Abstract
AbstractThe health status of the service sector workforce is a significant unknown in the field of medical geography. While spatial epidemiology has made progress in predicting the relationship between human health and the environment, there are still important challenges that remain unsolved. The main issue lies in the inability to statistically determine and visually represent all spatial concepts, as there is a need to cover a wide range of service activities while also considering the impact of numerous traditional medical variables and emerging risk factors, such as those related to socioeconomic and bioclimatic factors. This study aims to address the needs of health professionals by defining, prioritizing, and visualizing multiple occupational health risk factors that contribute to the well-being of workers. To achieve this, a methodological approach based on the synergy of Bayesian machine learning and geostatistics is proposed. Extensive data from occupational health surveillance tests were collected in Spain, along with socioeconomic and bioclimatic covariates, to assess potential social and climate impacts on health. This integrated approach enabled the identification of relevant patterns related to risk factors. A three-step geostatistical modeling process, including variography, ordinary kriging, andGclustering, was used to generate national distribution maps for various factors such as annual mean temperature, annual rainfall, spine health, limb health, cholesterol, age, and sleep quality. These maps considered four target activities—administration, finances, education, and hospitality. Remarkably, bioclimatic variables were found to contribute approximately 9% to the overall health status of workers.
Publisher
Springer Science and Business Media LLC
Subject
General Earth and Planetary Sciences,Mathematics (miscellaneous)
Reference53 articles.
1. Abad A, Gerassis S, Saavedra Á, Giráldez E, García JF, Taboada J (2019) A Bayesian assessment of occupational health surveillance in workers exposed to silica in the energy and construction industry. Environ Sci Pollut Res 26(29):29560–29569. https://doi.org/10.1007/S11356-018-2962-6/FIGURES/4
2. Albuquerque MTD, Gerassis S, Sierra C, Taboada J, Martín JE, Antunes IMHR, Gallego JR (2017) Developing a new Bayesian Risk Index for risk evaluation of soil contamination. Sci Total Environ 603–604(2017):167–177. https://doi.org/10.1016/j.scitotenv.2017.06.068
3. Awotunde JB, Adeniyi AE, Ogundokun RO, Ajamu GJ, Adebayo PO (2021) MIoT-based big data analytics architecture, opportunities, and challenges for enhanced telemedicine systems. Stud Fuzziness Soft Comput 410:199–220. https://doi.org/10.1007/978-3-030-70111-6_10/COVER
4. BayesiaLab (n.d.) Contingency table fit. Retrieved 22 Dec 2022. https://library.bayesia.com/articles/#!bayesialab-knowledge-hub/key-concepts-contingency-table-fit
5. Benavoli A, Corani G, Demšar J, Zaffalon M (2017) Time for a change: a tutorial for comparing multiple classifiers through Bayesian analysis. J Mach Learn Res 18(1):2653–2688
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献