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Towards Deep Learning-Based Sarcopenia Screening with Body Joint Composition Analysis

机译:对基于深度学习的SARCOPENIA筛选身体关节成分分析

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Sarcopenia, a newly recognized geriatric syndrome, now prevalent in the rapidly aging region of Asia, is characterized by the age-related decline of skeletal muscle mass plus relatively low muscle strength and/or physical performance. Doctors screen for sarcopenia by observing patients’ habitual gait features without quantification and the performance of gait disturbances differ in various people that are considered to be sarcopenic, which is an important basis along with reduced physical functioning for the diagnosis of sarcopenia. Such a subjective diagnosis has been seen as a problem because diagnostic results may differ among doctors and factors such as fatigue may affect diagnosis. To strengthen and aid the use of these observations, we built a novel automatic deep learning model based on random forest for real-time human body joint detection coupled with a modified Long Short-Term Memory (LSTM) to recognize gait features for further clinical analysis. Aligned with the Asian Working Group for Sarcopenia (AWGS) [1] aims, our goal is to facilitate the implementation of standardized sarcopenia diagnosis in clinical practice by providing an automatic gait analysis system. Our model is recorded from geriatric patients for whole gait understanding. Experimental results demonstrate that our proposed model improves gait recognition performance compared to baseline methods. We believe, the quantitative evaluation provided by our method will assist the clinical diagnosis of sarcopenia and the experimental results on our gait datasets verify the feasibility and effectiveness of the proposed method.
机译:SARCOPENIA是一种新公认的老年综合征,现在在亚洲迅速老化地区普遍的特点是骨骼肌质量的年龄相关的下降以及相对较低的肌肉强度和/或物理性能。通过观察患者的习惯性步态特征而没有量化的患者习惯性步态特征,各种人群的习惯性步态特征的医生筛选,这是一个被认为是SARCENENIC的一个重要基础,以及减少疾病诊断的物理功能。这种主观诊断被视为问题,因为诊断结果可能在医生和疲劳等因素之间有所不同,可能会影响诊断。为了加强和帮助利用这些观察结果,我们基于随机森林建立了一种新的自动深度学习模型,用于实时人体关节检测,与改进的长短期记忆(LSTM)相结合,识别进一步临床分析的步态特征。与SARCOPENIA(AWGS)的亚洲工作组对齐[1]目的,我们的目标是通过提供自动步态分析系统,促进在临床实践中的标准化SARCOPENIA诊断。我们的模型是从老年患者记录的全部步态理解。实验结果表明,与基线方法相比,我们所提出的模型提高了步态识别性能。我们认为,我们的方法提供的定量评估将有助于SARCOPENIA的临床诊断和我们的步态数据集的实验结果验证了所提出的方法的可行性和有效性。

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