Computer Engineering Department, Namık Kemal University, Tekirdağ, Turkey.
Computer Engineering Department, Yıldız Technical University, İstanbul, Turkey.
Artif Intell Med. 2019 Jun;97:118-130. doi: 10.1016/j.artmed.2018.11.008. Epub 2018 Dec 5.
Menisci are structures that directly affect movement, so early detection of meniscus tears also helps to prevent progressive knee disorders such as osteoarthritis. Manual segmentation of the menisci and diagnosis of the meniscal tear is a costly process in terms of time and effort for a radiologist. The aim of this study is to automatically determine the location and the type of meniscal tears that are important in the diagnosis and effective treatment of this problem. For this purpose, 29 different MR images, which were provided by Osteoarthritis Initiative (OAI), were used in the study. This study proposes a novel three-stage (preprocessing, segmentation and classification) method for fully automated classification from MR images, and shows the performance of each stage separately. At the preprocessing step, the most compact rectangular windows for the menisci were obtained from MR slices. At the segmentation step, the menisci were segmented using fuzzy clustering methods. In order to classify the segmented images and to determine meniscus tears, three different classifiers were used. The method first decides whether there are tears on menisci; if this is the case then, determines the place and type of the tears. There are no studies that classify the meniscus tears according to their types up to now in the literature. The experimental results indicate that the automated process can be completed within a time range of 3 to 4 min with a high classification performance. Hence, the suggested computer-aided diagnosis (CAD) system can be used as a decision support system for the diagnosis of meniscal tears by radiologists.
半月板是直接影响运动的结构,因此早期发现半月板撕裂也有助于预防进展性膝关节疾病,如骨关节炎。半月板的手动分割和半月板撕裂的诊断对放射科医生来说是一个耗时费力的过程。本研究的目的是自动确定半月板撕裂的位置和类型,这对诊断和有效治疗这个问题很重要。为此,本研究使用了来自 Osteoarthritis Initiative(OAI)的 29 个不同的磁共振图像。本研究提出了一种新颖的三阶段(预处理、分割和分类)方法,用于从磁共振图像中进行全自动分类,并分别展示了每个阶段的性能。在预处理步骤中,从磁共振切片中获得了最紧凑的半月板矩形窗口。在分割步骤中,使用模糊聚类方法对半月板进行分割。为了对分割后的图像进行分类并确定半月板撕裂,使用了三种不同的分类器。该方法首先决定半月板上是否有撕裂;如果是这样,则确定撕裂的位置和类型。目前文献中尚无根据撕裂类型对半月板撕裂进行分类的研究。实验结果表明,自动化过程可以在 3 到 4 分钟的时间范围内完成,并且具有较高的分类性能。因此,所建议的计算机辅助诊断(CAD)系统可以作为放射科医生诊断半月板撕裂的决策支持系统。