IEEE Trans Neural Syst Rehabil Eng. 2019 May;27(5):995-1003. doi: 10.1109/TNSRE.2019.2911602. Epub 2019 Apr 16.
Falls in older adults are a major cause of morbidity and mortality and are a key class of preventable injuries. This paper presents a patient-specific (PS) fall prediction and detection prototype system that utilizes a single tri-axial accelerometer attached to the patient's thigh to distinguish between activities of daily living (ADL) and fall events. The proposed system consists of two modes of operation: 1) fast mode for fall predication (FMFP) predicting a fall event (300-700 msec) before occurring and 2) slow mode for fall detection (SMFD) with a 1-sec latency for detecting a fall event. The nonlinear support vector machine classifier (NLSVM)-based FMFP algorithm extracts seven discriminating features for the pre-fall case to identify a fall risk event and alarm the patient. The proposed SMFD algorithm utilizes a Three-cascaded 1-sec sliding frames classification architecture with a linear regression-based offline training to identify a single and optimal threshold for each patient. Fall incidence will trigger an alarming notice to the concern healthcare providers via the Internet. Experiments are performed with 20 different subjects (age above 65 years) and a total number of 100 associated falls and ADL recordings indoors and outdoors. The accuracy of the proposed algorithms is furthermore validated via MobiFall Dataset. FMFP achieves sensitivity and specificity of 97.8% and 99.1%, respectively, while SMFD achieves sensitivity and specificity of 98.6% and 99.3%, respectively, for a total number of 600 measured falls and ADL cases from 77 subjects.
老年人跌倒会导致发病率和死亡率上升,是可预防伤害的主要类型。本文提出了一种基于个体患者的(PS)跌倒预测和检测原型系统,该系统使用附着在患者大腿上的单个三轴加速度计来区分日常生活活动(ADL)和跌倒事件。该系统由两种操作模式组成:1)快速模式下的跌倒预测(FMFP),用于在跌倒事件发生前 300-700 毫秒进行预测;2)慢速模式下的跌倒检测(SMFD),具有 1 秒的延迟,用于检测跌倒事件。基于非线性支持向量机分类器(NLSVM)的 FMFP 算法提取了七个区分特征,用于识别跌倒风险事件并向患者发出警报。所提出的 SMFD 算法利用三级 1 秒滑动帧分类架构和基于线性回归的离线训练,为每位患者识别单个最佳阈值。通过互联网向相关医疗保健提供者发送跌倒报警通知。实验在 20 名不同的对象(年龄在 65 岁以上)和 100 次室内外 ADL 记录和相关跌倒事件中进行。所提出算法的准确性还通过 MobiFall 数据集进行了验证。FMFP 的灵敏度和特异性分别为 97.8%和 99.1%,而 SMFD 的灵敏度和特异性分别为 98.6%和 99.3%,用于来自 77 名对象的 600 个测量的跌倒和 ADL 病例。