Alzheimer's Disease Dementia Prevalence in the United States: A County-Level Spatial Machine Learning Analysis.

Abolfazl Mollalo, George Grekousis, Hermes Florez, Brian Neelon, Leslie A Lenert, Alexander V Alekseyenko
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Abstract

A growing body of literature has examined the impact of neighborhood characteristics on Alzheimer's disease (AD) dementia, yet the spatial variability and relative importance of the most influential factors remain underexplored. We compiled various widely recognized factors to examine spatial heterogeneity and associations with AD dementia prevalence via geographically weighted random forest (GWRF) approach. The GWRF outperformed conventional models with an out-of-bag R2 of 74.8% in predicting AD dementia prevalence and the lowest error (MAE = 0.34, RMSE = 0.45). Key findings showed that mobile homes were the most influential factor in 19.9% of U.S. counties, followed by NDVI (17.4%), physical inactivity (12.9%), households with no vehicle (11.3%), and particulate matter (10.4%), while other primary factors affecting <10% of U.S. counties. Findings highlight the need for county-specific interventions tailored to local risk factors. Policies should prioritize increasing affordable housing stability, expanding green spaces, improving transportation access, promoting physical activity, and reducing air pollution exposure.

美国阿尔茨海默病痴呆患病率:县级空间机器学习分析。
越来越多的文献研究了社区特征对阿尔茨海默病(AD)痴呆的影响,但最具影响因素的空间变异性和相对重要性仍未得到充分探讨。我们通过地理加权随机森林(GWRF)方法收集了各种广泛认可的因素,以研究AD痴呆患病率的空间异质性及其相关性。GWRF在预测AD痴呆患病率方面优于传统模型,其袋外R2为74.8%,误差最低(MAE = 0.34, RMSE = 0.45)。主要研究结果显示,在19.9%的美国县中,移动房屋是最重要的影响因素,其次是NDVI(17.4%)、缺乏体育锻炼(12.9%)、无车辆家庭(11.3%)和颗粒物(10.4%),其他主要影响因素
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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