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利用深度学习技术研究中国北京街道景观的绿色和蓝色空间及其与老年抑郁症的关系。

Using deep learning to examine street view green and blue spaces and their associations with geriatric depression in Beijing, China.

机构信息

Department of Human Geography and Spatial Planning, Utrecht University, Utrecht, The Netherlands.

School of Information Engineering, China University of Geosciences, Wuhan, China.

出版信息

Environ Int. 2019 May;126:107-117. doi: 10.1016/j.envint.2019.02.013. Epub 2019 Feb 20.

Abstract

BACKGROUND

Residential green and blue spaces may be therapeutic for the mental health. However, solid evidence on the linkage between exposure to green and blue spaces and mental health among the elderly in non-Western countries is scarce and limited to exposure metrics based on remote sensing images (i.e., land cover and vegetation indices). Such overhead-view measures may fail to capture how people perceive the environment on the site.

OBJECTIVE

This study aimed to compare streetscape metrics derived from street view images with satellite-derived ones for the assessment of green and blue space; and to examine associations between exposure to green and blue spaces as well as geriatric depression in Beijing, China.

METHODS

Questionnaire data on 1190 participants aged 60 or above were analyzed cross-sectionally. Depressive symptoms were assessed through the shortened Geriatric Depression Scale (GDS-15). Streetscape green and blue spaces were extracted from Tencent Street View data by a fully convolutional neural network. Indicators derived from street view images were compared with a satellite-based normalized difference vegetation index (NDVI), a normalized difference water index (NDWI), and those derived from GlobeLand30 land cover data on a neighborhood level. Multilevel regressions with neighborhood-level random effects were fitted to assess correlations between GDS-15 scores and these green and blue spaces exposure metrics.

RESULTS

The average cumulative GDS-15 score was 3.4 (i.e., no depressive symptoms). Metrics of green and blue space derived from street view images were not correlated with satellite-based ones. While NDVI was highly correlated with GlobeLand30 green space, NDWI was moderately correlated with GlobeLand30 blue space. Multilevel regressions showed that both street view green and blue spaces were inversely associated with GDS-15 scores and achieved the highest model goodness-of-fit. No significant associations were found with NDVI, NDWI, and GlobeLand30 green and blue space. Our results passed robustness tests.

CONCLUSION

Our findings provide support that street view green and blue spaces are protective against depression for the elderly in China, yet longitudinal confirmation to infer causality is necessary. Street view and satellite-derived green and blue space measures represent different aspects of natural environments. Both street view data and deep learning are valuable tools for automated environmental exposure assessments for health-related studies.

摘要

背景

居住的绿色和蓝色空间可能对心理健康有治疗作用。然而,在非西方国家,关于老年人接触绿色和蓝色空间与心理健康之间联系的确凿证据很少,并且仅限于基于遥感图像的暴露指标(即土地覆盖和植被指数)。这种从上方俯瞰的测量方法可能无法捕捉到人们对现场环境的感知。

目的

本研究旨在比较从街景图像中提取的街景指标与卫星衍生指标,以评估绿色和蓝色空间;并研究在中国北京,暴露于绿色和蓝色空间与老年抑郁症之间的关系。

方法

对 1190 名 60 岁或以上的参与者进行了横断面问卷调查。使用简化的老年抑郁量表(GDS-15)评估抑郁症状。通过全卷积神经网络从腾讯街景数据中提取街景绿色和蓝色空间。在邻里层面上,将从街景图像中提取的指标与基于卫星的归一化差异植被指数(NDVI)、归一化差异水体指数(NDWI)和 GlobeLand30 土地覆盖数据衍生的指标进行比较。使用带有邻里水平随机效应的多层次回归来评估 GDS-15 评分与这些绿色和蓝色空间暴露指标之间的相关性。

结果

平均累积 GDS-15 评分为 3.4(即无抑郁症状)。从街景图像中提取的绿色和蓝色空间指标与基于卫星的指标没有相关性。虽然 NDVI 与 GlobeLand30 绿地高度相关,但 NDWI 与 GlobeLand30 蓝地中度相关。多层次回归表明,街景绿色和蓝色空间均与 GDS-15 评分呈负相关,且模型拟合度最高。与 NDVI、NDWI 和 GlobeLand30 绿地和蓝地没有发现显著相关性。我们的结果通过了稳健性检验。

结论

我们的研究结果为中国老年人的街景绿色和蓝色空间对抑郁具有保护作用提供了支持,但需要进行纵向研究来推断因果关系。街景和卫星衍生的绿色和蓝色空间测量代表了自然环境的不同方面。街景数据和深度学习都是健康相关研究中进行自动环境暴露评估的有价值工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8b08/6437315/188b39a2b44e/gr1.jpg

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