Bayesian analysis of longitudinal dyadic data with informative missing data using a dyadic shared-parameter model

Jaeil Ahn, Satoshi Morita, Wenyi Wang, Ying Yuan

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Analyzing longitudinal dyadic data is a challenging task due to the complicated correlations from repeated measurements and within-dyad interdependence, as well as potentially informative (or non-ignorable) missing data. We propose a dyadic shared-parameter model to analyze longitudinal dyadic data with ordinal outcomes and informative intermittent missing data and dropouts. We model the longitudinal measurement process using a proportional odds model, which accommodates the within-dyad interdependence using the concept of the actor-partner interdependence effects, as well as dyad-specific random effects. We model informative dropouts and intermittent missing data using a transition model, which shares the same set of random effects as the longitudinal measurement model. We evaluate the performance of the proposed method through extensive simulation studies. As our approach relies on some untestable assumptions on the missing data mechanism, we perform sensitivity analyses to evaluate how the analysis results change when the missing data mechanism is misspecified. We demonstrate our method using a longitudinal dyadic study of metastatic breast cancer.

Original languageEnglish (US)
Pages (from-to)70-83
Number of pages14
JournalStatistical Methods in Medical Research
Volume28
Issue number1
DOIs
StatePublished - Jan 1 2019

Keywords

  • Dyadic
  • intermittent missing
  • longitudinal study
  • non-ignorable missingness
  • sensitivity analysis
  • shared-parameter

ASJC Scopus subject areas

  • Epidemiology
  • Statistics and Probability
  • Health Information Management

MD Anderson CCSG core facilities

  • Bioinformatics Shared Resource
  • Biostatistics Resource Group

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