Department of Geography, The Ohio State University, United States.
Department of Geography, The Ohio State University, United States; Center for Urban and Regional Analysis, The Ohio State University, United States.
Health Place. 2022 May;75:102792. doi: 10.1016/j.healthplace.2022.102792. Epub 2022 Mar 30.
Opioid use disorder is a serious public health crisis in the United States. Manifestations such as opioid overdose events (OOEs) vary within and across communities and there is growing evidence that this variation is partially rooted in community-level social and economic conditions. The lack of high spatial resolution, timely data has hampered research into the associations between OOEs and social and physical environments. We explore the use of non-traditional, "found" geospatial data collected for other purposes as indicators of urban social-environmental conditions and their relationships with OOEs at the neighborhood level. We evaluate the use of Google Street View images and non-emergency "311" service requests, along with US Census data as indicators of social and physical conditions in community neighborhoods. We estimate negative binomial regression models with OOE data from first responders in Columbus, Ohio, USA between January 1, 2016, and December 31, 2017. Higher numbers of OOEs were positively associated with service request indicators of neighborhood physical and social disorder and street view imagery rated as boring or depressing based on a pre-trained random forest regression model. Perceived safety, wealth, and liveliness measures from the street view imagery were negatively associated with risk of an OOE. Age group 50-64 was positively associated with risk of an OOE but age 35-49 was negative. White population, percentage of individuals living in poverty, and percentage of vacant housing units were also found significantly positive however, median income and percentage of people with a bachelor's degree or higher were found negative. Our result shows neighborhood social and physical environment characteristics are associated with likelihood of OOEs. Our study adds to the scientific evidence that the opioid epidemic crisis is partially rooted in social inequality, distress and underinvestment. It also shows the previously underutilized data sources hold promise for providing insights into this complex problem to help inform the development of population-level interventions and harm reduction policies.
阿片类药物使用障碍是美国严重的公共卫生危机。阿片类药物过量事件(OOE)的表现形式在社区内和社区之间存在差异,越来越多的证据表明,这种差异部分源于社区层面的社会和经济条件。缺乏高空间分辨率、及时的数据阻碍了对 OOE 与社会和物理环境之间关联的研究。我们探索使用非传统的、“现成的”地理空间数据来作为城市社会环境条件的指标,并研究其与邻里层面 OOE 的关系。我们评估了谷歌街景图像和非紧急“311”服务请求以及美国人口普查数据在社区邻里的社会和物理条件方面的应用。我们使用美国俄亥俄州哥伦布市急救人员在 2016 年 1 月 1 日至 2017 年 12 月 31 日期间收集的 OOE 数据,对负二项回归模型进行了估计。更高数量的 OOE 与邻里物理和社会混乱的服务请求指标呈正相关,并且基于预训练的随机森林回归模型,街景图像被评定为无聊或压抑。街景图像中的感知安全、财富和活力指标与 OOE 风险呈负相关。年龄组 50-64 与 OOE 风险呈正相关,但 35-49 岁年龄组与 OOE 风险呈负相关。白人人口、生活在贫困中的个体百分比和空置住房单元百分比也呈显著正相关,但中等收入和拥有学士或更高学位的个体百分比呈负相关。我们的结果表明,邻里社会和物理环境特征与 OOE 的发生可能性相关。我们的研究增加了科学证据,表明阿片类药物流行危机部分源于社会不平等、痛苦和投资不足。它还表明,以前未充分利用的数据源有望为解决这一复杂问题提供深入了解,以帮助为人口干预和减少伤害政策的制定提供信息。