Reducing Hospital Readmission Risk Using Predictive Analytics

Arti Mann, Ben Cleveland, Dan Bumblauskas, Shashidhar Kaparthi
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Abstract

This study highlights the development and application of a predictive analytics system in a Midwestern hospital to assess and manage the risk of patient readmissions within 30 days of discharge. By integrating advanced analytical modeling with electronic health records, the system enables the creation of personalized care plans by accurately predicting patients' readmission risks and the optimal timing for interventions. The results suggest that such models can significantly improve resource allocation and the personalization of care plans, thereby reducing unnecessary readmissions and aligning with value-based, patient-centered healthcare goals.
利用预测分析降低再住院风险
本研究重点介绍了中西部一家医院开发和应用预测分析系统,以评估和管理患者出院后 30 天内再入院的风险。通过将先进的分析模型与电子健康记录相结合,该系统能够准确预测患者的再入院风险和最佳干预时机,从而制定个性化的护理计划。研究结果表明,这种模型可以显著改善资源分配和护理计划的个性化,从而减少不必要的再入院情况,并符合以价值为基础、以患者为中心的医疗保健目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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