护理机构老年人身体状况变化异常检测方法研究

IF 0.8 Q4 ENGINEERING, BIOMEDICAL
Maho Shiotani, Katsuhisa Yamaguchi
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引用次数: 4

摘要

目前,老年人护理人员短缺已成为一个大问题,需要更精简的护理操作。在照护机构中,照护人员需要运用主观经验来发现被照护者身体状况的异常,包括严重或轻微的恶化或痴呆的行为和心理症状,这会降低工作效率。因此,我们的目标是建立一个利用客观数据检测物理状态异常的模型。在这项研究中,收集了来自一家护理机构的13名受试者的数据,并为每位受试者构建了隔离森林模型。被试身体状况的异常由护士记录在护理记录中,并作为模型评估的参考。召回率和特异性用于评估模型,表示为异常或正常情况下检测成功的百分比。利用1 ~ 60天的数据对隔离模型进行训练,并模拟训练数据量与模型性能之间的关系。从放置在受试者床上的传感器收集心率、呼吸频率和起床时间作为模型特征。此外,从护理记录中收集饮食摄入信息。评价结果分析显示,使用60天训练数据构建的模型召回率为45.6%±46.7%,特异性为83.88±6.06%。在未来的研究中,我们将继续收集数据并增加参与者的数量,以提高所提出的异常检测系统的鲁棒性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on an Anomaly Detection Method for Physical Condition Change of Elderly People in Care Facilities
Currently, the shortage of care workers for the elderly has become a big problem, and more streamlined care operations are needed. In care facilities, care workers are required to use their subjective experience to detect anomalies in physical condition of care receivers, including serious or insignificant deterioration or behavioral and psychological symptoms of dementia, which can decrease the work efficiency. Therefore, we aim to create a model using objective data for detecting anomalies in physical condition. In this study, data from 13 subjects in a care facility were collected, and isolation forest models were constructed for each subject. The subject ʼ s anomalies in physical condition were documented in a care record by a nurse and used as reference for model evaluation. Recall and specificity were used to evaluate the model, expressed as the per-centage of detection success for abnormal or normal conditions. Data collected for 1 to 60 days were used to train the isolation models, and the relationship between the amount of training data and model performance was simulated. Heart rate, respiratory rate, and time of getting out of bed were collected from a sensor placed on the subject ʼ s bed and used as the model features. In addition, dietary intake information was collected from the care record. Analysis of the evaluation results showed recall and specificity of 45.6 ± 46.7% and 83.88 ± 6.06%, re-spectively, for the model constructed using training data of 60 days. For future studies, we will continue to collect data and increase the number of participants to improve the robustness and accuracy of the proposed anomaly detection system.
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来源期刊
Advanced Biomedical Engineering
Advanced Biomedical Engineering ENGINEERING, BIOMEDICAL-
CiteScore
1.40
自引率
10.00%
发文量
15
审稿时长
15 weeks
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