Temirbekov Nurlan, Temirbekova Marzhan, Tamabay Dinara, Kasenov Syrym, Askarov Seilkhan, Tukenova Zulfiya
National Engineering Academy of RK, Almaty 050010, Kazakhstan.
Faculty of Mechanics and Mathematics, Al-Farabi Kazakh National University, Almaty 050040, Kazakhstan.
Int J Environ Res Public Health. 2023 Sep 15;20(18):6770. doi: 10.3390/ijerph20186770.
This study focuses on assessing the level of morbidity among the population of Almaty, Kazakhstan, and investigating its connection with atmospheric air pollution using machine learning algorithms. The use of these algorithms is aimed at analyzing the relationship between air pollution levels and the state of public health, as well as the correlations between COVID-19 infection and the development of respiratory diseases. This study analyzes the respiratory diseases of the population of Almaty and the level of air pollution as a result of suspended particles for the period of 2017-2022. The study includes recommendations to reduce harmful emissions into the atmosphere using machine learning methods. The results of the study show that air pollution is a critical factor affecting the increase in the number of diseases of the respiratory system. The study recommends taking measures to reduce air pollution and improve air quality in order to prevent the development of chronic respiratory diseases. The study offers recommendations to industrial enterprises, traffic management organizations, thermal power plants, the Department of Environmental Protection, and local executive bodies in order to reduce respiratory diseases among the population.
本研究聚焦于评估哈萨克斯坦阿拉木图市人口的发病水平,并运用机器学习算法调查其与大气空气污染的关联。使用这些算法旨在分析空气污染水平与公众健康状况之间的关系,以及新冠病毒感染与呼吸道疾病发展之间的相关性。本研究分析了阿拉木图市2017 - 2022年期间人口的呼吸道疾病以及悬浮颗粒物造成的空气污染水平。该研究包含利用机器学习方法减少向大气中排放有害污染物的建议。研究结果表明,空气污染是影响呼吸系统疾病数量增加的关键因素。该研究建议采取措施减少空气污染并改善空气质量,以预防慢性呼吸道疾病的发展。该研究为工业企业、交通管理组织、热电厂、环境保护部门和地方行政机构提供建议,以减少人口中的呼吸道疾病。