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Segmentation of Lumbar Spine MRI Images for Stenosis Detection Using Patch-Based Pixel Classification Neural Network

机译:基于补丁的像素分类神经网络的腰椎脊柱MRI图像的分割

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This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonance Imaging (MRI) images to delineate boundaries between the anterior arch and posterior arch of the lumbar spine. This is necessary to efficiently detect the occurrence of lumbar spinal stenosis as a leading cause of Chronic Lower Back Pain. A patch-based classification neural network consisting of convolutional and fully connected layers is used to classify and label pixels in MRI images. The classifier is trained using overlapping patches of size 25×25 pixels taken from a set of cropped axial-view T2-weighted MRI images of the bottom three intervertebral discs. A set of experiment is conducted to measure the performance of the classification network in segmenting the images when either all or each of the discs separately is used. Using pixel accuracy, mean accuracy, mean Intersection over Union (IoU), and frequency weighted IoU as the performance metrics we have shown that our approach produces better segmentation results than eleven other pixel classifiers. Furthermore, our experiment result also indicates that our approach produces more accurate delineation of all important boundaries and making it best suited for the subsequent stage of lumbar spinal stenosis detection.
机译:本文介绍了腰椎磁共振成像(MRI)图像自动分割的核心问题,以描绘腰椎前拱和后拱之间的界限。这是有效地检测腰椎狭窄的发生作为慢性腰痛的主要原因。由卷积和完全连接层组成的基于补丁的分类神经网络用于对MRI图像中的像素进行分类和标记像素。分类器使用从底部三个椎间盘的一组裁剪轴向图T2加权MRI图像中取出的重叠尺寸25×25像素训练。进行一组实验以测量分类网络在分别或每个光盘分开时分割图像的性能。使用像素精度,平均精度,平均交叉口(IOU),以及频率加权IOU作为性能指标,我们已经表明我们的方法产生比11其他像素分类器的更好的分段结果。此外,我们的实验结果也表明我们的方法更准确地描绘了所有重要边界,并使其最适合腰椎脊柱狭窄检测的后期。

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