基于纹理特征和支持向量机的组织病理学整张切片图像坏死检测

H. Sharma, N. Zerbe, I. Klempert, Sebastian Lohmann, B. Lindequist, O. Hellwich, P. Hufnagl
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引用次数: 11

摘要

组织图像坏死的自动检测是数字病理学中一个需要解决的有趣问题。确定坏死的存在和程度可以为疾病诊断和预后提供有用的信息,并且在分析剩余活组织之前也可以排除检测到的坏死区域。本文描述了一种新的基于外观的方法来检测组织病理全切片图像中的肿瘤坏死。研究进行了异质性显微图像的胃癌包含组织区域的恶性程度和染色强度的变化。从图像斑块中提取纹理图像特征以有效地表示组织中的坏死外观,并使用支持向量机对复杂数据集进行机器学习,然后进行判别阈值分割。采用三重交叉验证和留一交叉验证两种方法对不同图像补丁大小的分类结果进行定量评价,对于最合适的补丁大小,平均交叉验证率达到85.31%。因此,所提出的方法是一种很有前途的工具,可以检测异质整张幻灯片图像中的坏死,显示出它对不同视觉外观的鲁棒性。
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Appearance-based necrosis detection using textural features and SVM with discriminative thresholding in histopathological whole slide images
Automatic detection of necrosis in histological images is an interesting problem of digital pathology that needs to be addressed. Determination of presence and extent of necrosis can provide useful information for disease diagnosis and prognosis, and the detected necrotic regions can also be excluded before analyzing the remaining living tissue. This paper describes a novel appearance-based method to detect tumor necrosis in histopathogical whole slide images. Studies are performed on heterogeneous microscopic images of gastric cancer containing tissue regions with variation in malignancy level and stain intensity. Textural image features are extracted from image patches to efficiently represent necrotic appearance in the tissue and machine learning is performed using support vector machines followed by discriminative thresholding for our complex datasets. The classification results are quantitatively evaluated for different image patch sizes using two cross validation approaches namely three-fold and leave one out cross validation, and the best average cross validation rate of 85.31% is achieved for the most suitable patch size. Therefore, the proposed method is a promising tool to detect necrosis in heterogeneous whole slide images, showing its robustness to varying visual appearances.
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