A segmentation approach to patient health intervention
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There has been an increasing interest in considering models that try to predict which patients will be readmitted to hospitals, or, if not yet having been a hospital patient, which patients will need hospitalization. One major reason for this is to optimize the intervention process, thereby saving billions of health-care dollars. In this article, we use patient-data from a large healthcare organization and attempt different segmentation models to identify patients who are most at risk for hospitalization. One of these models uses multiple linear regression to provide a prediction of a patient’s subsequent year’s hospitalization, and examines the variables that are significant in the prediction process. Two subsequent segmentations use logistic-regression to explore (1) how well we can discriminate between those who will be hospitalized and those who will not be hospitalized, and (2) those who will be hospitalized for a “lengthy stay” (≥15 days) vs. those who will not be hospitalized. We adopt an approach ...
[1] Amanda H. Salanitro,et al. Risk prediction models for hospital readmission: a systematic review. , 2011, JAMA.