应用人工神经网络预测煤矿工人尘肺发病风险。

Puerto Rico health sciences journal Pub Date : 2025-06-01
Isil Zorlu, Mehmet Ali Kurcer
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引用次数: 0

摘要

目的:建立基于人工神经网络的煤矿工人尘肺发病风险预测模型。方法:利用煤矿工人(全部为男性)的健康记录建立基于人工神经网络的模型。输入神经元包括当前年龄、工人开始工作的年份、职业类别、在地下工作的日数、工作的总日数、在地下工作的受雇时间(即所谓的第一类工作)和吸烟状况。输出神经元包括有尘肺和无尘肺状态。结果:研究发现,结合年龄、第一类工作的工作年限、地下工作日数、工人开始工作的年份、总工作日数、吸烟状况和职业类别等变量的人工神经网络模型可以用来估计尘肺病的风险。模型的成功率为95.3%;敏感性为90.3%,特异性为96.5%。对尘肺病影响最大的输入变量是年龄,其次是在第一组工作的工作时间。结论:预测煤矿工人尘肺发病风险对有策略地监测和制定预防健康规划具有重要意义。应发展人工神经网络模型,并将其融入职业医学实践,用于评价劳动者的健康状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Pneumoconiosis Risk in Coal Workers using Artificial Neural Networks.

Objective: This study aimed to create a model to predict pneumoconiosis risk in coal workers using artificial neural networks (ANNs).

Methods: An ANN-based model was developed using the health records of a population of coal workers (all men). Input neurons comprised current age, year the worker began his employment, occupational category, the number of days spent working underground, the total days spent working, the duration of employment in working underground (i.e., in a so-called group 1 job), and smoking status. Output neurons comprised the states of having pneumoconiosis and being free of pneumoconiosis.

Results: The study found that an ANN model incorporating the variables age, the duration of employment in a group 1 job, the number of days spent working underground, year the worker began his employment, the total days spent working, smoking status, and occupational category can be used to estimate pneumoconiosis risk. The model's success rate was 95.3%; sensitivity was 90.3%, and specificity was 96.5%. The most influential input variable for pneumoconiosis was age, followed by the duration of employment in a group 1 job.

Conclusion: Predicting pneumoconiosis risk in coal workers provides great advantages for strategically monitoring miners and developing preventive health programs. Artificial neural network models should be developed, integrated into occupational medicine practice, and used to evaluate workers' health status.

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