论文标题

图形注意力网络揭示了城市内和城市间健康差异的决定因素

Graph Attention Networks Unveil Determinants of Intra- and Inter-city Health Disparity

论文作者

Liu, Chenyue, Fan, Chao, Mostafavi, Ali

论文摘要

了解城市健康状况的基本差异的决定因素对于告知城市设计和规划以及公共卫生政策很重要。多种异构城市特征可以调节城市和不同城市不同社区中疾病的流行。这项研究研究了与社会人口统计学,人口活动,流动性以及建筑环境及其非线性相互作用有关的异质特征,以检查四种疾病类型的患病率的城市内和城市间差异:肥胖,糖尿病,癌症,癌症和心脏病。与人口活动,活动性和设施密度相关的特征是从大规模匿名移动性数据中获得的。这些特征用于训练和测试图形注意网络(GAT)模型,以捕获非线性特征相互作用以及邻里之间的空间相互依赖性。我们在五种疾病类型的五个城市中测试了这些模型。结果表明,GAT模型可以根据前五个决定性特征来预测社区中人们的健康状况。这些发现揭示了人口活动和建立环境的特征以及社会人口统计学特征在很大程度上区分了社区的健康状况,以至于GAT模型可以使用这些功能以高准确的方式预测健康状况。结果还表明,在一个城市训练的模型可以以很高的准确性来预测另一个城市的健康状况,从而使我们能够量化城市间的相似性和健康状况差异。该模型和发现为城市设计师,规划人员和公共卫生官员提供了新颖的方法和见解,以通过考虑重要的决定性特征及其互动来更好地理解和改善城市的健康差异。

Understanding the determinants underlying variations in urban health status is important for informing urban design and planning, as well as public health policies. Multiple heterogeneous urban features could modulate the prevalence of diseases across different neighborhoods in cities and across different cities. This study examines heterogeneous features related to socio-demographics, population activity, mobility, and the built environment and their non-linear interactions to examine intra- and inter-city disparity in prevalence of four disease types: obesity, diabetes, cancer, and heart disease. Features related to population activity, mobility, and facility density are obtained from large-scale anonymized mobility data. These features are used in training and testing graph attention network (GAT) models to capture non-linear feature interactions as well as spatial interdependence among neighborhoods. We tested the models in five U.S. cities across the four disease types. The results show that the GAT model can predict the health status of people in neighborhoods based on the top five determinant features. The findings unveil that population activity and built-environment features along with socio-demographic features differentiate the health status of neighborhoods to such a great extent that a GAT model could predict the health status using these features with high accuracy. The results also show that the model trained on one city can predict health status in another city with high accuracy, allowing us to quantify the inter-city similarity and discrepancy in health status. The model and findings provide novel approaches and insights for urban designers, planners, and public health officials to better understand and improve health disparities in cities by considering the significant determinant features and their interactions.

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