Yi Li, Hart Jaime E, Roscoe Charlotte, Mehta Unnati V, Pescador Jimenez Marcia, Lin Pi-I Debby, Suel Esra, Hystad Perry, Hankey Steve, Zhang Wenwen, Okereke Olivia I, Laden Francine, James Peter
Division of Chronic Disease Research Across the Lifecourse (CoRAL), Department of Population Medicine, Harvard Medical School and Harvard Pilgrim Health Care Institute, Boston, MA, USA; Department of Nutrition, Harvard T.H. Chan School of Public Health, Boston, MA, USA.
Channing Division of Network Medicine, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, MA, USA; Department of Environmental Health, Harvard T.H. Chan School of Public Health, Boston, MA, USA.
Environ Int. 2025 Apr;198:109429. doi: 10.1016/j.envint.2025.109429. Epub 2025 Apr 4.
Greenspace exposure is associated with lower depression risk. However, most studies have measured greenspace exposure using satellite-based vegetation indices, leading to potential exposure misclassification and limited policy relevance. We examined the association of street-view greenspace measures with incident depression in a prospective cohort of US women.
We applied deep learning segmentation models to 350 million US street-view images nationwide (2007-2020) to derive ground-level greenspace metrics, including percentage of trees, grass, and other greenspace (plants/flowers/fields), and linked metrics to Nurses' Health Study II participants' residences (N = 33,490) within 500 m each year. Cox proportional hazards models estimated the relationship between street-view greenspace metrics and incident depression, assessed through self-report of clinician-diagnosed depression or regular antidepressant use and adjusted for individual- and area-level factors.
In adjusted models, higher percentages of street-view trees were inversely associated with incident depression (HR per IQR, 0.98; 95%CI: 0.94-1.01) and specifically clinician-diagnosed depression (HR per IQR, 0.94; 95%CI: 0.90-0.99). Higher percentages of street-view grass were also inversely associated with incident depression, but only in areas with low particulate matter (PM) levels (HR per IQR, 0.79; 95%CI: 0.71-0.86). Results were consistent after adjusting for additional spatial and behavioral factors, and persisted after adjusting for traditional satellite-based vegetation indices.
We observed participants who lived in areas with more trees visible in street-view images had a lower risk of depression. Our findings suggest tree-planting interventions may reduce depression risk.
接触绿地与较低的抑郁风险相关。然而,大多数研究使用基于卫星的植被指数来衡量绿地接触情况,这可能导致接触情况的错误分类,且政策相关性有限。我们在美国女性前瞻性队列中研究了街景绿地测量指标与新发抑郁症之间的关联。
我们将深度学习分割模型应用于全国3.5亿张美国街景图像(2007 - 2020年),以得出地面绿地指标,包括树木、草地和其他绿地(植物/花卉/田地)的百分比,并将这些指标与护士健康研究II参与者每年在500米范围内的住所(N = 33490)相联系。Cox比例风险模型估计了街景绿地指标与新发抑郁症之间的关系,通过临床医生诊断的抑郁症自我报告或常规抗抑郁药物使用情况进行评估,并对个体和区域层面的因素进行了调整。
在调整后的模型中,街景树木百分比越高与新发抑郁症呈负相关(每IQR的HR为0.98;95%CI:0.94 - 1.01),特别是与临床医生诊断的抑郁症(每IQR的HR为0.94;95%CI:0.90 - 0.99)。街景草地百分比越高也与新发抑郁症呈负相关,但仅在颗粒物(PM)水平较低的地区(每IQR的HR为0.79;95%CI:0.71 - 0.86)。在调整了额外的空间和行为因素后结果一致,在调整了传统的基于卫星的植被指数后结果仍然存在。
我们观察到,居住在街景图像中可见树木较多地区的参与者患抑郁症的风险较低。我们的研究结果表明,植树干预可能降低抑郁症风险。