首页> 外文期刊>Journal of occupational and environmental medicine >Applying Machine Learning to Workers' Compensation Data to Identify Industry-Specific Ergonomic and Safety Prevention Priorities: Ohio, 2001 to 2011
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Applying Machine Learning to Workers' Compensation Data to Identify Industry-Specific Ergonomic and Safety Prevention Priorities: Ohio, 2001 to 2011

机译:将机器学习应用于工人的补偿数据,以识别行业特定的人体工程学和安全预防优先事项:俄亥俄州,2001年至2011年

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Objective:This study leveraged a state workers' compensation claims database and machine learning techniques to target prevention efforts by injury causation and industry.Methods:Injury causation auto-coding methods were developed to code more than 1.2 million Ohio Bureau of Workers' Compensation claims for this study. Industry groups were ranked for soft-tissue musculoskeletal claims that may have been preventable with biomechanical ergonomic (ERGO) or slip/trip/fall (STF) interventions.Results:On the basis of the average of claim count and rate ranks for more than 200 industry groups, Skilled Nursing Facilities (ERGO) and General Freight Trucking (STF) were the highest risk for lost-time claims (7 days).Conclusion:This study created a third, major causation-specific U.S. occupational injury surveillance system. These findings are being used to focus prevention resources on specific occupational injury types in specific industry groups, especially in Ohio. Other state bureaus or insurers may use similar methods.
机译:目的:本研究利用州工人的补偿索赔数据库和机器学习技术,以通过伤害导致和行业进行预防努力。方法:制定了伤害因果关系自我编码方法,以编写超过120万俄亥俄州工人赔偿索赔这项研究。工业群体被排名为软组织肌肉骨骼声明,可用于生物力学人体工程学(ERGO)或SLIP / TRAP / FALL(STF)干预。结果:基于索赔计数的平均值和速度为200多个工业集团,熟练的护理设施(ERGO)和一般货运货运(STF)是失去时间索赔的最高风险(& 7天)。结论:本研究创造了三分之一,主要的因果关系特定的美国职业伤害监测系统。这些调查结果用于对特定行业组特定职业伤害类型的预防资源集中在俄亥俄州特定行业群体中。其他国家局或保险公司可以使用类似的方法。

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