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The Prediction of Ankle Injury Based on sEMG Using Cerebellar Model Neural Network

机译:基于明星模型神经网络的SEMG预测踝关节损伤

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Ankle joint injury is a kind of common and frequently-occurring clinical musculoskeletal injury disease. The clinical diagnosis of ankle joint injury is mostly based on conventional computed tomography (CT), X-ray and doctor's consultation. However, because of the insufficient understanding and cognition of ankle joint injury by some physicians, missed diagnosis and misdiagnosis are often caused. Therefore, the correct treatment measures and treatment time are always missed, making the acute ankle joint injury become chronic ankle instability. Surface electromyography (sEMG) is a non-stationary weak bioelectrical signal that is superimposed on the surface of the skin by the action of potential sequence generated by muscle excitability during exercise. SEMG has great performance on the recognition of human movements and the diagnosis of injuries because of its strong muscle specificity and differences in exercise patterns. In this paper, based on the difference of the information provided by sEMG measured by patients and healthy people, an intelligent diagnosis method is proposed to help doctors improve the accuracy of diagnosis. This intelligent diagnostic method is named cerebellar model neural network (CMNN) that imitates the learning mechanism of the human cerebellum. The trained CMNN can be seen as an expert who is good at ankle diagnosis and can help doctors make a better diagnose. This study reduces the number of iterations and speeds up the diagnosis by changing the loss function of CMNN from mean square error (MSE) to cross entropy.
机译:踝关节损伤是一种常见和常见的临床肌肉骨骼损伤疾病。踝关节损伤的临床诊断主要基于常规计算断层扫描(CT),X射线和医生的咨询。但是,由于某些医生对踝关节伤害的理解和认知不足,往往会造成错过的诊断和误诊。因此,始终错过了正确的处理措施和治疗时间,使急性踝关节损伤成为慢性踝关节不稳定。表面肌电图(SEMG)是一种非静止的弱生物电信号,通过运动期间肌肉兴奋性产生的潜在序列的作用叠加在皮肤表面上。由于其强烈的肌肉特异性和运动模式的差异,SEMG对人类运动的识别和损伤的诊断具有良好的表现。本文基于患者和健康人员测量的SEMG提供的信息的差异,提出了一种智能诊断方法,以帮助医生提高诊断的准确性。这种智能诊断方法名为Cerebellar模型神经网络(CMNN),其模仿人体小脑的学习机制。训练有素的CMNN可以被视为擅长踝关节诊断的专家,可以帮助医生做出更好的诊断。本研究通过改变CMNN从均方误差(MSE)来跨越熵来减少迭代次数并加快诊断。

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