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Published in: Journal of Translational Medicine 1/2015

Open Access 01-12-2015 | Research

Analysis of multivariate longitudinal kidney function outcomes using generalized linear mixed models

Authors: Miran A Jaffa, Mulugeta Gebregziabher, Ayad A Jaffa

Published in: Journal of Translational Medicine | Issue 1/2015

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Abstract

Background

Renal transplant patients are mandated to have continuous assessment of their kidney function over time to monitor disease progression determined by changes in blood urea nitrogen (BUN), serum creatinine (Cr), and estimated glomerular filtration rate (eGFR). Multivariate analysis of these outcomes that aims at identifying the differential factors that affect disease progression is of great clinical significance. Thus our study aims at demonstrating the application of different joint modeling approaches with random coefficients on a cohort of renal transplant patients and presenting a comparison of their performance through a pseudo-simulation study. The objective of this comparison is to identify the model with best performance and to determine whether accuracy compensates for complexity in the different multivariate joint models.

Methods and results

We propose a novel application of multivariate Generalized Linear Mixed Models (mGLMM) to analyze multiple longitudinal kidney function outcomes collected over 3 years on a cohort of 110 renal transplantation patients. The correlated outcomes BUN, Cr, and eGFR and the effect of various covariates such patient’s gender, age and race on these markers was determined holistically using different mGLMMs. The performance of the various mGLMMs that encompass shared random intercept (SHRI), shared random intercept and slope (SHRIS), separate random intercept (SPRI) and separate random intercept and slope (SPRIS) was assessed to identify the one that has the best fit and most accurate estimates. A bootstrap pseudo-simulation study was conducted to gauge the tradeoff between the complexity and accuracy of the models. Accuracy was determined using two measures; the mean of the differences between the estimates of the bootstrapped datasets and the true beta obtained from the application of each model on the renal dataset, and the mean of the square of these differences. The results showed that SPRI provided most accurate estimates and did not exhibit any computational or convergence problem.

Conclusion

Higher accuracy was demonstrated when the level of complexity increased from shared random coefficient models to the separate random coefficient alternatives with SPRI showing to have the best fit and most accurate estimates.
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Literature
1.
go back to reference James GD, Seally JE, Alderman M, Ljungman S, Mueller FB, Pecker MS et al (1988) A longitudinal study of urinary creatinine and creatinine clearance in normal subjects. Race, sex and age differences. Am J Hypertens 1:124–131PubMedCrossRef James GD, Seally JE, Alderman M, Ljungman S, Mueller FB, Pecker MS et al (1988) A longitudinal study of urinary creatinine and creatinine clearance in normal subjects. Race, sex and age differences. Am J Hypertens 1:124–131PubMedCrossRef
2.
go back to reference Schrier RW (2008) Blood urea nitrogen and serum creatinine not married in heart failure. Circ Heart Fail 1:25–33CrossRef Schrier RW (2008) Blood urea nitrogen and serum creatinine not married in heart failure. Circ Heart Fail 1:25–33CrossRef
3.
go back to reference Froissart M, Rossert J, Jacquot C, Paillard M, Houillier P (2005) Predictive performance of the modification of diet in renal disease and Cockcroft-Gault equations for estimating renal function. J Am Soc Nephrol 16:763–773PubMedCrossRef Froissart M, Rossert J, Jacquot C, Paillard M, Houillier P (2005) Predictive performance of the modification of diet in renal disease and Cockcroft-Gault equations for estimating renal function. J Am Soc Nephrol 16:763–773PubMedCrossRef
4.
go back to reference Verhave JC, Fesler P, Ribstein J, du Cailar G, Mimran A (2005) Estimation of renal function in subjects with normal serum creatinine levels: influence of age and body mass index. Am J Kidney Dis 46:233–241PubMedCrossRef Verhave JC, Fesler P, Ribstein J, du Cailar G, Mimran A (2005) Estimation of renal function in subjects with normal serum creatinine levels: influence of age and body mass index. Am J Kidney Dis 46:233–241PubMedCrossRef
5.
go back to reference Cirillo M, Anastasio P, De Santo NG (2005) Relationship of gender, age, and body mass index to errors in predicted kidney function. Nephrol Dial Transplant 20:1791–1798PubMedCrossRef Cirillo M, Anastasio P, De Santo NG (2005) Relationship of gender, age, and body mass index to errors in predicted kidney function. Nephrol Dial Transplant 20:1791–1798PubMedCrossRef
6.
go back to reference Sammel M, Lin X, Ryan L (1999) Multivariate linear mixed models for multiple outcomes. Stat Med 18:2479–2492PubMedCrossRef Sammel M, Lin X, Ryan L (1999) Multivariate linear mixed models for multiple outcomes. Stat Med 18:2479–2492PubMedCrossRef
7.
8.
go back to reference He B, Luo S (2013) Joint modeling of multivariate longitudinal measurements and survival data with applications to Parkinson’s disease. Stat Methods Med Res (In Press Published on line first on April 16, 2013) He B, Luo S (2013) Joint modeling of multivariate longitudinal measurements and survival data with applications to Parkinson’s disease. Stat Methods Med Res (In Press Published on line first on April 16, 2013)
9.
go back to reference Adams R, Wilson M, Wu M (1997) Multilevel item response models: an approach to errors in variables regression. J Educ Behav Stat 22(1):47–76CrossRef Adams R, Wilson M, Wu M (1997) Multilevel item response models: an approach to errors in variables regression. J Educ Behav Stat 22(1):47–76CrossRef
10.
go back to reference Andersen E (2004) Latent regression analysis based on the rating scale model. Psychol Sci 46:209–226 Andersen E (2004) Latent regression analysis based on the rating scale model. Psychol Sci 46:209–226
11.
go back to reference Christensen K, Bjorner J, Kreiner S, Petersen J (2004) Latent regression in loglinear Rasch models. Commun Stat Theory Methods 33(6):1295–1313CrossRef Christensen K, Bjorner J, Kreiner S, Petersen J (2004) Latent regression in loglinear Rasch models. Commun Stat Theory Methods 33(6):1295–1313CrossRef
12.
go back to reference Mislevy R (1985) Estimation of latent group effects. J Am Stat Assoc 80:993–997CrossRef Mislevy R (1985) Estimation of latent group effects. J Am Stat Assoc 80:993–997CrossRef
13.
go back to reference Zwinderman A (1991) A generalized Rasch model for manifest predictors. Psychometrika 56(4):589–600CrossRef Zwinderman A (1991) A generalized Rasch model for manifest predictors. Psychometrika 56(4):589–600CrossRef
14.
go back to reference Maier K (2001) A Rasch hierarchical measurement model. J Educ Behav Stat 26(3):307–330CrossRef Maier K (2001) A Rasch hierarchical measurement model. J Educ Behav Stat 26(3):307–330CrossRef
15.
go back to reference Kamata A (2001) Item analysis by the hierarchical generalized linear model. J Educ Meas 38(1):79–93CrossRef Kamata A (2001) Item analysis by the hierarchical generalized linear model. J Educ Meas 38(1):79–93CrossRef
16.
go back to reference Fox J (2005) Multilevel IRT using dichotomous and polytomous response data. Br J Math Stat Psychol 58(1):145–172PubMedCrossRef Fox J (2005) Multilevel IRT using dichotomous and polytomous response data. Br J Math Stat Psychol 58(1):145–172PubMedCrossRef
17.
go back to reference Pinheiro J, Liu C, Wu Y (2001) Efficient algorithms for robust estimation in linear mixed-effects models using the multivariate t distribution. J Comput Graph Stat 10(2):249–276CrossRef Pinheiro J, Liu C, Wu Y (2001) Efficient algorithms for robust estimation in linear mixed-effects models using the multivariate t distribution. J Comput Graph Stat 10(2):249–276CrossRef
18.
go back to reference Fieuws S, Verbeke G (2004) Joint modeling of multivariate longitudinal profiles: pitfalls of the random effect approach. Stat Med 23:3093–3104PubMedCrossRef Fieuws S, Verbeke G (2004) Joint modeling of multivariate longitudinal profiles: pitfalls of the random effect approach. Stat Med 23:3093–3104PubMedCrossRef
19.
go back to reference Fieuws S, Verbeke G, Molenberghs G (2007) Random-effects models for multivariate repeated measures. Stat Methods Med Res 16(5):387–397PubMedCrossRef Fieuws S, Verbeke G, Molenberghs G (2007) Random-effects models for multivariate repeated measures. Stat Methods Med Res 16(5):387–397PubMedCrossRef
20.
go back to reference Bandyopadhyay S, Ganguli B, Chatterjee A (2011) A review of multivariate longitudinal data analysis. Stat Methods Med Res 20(4):299–330PubMedCrossRef Bandyopadhyay S, Ganguli B, Chatterjee A (2011) A review of multivariate longitudinal data analysis. Stat Methods Med Res 20(4):299–330PubMedCrossRef
21.
go back to reference Lachos V, Bandyopadhyay D, Dey D (2011) Linear and nonlinear mixed-effects models for censored HIV viral loads using normal/independent distributions. Biometrics 67:1594–1604PubMedCrossRef Lachos V, Bandyopadhyay D, Dey D (2011) Linear and nonlinear mixed-effects models for censored HIV viral loads using normal/independent distributions. Biometrics 67:1594–1604PubMedCrossRef
22.
go back to reference Gebregziabher M, Zhao Y, Dismuke CE, Axon N, Hunt KJ, Egede LE (2013) Joint modeling of multiple longitudinal cost outcomes using multivariate generalized linear mixed models. Health Serv Outcomes Res Method 13:39–57CrossRef Gebregziabher M, Zhao Y, Dismuke CE, Axon N, Hunt KJ, Egede LE (2013) Joint modeling of multiple longitudinal cost outcomes using multivariate generalized linear mixed models. Health Serv Outcomes Res Method 13:39–57CrossRef
23.
go back to reference Zeier M, Dohler B, Oplez G, Ritz E (2002) The effect of donor gender on graft failure. J Am Soc Nephrol 13:2570–2576PubMedCrossRef Zeier M, Dohler B, Oplez G, Ritz E (2002) The effect of donor gender on graft failure. J Am Soc Nephrol 13:2570–2576PubMedCrossRef
24.
go back to reference Kasiske BL, Umen JA (1986) The influence of age, sex, race and body habitus on kidney weight in humans. Arch Pathol Lab Med 110:55–60PubMed Kasiske BL, Umen JA (1986) The influence of age, sex, race and body habitus on kidney weight in humans. Arch Pathol Lab Med 110:55–60PubMed
25.
go back to reference Brenner BM, Cohen RA, Milford EL (1992) In renal transplantation, one size may not fit all. J Am Soc Nephrol 3:162–169PubMed Brenner BM, Cohen RA, Milford EL (1992) In renal transplantation, one size may not fit all. J Am Soc Nephrol 3:162–169PubMed
26.
go back to reference Jaffa MA, Woolson RF, Lipsitz SR (2011) Slope estimation for bivariate longitudinal outcomes adjusting for informative right censoring by using a discrete survival model: application to the renal transplant cohort. J Royal Stat Soc A 174:387–402CrossRef Jaffa MA, Woolson RF, Lipsitz SR (2011) Slope estimation for bivariate longitudinal outcomes adjusting for informative right censoring by using a discrete survival model: application to the renal transplant cohort. J Royal Stat Soc A 174:387–402CrossRef
27.
go back to reference EDIC Research Group (1999) Epidemiology of diabetes interventions and complications (EDIC): design, implementation and preliminary results of long-term follow up of diabetes control and complications trial cohort. Diabetes Care 22:99–111CrossRef EDIC Research Group (1999) Epidemiology of diabetes interventions and complications (EDIC): design, implementation and preliminary results of long-term follow up of diabetes control and complications trial cohort. Diabetes Care 22:99–111CrossRef
28.
go back to reference The DCCT Research Group (1986) The diabetes control and complications trial (DCCT): design and methodologic considerations for the feasibility phase. Diabetes 35:530–545CrossRef The DCCT Research Group (1986) The diabetes control and complications trial (DCCT): design and methodologic considerations for the feasibility phase. Diabetes 35:530–545CrossRef
Metadata
Title
Analysis of multivariate longitudinal kidney function outcomes using generalized linear mixed models
Authors
Miran A Jaffa
Mulugeta Gebregziabher
Ayad A Jaffa
Publication date
01-12-2015
Publisher
BioMed Central
Published in
Journal of Translational Medicine / Issue 1/2015
Electronic ISSN: 1479-5876
DOI
https://doi.org/10.1186/s12967-015-0557-2

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