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Spine Magnetic Resonance Image Segmentation Using Deep Learning Techniques

机译:使用深度学习技术的脊柱磁共振图像分割

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Spinal Malalignment is a chronic disease that is widespread across the world. It causes different diseases such as Stenosis, Scoliosis, Osteoporotic Fractures, Thoracolumbar fractures, Disc degeneration, etc. The diagnosis of such disease is generally done by analyzing the Magnetic Resonance Imaging (MRI) scan of the lumbar spine region. MRI analysis is done by well experienced medical professionals (radiologists and orthopedists). The flip side to this inspection is that it is time-consuming and may be subjected to a lack of accuracy. The manual segmentation of MRI scans from a large number of scan images is a tedious and time-consuming process. Thus, there is a need for automatic segmentation and analysis of spine MRI scans to improve clinical outputs and the accuracy of spinal measurements. In recent, the rise of deep learning technologies is making a revolution in medical systems. It is capable of analyzing a large amount of data and yield better accuracy. So, deep learning approaches can be efficiently used for the automatic segmentation of MRI scans. In this paper, an overview of spinal MRI segmentation using deep learning techniques is presented. The disease diagnosis from spine MRI is conferred. Then the state-of-art research in the automatic image segmentation using Convolutional Neural Network (CNN) is discussed. A comparative analysis is done on various deep learning techniques based on the performance metrics is presented. Finally, the evaluation metrics for automatic segmentation is provided along with the comparison of the state-of-art results.
机译:脊柱排列不良是一种慢性疾病,在世界范围内广泛存在。它引起不同的疾病,例如狭窄,脊柱侧弯,骨质疏松性骨折,胸腰椎骨折,椎间盘退变等。这种疾病的诊断通常是通过分析腰椎区域的磁共振成像(MRI)扫描来完成的。 MRI分析由经验丰富的医学专业人员(放射科医生和骨科医生)进行。这种检查的另一面是,它很耗时并且可能缺乏准确性。从大量扫描图像中手动分割MRI扫描是一个繁琐且耗时的过程。因此,需要对脊柱MRI扫描进行自动分割和分析以改善临床输出和脊柱测量的准确性。近年来,深度学习技术的兴起正在推动医疗系统的一场革命。它能够分析大量数据并产生更高的准确性。因此,深度学习方法可以有效地用于MRI扫描的自动分割。在本文中,将介绍使用深度学习技术的脊柱MRI分割的概述。通过脊柱MRI诊断疾病。然后讨论了使用卷积神经网络(CNN)进行自动图像分割的最新技术。提出了一种基于性能指标的各种深度学习技术的比较分析。最后,提供了用于自动细分的评估指标以及最新结果的比较。

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