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评估气象因素和空气污染对呼吸疾病死亡率的影响:随机森林模型分析(2017-2021 年)。

Assessing the impact of meteorological factors and air pollution on respiratory disease mortality rates: a random forest model analysis (2017-2021).

机构信息

School of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran.

Department of Environmental Science, Kheradgarayan Motahar Institute of Higher Education, Mashhad, Iran.

出版信息

Sci Rep. 2024 Oct 19;14(1):24535. doi: 10.1038/s41598-024-74440-2.

Abstract

Air pollution poses a significant threat to the health of all living beings on our planet. It has been scientifically established as a crucial factor affecting mortality rates, respiratory illnesses, mental well-being, and overall health. This study aimed to investigate the impact of air pollution and meteorological factors on respiratory disease mortality rates in Mashhad in 2017-2021 using a Random Forest (RF) model. At first, the daily statistics of meteorological parameters (pressure, humidity, temperature, solar radiation) during 2017-2021 were collected. The information related to pollutants pollutants such as PM (which is defined as particulate matter with less than 2.5 micrometer diameter and potentially harmful to humans), PM (Particles with a diameter of 10 micrometers or less that can negatively impact both human health and environmental conditions.), sulfur dioxide (SO), nitrogen dioxide (NO), and carbon monoxide (CO) was collected. the mortality statistics from respiratory diseases were collected from the Health system registaration (Sina). Then we used the RF regression model in Excel and Python software to investigate the interaction between the mentioned variables. The escalating trend of air pollution in Mashhad has led to an expected increase in respiratory-related hospitalizations. This necessitates urgent air pollution control measures. Concurrently, the study of pollutants and climatic elements, as substantiated by global epidemiological studies, is crucial. In Mashhad, the second most polluted city in Iran, climatic factors like humidity, sunshine duration, temperature, pressure, and sunlight intensity exacerbate atmospheric pollution levels, impacting human health and ecosystems. The R, RSME, and MAE of RF model are 0.73, 2.52, and 2 which indicate that the model has successfully identified the relationship between input variables and the target variable, and it will exhibit high accuracy in predictions. In this study, the most influential factor was identified when the Variance Inflation (VI) factor reached a value of 0.548. This indicates a strong correlation between this factor and the death rate of patients during the specified period. Furthermore, we analyzed by excluding the day and month plans from our model. The results showed that the factor with the highest coefficient in the executive model was related to pressure, with a VI value of 0.049. This suggests that pressure plays a significant role in our model and has a substantial effect on the death rate of patients. In the study of various pollutants, it was found that PM had the most significant impact on the mortality rate of patients with respiratory conditions, with a VI of 0.039. Following PM, the pollutants with the next highest coefficients of importance were NO (VI = 0.034), SO (VI = 0.033), PM2.5 (VI = 0.029), and CO (VI = 0.025), respectively. Furthermore, the study observed a notable increase in the mortality rate of respiratory patients over time. Specifically, for every five days, the death rate increased by 35.5%. Indeed, climate change and air pollution significantly contribute to the mortality rate from respiratory diseases. Therefore, it is crucial for individuals, particularly those with respiratory conditions, to heed meteorological warnings.

摘要

空气污染对地球上所有生物的健康构成重大威胁。科学已经证明,空气污染是影响死亡率、呼吸疾病、心理健康和整体健康的关键因素。本研究旨在使用随机森林 (RF) 模型研究 2017-2021 年马什哈德空气污染和气象因素对呼吸疾病死亡率的影响。首先,收集了 2017-2021 年期间气象参数(压力、湿度、温度、太阳辐射)的日常统计数据。收集了与污染物(定义为直径小于 2.5 微米且对人类有害的颗粒物)、直径为 10 微米或更小的颗粒物(可对人类健康和环境条件产生负面影响)、二氧化硫 (SO)、二氧化氮 (NO) 和一氧化碳 (CO) 相关的信息。从卫生系统登记处 (Sina) 收集了呼吸疾病的死亡率统计数据。然后,我们使用 Excel 和 Python 软件中的 RF 回归模型研究了所述变量之间的相互作用。马什哈德空气污染的上升趋势导致与呼吸相关的住院人数预计会增加。这需要紧急采取空气污染控制措施。同时,对污染物和气候要素的研究,正如全球流行病学研究所证明的那样,是至关重要的。在伊朗污染第二严重的马什哈德,湿度、日照时间、温度、压力和阳光强度等气候因素加剧了大气污染水平,影响了人类健康和生态系统。RF 模型的 R、RSME 和 MAE 分别为 0.73、2.52 和 2,这表明该模型成功地识别了输入变量和目标变量之间的关系,并且在预测方面具有很高的准确性。在本研究中,当方差膨胀(VI)因子达到 0.548 时,确定了最具影响力的因素。这表明该因素与特定时期患者死亡率之间存在很强的相关性。此外,我们通过从模型中排除日计划和月计划进行了分析。结果表明,执行模型中系数最高的因素与压力有关,VI 值为 0.049。这表明压力在我们的模型中起着重要作用,对患者的死亡率有重大影响。在对各种污染物的研究中,发现 PM 对呼吸状况患者的死亡率影响最大,VI 值为 0.039。紧随 PM 之后,重要性系数排名第二的污染物是 NO(VI=0.034)、SO(VI=0.033)、PM2.5(VI=0.029)和 CO(VI=0.025)。此外,研究还观察到呼吸疾病患者的死亡率随时间呈显著上升趋势。具体来说,每五天,死亡率增加 35.5%。实际上,气候变化和空气污染对呼吸疾病的死亡率有重大影响。因此,个人,特别是有呼吸疾病的个人,应注意气象警报。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a75/11489720/0381c2ee6f44/41598_2024_74440_Fig1_HTML.jpg

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