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使用随机森林和智能手机传感器特征对下肢截肢患者进行 6 分钟步行测试的跌倒风险分类。

Fall risk classification for people with lower extremity amputations using random forests and smartphone sensor features from a 6-minute walk test.

机构信息

Ottawa Hospital Research Institute, Ottawa, Ontario, Canada.

Department of Mechanical Engineering, University of Ottawa, Ottawa, Canada.

出版信息

PLoS One. 2021 Apr 26;16(4):e0247574. doi: 10.1371/journal.pone.0247574. eCollection 2021.

Abstract

Fall-risk classification is a challenging but necessary task to enable the recommendation of preventative programs for individuals identified at risk for falling. Existing research has primarily focused on older adults, with no predictive fall-risk models for lower limb amputees, despite their greater likelihood of fall-risk than older adults. In this study, 89 amputees with varying degrees of lower limb amputation were asked if they had fallen in the past 6 months. Those who reported at least one fall were considered a fall risk. Each participant performed a 6 minute walk test (6MWT) with an Android smartphone placed in a holder located on the back of the pelvis. A fall-risk classification method was developed using data from sensors within the smartphone. The Ottawa Hospital Rehabilitation Center Walk Test app captured accelerometer and gyroscope data during the 6MWT. From this data, foot strikes were identified, and 248 features were extracted from the collection of steps. Steps were segmented into turn and straight walking, and four different data sets were created: turn steps, straightaway steps, straightaway and turn steps, and all steps. From these, three feature selection techniques (correlation-based feature selection, relief F, and extra trees classifier ensemble) were used to eliminate redundant or ineffective features. Each feature subset was tested with a random forest classifier and optimized for the best number of trees. The best model used turn data, with three features selected by Correlation-based feature selection (CFS), and used 500 trees in a random forest classifier. The resulting metrics were 81.3% accuracy, 57.2% sensitivity, 94.9% specificity, a Matthews correlation coefficient of 0.587, and an F1 score of 0.83. Since the outcomes are comparable to metrics achieved by existing clinical tests, the classifier may be viable for use in clinical practice.

摘要

跌倒风险分类是一项具有挑战性但必要的任务,可针对有跌倒风险的个体推荐预防计划。现有研究主要集中在老年人身上,对于下肢截肢者没有预测跌倒风险的模型,尽管他们跌倒的风险比老年人更高。在这项研究中,89 名下肢截肢程度不同的截肢者被问及他们在过去 6 个月中是否跌倒过。报告至少跌倒一次的人被认为有跌倒风险。每位参与者都使用放置在骨盆背面支架上的 Android 智能手机进行了 6 分钟步行测试(6MWT)。使用智能手机内传感器的数据开发了跌倒风险分类方法。渥太华医院康复中心步行测试应用程序在 6MWT 期间捕获了加速度计和陀螺仪数据。从这些数据中识别出了脚步,并且从脚步的集合中提取了 248 个特征。脚步被分为转弯和直线行走,创建了四个不同的数据集:转弯步、直线步、转弯和直线步以及所有步。在此基础上,使用三种特征选择技术(基于相关性的特征选择、ReliefF 和 ExtraTrees 分类器集成)来消除冗余或无效的特征。每个特征子集都使用随机森林分类器进行测试,并针对最佳树的数量进行了优化。最佳模型使用转弯数据,基于相关性的特征选择(CFS)选择了三个特征,并在随机森林分类器中使用了 500 棵树。产生的指标为 81.3%的准确率、57.2%的灵敏度、94.9%的特异性、0.587 的马修斯相关系数和 0.83 的 F1 分数。由于结果与现有临床测试所达到的指标相当,因此该分类器可能可用于临床实践。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/49c8/8075234/8b72d2ab8bb3/pone.0247574.g001.jpg

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