Litcius/Paper detail

Reflection on modern methods: shared-parameter models for longitudinal studies with missing data

Michael Griswold, Rajesh Talluri, Xiaoqian Zhu, Dan Su, Jonathan V. Tingle, Rebecca F. Gottesman, Jennifer A. Deal, Andreea M. Rawlings, Thomas H. Mosley, B. Gwen Windham, Karen Bandeen‐Roche

2021International Journal of Epidemiology14 citationsDOIOpen Access PDF

Abstract

A primary goal of longitudinal studies is to examine trends over time. Reported results from these studies often depend on strong, unverifiable assumptions about the missing data. Whereas the risk of substantial bias from missing data is widely known, analyses exploring missing-data influences are commonly done either ad hoc or not at all. This article outlines one of the three primary recognized approaches for examining missing-data effects that could be more widely used, i.e. the shared-parameter model (SPM), and explains its purpose, use, limitations and extensions. We additionally provide synthetic data and reproducible research code for running SPMs in SAS, Stata and R programming languages to facilitate their use in practice and for teaching purposes in epidemiology, biostatistics, data science and related fields. Our goals are to increase understanding and use of these methods by providing introductions to the concepts and access to helpful tools.

Topics & Concepts

Missing dataBiostatisticsComputer scienceData scienceLongitudinal dataReflection (computer programming)Post hocCode (set theory)Data miningEconometricsMachine learningEpidemiologyMedicineProgramming languageMathematicsInternal medicineSet (abstract data type)DentistryStatistical Methods and Bayesian InferenceMeta-analysis and systematic reviewsAdvanced Causal Inference Techniques