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Optimal information networks: Application for data-driven integrated health in populations

机译:最佳信息网络:人口中数据驱动的综合健康的应用

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Development of composite indicators for integrated health in populations typically relies on a priori assumptions rather than model-free, data-driven evidence. Traditional variable selection processes tend not to consider relatedness and redundancy among variables, instead considering only individual correlations. In addition, a unified method for assessing integrated health statuses of populations is lacking, making systematic comparison among populations impossible. We propose the use of maximum entropy networks (MENets) that use transfer entropy to assess interrelatedness among selected variables considered for inclusion in a composite indicator. We also define optimal information networks (OINs) that are scale-invariant MENets, which use the information in constructed networks for optimal decision-making. Health outcome data from multiple cities in the United States are applied to this method to create a systemic health indicator, representing integrated health in a city.
机译:人口综合健康综合指标的开发通常基于先验假设,而不是基于无模型,数据驱动的证据。传统的变量选择过程往往不考虑变量之间的相关性和冗余性,而仅考虑单个相关性。另外,缺乏用于评估人群综合健康状况的统一方法,从而无法进行人群之间的系统比较。我们建议使用最大熵网络(MENets),该网络使用传递熵来评估考虑纳入复合指标的选定变量之间的相互关系。我们还定义了最佳信息网络(OIN),它们是尺度不变的MENet,它使用构造网络中的信息进行最佳决策。将来自美国多个城市的健康结果数据应用于此方法,以创建系统的健康指标,代表一个城市的综合健康状况。

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