Evaluation of Histopathological Images Segmentation Techniques for Breast Cancer Detection

Qanita Bani Baker, Ala’a Abu Qutaish
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引用次数: 2

Abstract

Breast cancer classification and detection using histopathological images is considered a difficult process due to the complexity of the characteristics of histopathology images. This paper presents an automated system for the classification and detection of breast cancer from microscopic histological images where the images are classified into benign, in situ, invasive, and normal. The proposed approach involves several steps which are image preprocessing (Enhancement), image segmentation, feature extraction, feature selection, and finally image classification. The proposed approach utilizes and compares two segmentation methods which are clustering and Global thresholding using Otsu’s method. Initially, images are segmented using K-means and Global thresholding methods. Then, features (morphological and texture) are extracted from the images for the two methods. Moreover, feature selection is done by using Principal Component Analysis (PCA). Finally, K-means and Global thresholding methods are compared in the classification process by using different classifiers. The results show better performance for the Global thresholding.
乳腺癌检测的组织病理学图像分割技术评价
由于组织病理图像特征的复杂性,使用组织病理图像进行乳腺癌的分类和检测被认为是一个困难的过程。本文介绍了一种用于从显微组织学图像中分类和检测乳腺癌的自动化系统,其中图像分为良性,原位,浸润性和正常。该方法包括图像预处理(增强)、图像分割、特征提取、特征选择和最后的图像分类。该方法利用了Otsu方法的聚类和全局阈值分割两种分割方法,并对其进行了比较。首先,使用k均值和全局阈值方法对图像进行分割。然后,从图像中提取特征(形态学和纹理)用于两种方法。此外,利用主成分分析(PCA)进行特征选择。最后,通过使用不同的分类器,比较了K-means和Global阈值方法的分类过程。结果表明,全局阈值法具有较好的性能。
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