宫颈癌磁共振成像的半自动淋巴结分割与分类

Nesrine Bnouni, Olfa Mechi, I. Rekik, M. S. Rhim, N. Amara
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引用次数: 11

摘要

淋巴结(LNs)的分割和分类是宫颈癌医学图像分析的一个基本但具有挑战性的步骤。这两个任务都可以利用形态特征,如大小、形状、轮廓和异质外观。然而,这些特征可能随着LNs的进展状态而变化。因此,准确检测LN的边界是区分LN为可疑(恶性)和非可疑(良性)的必要步骤。然而,由于观察者之间和观察者内部的可变性,人工描述LNs可能会产生分类错误。半自动和自动的LNs分割方法是非常需要的,因为它们有助于改善患者的诊断和治疗过程。目前,磁共振成像(MRI)被广泛用于宫颈癌和LN累及的诊断。扩散加权(DW)-MRI显示转移性淋巴结为亮区。本文提出了一种半自动分割分类方法。具体来说,我们提出了一种新的方法,该方法利用(1)通过融合步骤的结构和扩散MR图像的互补性;(2)分段转移性淋巴结的形态学特征进行分类。我们提出的算法有三个方面的贡献。首先,我们融合轴向t2 -加权(T2-w)解剖图像和DW图像。其次,我们使用区域增长方法检测LNs,以计算最终分类。第三,根据灰度依赖矩阵技术提取LN特征,利用分割结果对LN进行分类。我们使用10张T2-w和DW的47例转移性LNs的MR图像来评估我们的方法。我们获得宫颈癌结节分类的平均准确率为70.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-automatic lymph node segmentation and classification using cervical cancer MR imaging
The segmentation and classification of Lymph Nodes (LNs) is a fundamental but challenging step in the analysis of medical images of cervical cancer. Both tasks can leverage morphological features such as size, shape, contour, and heterogeneous appearance. However, these features might vary with the progressive state of LNs. Hence, accurate detection of LNs boundary is an essential step sing to classify LN as suspect (malignant) and non-suspect (benign). However, manual delineation of LNs might produce classification errors due to the inter and intra-observer variability. Semi-automatic and automatic LNs segmentation methods are greatly desired as they would help improve patient diagnosis and treatment processes. Currently, Magnetic Resonance Imaging (MRI) is widely used to diagnose cervical cancer and LN involvement. Diffusion Weighted (DW)-MRI exhibits metastatic LN as bright regions. This paper presents a semi-automatic segmentation and classification method of LNs. Specifically, we propose a novel approach which leverages (1) the complementarity of structural and diffusion MR images through a fusion step and (2) morphological features of the segmented metastatic LNs for classification. The contribution of our proposed algorithm is threefold. First, we fuse the axial T2-Weighted (T2-w) anatomical image and the DW image. Second, we detect LNs using region-growing method in order to compute the final classification. Third, segmentation results are then used to classify LNs based on a gray level dependency matrix technique which extracts LN features. We evaluated our method using 10 MR images T2-w and DW with 47 metastatic LNs. We obtained an average accuracy of 70.21% for cervical cancer nodule classification.
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