Song Yiling, Zhou Mingzhong, Tan Jiale, Cheng Jiali, Wang Yangyang, Feng Xiaolu, Yu Hongjun
Department of Physical Education, Tsinghua University, Beijing, China.
Faculty of Public Physical Education, Hebei Normal University, Shijiazhuang, China.
Sci Rep. 2025 Jun 4;15(1):19509. doi: 10.1038/s41598-025-03050-3.
Although numerous studies have investigated the impact of urban green spaces on health, the association between street-level greenery and domain-specific physical activity (PA) among older adults remains underexplored. This study employed Baidu Street View imagery and deep learning techniques to objectively evaluate street greenery exposure and its relationship with various types of PA among older adults in China. We conducted a cross-sectional study involving 1326 older adults (aged 60 years and above) residing in Beijing, China. The Physical Activity Scale for the Elderly (PASE) was used to assess participants' PA levels. Street greenery was measured within a 500 m buffer around each participant's residence using Baidu Street View images and deep learning algorithms. Data were analyzed using ANOVA, Chi-square tests, and multilevel linear regression models. Correlation analyses revealed that street greenery within a 500 m buffer of participants' residences was significantly and positively associated with transportation PA among older adults (p < 0.05), particularly with bicycling (p < 0.01). After adjusting for individual characteristics, annual household income, and other potential confounders, multilevel linear regression analysis indicated that street greenery remained a significant positive predictor of transportation PA (β = 0.08, p < 0.01). No significant associations were found between street greenery and either leisure PA or household PA (p > 0.05). Street greenery around residential areas is significantly associated with transportation PA among older adults in China. Urban green space planning should prioritize enhancing street greenery and creating safe, pleasant walking and cycling environments to support active aging in high-density cities.
尽管众多研究调查了城市绿地对健康的影响,但街道层面的绿化与老年人特定领域身体活动(PA)之间的关联仍未得到充分探索。本研究采用百度街景图像和深度学习技术,客观评估街道绿化暴露情况及其与中国老年人各类身体活动的关系。我们进行了一项横断面研究,涉及居住在中国北京的1326名老年人(年龄在60岁及以上)。使用老年人身体活动量表(PASE)评估参与者的身体活动水平。利用百度街景图像和深度学习算法,在每个参与者住所周围500米的缓冲区内测量街道绿化情况。数据采用方差分析、卡方检验和多层线性回归模型进行分析。相关性分析显示,参与者住所周围500米缓冲区内的街道绿化与老年人的交通身体活动显著正相关(p < 0.05),尤其是与骑自行车(p < 0.01)。在调整个体特征、家庭年收入和其他潜在混杂因素后,多层线性回归分析表明,街道绿化仍然是交通身体活动显著的正向预测因素(β = 0.08,p < 0.01)。未发现街道绿化与休闲身体活动或家务身体活动之间存在显著关联(p > 0.05)。中国老年人居住区域周围的街道绿化与交通身体活动显著相关。城市绿地规划应优先加强街道绿化,营造安全、宜人的步行和骑行环境,以支持高密度城市中的积极老龄化。