论文标题
卫星图像中确定的寿命相关几何形状:人行道,车道和远足径
Longevity Associated Geometry Identified in Satellite Images: Sidewalks, Driveways and Hiking Trails
论文作者
论文摘要
重要性:随着一个世纪的增长,美国的预期寿命已停滞不前,并且在近几十年来开始下降。使用卫星图像和街道视图图像先前的工作证明了建筑环境与收入,教育,获得护理和健康因素(例如肥胖)的关联。但是,缺乏对全美国的学术图像特征关系与原油死亡率变化的评估。 目的:使用卫星图像调查美国县级死亡率的预测。 设计:用Google静态地图应用程序编程接口提取卫星图像,该界面的430个县约占美国人口的68.9%。卷积神经网络在2015年使用每个县的原始死亡率进行了培训,以预测死亡率。使用Shapley添加特征解释来解释学习的图像特征,并将其与死亡率及其相关的协变量预测变量进行了比较。 主要结果和措施:使用卫星图像预测县死亡率。 结果:在持有的县中,卫星图像的预测死亡率与真正的原油死亡率密切相关(Pearson R = 0.72)。学习的图像特征是聚集的,我们确定了与教育,收入,地理区域,种族和年龄相关的10个集群。 结论和相关性:深度学习技术在建筑环境的远程特征上的应用可以作为美国死亡率的有用预测指标。能够识别与健康相关结果相关的图像功能的工具可以为有针对性的公共卫生干预提供信息。
Importance: Following a century of increase, life expectancy in the United States has stagnated and begun to decline in recent decades. Using satellite images and street view images prior work has demonstrated associations of the built environment with income, education, access to care and health factors such as obesity. However, assessment of learned image feature relationships with variation in crude mortality rate across the United States has been lacking. Objective: Investigate prediction of county-level mortality rates in the U.S. using satellite images. Design: Satellite images were extracted with the Google Static Maps application programming interface for 430 counties representing approximately 68.9% of the US population. A convolutional neural network was trained using crude mortality rates for each county in 2015 to predict mortality. Learned image features were interpreted using Shapley Additive Feature Explanations, clustered, and compared to mortality and its associated covariate predictors. Main Outcomes and Measures: County mortality was predicted using satellite images. Results: Predicted mortality from satellite images in a held-out test set of counties was strongly correlated to the true crude mortality rate (Pearson r=0.72). Learned image features were clustered, and we identified 10 clusters that were associated with education, income, geographical region, race and age. Conclusion and Relevance: The application of deep learning techniques to remotely-sensed features of the built environment can serve as a useful predictor of mortality in the United States. Tools that are able to identify image features associated with health-related outcomes can inform targeted public health interventions.