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Repeated measures design

Repeated measures design is a research design that involves multiple measures of the same variable taken on the same or matched subjects either under different conditions or over two or more time periods.[1] For instance, repeated measurements are collected in a longitudinal study in which change over time is assessed.

Crossover studies edit

A popular repeated-measures design is the crossover study. A crossover study is a longitudinal study in which subjects receive a sequence of different treatments (or exposures). While crossover studies can be observational studies, many important crossover studies are controlled experiments. Crossover designs are common for experiments in many scientific disciplines, for example psychology, education, pharmaceutical science, and health care, especially medicine.

Randomized, controlled, crossover experiments are especially important in health care. In a randomized clinical trial, the subjects are randomly assigned treatments. When such a trial is a repeated measures design, the subjects are randomly assigned to a sequence of treatments. A crossover clinical trial is a repeated-measures design in which each patient is randomly assigned to a sequence of treatments, including at least two treatments (of which one may be a standard treatment or a placebo): Thus each patient crosses over from one treatment to another.

Nearly all crossover designs have "balance", which means that all subjects should receive the same number of treatments and that all subjects participate for the same number of periods. In most crossover trials, each subject receives all treatments.

However, many repeated-measures designs are not crossovers: the longitudinal study of the sequential effects of repeated treatments need not use any "crossover", for example (Vonesh & Chinchilli; Jones & Kenward).

Uses edit

  • Limited number of participants—The repeated measure design reduces the variance of estimates of treatment-effects, allowing statistical inference to be made with fewer subjects.[2]
  • Efficiency—Repeated measure designs allow many experiments to be completed more quickly, as fewer groups need to be trained to complete an entire experiment. For example, experiments in which each condition takes only a few minutes, whereas the training to complete the tasks take as much, if not more time.
  • Longitudinal analysis—Repeated measure designs allow researchers to monitor how participants change over time, both long- and short-term situations.

Order effects edit

Order effects may occur when a participant in an experiment is able to perform a task and then perform it again. Examples of order effects include performance improvement or decline in performance, which may be due to learning effects, boredom or fatigue. The impact of order effects may be smaller in long-term longitudinal studies or by counterbalancing using a crossover design.

Counterbalancing edit

In this technique, two groups each perform the same tasks or experience the same conditions, but in reverse order. With two tasks or conditions, four groups are formed.

Counterbalancing
Task/Condition Task/Condition Remarks
Group A
1
2
Group A performs Task/Condition 1 first, then Task/Condition 2
Group B
2
1
Group B performs Task/Condition 2 first, then Task/Condition 1

Counterbalancing attempts to take account of two important sources of systematic variation in this type of design: practice and boredom effects. Both might otherwise lead to different performance of participants due to familiarity with or tiredness to the treatments.

Limitations edit

It may not be possible for each participant to be in all conditions of the experiment (i.e. time constraints, location of experiment, etc.). Severely diseased subjects tend to drop out of longitudinal studies, potentially biasing the results. In these cases mixed effects models would be preferable as they can deal with missing values.

Mean regression may affect conditions with significant repetitions. Maturation may affect studies that extend over time. Events outside the experiment may change the response between repetitions.

Repeated measures ANOVA edit

 
This figure is an example of a repeated measures design that could be analyzed using a rANOVA (repeated measures ANOVA). The independent variable is the time (Levels: Time 1, Time 2, Time 3, Time 4) that someone took the measure, and the dependent variable is the happiness measure score. Example participant happiness scores are provided for 3 participants for each time or level of the independent variable.

Repeated measures analysis of variance (rANOVA) is a commonly used statistical approach to repeated measure designs.[3] With such designs, the repeated-measure factor (the qualitative independent variable) is the within-subjects factor, while the dependent quantitative variable on which each participant is measured is the dependent variable.

Partitioning of error edit

One of the greatest advantages to rANOVA, as is the case with repeated measures designs in general, is the ability to partition out variability due to individual differences. Consider the general structure of the F-statistic:

F = MSTreatment / MSError = (SSTreatment/dfTreatment)/(SSError/dfError)

In a between-subjects design there is an element of variance due to individual difference that is combined with the treatment and error terms:

SSTotal = SSTreatment + SSError
dfTotal = n − 1

In a repeated measures design it is possible to partition subject variability from the treatment and error terms. In such a case, variability can be broken down into between-treatments variability (or within-subjects effects, excluding individual differences) and within-treatments variability. The within-treatments variability can be further partitioned into between-subjects variability (individual differences) and error (excluding the individual differences):[4]

SSTotal = SSTreatment (excluding individual difference) + SSSubjects + SSError
dfTotal = dfTreatment (within subjects) + dfbetween subjects + dferror = (k − 1) + (n − 1) + ((nk)(n − 1))

In reference to the general structure of the F-statistic, it is clear that by partitioning out the between-subjects variability, the F-value will increase because the sum of squares error term will be smaller resulting in a smaller MSError. It is noteworthy that partitioning variability reduces degrees of freedom from the F-test, therefore the between-subjects variability must be significant enough to offset the loss in degrees of freedom. If between-subjects variability is small this process may actually reduce the F-value.[4]

Assumptions edit

As with all statistical analyses, specific assumptions should be met to justify the use of this test. Violations can moderately to severely affect results and often lead to an inflation of type 1 error. With the rANOVA, standard univariate and multivariate assumptions apply.[5] The univariate assumptions are:

  • Normality—For each level of the within-subjects factor, the dependent variable must have a normal distribution.
  • Sphericity—Difference scores computed between two levels of a within-subjects factor must have the same variance for the comparison of any two levels. (This assumption only applies if there are more than 2 levels of the independent variable.)
  • Randomness—Cases should be derived from a random sample, and scores from different participants should be independent of each other.

The rANOVA also requires that certain multivariate assumptions be met, because a multivariate test is conducted on difference scores. These assumptions include:

  • Multivariate normality—The difference scores are multivariately normally distributed in the population.
  • Randomness—Individual cases should be derived from a random sample, and the difference scores for each participant are independent from those of another participant.

F test edit

As with other analysis of variance tests, the rANOVA makes use of an F statistic to determine significance. Depending on the number of within-subjects factors and assumption violations, it is necessary to select the most appropriate of three tests:[5]

  • Standard Univariate ANOVA F test—This test is commonly used given only two levels of the within-subjects factor (i.e. time point 1 and time point 2). This test is not recommended given more than 2 levels of the within-subjects factor because the assumption of sphericity is commonly violated in such cases.
  • Alternative Univariate test[6]—These tests account for violations to the assumption of sphericity, and can be used when the within-subjects factor exceeds 2 levels. The F statistic is the same as in the Standard Univariate ANOVA F test, but is associated with a more accurate p-value. This correction is done by adjusting the degrees of freedom downward for determining the critical F value. Two corrections are commonly used: the Greenhouse–Geisser correction and the Huynh–Feldt correction. The Greenhouse–Geisser correction is more conservative, but addresses a common issue of increasing variability over time in a repeated-measures design.[7] The Huynh–Feldt correction is less conservative, but does not address issues of increasing variability. It has been suggested that lower Huynh–Feldt be used with smaller departures from sphericity, while Greenhouse–Geisser be used when the departures are large.
  • Multivariate Test—This test does not assume sphericity, but is also highly conservative.

Effect size edit

One of the most commonly reported effect size statistics for rANOVA is partial eta-squared (ηp2). It is also common to use the multivariate η2 when the assumption of sphericity has been violated, and the multivariate test statistic is reported. A third effect size statistic that is reported is the generalized η2, which is comparable to ηp2 in a one-way repeated measures ANOVA. It has been shown to be a better estimate of effect size with other within-subjects tests.[8][9]

Cautions edit

rANOVA is not always the best statistical analysis for repeated measure designs. The rANOVA is vulnerable to effects from missing values, imputation, unequivalent time points between subjects and violations of sphericity.[3] These issues can result in sampling bias and inflated rates of Type I error.[10] In such cases it may be better to consider use of a linear mixed model.[11]

See also edit

Notes edit

  1. ^ Kraska; Marie (2010), "Repeated Measures Design", Encyclopedia of Research Design, California, USA: SAGE Publications, Inc., doi:10.4135/9781412961288.n378, ISBN 978-1-4129-6127-1, S2CID 149337088
  2. ^ Barret, Julia R. (2013). "Particulate Matter and Cardiovascular Disease: Researchers Turn an Eye toward Microvascular Changes". Environmental Health Perspectives. 121 (9): a282. doi:10.1289/ehp.121-A282. PMC 3764084. PMID 24004855.
  3. ^ a b Gueorguieva; Krystal (2004). "Move Over ANOVA". Arch Gen Psychiatry. 61 (3): 310–7. doi:10.1001/archpsyc.61.3.310. PMID 14993119.
  4. ^ a b Howell, David C. (2010). Statistical methods for psychology (7th ed.). Belmont, CA: Thomson Wadsworth. ISBN 978-0-495-59784-1.
  5. ^ a b Salkind, Samuel B. Green, Neil J. (2011). Using SPSS for Windows and Macintosh : analyzing and understanding data (6th ed.). Boston: Prentice Hall. ISBN 978-0-205-02040-9.{{cite book}}: CS1 maint: multiple names: authors list (link)
  6. ^ Vasey; Thayer (1987). "The Continuing Problem of False Positives in Repeated Measures ANOVA in Psychophysiology: A Multivariate Solution". Psychophysiology. 24 (4): 479–486. doi:10.1111/j.1469-8986.1987.tb00324.x. PMID 3615759.
  7. ^ Park (1993). "A comparison of the generalized estimating equation approach with the maximum likelihood approach for repeated measurements". Stat Med. 12 (18): 1723–1732. doi:10.1002/sim.4780121807. PMID 8248664.
  8. ^ Bakeman (2005). "Recommended effect size statistics for repeated measures designs". Behavior Research Methods. 37 (3): 379–384. doi:10.3758/bf03192707. PMID 16405133.
  9. ^ Olejnik; Algina (2003). "Generalized eta and omega squared statistics: Measures of effect size for some common research designs". Psychological Methods. 8 (4): 434–447. doi:10.1037/1082-989x.8.4.434. PMID 14664681. S2CID 6931663.
  10. ^ Muller; Barton (1989). "Approximate Power for Repeated-Measures ANOVA lacking sphericity". Journal of the American Statistical Association. 84 (406): 549–555. doi:10.1080/01621459.1989.10478802.
  11. ^ Kreuger; Tian (2004). "A comparison of the general linear mixed model and repeated measures ANOVA using a dataset with multiple missing data points". Biological Research for Nursing. 6 (2): 151–157. doi:10.1177/1099800404267682. PMID 15388912. S2CID 23173349.

References edit

Design and analysis of experiments edit

  • Jones, Byron; Kenward, Michael G. (2003). Design and Analysis of Cross-Over Trials (Second ed.). London: Chapman and Hall.
  • Vonesh, Edward F. & Chinchilli, Vernon G. (1997). Linear and Nonlinear Models for the Analysis of Repeated Measurements. London: Chapman and Hall.

Exploration of longitudinal data edit

  • Davidian, Marie; David M. Giltinan (1995). Nonlinear Models for Repeated Measurement Data. Chapman & Hall/CRC Monographs on Statistics & Applied Probability. ISBN 978-0-412-98341-2.
  • Fitzmaurice, Garrett; Davidian, Marie; Verbeke, Geert; Molenberghs, Geert, eds. (2008). Longitudinal Data Analysis. Boca Raton, Florida: Chapman and Hall/CRC. ISBN 978-1-58488-658-7.
  • Jones, Byron; Kenward, Michael G. (2003). Design and Analysis of Cross-Over Trials (Second ed.). London: Chapman and Hall.
  • Kim, Kevin & Timm, Neil (2007). ""Restricted MGLM and growth curve model" (Chapter 7)". Univariate and multivariate general linear models: Theory and applications with SAS (with 1 CD-ROM for Windows and UNIX). Statistics: Textbooks and Monographs (Second ed.). Boca Raton, Florida: Chapman & Hall/CRC. ISBN 978-1-58488-634-1.
  • Kollo, Tõnu & von Rosen, Dietrich (2005). ""Multivariate linear models" (chapter 4), especially "The Growth curve model and extensions" (Chapter 4.1)". Advanced multivariate statistics with matrices. Mathematics and its applications. Vol. 579. New York: Springer. ISBN 978-1-4020-3418-3.
  • Kshirsagar, Anant M. & Smith, William Boyce (1995). Growth curves. Statistics: Textbooks and Monographs. Vol. 145. New York: Marcel Dekker, Inc. ISBN 0-8247-9341-2.
  • Pan, Jian-Xin & Fang, Kai-Tai (2002). Growth curve models and statistical diagnostics. Springer Series in Statistics. New York: Springer-Verlag. ISBN 0-387-95053-2.
  • Seber, G. A. F. & Wild, C. J. (1989). ""Growth models (Chapter 7)"". Nonlinear regression. Wiley Series in Probability and Mathematical Statistics: Probability and Mathematical Statistics. New York: John Wiley & Sons, Inc. pp. 325–367. ISBN 0-471-61760-1.
  • Timm, Neil H. (2002). ""The general MANOVA model (GMANOVA)" (Chapter 3.6.d)". Applied multivariate analysis. Springer Texts in Statistics. New York: Springer-Verlag. ISBN 0-387-95347-7.
  • Vonesh, Edward F. & Chinchilli, Vernon G. (1997). Linear and Nonlinear Models for the Analysis of Repeated Measurements. London: Chapman and Hall. (Comprehensive treatment of theory and practice)
  • Conaway, M. (1999, October 11). Repeated Measures Design. Retrieved February 18, 2008, from http://biostat.mc.vanderbilt.edu/twiki/pub/Main/ClinStat/repmeas.PDF
  • Minke, A. (1997, January). Conducting Repeated Measures Analyses: Experimental Design Considerations. Retrieved February 18, 2008, from Ericae.net: http://ericae.net/ft/tamu/Rm.htm
  • Shaughnessy, J. J. (2006). Research Methods in Psychology. New York: McGraw-Hill.

External links edit

  • Examples of all ANOVA and ANCOVA models with up to three treatment factors, including randomized block, split plot, repeated measures, and Latin squares, and their analysis in R (University of Southampton)

repeated, measures, design, also, longitudinal, study, panel, study, article, lead, section, need, rewritten, please, help, improve, lead, read, lead, layout, guide, august, 2017, learn, when, remove, this, template, message, research, design, that, involves, . See also longitudinal study and panel study The article s lead section may need to be rewritten Please help improve the lead and read the lead layout guide August 2017 Learn how and when to remove this template message Repeated measures design is a research design that involves multiple measures of the same variable taken on the same or matched subjects either under different conditions or over two or more time periods 1 For instance repeated measurements are collected in a longitudinal study in which change over time is assessed Contents 1 Crossover studies 2 Uses 3 Order effects 4 Counterbalancing 5 Limitations 6 Repeated measures ANOVA 6 1 Partitioning of error 6 2 Assumptions 6 3 F test 6 4 Effect size 6 5 Cautions 7 See also 8 Notes 9 References 9 1 Design and analysis of experiments 9 2 Exploration of longitudinal data 10 External linksCrossover studies editMain article Crossover study A popular repeated measures design is the crossover study A crossover study is a longitudinal study in which subjects receive a sequence of different treatments or exposures While crossover studies can be observational studies many important crossover studies are controlled experiments Crossover designs are common for experiments in many scientific disciplines for example psychology education pharmaceutical science and health care especially medicine Randomized controlled crossover experiments are especially important in health care In a randomized clinical trial the subjects are randomly assigned treatments When such a trial is a repeated measures design the subjects are randomly assigned to a sequence of treatments A crossover clinical trial is a repeated measures design in which each patient is randomly assigned to a sequence of treatments including at least two treatments of which one may be a standard treatment or a placebo Thus each patient crosses over from one treatment to another Nearly all crossover designs have balance which means that all subjects should receive the same number of treatments and that all subjects participate for the same number of periods In most crossover trials each subject receives all treatments However many repeated measures designs are not crossovers the longitudinal study of the sequential effects of repeated treatments need not use any crossover for example Vonesh amp Chinchilli Jones amp Kenward Uses editLimited number of participants The repeated measure design reduces the variance of estimates of treatment effects allowing statistical inference to be made with fewer subjects 2 Efficiency Repeated measure designs allow many experiments to be completed more quickly as fewer groups need to be trained to complete an entire experiment For example experiments in which each condition takes only a few minutes whereas the training to complete the tasks take as much if not more time Longitudinal analysis Repeated measure designs allow researchers to monitor how participants change over time both long and short term situations Order effects editOrder effects may occur when a participant in an experiment is able to perform a task and then perform it again Examples of order effects include performance improvement or decline in performance which may be due to learning effects boredom or fatigue The impact of order effects may be smaller in long term longitudinal studies or by counterbalancing using a crossover design Counterbalancing editIn this technique two groups each perform the same tasks or experience the same conditions but in reverse order With two tasks or conditions four groups are formed Counterbalancing Task Condition Task Condition RemarksGroup A 1 2 Group A performs Task Condition 1 first then Task Condition 2Group B 2 1 Group B performs Task Condition 2 first then Task Condition 1Counterbalancing attempts to take account of two important sources of systematic variation in this type of design practice and boredom effects Both might otherwise lead to different performance of participants due to familiarity with or tiredness to the treatments Limitations editIt may not be possible for each participant to be in all conditions of the experiment i e time constraints location of experiment etc Severely diseased subjects tend to drop out of longitudinal studies potentially biasing the results In these cases mixed effects models would be preferable as they can deal with missing values Mean regression may affect conditions with significant repetitions Maturation may affect studies that extend over time Events outside the experiment may change the response between repetitions Repeated measures ANOVA editMain article ANOVA nbsp This figure is an example of a repeated measures design that could be analyzed using a rANOVA repeated measures ANOVA The independent variable is the time Levels Time 1 Time 2 Time 3 Time 4 that someone took the measure and the dependent variable is the happiness measure score Example participant happiness scores are provided for 3 participants for each time or level of the independent variable Repeated measures analysis of variance rANOVA is a commonly used statistical approach to repeated measure designs 3 With such designs the repeated measure factor the qualitative independent variable is the within subjects factor while the dependent quantitative variable on which each participant is measured is the dependent variable Partitioning of error edit One of the greatest advantages to rANOVA as is the case with repeated measures designs in general is the ability to partition out variability due to individual differences Consider the general structure of the F statistic F MSTreatment MSError SSTreatment dfTreatment SSError dfError In a between subjects design there is an element of variance due to individual difference that is combined with the treatment and error terms SSTotal SSTreatment SSErrordfTotal n 1In a repeated measures design it is possible to partition subject variability from the treatment and error terms In such a case variability can be broken down into between treatments variability or within subjects effects excluding individual differences and within treatments variability The within treatments variability can be further partitioned into between subjects variability individual differences and error excluding the individual differences 4 SSTotal SSTreatment excluding individual difference SSSubjects SSErrordfTotal dfTreatment within subjects dfbetween subjects dferror k 1 n 1 n k n 1 In reference to the general structure of the F statistic it is clear that by partitioning out the between subjects variability the F value will increase because the sum of squares error term will be smaller resulting in a smaller MSError It is noteworthy that partitioning variability reduces degrees of freedom from the F test therefore the between subjects variability must be significant enough to offset the loss in degrees of freedom If between subjects variability is small this process may actually reduce the F value 4 Assumptions edit As with all statistical analyses specific assumptions should be met to justify the use of this test Violations can moderately to severely affect results and often lead to an inflation of type 1 error With the rANOVA standard univariate and multivariate assumptions apply 5 The univariate assumptions are Normality For each level of the within subjects factor the dependent variable must have a normal distribution Sphericity Difference scores computed between two levels of a within subjects factor must have the same variance for the comparison of any two levels This assumption only applies if there are more than 2 levels of the independent variable Randomness Cases should be derived from a random sample and scores from different participants should be independent of each other The rANOVA also requires that certain multivariate assumptions be met because a multivariate test is conducted on difference scores These assumptions include Multivariate normality The difference scores are multivariately normally distributed in the population Randomness Individual cases should be derived from a random sample and the difference scores for each participant are independent from those of another participant F test edit As with other analysis of variance tests the rANOVA makes use of an F statistic to determine significance Depending on the number of within subjects factors and assumption violations it is necessary to select the most appropriate of three tests 5 Standard Univariate ANOVA F test This test is commonly used given only two levels of the within subjects factor i e time point 1 and time point 2 This test is not recommended given more than 2 levels of the within subjects factor because the assumption of sphericity is commonly violated in such cases Alternative Univariate test 6 These tests account for violations to the assumption of sphericity and can be used when the within subjects factor exceeds 2 levels The F statistic is the same as in the Standard Univariate ANOVA F test but is associated with a more accurate p value This correction is done by adjusting the degrees of freedom downward for determining the critical F value Two corrections are commonly used the Greenhouse Geisser correction and the Huynh Feldt correction The Greenhouse Geisser correction is more conservative but addresses a common issue of increasing variability over time in a repeated measures design 7 The Huynh Feldt correction is less conservative but does not address issues of increasing variability It has been suggested that lower Huynh Feldt be used with smaller departures from sphericity while Greenhouse Geisser be used when the departures are large Multivariate Test This test does not assume sphericity but is also highly conservative Effect size edit One of the most commonly reported effect size statistics for rANOVA is partial eta squared hp2 It is also common to use the multivariate h2 when the assumption of sphericity has been violated and the multivariate test statistic is reported A third effect size statistic that is reported is the generalized h2 which is comparable to hp2 in a one way repeated measures ANOVA It has been shown to be a better estimate of effect size with other within subjects tests 8 9 Cautions edit rANOVA is not always the best statistical analysis for repeated measure designs The rANOVA is vulnerable to effects from missing values imputation unequivalent time points between subjects and violations of sphericity 3 These issues can result in sampling bias and inflated rates of Type I error 10 In such cases it may be better to consider use of a linear mixed model 11 See also editAnalysis of variance Clinical trial protocol Crossover study Design of experiments Expected mean squares Glossary of experimental design Longitudinal study Growth curve Missing data Mixed models Multivariate analysis Observational study Optimal design Panel analysis Panel data Panel study Randomization Randomized controlled trial Sequence Statistical inference Treatment effect PseudoreplicationNotes edit Kraska Marie 2010 Repeated Measures Design Encyclopedia of Research Design California USA SAGE Publications Inc doi 10 4135 9781412961288 n378 ISBN 978 1 4129 6127 1 S2CID 149337088 Barret Julia R 2013 Particulate Matter and Cardiovascular Disease Researchers Turn an Eye toward Microvascular Changes Environmental Health Perspectives 121 9 a282 doi 10 1289 ehp 121 A282 PMC 3764084 PMID 24004855 a b Gueorguieva Krystal 2004 Move Over ANOVA Arch Gen Psychiatry 61 3 310 7 doi 10 1001 archpsyc 61 3 310 PMID 14993119 a b Howell David C 2010 Statistical methods for psychology 7th ed Belmont CA Thomson Wadsworth ISBN 978 0 495 59784 1 a b Salkind Samuel B Green Neil J 2011 Using SPSS for Windows and Macintosh analyzing and understanding data 6th ed Boston Prentice Hall ISBN 978 0 205 02040 9 a href Template Cite book html title Template Cite book cite book a CS1 maint multiple names authors list link Vasey Thayer 1987 The Continuing Problem of False Positives in Repeated Measures ANOVA in Psychophysiology A Multivariate Solution Psychophysiology 24 4 479 486 doi 10 1111 j 1469 8986 1987 tb00324 x PMID 3615759 Park 1993 A comparison of the generalized estimating equation approach with the maximum likelihood approach for repeated measurements Stat Med 12 18 1723 1732 doi 10 1002 sim 4780121807 PMID 8248664 Bakeman 2005 Recommended effect size statistics for repeated measures designs Behavior Research Methods 37 3 379 384 doi 10 3758 bf03192707 PMID 16405133 Olejnik Algina 2003 Generalized eta and omega squared statistics Measures of effect size for some common research designs Psychological Methods 8 4 434 447 doi 10 1037 1082 989x 8 4 434 PMID 14664681 S2CID 6931663 Muller Barton 1989 Approximate Power for Repeated Measures ANOVA lacking sphericity Journal of the American Statistical Association 84 406 549 555 doi 10 1080 01621459 1989 10478802 Kreuger Tian 2004 A comparison of the general linear mixed model and repeated measures ANOVA using a dataset with multiple missing data points Biological Research for Nursing 6 2 151 157 doi 10 1177 1099800404267682 PMID 15388912 S2CID 23173349 References editDesign and analysis of experiments edit Jones Byron Kenward Michael G 2003 Design and Analysis of Cross Over Trials Second ed London Chapman and Hall Vonesh Edward F amp Chinchilli Vernon G 1997 Linear and Nonlinear Models for the Analysis of Repeated Measurements London Chapman and Hall Exploration of longitudinal data edit Davidian Marie David M Giltinan 1995 Nonlinear Models for Repeated Measurement Data Chapman amp Hall CRC Monographs on Statistics amp Applied Probability ISBN 978 0 412 98341 2 Fitzmaurice Garrett Davidian Marie Verbeke Geert Molenberghs Geert eds 2008 Longitudinal Data Analysis Boca Raton Florida Chapman and Hall CRC ISBN 978 1 58488 658 7 Jones Byron Kenward Michael G 2003 Design and Analysis of Cross Over Trials Second ed London Chapman and Hall Kim Kevin amp Timm Neil 2007 Restricted MGLM and growth curve model Chapter 7 Univariate and multivariate general linear models Theory and applications with SAS with 1 CD ROM for Windows and UNIX Statistics Textbooks and Monographs Second ed Boca Raton Florida Chapman amp Hall CRC ISBN 978 1 58488 634 1 Kollo Tonu amp von Rosen Dietrich 2005 Multivariate linear models chapter 4 especially The Growth curve model and extensions Chapter 4 1 Advanced multivariate statistics with matrices Mathematics and its applications Vol 579 New York Springer ISBN 978 1 4020 3418 3 Kshirsagar Anant M amp Smith William Boyce 1995 Growth curves Statistics Textbooks and Monographs Vol 145 New York Marcel Dekker Inc ISBN 0 8247 9341 2 Pan Jian Xin amp Fang Kai Tai 2002 Growth curve models and statistical diagnostics Springer Series in Statistics New York Springer Verlag ISBN 0 387 95053 2 Seber G A F amp Wild C J 1989 Growth models Chapter 7 Nonlinear regression Wiley Series in Probability and Mathematical Statistics Probability and Mathematical Statistics New York John Wiley amp Sons Inc pp 325 367 ISBN 0 471 61760 1 Timm Neil H 2002 The general MANOVA model GMANOVA Chapter 3 6 d Applied multivariate analysis Springer Texts in Statistics New York Springer Verlag ISBN 0 387 95347 7 Vonesh Edward F amp Chinchilli Vernon G 1997 Linear and Nonlinear Models for the Analysis of Repeated Measurements London Chapman and Hall Comprehensive treatment of theory and practice Conaway M 1999 October 11 Repeated Measures Design Retrieved February 18 2008 from http biostat mc vanderbilt edu twiki pub Main ClinStat repmeas PDF Minke A 1997 January Conducting Repeated Measures Analyses Experimental Design Considerations Retrieved February 18 2008 from Ericae net http ericae net ft tamu Rm htm Shaughnessy J J 2006 Research Methods in Psychology New York McGraw Hill External links editExamples of all ANOVA and ANCOVA models with up to three treatment factors including randomized block split plot repeated measures and Latin squares and their analysis in R University of Southampton Retrieved from https en wikipedia org w index php title Repeated measures design amp oldid 1198789483, wikipedia, wiki, book, books, library,

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