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利用机器学习研究康复单元中影响出院目的地的因素。

Using Machine Learning to Study Factors Affecting Discharge Destination in Recovery Units.

作者信息

Kunoh Kenta, Bizen Hiroki, Fujii Keisuke, Nakashima Daiki, Kimura Daisuke

机构信息

Department of Rehabilitation, Yamada Hospital, Gifu, JPN.

Department of Occupational Therapy, Kansai University of Health Sciences, Osaka, JPN.

出版信息

Cureus. 2024 Oct 6;16(10):e70916. doi: 10.7759/cureus.70916. eCollection 2024 Oct.

Abstract

BACKGROUND

In recent years, machine learning has been developed in the medical community to construct multidimensional datasets consisting of many variables and perform simultaneous factor analysis.

OBJECTIVE

This study aimed to construct a multidimensional dataset of 50 items by incorporating supervised machine learning in a random forest algorithm to predict whether patients will be discharged home or to a facility after a stroke.

METHODS

Thirty patients hospitalized with cerebrovascular diseases who were subsequently discharged were considered as the study subjects. The dataset used for analysis consisted of attributes such as characteristics (three items), physical and cognitive functions (seven items), functional independence measure (FIM) (18 items), blood data (16 items), and social characteristics (six items). The discharge destination variable was either a home or a facility. Machine learning was used to extract factors important for this classification. The accuracy of the random forest was calculated by five-fold cross-validation. The mean decrease Gini, a measure of importance in classification, was calculated for each fold.

RESULTS

The results indicated that FIM, a measure of activities of daily living (ADL), and cognitive function, including memory, which strongly influenced the prediction equation, were important factors in the proposed algorithm. The results of the analysis revealed that the algorithm predicted home discharge or institutionalization with 87.1% accuracy.

CONCLUSION

Through this study, ADL and cognitive function were identified as important factors in predicting home discharge for patients with cerebrovascular disease.

摘要

背景

近年来,机器学习在医学领域得到发展,用于构建由许多变量组成的多维数据集并进行同步因子分析。

目的

本研究旨在通过在随机森林算法中纳入监督式机器学习来构建一个包含50个项目的多维数据集,以预测中风患者出院后是回家还是去医疗机构。

方法

将30名随后出院的脑血管疾病住院患者作为研究对象。用于分析的数据集包括特征(3项)、身体和认知功能(7项)、功能独立性测量(FIM)(18项)、血液数据(16项)和社会特征(6项)等属性。出院目的地变量为回家或去医疗机构。使用机器学习提取对该分类重要的因素。通过五折交叉验证计算随机森林的准确性。为每一折计算平均减少基尼系数(一种分类重要性的度量)。

结果

结果表明,作为日常生活活动(ADL)度量的FIM以及包括记忆在内的对预测方程有强烈影响的认知功能,是所提出算法中的重要因素。分析结果显示,该算法预测回家出院或入住机构的准确率为87.1%。

结论

通过本研究,ADL和认知功能被确定为预测脑血管疾病患者回家出院的重要因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7cd5/11537482/71acfcdb3b00/cureus-0016-00000070916-i01.jpg

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