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Using LSTM for Detection of Wrist Related Disorders

机译:使用LSTM检测手腕相关疾病

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We have build a device named RepaiR for strength measurements and isokinetic rehabilitation of the wrist joint. We have performed series of measurements on 25 healthy individuals and 10 patients with neuromuscular and traumatic impairments. Our initial goal was to verify that the measured data contain sufficient information to distinguish between healthy and not healthy subjects as a proof of concept. We have implemented Recurrent Neural Network (RNN) with Long Short-Term Memory (LSTM) that processes the time structured measurements. LSTM effectively models the varying length of the input vector and the long term dependencies. We compare performances of our models on the data sets with varying minimal input vector lengths. We have proven that the measurements can be used to detect neuromuscular impairments and our best performing model worked with 77,6 % accuracy.
机译:我们建立了一个名为Repair的设备,以实现腕关节的强度测量和等因素恢复。我们对25名健康个体和10名神经肌肉和创伤障碍患者进行了一系列测量。我们的初步目标是验证测量数据是否包含足够的信息,以区分健康,而不是健康的科目作为概念证明。我们已经实现了经常性的神经网络(RNN),短期内存(LSTM)处理时间结构化测量。 LSTM有效地模拟了输入向量的变化长度和长期依赖性。我们将模型对数据集的性能进行比较,具有不同的最小输入向量长度。我们已经证明,测量可用于检测神经肌肉损伤,我们最好的表演模式以77,6%的准确性工作。

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