Harrington Heart and Vascular Institute, University Hospitals, and School of Medicine, Case Western Reserve University, Cleveland, Ohio, USA.
Center for Health and Nature and Department of Cardiology, Houston Methodist, Houston, Texas, USA.
J Am Coll Cardiol. 2024 Oct 29;84(18):1733-1744. doi: 10.1016/j.jacc.2024.08.053.
Built environment affects cardiovascular health, but comprehensive assessment in a scalable fashion, for population health and resource allocation, is constrained by limitations of current microscale measures.
The purpose of this study was to investigate the association between satellite image-based environment and risk of major adverse cardiovascular events (MACE).
Using a pretrained deep neural network, features depicting the built environment from Google Satellite Imagery (GSI) around 64,230 patients in Northern Ohio undergoing coronary artery calcium (CAC) scoring were extracted. Elastic net regularized Cox proportional hazards models identified associations of GSI features with MACE risk (defined as myocardial infarction, stroke, heart failure, or death). A composite GSI risk score was constructed using features that demonstrated nonzero coefficients in the elastic net model. We assessed association of this score with MACE risk, after adjusting for CAC scores and the social vulnerability index (SVI). Its interactions with CAC scores were also examined in subgroups.
Adjusting for CAC and traditional risk factors, the GSI risk score was significantly associated with higher MACE risk (HR: 2.67; 95% CI: 1.63-4.38; P < 0.001). However, adding SVI reduced this association to nonsignificance (HR: 1.54; 95% CI: 0.91-2.60; P = 0.11). Patients in the highest quartile (Q4) of GSI risk score had a 56% higher observed risk of MACE (HR: 1.56; 95% CI: 1.32-1.86; P < 0.005) compared with the lowest quartile (Q1). The GSI risk score had the strongest association with MACE risk in patients with CAC = 0. This association was attenuated, but remained significant, with higher CAC.
AI-enhanced satellite images of the built environment were linked to MACE risk, independently of traditional risk factors and CAC, but this was influenced by social determinants of health, represented by SVI. Satellite image-based assessment of the built environment may provide a rapid scalable integrative approach, warranting further exploration for enhanced risk prediction.
建筑环境会影响心血管健康,但由于当前微观尺度测量的局限性,全面评估人口健康和资源分配情况受到限制。
本研究旨在探讨基于卫星图像的环境与主要不良心血管事件(MACE)风险之间的关联。
使用经过预训练的深度神经网络,从俄亥俄州北部接受冠状动脉钙(CAC)评分的 64230 名患者周围的谷歌卫星图像(GSI)中提取描述建筑环境的特征。弹性网络正则化 Cox 比例风险模型确定了 GSI 特征与 MACE 风险(定义为心肌梗死、中风、心力衰竭或死亡)之间的关联。使用弹性网络模型中显示非零系数的特征构建 GSI 风险评分。我们评估了该评分与 MACE 风险的关联,同时调整了 CAC 评分和社会脆弱性指数(SVI)。还在亚组中检查了该评分与 CAC 评分之间的相互作用。
在调整 CAC 和传统风险因素后,GSI 风险评分与更高的 MACE 风险显著相关(HR:2.67;95%CI:1.63-4.38;P<0.001)。然而,加入 SVI 后,这种关联变得无统计学意义(HR:1.54;95%CI:0.91-2.60;P=0.11)。GSI 风险评分最高四分位(Q4)的患者发生 MACE 的观察风险比最低四分位(Q1)高 56%(HR:1.56;95%CI:1.32-1.86;P<0.005)。GSI 风险评分与 CAC=0 的患者的 MACE 风险关联最强。这种关联在 CAC 较高的情况下减弱,但仍有统计学意义。
人工智能增强的建筑环境卫星图像与 MACE 风险相关,独立于传统风险因素和 CAC,但这受到健康的社会决定因素(由 SVI 代表)的影响。基于卫星图像的建筑环境评估可能提供一种快速可扩展的综合方法,值得进一步探索以增强风险预测。