Attention-Based Deep Learning System for Classification of Breast Lesions—Multimodal, Weakly Supervised Approach

Author:

Bobowicz Maciej1ORCID,Rygusik Marlena1,Buler Jakub2,Buler Rafał2,Ferlin Maria2,Kwasigroch Arkadiusz2ORCID,Szurowska Edyta1ORCID,Grochowski Michał2ORCID

Affiliation:

1. 2nd Department of Radiology, Medical University of Gdansk, 80-214 Gdansk, Poland

2. Department of Intelligent Control Systems and Decision Support, Faculty of Electrical and Control Engineering, Gdansk University of Technology, 80-233 Gdansk, Poland

Abstract

Breast cancer is the most frequent female cancer, with a considerable disease burden and high mortality. Early diagnosis with screening mammography might be facilitated by automated systems supported by deep learning artificial intelligence. We propose a model based on a weakly supervised Clustering-constrained Attention Multiple Instance Learning (CLAM) classifier able to train under data scarcity effectively. We used a private dataset with 1174 non-cancer and 794 cancer images labelled at the image level with pathological ground truth confirmation. We used feature extractors (ResNet-18, ResNet-34, ResNet-50 and EfficientNet-B0) pre-trained on ImageNet. The best results were achieved with multimodal-view classification using both CC and MLO images simultaneously, resized by half, with a patch size of 224 px and an overlap of 0.25. It resulted in AUC-ROC = 0.896 ± 0.017, F1-score 81.8 ± 3.2, accuracy 81.6 ± 3.2, precision 82.4 ± 3.3, and recall 81.6 ± 3.2. Evaluation with the Chinese Mammography Database, with 5-fold cross-validation, patient-wise breakdowns, and transfer learning, resulted in AUC-ROC 0.848 ± 0.015, F1-score 78.6 ± 2.0, accuracy 78.4 ± 1.9, precision 78.8 ± 2.0, and recall 78.4 ± 1.9. The CLAM algorithm’s attentional maps indicate the features most relevant to the algorithm in the images. Our approach was more effective than in many other studies, allowing for some explainability and identifying erroneous predictions based on the wrong premises.

Funder

European Union’s Horizon 2020 research and innovation programme

National Science Center (NCN), Poland

GUT IDUB RADIUM

GUT IDUB TECHNETIUM

Publisher

MDPI AG

Subject

Cancer Research,Oncology

Reference83 articles.

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2. Clinical Diagnosis and Management of Breast Cancer;McDonald;J. Nucl. Med. Off. Publ. Soc. Nucl. Med.,2016

3. The Potential of Breast Cancer Screening in Europe;Zielonke;Int. J. Cancer,2021

4. Wyld, L., Markopoulos, C., Leidenius, M., and Senkus-Konefka, E. (2018). Breast Cancer Management for Surgeons: A European Multidisciplinary Textbook, Springer International Publishing.

5. Artificial Intelligence in Breast Imaging;Le;Clin. Radiol.,2019

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