Hu Yang, Bishnoi Alka, Kaur Rachneet, Sowers Richard, Hernandez Manuel E
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:812-815. doi: 10.1109/EMBC44109.2020.9175871.
The incidence of fall-related injuries in older adults is high. Given the significant and adverse outcomes that arise from injurious falls in older adults, it is of the utmost importance to identify older adults at greater risk for falls as early as possible. Given that balance dysfunction provides a significant risk factor for falls, an automated and objective identification of balance dysfunction in community dwelling older adults using wearable sensor data when walking may be beneficial. In this study, we examine the feasibility of using wearable sensors, when walking, to identify older adults who have trouble with balance at an early stage using state-of-the-art machine learning techniques. We recruited 21 community dwelling older women. The experimental paradigm consisted of two tasks: Normal walking with a self-selected comfortable speed on an instrumented treadmill and a test of reflexive postural response, using the motor control test (MCT). Based on the MCT, identification of older women with low or high balance function was performed. Using short duration accelerometer data from sensors placed on the knee and hip while walking, supervised machine learning was carried out to classify subjects with low and high balance function. Using a Gradient Boosting Machine (GBM) algorithm, we classified balance function in older adults using 60 seconds of accelerometer data with an average cross validation accuracy of 91.5% and area under the receiver operating characteristic curve (AUC) of 0.97. Early diagnosis of balance dysfunction in community dwelling older adults through the use of user friendly and inexpensive wearable sensors may help in reducing future fall risk in older adults through earlier interventions and treatments, and thereby significantly reduce associated healthcare costs.
老年人中与跌倒相关的伤害发生率很高。鉴于老年人跌倒造成的重大不良后果,尽早识别出跌倒风险较高的老年人至关重要。鉴于平衡功能障碍是跌倒的一个重要风险因素,利用可穿戴传感器数据在行走时对社区居住老年人的平衡功能障碍进行自动、客观的识别可能会有所帮助。在本研究中,我们探讨了在行走时使用可穿戴传感器,运用先进的机器学习技术,早期识别出平衡功能有问题的老年人的可行性。我们招募了21名社区居住的老年女性。实验范式包括两项任务:在装有仪器的跑步机上以自我选择的舒适速度正常行走,以及使用运动控制测试(MCT)进行反射性姿势反应测试。基于MCT,对平衡功能低或高的老年女性进行识别。利用行走时放置在膝盖和臀部的传感器的短时间加速度计数据,进行监督式机器学习,以对平衡功能低和高的受试者进行分类。使用梯度提升机(GBM)算法,我们利用60秒的加速度计数据对老年人的平衡功能进行分类,平均交叉验证准确率为91.5%,受试者工作特征曲线下面积(AUC)为0.97。通过使用用户友好且价格低廉的可穿戴传感器对社区居住老年人的平衡功能障碍进行早期诊断,可能有助于通过早期干预和治疗降低老年人未来的跌倒风险,从而显著降低相关的医疗成本。