基于核和腔特征的自动诊断支持系统

Yuriko Harai, Toshiyuki Tanaka
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引用次数: 4

摘要

我们提出了一种可以量化细胞和结构组织信息的自动结直肠癌诊断方法。在本文中,我们考虑了16维特征,包括核-细胞质(NC)比,核连接面积和非典型管腔比。为了模仿准确的医学诊断条件,我们引入了1组、3组低、3组高和5组活检的四类分类(5组活检包括良好、中度和低分化),而不是以往文献中提出的大多数工作将活检分为两类或三类。本文使用的图像集由123例患者的400张图像组成,这些图像由苏木精和伊红(HE法)染色。我们将该方法的性能与先前研究中广泛使用的纹理特征方法进行了比较。进行两项分类检验:留一roi交叉验证(CV)和留一样本交叉验证(CV)。结果表明,该方法对基于roi的CV的分类准确率为95.0%,对基于样本的CV的分类准确率为78.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Diagnosis Support System Using Nuclear and Luminal Features
We present a method of automatic colorectal cancer diagnosis that can quantify cellular and structural tissue information. In this paper, we consider sixteen-dimensional features, consisting of the nuclei-cytoplasm (NC) ratio, connected nuclei area, and atypical lumen ratio. For the purpose of imitating the conditions of accurate medical diagnosing, we introduce a four-class classification for group 1, group 3 low, group 3 high, and group 5 biopsies (group 5 biopsies include well-, moderately, and poorly differentiated) in contrast to most previous works proposed in the literature, which classify biopsies into two or three classes. The image set used in this paper consists of 400 images stained from 123 patients by hematoxylin and eosin (the HE method). We compared the performance of the proposed method with a method using texture features that have been widely used in previous studies. Two classification tests were performed, leave-one-ROI-out cross-validation (CV) and leave-one-specimen-out CV. As a result, the proposed method obtained a classification accuracy of 95.0% for ROI-based CV and 78.3% for specimen-based CV.
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