Yang Jingmei, Ju Xinglong, Liu Feng, Asan Onur, Church Timothy, Smith Jeff
Division of System EngineeringBoston University Boston MA 02246 USA.
Price College of BusinessUniversity of Oklahoma Norman OK 73019 USA.
IEEE Open J Eng Med Biol. 2021 Oct 6;2:291-298. doi: 10.1109/OJEMB.2021.3117872. eCollection 2021.
Chronic diseases have become the most prevalent and costly health conditions in the healthcare industry, deteriorating the quality of life, adversely affecting the work productivity, and costing astounding medical resources. However, few studies have been conducted on the predictive analysis of multiple chronic conditions (MCC) based on the working population. Seven machine learning algorithms are used to support the decision making of healthcare practitioner on the risk of MCC. The models were developed and validated using checkup data from 451,425 working population collected by the healthcare providers. Our result shows that all proposed models achieved satisfactory performance, with the AUC values ranging from 0.826 to 0.850. Among the seven predictive models, the gradient boosting tree model outperformed other models, achieving an AUC of 0.850. Our risk prediction model shows great promise in automating real-time diagnosis, supporting healthcare practitioners to target high-risk individuals efficiently, and helping healthcare practitioners tailor proactive strategies to prevent the onset or delay the progression of the chronic diseases.
慢性病已成为医疗行业中最普遍且成本高昂的健康问题,它会降低生活质量,对工作效率产生不利影响,并耗费惊人的医疗资源。然而,基于工作人群对多种慢性病(MCC)进行预测分析的研究却很少。本文使用七种机器学习算法来辅助医疗从业者对MCC风险进行决策。这些模型是利用医疗服务提供者收集的451425名工作人群的体检数据开发并验证的。我们的结果表明,所有提出的模型都取得了令人满意的性能,AUC值在0.826至0.850之间。在这七个预测模型中,梯度提升树模型的表现优于其他模型,AUC为0.850。我们的风险预测模型在实现实时诊断自动化、帮助医疗从业者有效定位高危个体以及协助他们制定积极策略以预防慢性病的发生或延缓其进展方面显示出巨大潜力。