利用组织病理学图像的边缘加权纹理特征识别乳腺癌

Arslan Akram, Javed Rashid, Fahima Hajjej, Sobia Yaqoob, Muhammad Hamid, Asma Arshad, Nadeem Sarwar
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引用次数: 0

摘要

大约八分之一的女性会在某个时候被诊断出患有乳腺癌。改善患者预后需要早期发现和准确诊断。在诊断乳腺癌的过程中,常规使用组织学图像。在最近的研究中提出的方法只侧重于对特定放大水平的乳腺癌进行分类。目前还没有研究集中于使用多种放大水平的组合数据集来对乳腺癌进行分类。在本调查的背景下,提供了一种检测乳腺癌的策略。该方法采用小波变换对组织病理图像纹理数据进行处理。该方法包括将组织病理图像从红绿蓝(RGB)转换为蓝和红色度(YCBCR),利用小波变换提取纹理信息,并使用极限梯度增强(XGBOOST)对图像进行分类。此外,由于数据集样本不平衡,使用SMOTE进行重采样。使用10倍交叉验证对建议的方法进行评估,在BreakHis 1.0 40X数据集上达到99.27%的准确率,在BreakHis 1.0 100X数据集上达到98.95%,在BreakHis 1.0 200X数据集上达到98.92%,在BreakHis 1.0 400X数据集上达到98.78%,在组合数据集上达到98.80%。本研究结果提示,将小波变换与纹理信号相结合,在组织病理图像中检测乳腺癌,可以提高乳腺癌的检出率和患者转归。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Breast Cancer Using Edge-Weighted Texture Features of Histopathology Images
Around one in eight women will be diagnosed with breast cancer at some time. Improved patient outcomes necessitate both early detection and an accurate diagnosis. Histological images are routinely utilized in the process of diagnosing breast cancer. Methods proposed in recent research only focus on classifying breast cancer on specific magnification levels. No study has focused on using a combined dataset with multiple magnification levels to classify breast cancer. A strategy for detecting breast cancer is provided in the context of this investigation. Histopathology image texture data is used with the wavelet transform in this technique. The proposed method comprises converting histopathological images from Red Green Blue (RGB) to Chrominance of Blue and Chrominance of Red (YCBCR), utilizing a wavelet transform to extract texture information, and classifying the images with Extreme Gradient Boosting (XGBOOST). Furthermore, SMOTE has been used for resampling as the dataset has imbalanced samples. The suggested method is evaluated using 10-fold cross-validation and achieves an accuracy of 99.27% on the BreakHis 1.0 40X dataset, 98.95% on the BreakHis 1.0 100X dataset, 98.92% on the BreakHis 1.0 200X dataset, 98.78% on the BreakHis 1.0 400X dataset, and 98.80% on the combined dataset. The findings of this study imply that improved breast cancer detection rates and patient outcomes can be achieved by combining wavelet transformation with textural signals to detect breast cancer in histopathology images.
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