*Result*: Decoding the association between health level and human settlements environment: a machine learning-driven provincial analysis in China.
J Community Health. 2013 Oct;38(5):976-93. (PMID: 23543372)
Curr Opin Psychiatry. 2019 May;32(3):248-253. (PMID: 30920971)
JMIR Public Health Surveill. 2023 Apr 27;9:e42820. (PMID: 37103994)
Int J Med Inform. 2015 May;84(5):341-8. (PMID: 25737460)
Euro Surveill. 2018 Apr;23(16):. (PMID: 29692315)
Int J Equity Health. 2017 Jul 14;16(1):127. (PMID: 28709422)
Environ Sci Pollut Res Int. 2023 Jan;30(2):3726-3742. (PMID: 35951239)
Health Aff (Millwood). 1998 Mar-Apr;17(2):70-84. (PMID: 9558786)
Iran J Public Health. 2019 Sep;48(9):1636-1646. (PMID: 31700819)
Front Cell Infect Microbiol. 2021 Nov 03;11:707402. (PMID: 34804988)
J Am Heart Assoc. 2022 Oct 18;11(20):e025923. (PMID: 36250657)
Int J Environ Res Public Health. 2022 Jun 04;19(11):. (PMID: 35682481)
Disaster Med Public Health Prep. 2022 Apr 11;17:e119. (PMID: 35403588)
BMC Public Health. 2024 Mar 4;24(1):686. (PMID: 38439001)
Health Econ. 2021 Feb;30(2):207-230. (PMID: 33145835)
Int J Epidemiol. 2019 Aug 1;48(4):1083-1090. (PMID: 30887030)
Curr Opin Allergy Clin Immunol. 2016 Oct;16(5):434-40. (PMID: 27518837)
Health Place. 2018 Sep;53:79-85. (PMID: 30056264)
Heliyon. 2023 Feb 05;9(2):e13492. (PMID: 36846688)
LGBT Health. 2017 Oct;4(5):352-359. (PMID: 28792886)
Circ Res. 2023 Jun 9;132(12):1707-1724. (PMID: 37289906)
Entropy (Basel). 2020 Feb 24;22(2):. (PMID: 33286032)
Science. 2002 May 10;296(5570):1029-31. (PMID: 12004104)
Circulation. 2024 Apr 16;149(16):1298-1314. (PMID: 38620080)
Int J Equity Health. 2023 Sep 2;22(1):177. (PMID: 37660026)
Int J Environ Res Public Health. 2022 May 16;19(10):. (PMID: 35627580)
Int J Health Econ Manag. 2016 Jun;16(2):133-161. (PMID: 27878714)
Environ Int. 2020 Mar;136:105520. (PMID: 32044176)
Int J Behav Nutr Phys Act. 2022 Sep 24;19(1):124. (PMID: 36153538)
*Further Information*
*Background: Rapid urbanization in China has significantly reshaped the human settlement environment (HSE), bringing opportunities and challenges for public health. While existing studies have explored environmental-health relationships, most are confined to micro-level contexts, focus on single environmental dimensions, or assess specific diseases, thus lacking a comprehensive, macro-level understanding.
Objective: This study aims to assess the associations between population health level and multidimensional HSE features at the provincial level in China and uncover nonlinear relationships and interaction effects underlying the association between HSE and population health level.
Methods: Using panel data from 31 Chinese provinces spanning 2012 to 2022, a composite Health Level Index (HLI) was constructed based on four core health indicators using the Entropy-TOPSIS method. 19 HSE indicators covering five dimensions-ecological environment, living environment, infrastructure, public services, and sustainable environment-were selected as explanatory variables. The study employed the XGBoost machine learning algorithm to model the relationship between HSE and HLI. SHAP values and Partial Dependence Plots (PDPs) were used to interpret feature importance, nonlinear relationships, threshold values, and interaction effects.
Results: XGBoost outperformed all benchmark models, confirming its strong predictive capacity. SHAP analysis identified six key features-number of medical institution beds (NMIB), urbanization rate (UR), mobile phone penetration rate (MPPR), road area per capita (RAPC), population density (PD), and urban gas penetration rate (UGPR)-as the most influential factors. Nonlinear relationships and threshold effects were observed between key features and population health level. PDP plots further revealed that optimal health levels are typically associated with high UR, high MPPR, high RAPC, and moderate NMIB, underscoring the importance of structural synergy over isolated infrastructure expansion.
Conclusion: This study provides robust evidence that the relationship between HSE and health is nonlinear, multidimensional, and highly interactive. Effective urban health governance requires coordinated development of urbanization, digital infrastructure, and public services, along with rational healthcare resource allocation. The findings offer actionable insights for health-oriented urban planning and policy formulation in rapidly urbanizing regions.
(Copyright © 2025 Zhu and Peng.)*
*The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.*