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Papers/Magnification Prior: A Self-Supervised Method for Learning...

Magnification Prior: A Self-Supervised Method for Learning Representations on Breast Cancer Histopathological Images

Prakash Chandra Chhipa, Richa Upadhyay, Gustav Grund Pihlgren, Rajkumar Saini, Seiichi Uchida, Marcus Liwicki

2022-03-15Breast Cancer Histology Image ClassificationBreast Cancer Histology Image Classification (20% labels)Representation LearningSelf-Supervised LearningClassification Of Breast Cancer Histology Images
PaperPDFCode(official)

Abstract

This work presents a novel self-supervised pre-training method to learn efficient representations without labels on histopathology medical images utilizing magnification factors. Other state-of-theart works mainly focus on fully supervised learning approaches that rely heavily on human annotations. However, the scarcity of labeled and unlabeled data is a long-standing challenge in histopathology. Currently, representation learning without labels remains unexplored for the histopathology domain. The proposed method, Magnification Prior Contrastive Similarity (MPCS), enables self-supervised learning of representations without labels on small-scale breast cancer dataset BreakHis by exploiting magnification factor, inductive transfer, and reducing human prior. The proposed method matches fully supervised learning state-of-the-art performance in malignancy classification when only 20% of labels are used in fine-tuning and outperform previous works in fully supervised learning settings. It formulates a hypothesis and provides empirical evidence to support that reducing human-prior leads to efficient representation learning in self-supervision. The implementation of this work is available online on GitHub - https://github.com/prakashchhipa/Magnification-Prior-Self-Supervised-Method

Results

TaskDatasetMetricValueModel
CancerBreakHis1:1 Accuracy92.23EfficientNet-b2
CancerBreakHisAccuracy (Inter-Patient)92.15EfficientNet-b2
CancerBreakHis1:1 Accuracy88.77EfficientNet-b2
CancerBreakHisAccuracy (Inter-Patient)88.77EfficientNet-b2
Breast Cancer Histology Image ClassificationBreakHis1:1 Accuracy92.23EfficientNet-b2
Breast Cancer Histology Image ClassificationBreakHisAccuracy (Inter-Patient)92.15EfficientNet-b2
Breast Cancer Histology Image ClassificationBreakHis1:1 Accuracy88.77EfficientNet-b2
Breast Cancer Histology Image ClassificationBreakHisAccuracy (Inter-Patient)88.77EfficientNet-b2

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