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Faster RCNN‐based detection of cervical spinal cord injury and disc degeneration

机译:基于RCNN的颈脊髓损伤和椎间盘变性的速度较快

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摘要

Magnetic resonance imaging (MRI) can indirectly reflect microscopic changes in lesions on the spinal cord; however, the application of deep learning to MRI to classify and detect lesions for cervical spinal cord diseases has not been sufficiently explored. In this study, we implemented a deep neural network for MRI to detect lesions caused by cervical diseases. We retrospectively reviewed the MRI of 1,500 patients irrespective of whether they had cervical diseases. The patients were treated in our hospital from January 2013 to December 2018. We randomly divided the MRI data into three groups of datasets: disc group (800 datasets), injured group (200 datasets), and normal group (500 datasets). We designed the relevant parameters and used a faster‐region convolutional neural network (Faster R‐CNN) combined with a backbone convolutional feature extractor using the ResNet‐50 and VGG‐16 networks, to detect lesions during MRI. Experimental results showed that the prediction accuracy and speed of Faster R‐CNN with ResNet‐50 and VGG‐16 in detecting and recognizing lesions from a cervical spinal cord MRI were satisfactory. The mean average precisions (mAPs) for Faster R‐CNN with ResNet‐50 and VGG‐16 were 88.6 and 72.3%, respectively, and the testing times was 0.22 and 0.24 s/image, respectively. Faster R‐CNN can identify and detect lesions from cervical MRIs. To some extent, it may aid radiologists and spine surgeons in their diagnoses. The results of our study can provide motivation for future research to combine medical imaging and deep learning.
机译:磁共振成像(MRI)可以间接地反映脊髓上病变的显微变化;然而,深入了解对颈脊髓疾病进行分类和检测病变的MRI的应用尚未得到充分探索。在这项研究中,我们为MRI实施了深度神经网络,以检测宫颈疾病引起的病变。我们回顾性地审查了1,500名患者的MRI,而不论它们是否有宫颈疾病。从2013年1月到2018年12月,患者在我们的医院进行了处理。我们将MRI数据随机分为三组数据集:光盘组(800个数据集),受伤组(200个数据集)和正常组(500个数据集)。我们设计了相关参数,并使用了使用Reset-50和VGG-16网络的骨干卷积特征提取器的更快区域卷积神经网络(更快R-CNN),以检测MRI期间的病变。实验结果表明,具有Reset-50和VGG-16在检测和识别来自颈脊帘线MRI的病变的预测准确度和速度令人满意。具有Reset-50和VGG-16的速度R-CNN的平均平均矫反比(MAPS)分别为88.6和72.3%,并且检测时间分别为0.22和0.24 s /图像。更快的R-CNN可以识别和检测来自宫颈MRI的病变。在某种程度上,它可以帮助放射科医师和脊柱外科医生在他们的诊断中。我们的研究结果可以为未来的研究提供功能,以将医学成像和深度学习结合起来。

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