Adaptive Threshold Learning in Frequency Domain for Classification of Breast Cancer Histopathological Images

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Intelligent Systems Pub Date : 2024-03-11 DOI:10.1155/2024/9199410
Yujian Liu, Xiaozhang Liu, Yuan Qi
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Abstract

Breast cancer has become the most common cancer in the world, and biopsy is the most reliable and widely used technique for detecting breast cancer. However, observation of histopathological images is time-consuming and labor-intensive. Currently, CNN has become the mainstream method for breast cancer histopathological image classification research. However, some studies have found that the optical microscope-generated histopathological images have noise, and the output of a well-trained convolutional neural network in image classification tasks can change drastically due to small variations in the input. Therefore, the quality of the image significantly affects the accuracy of the classification. Wavelet transform is a commonly used denoising method, but the selection of the threshold is a difficult problem, and traditional methods are difficult to find the appropriate threshold quickly and accurately. This paper proposes an adaptive threshold selection method that combines threshold selection steps with deep learning methods by using the threshold as a parameter in the CNN model to train. In this way, we associate the threshold with the classification result of the model and find the appropriate value for that image and task by back-propagation in training. The method was experimented on publicly available datasets BreaKHis and BACH. The results in BreaKHis (40x: 94.37%, 100x: 93.85%, 200x: 91.63%, 400x: 93.31%), and BACH (91.25%) demonstrate that our adaptive threshold selection method can improve classification accuracy and is significantly superior to traditional threshold selection methods.

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用于乳腺癌组织病理学图像分类的频域自适应阈值学习
乳腺癌已成为世界上最常见的癌症,而活检是检测乳腺癌最可靠和最广泛使用的技术。然而,观察组织病理图像耗时耗力。目前,CNN 已成为乳腺癌组织病理图像分类研究的主流方法。然而,一些研究发现,光学显微镜生成的组织病理图像存在噪声,在图像分类任务中,训练有素的卷积神经网络的输出会因输入的微小变化而发生剧烈变化。因此,图像质量会极大地影响分类的准确性。小波变换是一种常用的去噪方法,但阈值的选择是一个难题,传统方法很难快速准确地找到合适的阈值。本文提出了一种自适应阈值选择方法,将阈值选择步骤与深度学习方法相结合,将阈值作为 CNN 模型中的一个参数进行训练。这样,我们将阈值与模型的分类结果关联起来,并在训练中通过反向传播找到适合该图像和任务的值。该方法在公开数据集 BreaKHis 和 BACH 上进行了实验。在 BreaKHis(40x:94.37%;100x:93.85%;200x:91.63%;400x:93.31%)和 BACH(91.25%)中的结果表明,我们的自适应阈值选择方法可以提高分类准确率,并且明显优于传统的阈值选择方法。
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来源期刊
International Journal of Intelligent Systems
International Journal of Intelligent Systems 工程技术-计算机:人工智能
CiteScore
11.30
自引率
14.30%
发文量
304
审稿时长
9 months
期刊介绍: The International Journal of Intelligent Systems serves as a forum for individuals interested in tapping into the vast theories based on intelligent systems construction. With its peer-reviewed format, the journal explores several fascinating editorials written by today''s experts in the field. Because new developments are being introduced each day, there''s much to be learned — examination, analysis creation, information retrieval, man–computer interactions, and more. The International Journal of Intelligent Systems uses charts and illustrations to demonstrate these ground-breaking issues, and encourages readers to share their thoughts and experiences.
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