  • Controlling for confounding by measuring the known confounders and including them as covariates is multivariable analysis such as regression analysis. Multivariate analyses reveal much less information about the strength or polarity of the confounding variable than do stratification methods. For example, if multivariate analysis controls for antidepressant, and it does not stratify antidepressants for TCA and SSRI, then it will ignore that these two classes of antidepressant have opposite effects on myocardial infarction, and one is much stronger than the other.

All these methods have their drawbacks:

  1. The best available defense against the possibility of spurious results due to confounding is often to dispense with efforts at stratification and instead conduct a randomized study of a sufficiently large sample taken as a whole, such that all potential confounding variables (known and unknown) will be distributed by chance across all study groups and hence will be uncorrelated with the binary variable for inclusion/exclusion in any group.
  2. Ethical considerations: In double-blind and randomized controlled trials, participants are not aware that they are recipients of sham treatments and may be denied effective treatments.[26] There is a possibility that patients only agree to invasive surgery (which carry real medical risks) under the understanding that they are receiving treatment. Although this is an ethical concern, it is not a complete account of the situation. For surgeries that are currently being performed regularly, but for which there is no concrete evidence of a genuine effect, there may be ethical issues to continue such surgeries. In such circumstances, many of people are exposed to the real risks of surgery yet these treatments may possibly offer no discernible benefit. Sham-surgery control is a method that may allow medical science to determine whether a surgical procedure is efficacious or not. Given that there are known risks associated with medical operations, it is questionably ethical to allow unverified surgeries to be conducted ad infinitum into the future.

Artifacts Edit

Artifacts are variables that should have been systematically varied, either within or across studies, but that were accidentally held constant. Artifacts are thus threats to external validity. Artifacts are factors that covary with the treatment and the outcome. Campbell and Stanley[27] identify several artifacts. The major threats to internal validity are history, maturation, testing, instrumentation, statistical regression, selection, experimental mortality, and selection-history interactions.

One way to minimize the influence of artifacts is to use a pretest-posttest control group design. Within this design, "groups of people who are initially equivalent (at the pretest phase) are randomly assigned to receive the experimental treatment or a control condition and then assessed again after this differential experience (posttest phase)".[28] Thus, any effects of artifacts are (ideally) equally distributed in participants in both the treatment and control conditions.

See also Edit

References Edit

  1. ^ Pearl, J., (2009). Simpson's Paradox, Confounding, and Collapsibility In Causality: Models, Reasoning and Inference (2nd ed.). New York : Cambridge University Press.
  2. ^ VanderWeele, T.J.; Shpitser, I. (2013). "On the definition of a confounder". Annals of Statistics. 41 (1): 196–220. arXiv:1304.0564. doi:10.1214/12-aos1058. PMC 4276366. PMID 25544784.
  3. ^ Greenland, S.; Robins, J. M.; Pearl, J. (1999). "Confounding and Collapsibility in Causal Inference". Statistical Science. 14 (1): 29–46. doi:10.1214/ss/1009211805.
  4. ^ Shadish, W. R.; Cook, T. D.; Campbell, D. T. (2002). Experimental and quasi-experimental designs for generalized causal inference. Boston, MA: Houghton-Mifflin.
  5. ^ a b c d Pearl, J., (1993). "Aspects of Graphical Models Connected With Causality", In Proceedings of the 49th Session of the International Statistical Science Institute, pp. 391–401.
  6. ^ a b Pearl, J. (2009). Causal Diagrams and the Identification of Causal Effects In Causality: Models, Reasoning and Inference (2nd ed.). New York, NY, USA: Cambridge University Press.
  7. ^ Cinelli, C.; Forney, A.; Pearl, J. (March 2022). "A Crash Course in Good and Bad Controls" (PDF). UCLA Cognitive Systems Laboratory, Technical Report (R-493).
  8. ^ Lee, P. H. (2014). "Should We Adjust for a Confounder if Empirical and Theoretical Criteria Yield Contradictory Results? A Simulation Study". Sci Rep. 4: 6085. Bibcode:2014NatSR...4E6085L. doi:10.1038/srep06085. PMC 5381407. PMID 25124526.
  9. ^ Shpitser, I.; Pearl, J. (2008). "Complete identification methods for the causal hierarchy". The Journal of Machine Learning Research. 9: 1941–1979.
  10. ^ Morabia, A (2011). "History of the modern epidemiological concept of confounding" (PDF). Journal of Epidemiology and Community Health. 65 (4): 297–300. doi:10.1136/jech.2010.112565. PMID 20696848. S2CID 9068532.
  11. ^ a b Greenland, S.; Robins, J. M.; Pearl, J. (1999). "Confounding and Collapsibility in Causal Inference". Statistical Science. 14 (1): 31. doi:10.1214/ss/1009211805.
  12. ^ Fisher, R. A. (1935). The design of experiments (pp. 114–145).
  13. ^ Vandenbroucke, J. P. (2004). "The history of confounding". Soz Praventivmed. 47 (4): 216–224. doi:10.1007/BF01326402. PMID 12415925. S2CID 198174446.
  14. ^ Kish, L (1959). "Some statistical problems in research design". Am Sociol. 26 (3): 328–338. doi:10.2307/2089381. JSTOR 2089381.
  15. ^ Greenland, S.; Robins, J. M. (1986). "Identifiability, exchangeability, and epidemiological confounding". International Journal of Epidemiology. 15 (3): 413–419. CiteSeerX 10.1.1.157.6445. doi:10.1093/ije/15.3.413. PMID 3771081.
  16. ^ Neyman, J., with cooperation of K. Iwaskiewics and St. Kolodziejczyk (1935). Statistical problems in agricultural experimentation (with discussion). Suppl J Roy Statist Soc Ser B 2 107-180.
  17. ^ Rubin, D. B. (1974). "Estimating causal effects of treatments in randomized and nonrandomized studies". Journal of Educational Psychology. 66 (5): 688–701. doi:10.1037/h0037350. S2CID 52832751.
  18. ^ Pearl, J., (2009). Causality: Models, Reasoning and Inference (2nd ed.). New York, NY, USA: Cambridge University Press.
  19. ^ Johnston, S. C. (2001). "Identifying Confounding by Indication through Blinded Prospective Review". American Journal of Epidemiology. 154 (3): 276–284. doi:10.1093/aje/154.3.276. PMID 11479193.
  20. ^ a b Pelham, Brett (2006). Conducting Research in Psychology. Belmont: Wadsworth. ISBN 978-0-534-53294-9.
  21. ^ Steg, L.; Buunk, A. P.; Rothengatter, T. (2008). "Chapter 4". Applied Social Psychology: Understanding and managing social problems. Cambridge, UK: Cambridge University Press.
  22. ^ Tjønneland, Anne; Grønbæk, Morten; Stripp, Connie; Overvad, Kim (January 1999). "Wine intake and diet in a random sample of 48763 Danish men and women". The American Journal of Clinical Nutrition. 69 (1): 49–54. doi:10.1093/ajcn/69.1.49. PMID 9925122.
  23. ^ Axelson, O. (1989). "Confounding from smoking in occupational epidemiology". British Journal of Industrial Medicine. 46 (8): 505–07. doi:10.1136/oem.46.8.505. PMC 1009818. PMID 2673334.
  24. ^ Calow, Peter P. (2009) Handbook of Environmental Risk Assessment and Management, Wiley
  25. ^ Mayrent, Sherry L (1987). Epidemiology in Medicine. Lippincott Williams & Wilkins. ISBN 978-0-316-35636-7.
  26. ^ Emanuel, Ezekiel J; Miller, Franklin G (Sep 20, 2001). "The Ethics of Placebo-Controlled Trials—A Middle Ground". New England Journal of Medicine. 345 (12): 915–9. doi:10.1056/nejm200109203451211. PMID 11565527.
  27. ^ Campbell, D. T.; Stanley, J. C. (1966). Experimental and quasi-experimental designs for research. Chicago: Rand McNally.
  28. ^ Crano, W. D.; Brewer, M. B. (2002). Principles and methods of social research (2nd ed.). Mahwah, NJ: Lawrence Erlbaum Associates. p. 28.

Further reading Edit

  • Pearl, J. (January 1998). "Why there is no statistical test for confounding, why many think there is, and why they are almost right" (PDF). UCLA Computer Science Department, Technical Report R-256.
  • Montgomery, D. C. (2001). "Blocking and Confounding in the   Factorial Design". Design and Analysis of Experiments (5th ed.). Wiley. pp. 287–302. This textbook has an overview of confounding factors and how to account for them in design of experiments.{{cite book}}: CS1 maint: postscript (link)
  • Brewer, M. B. (2000). "Research design and issues of validity". In Reis, H. T.; Judd, C. M. (eds.). Handbook of Research. New York: Cambridge University Press. pp. 3–16. ISBN 9780521551281.
  • Smith, E. R. (2000). "Research design". In Reis, H. T.; Judd, C. M. (eds.). Handbook of research methods in social and personality psychology. New York: Cambridge University Press. pp. 17–39. ISBN 9780521551281.

External links Edit

  • Tutorial: Confounding and Effect Measure Modification (Boston University School of Public Health)
  • Linear Regression (Yale University)
  • Tutorial by University of New England

confounding, factor, redirects, here, company, factor, psychological, state, confusion, this, article, technical, most, readers, understand, please, help, improve, make, understandable, experts, without, removing, technical, details, september, 2019, learn, wh. Confounding factor redirects here For the company see Confounding Factor For the psychological state see Confusion This article may be too technical for most readers to understand Please help improve it to make it understandable to non experts without removing the technical details September 2019 Learn how and when to remove this template message In causal inference a confounder also confounding variable confounding factor extraneous determinant or lurking variable is a variable that influences both the dependent variable and independent variable causing a spurious association Confounding is a causal concept and as such cannot be described in terms of correlations or associations 1 2 3 The existence of confounders is an important quantitative explanation why correlation does not imply causation Some notations are explicitly designed to identify the existence possible existence or non existence of confounders in causal relationships between elements of a system Whereas a mediator is a factor in the causal chain above a confounder is a spurious factor incorrectly implying causation bottom Confounds are threats to internal validity 4 Contents 1 Definition 2 Control 3 History 4 Types 5 Examples 6 Decreasing the potential for confounding 7 Artifacts 8 See also 9 References 10 Further reading 11 External linksDefinition EditConfounding is defined in terms of the data generating model Let X be some independent variable and Y some dependent variable To estimate the effect of X on Y the statistician must suppress the effects of extraneous variables that influence both X and Y We say that X and Y are confounded by some other variable Z whenever Z causally influences both X and Y Let P y do x displaystyle P y mid text do x nbsp be the probability of event Y y under the hypothetical intervention X x X and Y are not confounded if and only if the following holds P y do x P y x displaystyle P y mid text do x P y mid x nbsp 1 for all values X x and Y y where P y x displaystyle P y mid x nbsp is the conditional probability upon seeing X x Intuitively this equality states that X and Y are not confounded whenever the observationally witnessed association between them is the same as the association that would be measured in a controlled experiment with x randomized In principle the defining equality P y do x P y x displaystyle P y mid text do x P y mid x nbsp can be verified from the data generating model assuming we have all the equations and probabilities associated with the model This is done by simulating an intervention do X x displaystyle text do X x nbsp see Bayesian network and checking whether the resulting probability of Y equals the conditional probability P y x displaystyle P y mid x nbsp It turns out however that graph structure alone is sufficient for verifying the equality P y do x P y x displaystyle P y mid text do x P y mid x nbsp Control EditSee also Controlling for a variable Consider a researcher attempting to assess the effectiveness of drug X from population data in which drug usage was a patient s choice The data shows that gender Z influences a patient s choice of drug as well as their chances of recovery Y In this scenario gender Z confounds the relation between X and Y since Z is a cause of both X and Y nbsp Causal diagram of Gender as common cause of Drug use and RecoveryWe have that P y do x P y x displaystyle P y mid text do x neq P y mid x nbsp 2 because the observational quantity contains information about the correlation between X and Z and the interventional quantity does not since X is not correlated with Z in a randomized experiment It can be shown 5 that in cases where only observational data is available an unbiased estimate of the desired quantity P y do x displaystyle P y mid text do x nbsp can be obtained by adjusting for all confounding factors namely conditioning on their various values and averaging the result In the case of a single confounder Z this leads to the adjustment formula P y do x z P y x z P z displaystyle P y mid text do x sum z P y mid x z P z nbsp 3 which gives an unbiased estimate for the causal effect of X on Y The same adjustment formula works when there are multiple confounders except in this case the choice of a set Z of variables that would guarantee unbiased estimates must be done with caution The criterion for a proper choice of variables is called the Back Door 5 6 and requires that the chosen set Z blocks or intercepts every path between X and Y that contains an arrow into X Such sets are called Back Door admissible and may include variables which are not common causes of X and Y but merely proxies thereof Returning to the drug use example since Z complies with the Back Door requirement i e it intercepts the one Back Door path X Z Y displaystyle X leftarrow Z rightarrow Y nbsp the Back Door adjustment formula is valid P Y recovered do x give drug P Y recovered X give drug Z male P Z male P Y recovered X give drug Z female P Z female displaystyle begin aligned P Y text recovered mid text do x text give drug amp P Y text recovered mid X text give drug Z text male P Z text male amp P Y text recovered mid X text give drug Z text female P Z text female end aligned nbsp 4 In this way the physician can predict the likely effect of administering the drug from observational studies in which the conditional probabilities appearing on the right hand side of the equation can be estimated by regression Contrary to common beliefs adding covariates to the adjustment set Z can introduce bias 7 A typical counterexample occurs when Z is a common effect of X and Y 8 a case in which Z is not a confounder i e the null set is Back door admissible and adjusting for Z would create bias known as collider bias or Berkson s paradox Controls that are not good confounders are sometimes called bad controls In general confounding can be controlled by adjustment if and only if there is a set of observed covariates that satisfies the Back Door condition Moreover if Z is such a set then the adjustment formula of Eq 3 is valid 5 6 Pearl s do calculus provides all possible conditions under which P y do x displaystyle P y mid text do x nbsp can be estimated not necessarily by adjustment 9 History EditAccording to Morabia 2011 10 the word confounding derives from the Medieval Latin verb confundere which meant mixing and was probably chosen to represent the confusion from Latin con with fusus mix or fuse together between the cause one wishes to assess and other causes that may affect the outcome and thus confuse or stand in the way of the desired assessment Greenland Robins and Pearl 11 note an early use of the term confounding in causal inference by John Stuart Mill in 1843 Fisher introduced the word confounding in his 1935 book The Design of Experiments 12 to refer specifically to a consequence of blocking i e partitioning the set of treatment combinations in a factorial experiment whereby certain interactions may be confounded with blocks This popularized the notion of confounding in statistics although Fisher was concerned with the control of heterogeneity in experimental units not with causal inference According to Vandenbroucke 2004 13 it was Kish 14 who used the word confounding in the sense of incomparability of two or more groups e g exposed and unexposed in an observational study Formal conditions defining what makes certain groups comparable and others incomparable were later developed in epidemiology by Greenland and Robins 1986 15 using the counterfactual language of Neyman 1935 16 and Rubin 1974 17 These were later supplemented by graphical criteria such as the Back Door condition Pearl 1993 Greenland Robins and Pearl 1999 11 5 Graphical criteria were shown to be formally equivalent to the counterfactual definition 18 but more transparent to researchers relying on process models Types EditIn the case of risk assessments evaluating the magnitude and nature of risk to human health it is important to control for confounding to isolate the effect of a particular hazard such as a food additive pesticide or new drug For prospective studies it is difficult to recruit and screen for volunteers with the same background age diet education geography etc and in historical studies there can be similar variability Due to the inability to control for variability of volunteers and human studies confounding is a particular challenge For these reasons experiments offer a way to avoid most forms of confounding In some disciplines confounding is categorized into different types In epidemiology one type is confounding by indication 19 which relates to confounding from observational studies Because prognostic factors may influence treatment decisions and bias estimates of treatment effects controlling for known prognostic factors may reduce this problem but it is always possible that a forgotten or unknown factor was not included or that factors interact complexly Confounding by indication has been described as the most important limitation of observational studies Randomized trials are not affected by confounding by indication due to random assignment Confounding variables may also be categorised according to their source The choice of measurement instrument operational confound situational characteristics procedural confound or inter individual differences person confound An operational confounding can occur in both experimental and non experimental research designs This type of confounding occurs when a measure designed to assess a particular construct inadvertently measures something else as well 20 A procedural confounding can occur in a laboratory experiment or a quasi experiment This type of confound occurs when the researcher mistakenly allows another variable to change along with the manipulated independent variable 20 A person confounding occurs when two or more groups of units are analyzed together e g workers from different occupations despite varying according to one or more other observed or unobserved characteristics e g gender 21 Examples EditSay one is studying the relation between birth order 1st child 2nd child etc and the presence of Down Syndrome in the child In this scenario maternal age would be a confounding variable Higher maternal age is directly associated with Down Syndrome in the child Higher maternal age is directly associated with Down Syndrome regardless of birth order a mother having her 1st vs 3rd child at age 50 confers the same risk Maternal age is directly associated with birth order the 2nd child except in the case of twins is born when the mother is older than she was for the birth of the 1st child Maternal age is not a consequence of birth order having a 2nd child does not change the mother s age In risk assessments factors such as age gender and educational levels often affect health status and so should be controlled Beyond these factors researchers may not consider or have access to data on other causal factors An example is on the study of smoking tobacco on human health Smoking drinking alcohol and diet are lifestyle activities that are related A risk assessment that looks at the effects of smoking but does not control for alcohol consumption or diet may overestimate the risk of smoking 22 Smoking and confounding are reviewed in occupational risk assessments such as the safety of coal mining 23 When there is not a large sample population of non smokers or non drinkers in a particular occupation the risk assessment may be biased towards finding a negative effect on health Decreasing the potential for confounding EditA reduction in the potential for the occurrence and effect of confounding factors can be obtained by increasing the types and numbers of comparisons performed in an analysis If measures or manipulations of core constructs are confounded i e operational or procedural confounds exist subgroup analysis may not reveal problems in the analysis Additionally increasing the number of comparisons can create other problems see multiple comparisons Peer review is a process that can assist in reducing instances of confounding either before study implementation or after analysis has occurred Peer review relies on collective expertise within a discipline to identify potential weaknesses in study design and analysis including ways in which results may depend on confounding Similarly replication can test for the robustness of findings from one study under alternative study conditions or alternative analyses e g controlling for potential confounds not identified in the initial study Confounding effects may be less likely to occur and act similarly at multiple times and locations citation needed In selecting study sites the environment can be characterized in detail at the study sites to ensure sites are ecologically similar and therefore less likely to have confounding variables Lastly the relationship between the environmental variables that possibly confound the analysis and the measured parameters can be studied The information pertaining to environmental variables can then be used in site specific models to identify residual variance that may be due to real effects 24 Depending on the type of study design in place there are various ways to modify that design to actively exclude or control confounding variables 25 Case control studies assign confounders to both groups cases and controls equally For example if somebody wanted to study the cause of myocardial infarct and thinks that the age is a probable confounding variable each 67 year old infarct patient will be matched with a healthy 67 year old control person In case control studies matched variables most often are the age and sex Drawback Case control studies are feasible only when it is easy to find controls i e persons whose status vis a vis all known potential confounding factors is the same as that of the case s patient Suppose a case control study attempts to find the cause of a given disease in a person who is 1 45 years old 2 African American 3 from Alaska 4 an avid football player 5 vegetarian and 6 working in education A theoretically perfect control would be a person who in addition to not having the disease being investigated matches all these characteristics and has no diseases that the patient does not also have but finding such a control would be an enormous task Cohort studies A degree of matching is also possible and it is often done by only admitting certain age groups or a certain sex into the study population creating a cohort of people who share similar characteristics and thus all cohorts are comparable in regard to the possible confounding variable For example if age and sex are thought to be confounders only 40 to 50 years old males would be involved in a cohort study that would assess the myocardial infarct risk in cohorts that either are physically active or inactive Drawback In cohort studies the overexclusion of input data may lead researchers to define too narrowly the set of similarly situated persons for whom they claim the study to be useful such that other persons to whom the causal relationship does in fact apply may lose the opportunity to benefit from the study s recommendations Similarly over stratification of input data within a study may reduce the sample size in a given stratum to the point where generalizations drawn by observing the members of that stratum alone are not statistically significant Double blinding conceals from the trial population and the observers the experiment group membership of the participants By preventing the participants from knowing if they are receiving treatment or not the placebo effect should be the same for the control and treatment groups By preventing the observers from knowing of their membership there should be no bias from researchers treating the groups differently or from interpreting the outcomes differently Randomized controlled trial A method where the study population is divided randomly in order to mitigate the chances of self selection by participants or bias by the study designers Before the experiment begins the testers will assign the members of the participant pool to their groups control intervention parallel using a randomization process such as the use of a random number generator For example in a study on the effects of exercise the conclusions would be less valid if participants were given a choice if they wanted to belong to the control group which would not exercise or the intervention group which would be willing to take part in an exercise program The study would then capture other variables besides exercise such as pre experiment health levels and motivation to adopt healthy activities From the observer s side the experimenter may choose candidates who are more likely to show the results the study wants to see or may interpret subjective results more energetic positive attitude in a way favorable to their desires Stratification As in the example above physical activity is thought to be a behaviour that protects from myocardial infarct and age is assumed to be a possible confounder The data sampled is then stratified by age group this means that the association between activity and infarct would be analyzed per each age group If the different age groups or age strata yield much different risk ratios age must be viewed as a confounding variable There exist statistical tools among them Mantel Haenszel methods that account for stratification of data sets Controlling for confounding by measuring the known confounders and including them as covariates is multivariable analysis such as regression analysis Multivariate analyses reveal much less information about the strength or polarity of the confounding variable than do stratification methods For example if multivariate analysis controls for antidepressant and it does not stratify antidepressants for TCA and SSRI then it will ignore that these two classes of antidepressant have opposite effects on myocardial infarction and one is much stronger than the other All these methods have their drawbacks The best available defense against the possibility of spurious results due to confounding is often to dispense with efforts at stratification and instead conduct a randomized study of a sufficiently large sample taken as a whole such that all potential confounding variables known and unknown will be distributed by chance across all study groups and hence will be uncorrelated with the binary variable for inclusion exclusion in any group Ethical considerations In double blind and randomized controlled trials participants are not aware that they are recipients of sham treatments and may be denied effective treatments 26 There is a possibility that patients only agree to invasive surgery which carry real medical risks under the understanding that they are receiving treatment Although this is an ethical concern it is not a complete account of the situation For surgeries that are currently being performed regularly but for which there is no concrete evidence of a genuine effect there may be ethical issues to continue such surgeries In such circumstances many of people are exposed to the real risks of surgery yet these treatments may possibly offer no discernible benefit Sham surgery control is a method that may allow medical science to determine whether a surgical procedure is efficacious or not Given that there are known risks associated with medical operations it is questionably ethical to allow unverified surgeries to be conducted ad infinitum into the future Artifacts EditArtifacts are variables that should have been systematically varied either within or across studies but that were accidentally held constant Artifacts are thus threats to external validity Artifacts are factors that covary with the treatment and the outcome Campbell and Stanley 27 identify several artifacts The major threats to internal validity are history maturation testing instrumentation statistical regression selection experimental mortality and selection history interactions One way to minimize the influence of artifacts is to use a pretest posttest control group design Within this design groups of people who are initially equivalent at the pretest phase are randomly assigned to receive the experimental treatment or a control condition and then assessed again after this differential experience posttest phase 28 Thus any effects of artifacts are ideally equally distributed in participants in both the treatment and control conditions See also EditAnecdotal evidence Evidence relying on personal testimony Causal inference Branch of statistics concerned with inferring causal relationships between variables Epidemiological method Scientific method in the specific field Simpson s paradox Error in statistical reasoning with groups Omitted variable biasReferences Edit Pearl J 2009 Simpson s Paradox Confounding and Collapsibility In Causality Models Reasoning and Inference 2nd ed New York Cambridge University Press VanderWeele T J Shpitser I 2013 On the definition of a confounder Annals of Statistics 41 1 196 220 arXiv 1304 0564 doi 10 1214 12 aos1058 PMC 4276366 PMID 25544784 Greenland S Robins J M Pearl J 1999 Confounding and Collapsibility in Causal Inference Statistical Science 14 1 29 46 doi 10 1214 ss 1009211805 Shadish W R Cook T D Campbell D T 2002 Experimental and quasi experimental designs for generalized causal inference Boston MA Houghton Mifflin a b c d Pearl J 1993 Aspects of Graphical Models Connected With Causality In Proceedings of the 49th Session of the International Statistical Science Institute pp 391 401 a b Pearl J 2009 Causal Diagrams and the Identification of Causal Effects In Causality Models Reasoning and Inference 2nd ed New York NY USA Cambridge University Press Cinelli C Forney A Pearl J March 2022 A Crash Course in Good and Bad Controls PDF UCLA Cognitive Systems Laboratory Technical Report R 493 Lee P H 2014 Should We Adjust for a Confounder if Empirical and Theoretical Criteria Yield Contradictory Results A Simulation Study Sci Rep 4 6085 Bibcode 2014NatSR 4E6085L doi 10 1038 srep06085 PMC 5381407 PMID 25124526 Shpitser I Pearl J 2008 Complete identification methods for the causal hierarchy The Journal of Machine Learning Research 9 1941 1979 Morabia A 2011 History of the modern epidemiological concept of confounding PDF Journal of Epidemiology and Community Health 65 4 297 300 doi 10 1136 jech 2010 112565 PMID 20696848 S2CID 9068532 a b Greenland S Robins J M Pearl J 1999 Confounding and Collapsibility in Causal Inference Statistical Science 14 1 31 doi 10 1214 ss 1009211805 Fisher R A 1935 The design of experiments pp 114 145 Vandenbroucke J P 2004 The history of confounding Soz Praventivmed 47 4 216 224 doi 10 1007 BF01326402 PMID 12415925 S2CID 198174446 Kish L 1959 Some statistical problems in research design Am Sociol 26 3 328 338 doi 10 2307 2089381 JSTOR 2089381 Greenland S Robins J M 1986 Identifiability exchangeability and epidemiological confounding International Journal of Epidemiology 15 3 413 419 CiteSeerX 10 1 1 157 6445 doi 10 1093 ije 15 3 413 PMID 3771081 Neyman J with cooperation of K Iwaskiewics and St Kolodziejczyk 1935 Statistical problems in agricultural experimentation with discussion Suppl J Roy Statist Soc Ser B 2 107 180 Rubin D B 1974 Estimating causal effects of treatments in randomized and nonrandomized studies Journal of Educational Psychology 66 5 688 701 doi 10 1037 h0037350 S2CID 52832751 Pearl J 2009 Causality Models Reasoning and Inference 2nd ed New York NY USA Cambridge University Press Johnston S C 2001 Identifying Confounding by Indication through Blinded Prospective Review American Journal of Epidemiology 154 3 276 284 doi 10 1093 aje 154 3 276 PMID 11479193 a b Pelham Brett 2006 Conducting Research in Psychology Belmont Wadsworth ISBN 978 0 534 53294 9 Steg L Buunk A P Rothengatter T 2008 Chapter 4 Applied Social Psychology Understanding and managing social problems Cambridge UK Cambridge University Press Tjonneland Anne Gronbaek Morten Stripp Connie Overvad Kim January 1999 Wine intake and diet in a random sample of 48763 Danish men and women The American Journal of Clinical Nutrition 69 1 49 54 doi 10 1093 ajcn 69 1 49 PMID 9925122 Axelson O 1989 Confounding from smoking in occupational epidemiology British Journal of Industrial Medicine 46 8 505 07 doi 10 1136 oem 46 8 505 PMC 1009818 PMID 2673334 Calow Peter P 2009 Handbook of Environmental Risk Assessment and Management Wiley Mayrent Sherry L 1987 Epidemiology in Medicine Lippincott Williams amp Wilkins ISBN 978 0 316 35636 7 Emanuel Ezekiel J Miller Franklin G Sep 20 2001 The Ethics of Placebo Controlled Trials A Middle Ground New England Journal of Medicine 345 12 915 9 doi 10 1056 nejm200109203451211 PMID 11565527 Campbell D T Stanley J C 1966 Experimental and quasi experimental designs for research Chicago Rand McNally Crano W D Brewer M B 2002 Principles and methods of social research 2nd ed Mahwah NJ Lawrence Erlbaum Associates p 28 Further reading EditPearl J January 1998 Why there is no statistical test for confounding why many think there is and why they are almost right PDF UCLA Computer Science Department Technical Report R 256 Montgomery D C 2001 Blocking and Confounding in the 2 k displaystyle 2 k nbsp Factorial Design Design and Analysis of Experiments 5th ed Wiley pp 287 302 This textbook has an overview of confounding factors and how to account for them in design of experiments a href Template Cite book html title Template Cite book cite book a CS1 maint postscript link Brewer M B 2000 Research design and issues of validity In Reis H T Judd C M eds Handbook of Research New York Cambridge University Press pp 3 16 ISBN 9780521551281 Smith E R 2000 Research design In Reis H T Judd C M eds Handbook of research methods in social and personality psychology New York Cambridge University Press pp 17 39 ISBN 9780521551281 External links EditThese sites contain descriptions or examples of confounding variables Tutorial Confounding and Effect Measure Modification Boston University School of Public Health Linear Regression Yale University Tutorial by University of New England Retrieved from https en wikipedia org w index php title Confounding amp oldid 1171751776, wikipedia, wiki, book, books, library,

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