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Predictive Modeling for Wellness and Chronic Conditions

机译:健康和慢性条件的预测模型

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There is a significant increase in attention being paid to personal wellness as a preventative strategy in healthcare. At the same time, chronic diseases are the major cause of mortality, accounting for 7 out of 10 deaths in the United States. Healthcare costs involved in managing chronic diseases are also very high. So there is a need to help better maintain individual wellness, as well as better manage chronic conditions. Predictive analytics based clinical decision support systems need to be developed to help individuals and healthcare providers to better manage wellness or chronic conditions. In this paper, we investigate two different classifiers to predict the wellness outcome and the occurrence of a chronic condition (diabetes). The models were evaluated on the basis of overall accuracy, root mean squared error and Area under ROC. National CDC-NHANES data that is based on the health and nutritional status of individuals in the United States is used to develop the models.
机译:在医疗保健中的预防策略中,关注个人健康的注意力显着增加。 与此同时,慢性病是死亡的主要原因,在美国的10例死亡中占7例。 管理慢性病的医疗保健费用也非常高。 因此,需要帮助更好地保持个体健康,并更好地管理慢性病。 需要制定基于预测分析的临床决策支持系统,以帮助个人和医疗保健提供者更好地管理健康或慢性病。 在本文中,我们研究了两种不同的分类剂,以预测健康结果和慢性病的发生(糖尿病)。 基于总体精度,Roc下的根均匀误差和面积评估模型。 国家CDC-NHANES基于美国的个人健康和营养状况的数据用于开发模型。

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