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首页> 外文期刊>BMC Medical Informatics and Decision Making >Using machine learning algorithms to guide rehabilitation planning for home care clients
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Using machine learning algorithms to guide rehabilitation planning for home care clients

机译:使用机器学习算法来指导家庭护理客户的康复计划

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Background Targeting older clients for rehabilitation is a clinical challenge and a research priority. We investigate the potential of machine learning algorithms – Support Vector Machine (SVM) and K-Nearest Neighbors (KNN) – to guide rehabilitation planning for home care clients. Methods This study is a secondary analysis of data on 24,724 longer-term clients from eight home care programs in Ontario. Data were collected with the RAI-HC assessment system, in which the Activities of Daily Living Clinical Assessment Protocol (ADLCAP) is used to identify clients with rehabilitation potential. For study purposes, a client is defined as having rehabilitation potential if there was: i) improvement in ADL functioning, or ii) discharge home. SVM and KNN results are compared with those obtained using the ADLCAP. For comparison, the machine learning algorithms use the same functional and health status indicators as the ADLCAP. Results The KNN and SVM algorithms achieved similar substantially improved performance over the ADLCAP, although false positive and false negative rates were still fairly high (FP > .18, FN > .34 versus FP > .29, FN. > .58 for ADLCAP). Results are used to suggest potential revisions to the ADLCAP. Conclusion Machine learning algorithms achieved superior predictions than the current protocol. Machine learning results are less readily interpretable, but can also be used to guide development of improved clinical protocols.
机译:背景技术针对年长的客户进行康复是一项临床挑战,也是一项研究重点。我们研究了支持向量机(SVM)和K最近邻居(KNN)等机器学习算法的潜力,以指导家庭护理客户的康复计划。方法本研究是对来自安大略省八个家庭护理计划中24,724个长期客户的数据的二级分析。通过RAI-HC评估系统收集数据,在该系统中,“日常生活临床评估协议活动(ADLCAP)”用于识别具有康复潜力的客户。出于研究目的,如果满足以下条件,则将客户定义为具有康复潜力:i)ADL功能得到改善,或ii)出院。将SVM和KNN结果与使用ADLCAP获得的结果进行比较。为了进行比较,机器学习算法使用与ADLCAP相同的功能和健康状态指示器。结果尽管假阳性和假阴性率仍然相当高(FP> .18,FN> .34,而FP> .29,FN。> .58,ADLCAP),但KNN和SVM算法在性能上都比ADLCAP有了显着提高。 。结果用于建议对ADLCAP的潜在修订。结论机器学习算法比当前协议具有更好的预测。机器学习的结果难以解释,但也可用于指导改进的临床方案的开发。

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