Volume 29, Issue 5
Research Article

Joint modeling of longitudinal ordinal data and competing risks survival times and analysis of the NINDS rt‐PA stroke trial

Ning Li

Corresponding Author

E-mail address: nli@phhp.ufl.edu

Department of Epidemiology and Biostatistics, College of Public Health and Health Professions, University of Florida, Gainesville, FL, U.S.A.

Department of Epidemiology and Biostatistics, College of Public Health and Health Professions, University of Florida, P.O. Box 100231, Gainesville, FL 32610‐0231, U.S.A.Search for more papers by this author
Robert M. Elashoff

Department of Biostatistics, School of Public Health, University of California at Los Angeles, Los Angeles, CA, U.S.A.

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Gang Li

Department of Biostatistics, School of Public Health, University of California at Los Angeles, Los Angeles, CA, U.S.A.

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Jeffrey Saver

Department of Neurology, David Geffen School of Medicine, University of California at Los Angeles, Los Angeles, CA, U.S.A.

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First published: 09 February 2010
Citations: 18

Abstract

Existing joint models for longitudinal and survival data are not applicable for longitudinal ordinal outcomes with possible non‐ignorable missing values caused by multiple reasons. We propose a joint model for longitudinal ordinal measurements and competing risks failure time data, in which a partial proportional odds model for the longitudinal ordinal outcome is linked to the event times by latent random variables. At the survival endpoint, our model adopts the competing risks framework to model multiple failure types at the same time. The partial proportional odds model, as an extension of the popular proportional odds model for ordinal outcomes, is more flexible and at the same time provides a tool to test the proportional odds assumption. We use a likelihood approach and derive an EM algorithm to obtain the maximum likelihood estimates of the parameters. We further show that all the parameters at the survival endpoint are identifiable from the data. Our joint model enables one to make inference for both the longitudinal ordinal outcome and the failure times simultaneously. In addition, the inference at the longitudinal endpoint is adjusted for possible non‐ignorable missing data caused by the failure times. We apply the method to the NINDS rt‐PA stroke trial. Our study considers the modified Rankin Scale only. Other ordinal outcomes in the trial, such as the Barthel and Glasgow scales, can be treated in the same way. Copyright © 2009 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 18

  • Bayesian joint modeling of ordinal longitudinal measurements and competing risks survival data for analysing Tehran Lipid and Glucose Study, Journal of Biopharmaceutical Statistics, 10.1080/10543406.2020.1730876, (1-15), (2020).
  • A comparison of joint models for longitudinal and competing risks data, with application to an epilepsy drug randomized controlled trial, Journal of the Royal Statistical Society: Series A (Statistics in Society), 10.1111/rssa.12348, 181, 4, (1105-1123), (2018).
  • Dynamic prediction of mortality among patients in intensive care using the sequential organ failure assessment (SOFA) score: a joint competing risk survival and longitudinal modeling approach, Statistica Neerlandica, 10.1111/stan.12114, 72, 1, (34-47), (2017).
  • A semiparametric joint model for terminal trend of quality of life and survival in palliative care research, Statistics in Medicine, 10.1002/sim.7445, 36, 29, (4692-4704), (2017).
  • Joint longitudinal data analysis in detecting determinants of CD4 cell count change and adherence to highly active antiretroviral therapy at Felege Hiwot Teaching and Specialized Hospital, North-west Ethiopia (Amhara Region), AIDS Research and Therapy, 10.1186/s12981-017-0141-3, 14, 1, (2017).
  • Analyzing mHealth Engagement: Joint Models for Intensively Collected User Engagement Data, JMIR mHealth and uHealth, 10.2196/mhealth.6474, 5, 1, (e1), (2017).
  • Bayesian joint modeling for assessing the progression of chronic kidney disease in children, Statistical Methods in Medical Research, 10.1177/0962280216628560, 27, 1, (298-311), (2016).
  • Simulated maximum likelihood estimation in joint models for multiple longitudinal markers and recurrent events of multiple types, in the presence of a terminal event, Journal of Applied Statistics, 10.1080/02664763.2016.1262336, 44, 15, (2756-2777), (2016).
  • Bayesian joint ordinal and survival modeling for breast cancer risk assessment, Statistics in Medicine, 10.1002/sim.7065, 35, 28, (5267-5282), (2016).
  • Joint Modeling of Survival and Longitudinal Ordered Data Using a Semiparametric Approach, Australian & New Zealand Journal of Statistics, 10.1111/anzs.12153, 58, 2, (153-172), (2016).
  • Conduct of Stroke-Related Clinical Trials, Stroke, 10.1016/B978-0-323-29544-4.00063-3, (1030-1041), (2016).
  • Joint modeling of repeated multivariate cognitive measures and competing risks of dementia and death: a latent process and latent class approach, Statistics in Medicine, 10.1002/sim.6731, 35, 3, (382-398), (2015).
  • A joint model for repeated events of different types and multiple longitudinal outcomes with application to a follow‐up study of patients after kidney transplant, Biometrical Journal, 10.1002/bimj.201300167, 57, 2, (185-200), (2014).
  • Joint modeling of two longitudinal outcomes and competing risk data, Statistics in Medicine, 10.1002/sim.6158, 33, 18, (3167-3178), (2014).
  • Regression analysis of ordinal stroke clinical trial outcomes: An application to the NINDS t‐PA trial, International Journal of Stroke, 10.1111/ijs.12052, 9, 2, (226-231), (2013).
  • Exploration of time‐course combinations of outcome scales for use in a global test of stroke recovery, International Journal of Stroke, 10.1111/ijs.12131, 9, 6, (755-758), (2013).
  • Joint modeling quality of life and survival using a terminal decline model in palliative care studies, Statistics in Medicine, 10.1002/sim.5635, 32, 8, (1394-1406), (2012).
  • Joint analysis of bivariate longitudinal ordinal outcomes and competing risks survival times with nonparametric distributions for random effects, Statistics in Medicine, 10.1002/sim.4507, 31, 16, (1707-1721), (2012).

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