Convolutional Neural Networks in the Diagnosis of Cervical Myelopathy.

Q3 Medicine Revista Brasileira de Ortopedia Pub Date : 2024-12-07 eCollection Date: 2024-10-01 DOI:10.1055/s-0044-1779317
Murat Korkmaz, Hakan Yılmaz, Merve Damla Korkmaz, Turgut Akgül
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Abstract

Objective  Artificial intelligence technologies have been used increasingly in spine surgery as a diagnostic tool. The aim of the present study was to evaluate the effectiveness of the convolutional neural networks in the diagnosis of cervical myelopathy (CM) compared with conventional cervical magnetic resonance imaging (MRI). Materials and Methods  This was a cross-sectional descriptive analytical study. A total of 125 participants with clinical and radiological diagnosis of CM were included in the study. Sagittal and axial MRI images in the T2 sequence of the cervical spine were used. All image parts were obtained as 8 bytes/pixel in 2 different categories, CM and normal, both in axial and sagittal views. Results  Triple cross validation was performed to prevent overfitting during the training process. A total of 242 sample images were used for training and testing the model created for axial views. In the axial view, the calculated values are 97.44% for sensitivity and 97.56% for specificity. A total of 249 sample images were used for training and testing the model created for sagittal views. The calculated values are 97.50% for sensitivity and 97.67% for specificity. After the training, the average accuracy value was 96.7% (±1.53) for the axial view and 97.19% (±1.2) for the sagittal view. Conclusion  Deep learning (DL) has shown a great improvement especially in spine surgery. We found that DL technology works with a higher accuracy than other studies in the literature for the diagnosis of CM.

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卷积神经网络在颈椎病诊断中的应用。
人工智能技术作为诊断工具已越来越多地应用于脊柱外科。本研究的目的是评估卷积神经网络在诊断颈脊髓病(CM)的有效性,并与传统的宫颈磁共振成像(MRI)进行比较。材料与方法本研究为横断面描述性分析研究。共有125名临床和放射学诊断为CM的参与者被纳入研究。采用颈椎T2序列的矢状位和轴位MRI图像。在轴向和矢状视图中,CM和normal两种不同的类别中,所有图像部分均以8字节/像素获得。结果进行了三重交叉验证,防止了训练过程中的过拟合。总共使用242个样本图像来训练和测试为轴向视图创建的模型。在轴向视图中,计算值的敏感性为97.44%,特异性为97.56%。总共249个样本图像被用于训练和测试为矢状视图创建的模型。计算值敏感性为97.50%,特异性为97.67%。训练后,轴向位的平均准确率为96.7%(±1.53),矢状位的平均准确率为97.19%(±1.2)。结论深度学习(DL)在脊柱外科手术中有很大的进步。我们发现DL技术在CM诊断方面比文献中的其他研究具有更高的准确性。
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
142
审稿时长
21 weeks
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