Towards a personalized health care using a divisive hierarchical clustering approach for comorbidity and the prediction of conditioned group risks

Health Informatics J. 2023 Oct-Dec;29(4):14604582231212494. doi: 10.1177/14604582231212494.

Abstract

The objective was to assess risk of hospitalization and mortality of comorbidities using divisive hierarchical risk clustering to advice clinical interventions. Subjects and Methods: Data from the EHR of a general population, 3799885 adults, followed by 5 years. Model were performed using Spark and Scikit-learn and accuracy for the models was analyzed. Results: The number of models generated depends in part on the number of chronic diseases included (ex testing a sample of six diseases, a total number of 397 models for all-cause mortality and 431 models for hospitalization). The estimated models offered an ordered selection for the relevant clinical variables and their estimated risk as a group and for the individual patient in the group. Accuracy was assessed according to age, sex and the cardinality of the comorbid groups. A mobile version and dashboard were developed. Conclusion: The software developed stratified hospital admission and mortality risk in clusters of chronic diseases, and for a given patient, it could advise intensifying treatment or reallocating the patient risk.

Keywords: artificial intelligence; comorbidities; conditioned group risks prediction; digital health; hierarchical clustering approach; machine learning; personalized health.

MeSH terms

  • Adult
  • Chronic Disease
  • Cluster Analysis
  • Comorbidity
  • Delivery of Health Care*
  • Hospitalization*
  • Humans