首页> 外文期刊>The European journal of health economics: HEPAC : health economics in prevention and care >Using machine learning to assess the predictive potential of standardized nursing data for home healthcare case-mix classification
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Using machine learning to assess the predictive potential of standardized nursing data for home healthcare case-mix classification

机译:使用机器学习评估标准化护理数据在家庭医疗保健病例组合分类中的预测潜力

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Background The Netherlands is currently investigating the feasibility of moving from fee-for-service to prospective payments for home healthcare, which would require a suitable case-mix system. In 2017, health insurers mandated a preliminary case-mix system as a first step towards generating information on client differences in relation to care use. Home healthcare providers have also increasingly adopted standardized nursing terminology (SNT) as part of their electronic health records (EHRs), providing novel data for predictive modelling. Objective To explore the predictive potential of SNT data for improvement of the existing preliminary Dutch case-mix classification for home healthcare utilization. Methods We extracted client-level data from the EHRs of a large home healthcare provider, including data from the existing Dutch case-mix system, SNT data (specifically, NANDA-I) and the hours of home healthcare provided. We evaluated the predictive accuracy of the case-mix system and the SNT data separately, and combined, using the machine learning algorithm Random Forest. Results The case-mix system had a predictive performance of 22.4 cross-validatedR-squared and 6.2 cross-validated Cumming's Prediction Measure (CPM). Adding SNT data led to a substantial relative improvement in predicting home healthcare hours, yielding 32.1R-squared and 15.4 CPM. Discussion The existing preliminary Dutch case-mix system distinguishes client needs to some degree, but not sufficiently. The results indicate that routinely collected SNT data contain sufficient additional predictive value to warrant further research for use in case-mix system design.
机译:背景 荷兰目前正在研究从按服务收费转向预期支付家庭医疗保健的可行性,这将需要一个合适的病例组合系统。2017 年,健康保险公司强制要求建立一个初步的病例组合系统,作为生成有关护理使用方面的客户差异信息的第一步。家庭医疗保健提供商也越来越多地采用标准化护理术语 (SNT) 作为其电子健康记录 (EHR) 的一部分,为预测建模提供新数据。目的 探讨SNT数据在改进荷兰家庭保健利用初步病例组合分类方面的预测潜力。方法 我们从一家大型家庭医疗保健提供商的 EHR 中提取客户级数据,包括来自现有荷兰病例组合系统的数据、SNT 数据(特别是 NANDA-I)和提供的家庭医疗保健时间。我们分别评估了病例混合系统和SNT数据的预测准确性,并使用机器学习算法随机森林进行组合。结果 病例组合系统的预测性能为22.4%的交叉验证R平方和6.2%的交叉验证Cumming预测测量(CPM)。添加 SNT 数据后,预测家庭医疗时间的相对改善显著,产生 32.1% 的 R 平方和 15.4% 的 CPM。讨论 荷兰现有的初步案例组合系统在一定程度上区分了客户的需求,但还不够。结果表明,常规收集的SNT数据包含足够的额外预测价值,值得进一步研究用于病例混合系统设计。

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