Leveraging environmental information for enhanced prediction of cardiac readmissions

  • Yuejing Zhai
  • , Yiping Li
  • , Lihua He
  • , Xin Li
  • , Wuman Luo

Research output: Contribution to journalArticlepeer-review

Abstract

Accurately predicting readmission risk for heart failure patients is a hot topic in the field of survival analysis and healthcare. Current models show room for improvement. This study aims to explore the ability of environmental data to improve prediction accuracy. We conducted a retrospective analysis, integrating environmental factors with clinical data. Experiments show that our combined model achieved a 37% higher C-index than the best baseline. Further tests confirmed that adding any single environmental feature consistently boosted the performance of all baseline models. In addition, environmental data alone have clear limitations. Models using only these variables performed significantly worse than those incorporating clinical features. This indicates that environmental factors are powerful supplements, not replacements, for established clinical predictors. In conclusion, our findings provide strong evidence that environmental information serves as a valuable and complementary tool, significantly improving the accuracy of heart failure readmission-risk prediction when used alongside clinical data.

Original languageEnglish
Article number114104
JournaliScience
Volume28
Issue number12
DOIs
Publication statusPublished - 19 Dec 2025

Keywords

  • Cardiovascular medicine
  • Machine learning

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