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Event Prediction in Healthcare Analytics: Beyond Prediction Accuracy

机译:医疗保健分析中的事件预测:超出预测准确性

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During the recent few years, the United States healthcare industry is under unprecedented pressure to improve outcome and reduce cost. Many healthcare organizations are leveraging healthcare analytics, especially predictive analytics in moving towards these goals and bringing better value to the patients. While many existing event prediction models provide helpful predictions in terms of accuracy, their use are typically limited to prioritizing individual patients for care management at fixed time points. In this paper we explore Enhanced Modeling approaches around two important aspects: (1) model interpretability; (2) flexible prediction window. Better interpretability of the model will guide us towards more effective intervention design. Flexible prediction window can provide a higher resolution picture of patients' risks of adverse events over time, and thereby enable timely interventions. We illustrate interpretation and insights from our Bayesian Hierarchical Model for readmission prediction, and demonstrate flexible prediction window with Random Survival Forests model for prediction of future emergency department visits.
机译:在最近几年中,美国医疗保健行业承受着前所未有的压力,要求改善结果并降低成本。许多医疗保健组织正在利用医疗保健分析,尤其是预测分析,以实现这些目标并为患者带来更好的价值。尽管许多现有的事件预测模型就准确性提供了有用的预测,但它们的使用通常仅限于在固定时间点对各个患者进行护理管理。在本文中,我们围绕两个重要方面探讨了增强建模方法:(1)模型的可解释性; (2)灵活的预测窗口。该模型更好的可解释性将指导我们进行更有效的干预设计。灵活的预测窗口可以提供随着时间推移患者发生不良事件的风险的更高分辨率图片,从而可以及时进行干预。我们从贝叶斯层次模型中为再入院预测说明了解释和见解,并通过随机生存森林模型演示了灵活的预测窗口,可用于预测未来的急诊科就诊。

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