Ottawa Hospital Research Institute, Ottawa, ON K1Y 4E9, Canada.
Department of Mechanical Engineering, University of Ottawa, Ottawa, ON K1N 6N5, Canada.
Sensors (Basel). 2022 Feb 23;22(5):1749. doi: 10.3390/s22051749.
The 6-min walk test (6MWT) is commonly used to assess a person’s physical mobility and aerobic capacity. However, richer knowledge can be extracted from movement assessments using artificial intelligence (AI) models, such as fall risk status. The 2-min walk test (2MWT) is an alternate assessment for people with reduced mobility who cannot complete the full 6MWT, including some people with lower limb amputations; therefore, this research investigated automated foot strike (FS) detection and fall risk classification using data from a 2MWT. A long short-term memory (LSTM) model was used for automated foot strike detection using retrospective data (n = 80) collected with the Ottawa Hospital Rehabilitation Centre (TOHRC) Walk Test app during a 6-min walk test (6MWT). To identify FS, an LSTM was trained on the entire six minutes of data, then re-trained on the first two minutes of data. The validation set for both models was ground truth FS labels from the first two minutes of data. FS identification with the 6-min model had 99.2% accuracy, 91.7% sensitivity, 99.4% specificity, and 82.7% precision. The 2-min model achieved 98.0% accuracy, 65.0% sensitivity, 99.1% specificity, and 68.6% precision. To classify fall risk, a random forest model was trained on step-based features calculated using manually labeled FS and automated FS identified from the first two minutes of data. Automated FS from the first two minutes of data correctly classified fall risk for 61 of 80 (76.3%) participants; however, <50% of participants who fell within the past six months were correctly classified. This research evaluated a novel method for automated foot strike identification in lower limb amputee populations that can be applied to both 6MWT and 2MWT data to calculate stride parameters. Features calculated using automated FS from two minutes of data could not sufficiently classify fall risk in lower limb amputees.
6 分钟步行测试(6MWT)常用于评估个体的身体活动能力和有氧能力。然而,人工智能(AI)模型可从运动评估中提取更丰富的知识,例如跌倒风险状态。2 分钟步行测试(2MWT)是一种替代评估方法,适用于无法完成完整 6MWT 的行动不便者,包括一些下肢截肢者;因此,本研究使用 2MWT 数据调查了自动足触地(FS)检测和跌倒风险分类。长短期记忆(LSTM)模型用于使用回顾性数据(n=80)进行自动足触地检测,这些数据是在渥太华医院康复中心(TOHRC)行走测试应用程序中进行 6 分钟步行测试(6MWT)时收集的。为了识别 FS,使用整个六分钟的数据对 LSTM 进行了训练,然后在数据的前两分钟上重新训练。两个模型的验证集均为前两分钟数据的真实 FS 标签。6 分钟模型的 FS 识别准确率为 99.2%,灵敏度为 91.7%,特异性为 99.4%,精度为 82.7%。2 分钟模型的准确率为 98.0%,灵敏度为 65.0%,特异性为 99.1%,精度为 68.6%。为了分类跌倒风险,随机森林模型使用基于手动标记 FS 和从前两分钟数据中自动识别的 FS 计算的基于步幅的特征进行了训练。前两分钟数据的自动 FS 正确分类了 80 名参与者中的 61 名(76.3%)的跌倒风险;然而,过去六个月内跌倒的参与者中,<50%的参与者被正确分类。本研究评估了一种新的方法,用于识别下肢截肢人群中的自动足触地,该方法可应用于 6MWT 和 2MWT 数据,以计算步幅参数。使用两分钟数据的自动 FS 计算的特征无法充分分类下肢截肢者的跌倒风险。