Center for Biomedical Engineering, Department of Electrical Engineering, Chang Gung University, Tao-Yuan 33302, Taiwan.
Division of Cardiology, Department of Internal Medicine, Chang Gung Memorial Hospital, Tao-Yuan 33302, Taiwan.
Biosensors (Basel). 2021 Oct 29;11(11):428. doi: 10.3390/bios11110428.
Accelerometer-based motion sensing has been extensively applied to fall detection. However, such applications can only detect fall accidents; therefore, a system that can prevent fall accidents is desirable. Bed falls account for more than half of patient falls and are preceded by a clear warning indicator: the patient attempting to get out of bed. This study designed and implemented an Internet of Things module, namely, Bluetooth low-energy-enabled Accelerometer-based Sensing In a Chip-packaging (BASIC) module, with a tilt-sensing algorithm based on the patented low-complexity COordinate Rotation DIgital Computer (CORDIC)-based algorithm for tilt angle conversions. It is applied for detecting the postural changes (from lying down to sitting up) and to protect individuals at a high risk of bed falls by prompting caregivers to take preventive actions and assist individuals trying to get up. This module demonstrates how motion and tilt sensing can be applied to bed fall prevention. The module can be further miniaturized or integrated into a wearable device and commercialized in smart health-care applications for bed fall prevention in hospitals and homes.
基于加速度计的运动感应已广泛应用于跌倒检测。然而,此类应用只能检测到跌倒事故;因此,人们希望有一个能够预防跌倒事故的系统。床旁跌落占患者跌倒的一半以上,并且有明确的警告指示:患者试图离开病床。本研究设计并实现了物联网模块,即基于蓝牙低能耗的加速度计感应芯片封装(BASIC)模块,该模块采用基于专利的低复杂度坐标旋转数字计算机(CORDIC)的倾斜感应算法,用于倾斜角度转换。它用于检测体位变化(从躺下到坐起),通过提醒护理人员采取预防措施并协助试图起床的个人来保护有高床旁跌落风险的个人。该模块展示了如何将运动和倾斜感应应用于床旁跌落预防。该模块可以进一步小型化或集成到可穿戴设备中,并在智能医疗保健应用中商业化,以预防医院和家庭中的床旁跌落。