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Automated Grading of Lumbar Disc Degeneration via Supervised Distance Metric Learning

机译:通过监督距离度量学习自动分级腰椎间盘退化

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Lumbar disc degeneration (LDD) is a commonly age-associated condition related to low back pain, while its consequences are responsible for over 90% of spine surgical procedures. In clinical practice, grading of LDD by inspecting MRI is a necessary step to make a suitable treatment plan. This step purely relies on physicians manual inspection so that it brings the unbearable tediousness and inefficiency. An automated method for grading of LDD is highly desirable. However, the technical implementation faces a big challenge from class ambiguity, which is typical in medical image classification problems with a large number of classes. This typical challenge is derived from the complexity and diversity of medical images, which lead to a serious class overlapping and brings a great challenge in discriminating different classes. To solve this problem, we proposed an automated grading approach, which is based on supervised distance metric learning to classify the input discs into four class labels (0: normal, 1: slight, 2: marked, 3: severe). By learning distance metrics from labeled instances, an optimal distance metric is modeled and with two attractive advantages: (1) keeps images from the same classes close, and (2) keeps images from different classes far apart. The experiments, performed in 93 subjects, demonstrated the superiority of our method with accuracy 0.9226, sensitivity 0.9655, specificity 0.9083, F-score 0.8615. With our approach, physicians will be free from the tediousness and patients will be provided an effective treatment.
机译:腰椎间盘退变(LDD)是与腰背痛常用年龄相关的条件,而其后果是负责脊柱外科手术超过90%。在临床实践中,通过检查MRI LDD的分级是使一个合适的治疗计划的必要步骤。使得它带来的难以忍受乏味和低效此步骤纯粹依赖于医师手动检查。为LDD的分级的自动方法是高度期望的。然而,技术的实现面临着来自类歧义,这在医学图像分类的问题有大量的类典型的一大挑战。这种典型的挑战是从医学图像,这导致了严重的类重叠的复杂性和多样性的,并带来了区分不同类别的一个巨大的挑战。为了解决这个问题,我们提出了一个自动分级方法,它是基于有监督的距离度量学习到输入盘分类成四个类别标签(0:正常,1:轻微,2:标记,3:重度)。通过从标记为实例学习距离度量,最佳的距离度量进行建模和具有两个吸引人的优点:(1)从相同的类保持图像接近,和(2)从不同的类保持图像相距甚远。的实验中,在93名受试者进行,表明了我们准确0.9226,灵敏度0.9655,特异性0.9083方法的优越性,F-得分0.8615。随着我们的方法,医生会从沉闷自由和患者将提供一种有效的治疗。

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