XY.ai, Cambridge, MA, United States.
JMIR Public Health Surveill. 2021 Aug 26;7(8):e26604. doi: 10.2196/26604.
Although it is well-known that older individuals with certain comorbidities are at the highest risk for complications related to COVID-19 including hospitalization and death, we lack tools to identify communities at the highest risk with fine-grained spatial resolution. Information collected at a county level obscures local risk and complex interactions between clinical comorbidities, the built environment, population factors, and other social determinants of health.
This study aims to develop a COVID-19 community risk score that summarizes complex disease prevalence together with age and sex, and compares the score to different social determinants of health indicators and built environment measures derived from satellite images using deep learning.
We developed a robust COVID-19 community risk score (COVID-19 risk score) that summarizes the complex disease co-occurrences (using data for 2019) for individual census tracts with unsupervised learning, selected on the basis of their association with risk for COVID-19 complications such as death. We mapped the COVID-19 risk score to corresponding zip codes in New York City and associated the score with COVID-19-related death. We further modeled the variance of the COVID-19 risk score using satellite imagery and social determinants of health.
Using 2019 chronic disease data, the COVID-19 risk score described 85% of the variation in the co-occurrence of 15 diseases and health behaviors that are risk factors for COVID-19 complications among ~28,000 census tract neighborhoods (median population size of tracts 4091). The COVID-19 risk score was associated with a 40% greater risk for COVID-19-related death across New York City (April and September 2020) for a 1 SD change in the score (risk ratio for 1 SD change in COVID-19 risk score 1.4; P<.001) at the zip code level. Satellite imagery coupled with social determinants of health explain nearly 90% of the variance in the COVID-19 risk score in the United States in census tracts (r=0.87).
The COVID-19 risk score localizes risk at the census tract level and was able to predict COVID-19-related mortality in New York City. The built environment explained significant variations in the score, suggesting risk models could be enhanced with satellite imagery.
尽管众所周知,某些合并症的老年患者患 COVID-19 相关并发症(包括住院和死亡)的风险最高,但我们缺乏工具来以精细的空间分辨率识别风险最高的社区。在县一级收集的信息掩盖了当地风险以及临床合并症、建筑环境、人口因素和其他健康社会决定因素之间的复杂相互作用。
本研究旨在开发一种 COVID-19 社区风险评分,该评分综合了复杂疾病的流行率以及年龄和性别,并使用深度学习比较了该评分与来自卫星图像的不同健康社会决定因素指标和建筑环境测量值。
我们开发了一种稳健的 COVID-19 社区风险评分(COVID-19 风险评分),该评分使用 2019 年的无监督学习对各个普查区的复杂疾病共现情况进行了总结,选择的依据是它们与 COVID-19 并发症(如死亡)风险的关联。我们将 COVID-19 风险评分映射到纽约市的相应邮政编码,并将评分与 COVID-19 相关的死亡相关联。我们进一步使用卫星图像和健康社会决定因素对 COVID-19 风险评分的方差进行建模。
使用 2019 年的慢性疾病数据,COVID-19 风险评分描述了 28000 个普查区邻里中与 COVID-19 并发症风险相关的 15 种疾病和健康行为共现的 85%变化(街区中位数人口规模为 4091 人)。在纽约市(2020 年 4 月和 9 月),COVID-19 风险评分每变化 1 个标准差,COVID-19 相关死亡的风险就会增加 40%(COVID-19 风险评分每变化 1 个标准差的风险比为 1.4;P<.001),这是在邮政编码一级得出的结果。卫星图像与健康社会决定因素相结合,可以解释美国普查区 COVID-19 风险评分近 90%的变化(r=0.87)。
COVID-19 风险评分将风险定位于普查区一级,并能够预测纽约市的 COVID-19 相关死亡率。建筑环境解释了评分的显著变化,这表明风险模型可以通过卫星图像得到增强。