Spatial machine learning for predicting physical inactivity prevalence from socioecological determinants in Chicago, Illinois, USA.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-06-05 DOI:10.1007/s10109-023-00415-y
Aynaz Lotfata, Stefanos Georganos
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Abstract

The increase in physical inactivity prevalence in the USA has been associated with neighborhood characteristics. While several studies have found an association between neighborhood and health, the relative importance of each component related to physical inactivity or how this value varies geographically (i.e., across different neighborhoods) remains unexplored. This study ranks the contribution of seven socioecological neighborhood factors to physical inactivity prevalence in Chicago, Illinois, using machine learning models at the census tract level, and evaluates their predictive capabilities. First, we use geographical random forest (GRF), a recently proposed nonlinear machine learning regression method that assesses each predictive factor's spatial variation and contribution to physical inactivity prevalence. Then, we compare the predictive performance of GRF to geographically weighted artificial neural networks, another recently proposed spatial machine learning algorithm. Our results suggest that poverty is the most important determinant in the Chicago tracts, while on the other hand, green space is the least important determinant in the rise of physical inactivity prevalence. As a result, interventions can be designed and implemented based on specific local circumstances rather than broad concepts that apply to Chicago and other large cities.

Supplementary information: The online version contains supplementary material available at 10.1007/s10109-023-00415-y.

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从社会生态决定因素预测美国伊利诺伊州芝加哥市身体不活动率的空间机器学习。
在美国,不运动的患病率增加与社区特征有关。虽然几项研究发现了邻里关系和健康之间的联系,但与身体不活动相关的每个组成部分的相对重要性,或者这个值在地理上(即在不同的邻里之间)是如何变化的,仍有待探索。这项研究使用人口普查区水平的机器学习模型,对伊利诺伊州芝加哥市七个社会生态社区因素对身体不活动率的贡献进行了排名,并评估了它们的预测能力。首先,我们使用地理随机森林(GRF),这是一种最近提出的非线性机器学习回归方法,用于评估每个预测因素的空间变化和对身体不活动率的贡献。然后,我们将GRF的预测性能与最近提出的另一种空间机器学习算法——地理加权人工神经网络进行了比较。我们的研究结果表明,在芝加哥地区,贫困是最重要的决定因素,而另一方面,绿地是不运动率上升的最不重要决定因素。因此,干预措施的设计和实施可以基于当地的具体情况,而不是适用于芝加哥和其他大城市的广泛概念。补充信息:在线版本包含补充材料,可访问10.1007/s10109-023-00415-y。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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