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Fuzzy logic-based risk of fall estimation using smartwatch data as a means to form an assistive feedback mechanism in everyday living activities

机译:基于模糊逻辑的跌倒风险评估,使用智能手表数据作为日常生活活动中形成辅助反馈机制的手段

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This Letter aims to create a fuzzy logic-based assistive prevention tool for falls, based on accessible sensory technology, such as smartwatch, resulting in monitoring of the risk factors of falls caused by orthostatic hypotension (OH); a drop in systolic blood pressure (DSBP) >20 mmHg due to postural changes. Epidemiological studies have shown that OH is a high risk factor for falls and has a strong impact in quality of life (QoL) of the elderly's, especially for some cases such as Parkinsonians. Based on smartwatch data, it is explored here how statistical features of heart rate variability (HRV) can lead to DSBP prediction and estimation of the risk of fall. In this vein, a pilot study was conducted in collaboration with five Greek Parkinson's Foundation patients and ten healthy volunteers. Taking into consideration, the estimated DSBP and additional statistics of the user's medical/behavioural history, a fuzzy logic inference system was developed, to estimate the instantaneous risk of fall. The latter is fed back to the user with a mechanism chosen by him/her (i.e. vibration and/or sound), to prevent a possible fall, and also sent to the attentive carers and/or healthcare professionals for a home-based monitoring beyond the clinic. The proposed approach paves the way for effective exploitation of the contribution of smartwatch data, such as HRV, in the sustain of QoL in everyday living activities.
机译:这封信旨在基于可访问的传感技术(例如智能手表)创建基于模糊逻辑的跌倒辅助预防工具,以监控由立位性低血压(OH)引起的跌倒风险因素;由于体位变化导致收缩压(DSBP)下降> 20 mmHg。流行病学研究表明,OH是跌倒的高风险因素,并且对老年人的生活质量(QoL)有很大影响,尤其是对于某些情况,例如帕金森氏症。基于智能手表数据,这里探讨了心率变异性(HRV)的统计特征如何导致DSBP预测和跌倒风险的估计。有鉴于此,与五名希腊帕金森氏病患者和十名健康志愿者合作进行了一项初步研究。考虑到估计的DSBP以及用户病历的附加统计数据,开发了一种模糊逻辑推理系统,以估计跌倒的瞬时风险。后者通过用户选择的机制(即振动和/或声音)反馈给用户,以防止可能的跌倒,并且还发送给细心的护理人员和/或医疗保健专业人员,以进行基于家庭的监视诊所。所提出的方法为有效利用智能手表数据(例如HRV)在维持日常生活中的生活质量方面铺平了道路。

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