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Predictive Modeling in Health Plans

机译:健康计划中的预测模型

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Predictive modeling in healthcare has been gaining more interest and utilization in recent years. The tools fordoing this have become more sophisticated with increasingly higher accuracy, We present a case study of how artificial intelligence (AI) can be used for a high quality predictive modeling process, and how this process is used to improve the quality and efficiency of healthcare. In this case study, MEDai, Inc. provides the analytical tools for the predictive modeling, and Sentara Healthcare uses these predictions to determine which members can be helped the most by actively looking for ways to prevent future severe outcomes. Most predictive methodologies implement rule-based systems or regression techniques. There are many pitfalls of these techniques when applied to medical data, where many variables and many interactive variable combinations exist necessitating modeling with AI. When comparing the R2 statistic (the commonly accepted measurement of how accurate a predictive model is) of traditional techniques versus AI techniques, the resulting accuracy more than doubles. The cited publications show a range of raw R~2 values from 0.10 to 0.15. In contrast, the R~2 value obtained from AI techniques implemented at Sentara is 0.34. Once the predictions are generated, data are displayed and analytical programs utilized for data mining and analysis. With this tool, it is possible to examine sub-groups of the data, or data mine to the member level. Risk factors can be determined and individual members/member groups can be analyzed to help make the decisions of what changes can be made to improve the level of medical care that people receive.
机译:近年来,医疗保健中的预测模型越来越引起人们的关注和利用。执行此操作的工具已经变得越来越复杂,并且精度越来越高。我们提供了一个案例研究,说明如何将人工智能(AI)用于高质量的预测建模过程,以及如何使用该过程来提高医疗保健的质量和效率。在此案例研究中,MEDai,Inc.提供了用于预测建模的分析工具,Sentara Healthcare使用这些预测来确定哪些成员可以通过积极寻找预防未来严重后果的方法获得最大帮助。大多数预测方法论都基于规则的系统或回归技术。当将这些技术应用于医学数据时,存在许多陷阱,其中存在许多变量和许多交互变量组合,因此需要使用AI进行建模。当将传统技术与AI技术的R2统计量(预测模型的准确性是公认的度量)进行比较时,所得的准确性将增加一倍以上。引用的出版物显示了原始R〜2值范围从0.10到0.15。相反,从Sentara实施的AI技术获得的R〜2值为0.34。生成预测后,将显示数据,并将分析程序用于数据挖掘和分析。使用此工具,可以检查数据的子组,或检查数据挖掘到成员级别。可以确定风险因素并可以分析单个成员/成员组,以帮助做出可以进行哪些更改以提高人们所接受的医疗水平的决定。

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