Machine Learning-based Image Processing in Support of Discus Hernia Diagnosis

T. Šušteršič, Vesna Ranković, Vojin Kovacevic, Vladimir M. Milovanović, L. Rasulić, N. Filipovic
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引用次数: 1

Abstract

Diagnosing lumbar discus hernia is a challenging task, due to disc and vertebral variations in size, shape, quantity, and appearance. Medical history and physical examination, electrodiagnostic tests, and MRIs are all used by doctors to set a definitive diagnosis. A majority of the state-of-the-art methods are semi-automatic and require extra corrections to the solution or are extremely sensitive to changes in parameters. Based on literature review, there is a solid basis for implementation of machine learning-based methods for disc herniation detection in MRI images. An automated segmentation method of vertebrae and discs is proposed in this study as a first step towards a decision support system for discus hernia identification. Dataset consisted of 104 images in sagittal and 99 images in axial views. Optimized convolutional neural network U-net has demonstrated very high accuracy in segmentation. Additional result represents the calculated distance from the disc's center to the disc's edge points in axial images across 360°, which results in clearly different number of peaks for the healthy and diseased discs. Fully automated computer diagnostic system helps speed up the process of setting up adequate diagnosis and reducing human mistakes.
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基于机器学习的图像处理在铁饼疝诊断中的应用
由于椎间盘和椎体在大小、形状、数量和外观上的变化,诊断腰椎间盘疝是一项具有挑战性的任务。病史和体格检查,电诊断测试和核磁共振成像都是医生用来确定明确诊断的。大多数最先进的方法是半自动的,需要对解决方案进行额外的修正,或者对参数的变化非常敏感。基于文献综述,在MRI图像中实现基于机器学习的椎间盘突出检测方法有坚实的基础。本研究提出了一种自动分割椎骨和椎间盘的方法,作为建立一个诊断椎间盘疝的决策支持系统的第一步。数据集由104张矢状图和99张轴向图组成。经过优化的卷积神经网络U-net在分割方面具有很高的准确率。附加结果表示在360°轴向图像中从椎间盘中心到椎间盘边缘点的计算距离,这导致健康和病变椎间盘的峰值数量明显不同。全自动计算机诊断系统有助于加快建立适当诊断的过程,减少人为错误。
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