Modeling time‐varying effects with generalized and unsynchronized longitudinal data

Type: Article

Publication Date: 2013-01-18

Citations: 23

DOI: https://doi.org/10.1002/sim.5740

Abstract

We propose novel estimation approaches for generalized varying coefficient models that are tailored for unsynchronized, irregular and infrequent longitudinal designs/data. Unsynchronized longitudinal data refer to the time‐dependent response and covariate measurements for each individual measured at distinct time points. Data from the Comprehensive Dialysis Study motivate the proposed methods. We model the potential age‐varying association between infection‐related hospitalization status and the inflammatory marker, C‐reactive protein, within the first 2 years from initiation of dialysis. We cannot directly apply traditional longitudinal modeling to unsynchronized data, and no method exists to estimate time‐varying or age‐varying effects for generalized outcomes (e.g., binary or count data) to date. In addition, through the analysis of the Comprehensive Dialysis Study data and simulation studies, we show that preprocessing steps, such as binning, needed to synchronize data to apply traditional modeling can lead to significant loss of information in this context. In contrast, the proposed approaches discard no observation; they exploit the fact that although there is little information in a single subject trajectory because of irregularity and infrequency, the moments of the underlying processes can be accurately and efficiently recovered by pooling information from all subjects using functional data analysis. We derive subject‐specific mean response trajectory predictions and study finite sample properties of the estimators. Copyright © 2013 John Wiley & Sons, Ltd.

Locations

  • PubMed Central - View
  • Europe PMC (PubMed Central) - View - PDF
  • PubMed - View
  • Statistics in Medicine - View

Similar Works

Action Title Year Authors
+ PDF Chat Time-varying effect modeling with longitudinal data truncated by death: conditional models, interpretations, and inference 2015 Jason P. Estes
Danh V. Nguyen
Lorien S. Dalrymple
Yi Mu
Damla Şentürk
+ Time Dynamic Modeling and Inference Approaches for Outcomes in Patients on Dialysis 2015 Jason P. Estes
+ A Bayesian multilevel time‐varying framework for joint modeling of hospitalization and survival in patients on dialysis 2022 Esra Kürüm
Danh V. Nguyen
Sudipto Banerjee
Yihao Li
Connie M. Rhee
Damla Şentürk
+ PDF Chat Functional Varying Coefficient Models for Longitudinal Data 2010 Damla Şentürk
Hans‐Georg Müller
+ Raking and regression calibration: Methods to address bias from correlated covariate and time‐to‐event error 2020 Eric J. Oh
Bryan E. Shepherd
Thomas Lumley
Pamela A. Shaw
+ Raking and Regression Calibration: Methods to Address Bias from Correlated Covariate and Time-to-Event Error 2019 Eric J. Oh
Bryan E. Shepherd
Thomas Lumley
Pamela A. Shaw
+ Raking and Regression Calibration: Methods to Address Bias from Correlated Covariate and Time-to-Event Error 2019 Eric J. Oh
Bryan E. Shepherd
Thomas Lumley
Pamela A. Shaw
+ PDF Chat Cardiovascular event risk dynamics over time in older patients on dialysis: A generalized multiple‐index varying coefficient model approach 2014 Jason P. Estes
Danh V. Nguyen
Lorien S. Dalrymple
Yi Mu
Damla Şentürk
+ PDF Chat Causality for Complex Continuous-time Functional Longitudinal Studies with Dynamic Treatment Regimes 2024 Andrew Ying
+ PDF Chat Varying coefficient models for sparse noise-contaminated longitudinal data 2011 Damla Şentürk
Danh V. Nguyen
+ Evaluation of adaptive treatment strategies in an observational study where time-varying covariates are not monitored systematically 2018 Noémi Kreif
Oleg Sofrygin
Julie A. Schmittdiel
Alyce S. Adams
Richard W. Grant
Zheng Zhu
Mark van der Laan
Romain Neugebauer
+ PDF Chat Covariate-adjusted varying coefficient models 2005 Damla Şentürk
+ PDF Chat Irregular measurement times in estimating time-varying treatment effects: Categorizing biases and comparing adjustment methods 2025 Wouter M. R. Kant
Jesse H. Krijthe
+ Methods for Time-Varying Exposure – A Literature Review 2016 Marie Linder
Emese Vágó
Shahram Bahmanyar
B. Heeg
Daniel Myers
M Zhang
Morten Andersen
+ PDF Chat A varying‐coefficient model for the evaluation of time‐varying concomitant intervention effects in longitudinal studies 2008 Colin O. Wu
Xin Tian
Heejung Bang
+ PDF Chat Naive Hypothesis Testing for Case Series Analysis with Time‐Varying Exposure Onset Measurement Error: Inference for Infection‐Cardiovascular Risk in Patients on Dialysis 2013 Sandra M. Mohammed
Lorien S. Dalrymple
Damla Şentürk
Danh V. Nguyen
+ PDF Chat Causal models adjusting for time-varying confounding—a systematic review of the literature 2018 Philip Clare
Timothy Dobbins
Richard P. Mattick
+ A general framework for diagnosing confounding of time-varying and other joint exposures 2015 John W. Jackson
+ Additional file 2 of Comparison of a time-varying covariate model and a joint model of time-to-event outcomes in the presence of measurement error and interval censoring: application to kidney transplantation 2019 Kristen Campbell
Elizabeth Juarez‐Colunga
Gary K. Grunwald
D. James Cooper
Scott Davis
Jane Gralla
+ PDF Chat Discussion on “Time‐dynamic profiling with application to hospital readmission among patients on dialysis,” by Jason P. Estes, Danh V. Nguyen, Yanjun Chen, Lorien S. Dalrymple, Connie M. Rhee, Kamyar Kalantar‐Zadeh, and Damla Senturk 2018 John D. Kalbfleisch
Kevin He

Works That Cite This (19)

Action Title Year Authors
+ Asynchronous functional linear regression models for longitudinal data in reproducing kernel Hilbert space 2022 Ting Li
Huichen Zhu
Tengfei Li
Hongtu Zhu
+ Regression Analysis of Asynchronous Longitudinal Functional and Scalar Data 2020 Ting Li
Tengfei Li
Zhongyi Zhu
Hongtu Zhu
+ PDF Chat Geographically weighted temporally correlated logistic regression model 2018 Yang Liu
Kwok–Fai Lam
Joseph T. Wu
Tommy Tsan‐Yuk Lam
+ PDF Chat Time-Dynamic Profiling with Application to Hospital Readmission Among Patients on Dialysis 2018 Jason P. Estes
Danh V. Nguyen
Yanjun Chen
Lorien S. Dalrymple
Connie M. Rhee
Kamyar Kalantar‐Zadeh
Damla Şentürk
+ Time-Varying Coefficient Model Estimation Through Radial Basis Functions 2021 Juan Sosa
Lina Buitrago
+ PDF Chat A two-step estimation approach for logistic varying coefficient modeling of longitudinal data 2016 Jun Dong
Jason P. Estes
Gang Li
Damla Şentürk
+ PDF Chat Regression analysis of longitudinal data with mixed synchronous and asynchronous longitudinal covariates 2023 Zhuowei Sun
Hongyuan Cao
Li Chen
Jason P. Fine
+ A Bayesian two-stage regression approach of analysing longitudinal outcomes with endogeneity and incompleteness 2018 Prajamitra Bhuyan
Jayabrata Biswas
Pulak Ghosh
Kiranmoy Das
+ On last observation carried forward and asynchronous longitudinal regression analysis 2016 Hongyuan Cao
Jialiang Li
Jason P. Fine
+ Asynchronous and error‐prone longitudinal data analysis via functional calibration 2023 Xinyue Chang
Yehua Li
Yi Li