Department of Environmental Engineering, College of Engineering, Balikesir University, Balikesir, Turkey.
Department of Industrial Engineering, College of Engineering, Balikesir University, Balikesir, Turkey.
Environ Monit Assess. 2024 Jul 24;196(8):759. doi: 10.1007/s10661-024-12908-4.
This study uses artificial neural networks (ANNs) to examine the intricate relationship between air pollutants, meteorological factors, and respiratory disorders. The study investigates the correlation between hospital admissions for respiratory diseases and the levels of PM and SO pollutants, as well as local meteorological conditions, using data from 2017 to 2019. The objective of this study is to clarify the impact of air pollution on the well-being of the general population, specifically focusing on respiratory ailments. An ANN called a multilayer perceptron (MLP) was used. The network was trained using the Levenberg-Marquardt (LM) backpropagation algorithm. The data revealed a substantial increase in hospital admissions for upper respiratory tract diseases, amounting to a total of 11,746 cases. There were clear seasonal fluctuations, with fall having the highest number of cases of bronchitis (N = 181), sinusitis (N = 83), and upper respiratory infections (N = 194). The study also found demographic differences, with females and people aged 18 to 65 years having greater admission rates. The performance of the ANN model, measured using R values, demonstrated a high level of predictive accuracy. Specifically, the R value was 0.91675 during training, 0.99182 during testing, and 0.95287 for validating the prediction of asthma. The comparative analysis revealed that the ANN-MLP model provided the most optimal result. The results emphasize the effectiveness of ANNs in representing the complex relationships between air quality, climatic conditions, and respiratory health. The results offer crucial insights for formulating focused healthcare policies and treatments to alleviate the detrimental impact of air pollution and meteorological factors.
本研究利用人工神经网络(ANNs)来探讨空气污染物、气象因素与呼吸障碍之间的复杂关系。该研究调查了 2017 年至 2019 年期间,因呼吸疾病住院人数与 PM 和 SO 污染物水平以及当地气象条件之间的相关性。本研究的目的是阐明空气污染对普通人群健康的影响,特别是针对呼吸疾病。我们使用了一种名为多层感知机(MLP)的 ANN。该网络使用 Levenberg-Marquardt(LM)反向传播算法进行训练。数据显示,上呼吸道疾病的住院人数显著增加,总计为 11746 例。存在明显的季节性波动,秋季支气管炎(N=181)、鼻窦炎(N=83)和上呼吸道感染(N=194)的病例最多。研究还发现了人口统计学差异,女性和 18 至 65 岁的人群住院率较高。使用 R 值衡量的 ANN 模型性能显示出高度的预测准确性。具体而言,训练时 R 值为 0.91675,测试时为 0.99182,验证哮喘预测时为 0.95287。比较分析表明,ANN-MLP 模型提供了最优化的结果。研究结果强调了 ANN 在表示空气质量、气候条件和呼吸健康之间复杂关系方面的有效性。研究结果为制定有针对性的医疗保健政策和治疗方案提供了重要依据,以减轻空气污染和气象因素的不利影响。