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Deep-Learning-Based MRI Images for Analysis of Sport-Induced Ankle Joint Injury

机译:基于深度学习的MRI图像,用于分析运动诱导的踝关节损伤

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This study was to analyze the sport-induced ankle joint injury (AJI) images based on the neural network algorithms using the magnetic resonance imaging (MRI). 20 patients and 20 volunteers were included in the experimental and control groups, respectively. The hybrid diffusion equation (HDE) neural network (HDENN) algorithm was compared with the fully convolutional neural network (FCNN) and the FCNN preprocessing, and the HDE was applied to the MRI analysis of sport-induced AJI. The results showed that the total score of MRI image for the conventional position of the anterior talofibular ligament (ATFL) and posterior talofibular ligament (PTFL) was concentrated in 4 (55%) and 5 (65%), respectively. The number of patients with good prognosis with grade II injury (11 cases) was much higher than that of grade III injury (2 cases), and the number of patients with poor prognosis (4 cases) was lower than that of grade III injury (6 cases) ( ). Conventional MRI was recommended to observe the ATFL and PTFL, and the valgus position MRI was recommended for the calcaneofibular ligament (CFL); conservative treatment was recommended for patients with grades I and II AJI, but surgical treatment was recommended for patients with grade III AJI.
机译:该研究是使用磁共振成像(MRI)分析基于神经网络算法的运动诱导的踝关节损伤(AJI)图像。实验和对照组中包含20名患者和20名志愿者。将混合扩散方程(HDE)神经网络(HDEN)算法与全卷积神经网络(FCNN)和FCNN预处理进行了比较,并且将HDE应用于运动诱导的AJI的MRI分析。结果表明,前跖韧带(ATFL)和后胎韧带(ATFL)和后胎韧带(PTFL)的常规位置的MRI图像的总得分分别浓缩4(55%)和5(65%)。 II级损伤预后(11例)的患者数量远高于III级损伤(2例),预后差(4例)的患者数量低于III级损伤( 6例)()。建议使用常规MRI观察ATFL和PTFL,推荐旋流位置MRI用于钙质鹦鹉韧带(CFL);为患有I和II AJI的患者建议保守治疗,但为III级AJI患者推荐了外科治疗。

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