Prediction of Physical Activity Patterns in Older Patients Rehabilitating After Hip Fracture Surgery: Exploratory Study.

Q2 Medicine
Dieuwke van Dartel, Ying Wang, Johannes H Hegeman, Miriam M R Vollenbroek-Hutten
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引用次数: 0

Abstract

Background: Building up physical activity is a highly important aspect in an older patient's rehabilitation process after hip fracture surgery. The patterns of physical activity during rehabilitation are associated with the duration of rehabilitation stay. Predicting physical activity patterns early in the rehabilitation phase can provide patients and health care professionals an early indication of the duration of rehabilitation stay as well as insight into the degree of patients' recovery for timely adaptive interventions.

Objective: This study aims to explore the early prediction of physical activity patterns in older patients rehabilitating after hip fracture surgery at a skilled nursing home.

Methods: The physical activity of patients aged ≥70 years with surgically treated hip fracture was continuously monitored using an accelerometer during rehabilitation at a skilled nursing home. Physical activity patterns were described in our previous study, and the 2 most common patterns were used in this study for pattern prediction: the upward linear pattern (n=15) and the S-shape pattern (n=23). Features from the intensity of physical activity were calculated for time windows with different window sizes of the first 5, 6, 7, and 8 days to assess the early rehabilitation moment in which the patterns could be predicted most accurately. Those features were statistical features, amplitude features, and morphological features. Furthermore, the Barthel Index, Fracture Mobility Score, Functional Ambulation Categories, and the Montreal Cognitive Assessment score were used as clinical features. With the correlation-based feature selection method, relevant features were selected that were highly correlated with the physical activity patterns and uncorrelated with other features. Multiple classifiers were used: decision trees, discriminant analysis, logistic regression, support vector machines, nearest neighbors, and ensemble classifiers. The performance of the prediction models was assessed by calculating precision, recall, and F1-score (accuracy measure) for each individual physical activity pattern. Furthermore, the overall performance of the prediction model was calculated by calculating the F1-score for all physical activity patterns together.

Results: The amplitude feature describing the overall intensity of physical activity on the first day of rehabilitation and the morphological features describing the shape of the patterns were selected as relevant features for all time windows. Relevant features extracted from the first 7 days with a cosine k-nearest neighbor model reached the highest overall prediction performance (micro F1-score=1) and a 100% correct classification of the 2 most common physical activity patterns.

Conclusions: Continuous monitoring of the physical activity of older patients in the first week of hip fracture rehabilitation results in an early physical activity pattern prediction. In the future, continuous physical activity monitoring can offer the possibility to predict the duration of rehabilitation stay, assess the recovery progress during hip fracture rehabilitation, and benefit health care organizations, health care professionals, and patients themselves.

预测老年髋部骨折术后康复患者的身体活动模式:探索性研究。
背景:在老年患者髋部骨折手术后的康复过程中,加强身体活动是一个非常重要的方面。康复期间的身体活动模式与康复停留时间有关。在康复阶段早期预测身体活动模式可以为患者和卫生保健专业人员提供康复停留时间的早期指示,以及了解患者的康复程度,以便及时采取适应性干预措施。目的:本研究旨在探讨老年髋部骨折术后在熟练疗养院康复的身体活动模式的早期预测。方法:使用加速度计连续监测年龄≥70岁手术治疗髋部骨折患者在熟练养老院康复期间的身体活动。我们在之前的研究中描述了身体活动模式,本研究中使用了两种最常见的模式进行模式预测:向上线性模式(n=15)和s形模式(n=23)。计算前5天、6天、7天和8天不同窗口大小的体力活动强度特征,以评估最能准确预测模式的早期康复时刻。这些特征包括统计特征、幅度特征和形态特征。此外,Barthel指数、骨折活动能力评分、功能活动类别和蒙特利尔认知评估评分作为临床特征。采用基于相关性的特征选择方法,选择与身体活动模式高度相关、与其他特征不相关的相关特征。使用了多种分类器:决策树、判别分析、逻辑回归、支持向量机、最近邻和集成分类器。预测模型的性能通过计算每个个体身体活动模式的精度、召回率和f1分数(准确性测量)来评估。此外,通过计算所有体育活动模式的f1得分来计算预测模型的整体性能。结果:所有时间窗的相关特征均为描述康复第一天整体体力活动强度的幅度特征和描述模式形状的形态特征。使用余弦k近邻模型从前7天提取的相关特征达到了最高的整体预测性能(微观f1得分=1),并且对2种最常见的体育活动模式的分类准确率为100%。结论:在髋部骨折康复的第一周对老年患者的身体活动进行持续监测,可以预测早期的身体活动模式。在未来,持续的身体活动监测可以提供预测康复停留时间的可能性,评估髋部骨折康复期间的恢复进展,并使卫生保健机构、卫生保健专业人员和患者自己受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.20
自引率
0.00%
发文量
31
审稿时长
12 weeks
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