Comparison of machine learning approaches for near-fall-detection with motion sensors

被引:4
|
作者
Hellmers, Sandra [1 ]
Krey, Elias [1 ]
Gashi, Arber [2 ]
Koschate, Jessica [2 ]
Schmidt, Laura [2 ]
Stuckenschneider, Tim [2 ]
Hein, Andreas [1 ]
Zieschang, Tania [2 ]
机构
[1] Carl von Ossietzky Univ Oldenburg, Dept Hlth Serv Res, Assistance Syst & Med Device Technol, Oldenburg, Germany
[2] Carl von Ossietzky Univ Oldenburg, Dept Hlth Serv Res, Geriatr Med, Oldenburg, Germany
来源
关键词
near-fall; perturbation; CNN; machine learning; IMU; fall risk; mobile health; OLDER-ADULTS; RISK-FACTORS; DETECTION ALGORITHM; EPIDEMIOLOGY;
D O I
10.3389/fdgth.2023.1223845
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
IntroductionFalls are one of the most common causes of emergency hospital visits in older people. Early recognition of an increased fall risk, which can be indicated by the occurrence of near-falls, is important to initiate interventions. MethodsIn a study with 87 subjects we simulated near-fall events on a perturbation treadmill and recorded them with inertial measurement units (IMU) at seven different positions. We investigated different machine learning models for the near-fall detection including support vector machines, AdaBoost, convolutional neural networks, and bidirectional long short-term memory networks. Additionally, we analyzed the influence of the sensor position on the classification results. ResultsThe best results showed a DeepConvLSTM with an F1 score of 0.954 (precision 0.969, recall 0.942) at the sensor position "left wrist." DiscussionSince these results were obtained in the laboratory, the next step is to evaluate the suitability of the classifiers in the field.
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页数:10
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