Esfandiari Mohammad Amin, Fallah Tafti Mohammad, Jafarnia Dabanloo Nader, Yousefirizi Fereshteh
Department of Biomedical Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran.
Department of Biomedical Engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.
Heliyon. 2023 Apr 28;9(5):e15804. doi: 10.1016/j.heliyon.2023.e15804. eCollection 2023 May.
The rotator cuff tear is a common situation for basketballers, handballers, or other athletes that strongly use their shoulders. This injury can be diagnosed precisely from a magnetic resonance (MR) image. In this paper, a novel deep learning-based framework is proposed to diagnose rotator cuff tear from MRI images of patients suspected of the rotator cuff tear. First, we collected 150 shoulders MRI images from two classes of rotator cuff tear patients and healthy ones with the same numbers. These images were observed by an orthopedic specialist and then tagged and used as input in the various configurations of the Convolutional Neural Network (CNN). At this stage, five different configurations of convolutional networks have been examined. Then, in the next step, the selected network with the highest accuracy is used to extract the deep features and classify the two classes of rotator cuff tear and healthy. Also, MRI images are feed to two quick pre-trained CNNs (MobileNetv2 and SqueezeNet) to compare with the proposed CNN. Finally, the evaluation is performed using the 5-fold cross-validation method. Also, a specific Graphical User Interface (GUI) was designed in the MATLAB environment for simplicity, which allows for testing by detecting the image class. The proposed CNN achieved higher accuracy than the two mentioned pre-trained CNNs. The average accuracy, precision, sensitivity, and specificity achieved by the best selected CNN configuration are equal to 92.67%, 91.13%, 91.75%, and 92.22%, respectively. The deep learning algorithm could accurately rule out significant rotator cuff tear based on shoulder MRI.
肩袖撕裂对于篮球运动员、手球运动员或其他频繁使用肩部的运动员来说是一种常见情况。这种损伤可以通过磁共振(MR)图像进行精确诊断。在本文中,提出了一种基于深度学习的新型框架,用于从疑似肩袖撕裂患者的MRI图像中诊断肩袖撕裂。首先,我们从两类肩袖撕裂患者和数量相同的健康人群中收集了150张肩部MRI图像。这些图像由骨科专家进行观察,然后进行标记,并用作卷积神经网络(CNN)各种配置的输入。在此阶段,研究了五种不同配置的卷积网络。然后,在下一步中,使用准确率最高的选定网络提取深度特征,并对肩袖撕裂和健康这两类进行分类。此外,将MRI图像输入到两个快速预训练的CNN(MobileNetv2和SqueezeNet)中,以与所提出的CNN进行比较。最后,使用5折交叉验证方法进行评估。此外,为了简化操作,在MATLAB环境中设计了一个特定的图形用户界面(GUI),它允许通过检测图像类别进行测试。所提出的CNN比上述两个预训练的CNN具有更高的准确率。最佳选定CNN配置所实现的平均准确率、精确率、灵敏度和特异性分别等于92.67%、91.13%、91.75%和92.22%。深度学习算法可以基于肩部MRI准确排除明显的肩袖撕裂。