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职业伤害风险缓解:智能工作场所监控的机器学习方法和特征优化。

Occupational Injury Risk Mitigation: Machine Learning Approach and Feature Optimization for Smart Workplace Surveillance.

机构信息

Department of Biomedical Engineering, Faculty of Engineering, Universiti Malaya, Kuala Lumpur 50603, Malaysia.

Environmental Healthcare Section, Institute of Medical Science Technology, Universiti Kuala Lumpur, Kajang 40300, Selangor, Malaysia.

出版信息

Int J Environ Res Public Health. 2022 Oct 27;19(21):13962. doi: 10.3390/ijerph192113962.

Abstract

Forecasting the severity of occupational injuries shall be all industries' top priority. The use of machine learning is theoretically valuable to assist the predictive analysis, thus, this study attempts to propose a feature-optimized predictive model for anticipating occupational injury severity. A public database of 66,405 occupational injury records from OSHA is analyzed using five sets of machine learning models: Support Vector Machine, K-Nearest Neighbors, Naïve Bayes, Decision Tree, and Random Forest. For model comparison, Random Forest outperformed other models with higher accuracy and F1-score. Therefore, it highlighted the potential of ensemble learning as a more accurate prediction model in the field of occupational injury. In constructing the model, this study also proposed the feature optimization technique that revealed the three most important features; 'nature of injury', 'type of event', and 'affected body part' in developing model. The accuracy of the Random Forest model was improved by 0.5% or 0.895 and 0.954 for the prediction of hospitalization and amputation, respectively by redeveloping and optimizing the model with hyperparameter tuning. The feature optimization is essential in providing insight knowledge to the Safety and Health Practitioners for future injury corrective and preventive strategies. This study has shown promising potential for smart workplace surveillance.

摘要

预测职业伤害的严重程度应成为各行业的首要任务。机器学习的应用在理论上有助于辅助预测分析,因此,本研究试图提出一个经过特征优化的预测模型,以预测职业伤害的严重程度。利用 OSHA 的一个包含 66405 份职业伤害记录的公共数据库,使用五组机器学习模型(支持向量机、K 近邻、朴素贝叶斯、决策树和随机森林)进行分析。为了进行模型比较,随机森林的准确率和 F1 得分均高于其他模型,因此突显了集成学习作为职业伤害领域更准确预测模型的潜力。在构建模型时,本研究还提出了特征优化技术,揭示了模型构建中三个最重要的特征:“伤害性质”、“事件类型”和“受伤身体部位”。通过重新开发和优化模型并进行超参数调整,随机森林模型对住院和截肢的预测准确率分别提高了 0.5%或 0.895 和 0.954。特征优化对于为安全和健康从业者提供未来伤害纠正和预防策略的见解知识至关重要。本研究表明,智能工作场所监测具有广阔的应用前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f93d/9653932/71aeefc85682/ijerph-19-13962-g004.jpg

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