학술논문

Multi-Instance Classification of Histopathological Breast Cancer Images with Visual Explanation
Document Type
Conference
Source
2022 16th IEEE International Conference on Signal Processing (ICSP) Signal Processing (ICSP), 2022 16th IEEE International Conference on. 1:431-436 Oct, 2022
Subject
Signal Processing and Analysis
Visualization
Convolution
Medical treatment
Predictive models
Feature extraction
Breast cancer
Reliability
histopathological images
deep learning
breast cancer classification
multiple instance learning
visual explanation
Language
ISSN
2164-5221
Abstract
Breast cancer is a big concern for women due to its higher mortality compared to other cancers. Objective and accurate early diagnosis is primordial for the treatment and survival improvement of patients. Histopathological image classification is considered the gold standard and is usually the last and most dependent diagnosis approach for doctors to make patient treatment proposals. In particular, recent deep learning-based methods provide remarkable classification results. However, these methods ignore rationale or logical explanation that is important for diagnosis reliability and human-level understanding. This paper proposes a multi-instance classification network (MICNet) with the mechanism of visual explanation to achieve the explainable classification of histopathological breast cancer images. The method uses a simple two-dimensional convolution kernel to generate explanation maps (i.e., visual explanation) through features coming from the end of the feature extractor in the VGG11 model pre-trained by ImageNet. Multiple instance learning (MIL) based on mirror padding and overlap cropping is adopted to improve the network’s classification performance. We also design a weighted average pooling method to encourage the network to learn more accurate visual explanation. Experiments on BreakHis and Camelyon16 patch-based datasets demonstrate that our MICNet outperforms other CNN models in classification and is able to provide a logical visual explanation that supports the network’s prediction.