Dynamic Prediction for Hospital Readmission in Patients with Chronic Heart Failure
Rebecca Farina, Francois Mercier, Christian Wohlfart, Serge Masson, Silvia Metelli

TL;DR
This study develops a Bayesian joint modeling framework using longitudinal NT-proBNP data to dynamically predict hospital readmission or death in heart failure patients, outperforming static models.
Contribution
It introduces a novel joint model that links biomarker trajectories to risk, enhancing dynamic prediction accuracy in heart failure management.
Findings
Joint model outperforms static models in prediction accuracy.
Frequent NT-proBNP measurements improve model performance.
Model shows excellent calibration and reliability.
Abstract
Hospital readmission among patients with chronic heart failure (HF) is a major clinical and economic burden. Dynamic prediction models that leverage longitudinal biomarkers may improve risk stratification over traditional static models. This study aims to develop and validate a joint model using longitudinal N-terminal pro-B-type natriuretic peptide (NT-proBNP) measurements to predict the risk of rehospitalization or death in HF patients. We analyzed real-world data from the TriNetX database, including patients with an incident HF diagnosis between 2016 and 2022. The final selected cohort included 1,804 patients. A Bayesian joint modeling framework was developed to link patient-specific NT-proBNP trajectories to the risk of a composite endpoint (HF rehospitalization or all-cause mortality) within a 180-day window following hospital discharge. The model's performance was evaluated…
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Taxonomy
TopicsHeart Failure Treatment and Management · Machine Learning in Healthcare · Cardiovascular Function and Risk Factors
