Predicting Home Care Use After Assessment Using Multiple Machine Learning Methods

Robin Teotia, Shannon Freeman, Piper J. Jackson
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Abstract

This research is a comparative analysis of applying different machine-learning methods to health care data. The data used is from the interRAI home care assessment instrument, collected in central British Columbia, Canada. The primary dataset used contains more than 100,000 records each with 423 attributes. We built models for predicting home care usage in the three weeks following an assessment by applying different regression and classification machine learning algorithms. The main regression algorithms used in the process were multiple linear regression, lasso, ridge, decision tree and ensemble methods, with the last being the most promising. In the area of classification, KNN, logistic regression, decision tree and ensemble methods were used. Apart from the technical machine learning algorithms, both patient partners and health systems experts participated and provided feedback regarding home care practices and issues. These formed essential element in designing the research question, selecting variables, and improving the models. The highest accuracy achieved was 84.3% which was achieved through a random forest classifier and evaluated using K-fold cross validation.
使用多种机器学习方法评估后预测家庭护理使用情况
这项研究是将不同的机器学习方法应用于医疗保健数据的比较分析。使用的数据来自interRAI家庭护理评估工具,收集于加拿大不列颠哥伦比亚省中部。所使用的主数据集包含超过100,000条记录,每条记录有423个属性。我们通过应用不同的回归和分类机器学习算法,在评估后的三周内建立了预测家庭护理使用的模型。在此过程中使用的主要回归算法有多元线性回归、lasso、ridge、决策树和集成方法,其中集成方法最有前途。在分类方面,使用了KNN、逻辑回归、决策树和集成方法。除了技术性机器学习算法外,患者合作伙伴和卫生系统专家都参与其中,并就家庭护理实践和问题提供了反馈。这些构成了设计研究问题、选择变量和改进模型的基本要素。通过随机森林分类器实现的最高准确率为84.3%,并使用K-fold交叉验证进行评估。
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