Bayesian two-stage modeling of longitudinal and time-to-event data with an integrated fractional Brownian motion covariance structure

Author:

Palipana Anushka1ORCID,Song Seongho2,Gupta Nishant34,Szczesniak Rhonda567ORCID

Affiliation:

1. Duke University School of Nursing , Durham, NC 27710 , United States

2. Department of Mathematical Sciences, University of Cincinnati , Cincinnati, OH 45221, United States

3. Division of Pulmonary Critical Care and Sleep Medicine, University of Cincinnati , Cincinnati, OH 45221, United States

4. Medical Service, Veterans Affairs Medical Center , Cincinnati, OH 45220 , United States

5. Division of Biostatistics and Epidemiology, Cincinnati Children’s Hospital Medical Center , Cincinnati, OH 45229, United States

6. Division of Pulmonary Medicine, Cincinnati Children’s Hospital Medical Center , Cincinnati, OH 45229, United States

7. Department of Pediatrics, University of Cincinnati , Cincinnati, OH 45221, United States

Abstract

ABSTRACT It is difficult to characterize complex variations of biological processes, often longitudinally measured using biomarkers that yield noisy data. While joint modeling with a longitudinal submodel for the biomarker measurements and a survival submodel for assessing the hazard of events can alleviate measurement error issues, the continuous longitudinal submodel often uses random intercepts and slopes to estimate both between- and within-patient heterogeneity in biomarker trajectories. To overcome longitudinal submodel challenges, we replace random slopes with scaled integrated fractional Brownian motion (IFBM). As a more generalized version of integrated Brownian motion, IFBM reasonably depicts noisily measured biological processes. From this longitudinal IFBM model, we derive novel target functions to monitor the risk of rapid disease progression as real-time predictive probabilities. Predicted biomarker values from the IFBM submodel are used as inputs in a Cox submodel to estimate event hazard. This two-stage approach to fit the submodels is performed via Bayesian posterior computation and inference. We use the proposed approach to predict dynamic lung disease progression and mortality in women with a rare disease called lymphangioleiomyomatosis who were followed in a national patient registry. We compare our approach to those using integrated Ornstein-Uhlenbeck or conventional random intercepts-and-slopes terms for the longitudinal submodel. In the comparative analysis, the IFBM model consistently demonstrated superior predictive performance.

Funder

National Institutes of Health

National Heart, Lung, and Blood Institute

Publisher

Oxford University Press (OUP)

Reference32 articles.

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