Learn Like a Pathologist: Curriculum Learning by Annotator Agreement for Histopathology Image Classification

Title:

Learn Like a Pathologist: Curriculum Learning by Annotator Agreement for Histopathology Image Classification

Link:

https://openaccess.thecvf.com/content/WACV2021/html/Wei_Learn_Like_a_Pathologist_Curriculum_Learning_by_Annotator_Agreement_for_WACV_2021_paper.html

Abstract:

Applying curriculum learning requires both a range of difficulty in data and a method for determining the difficulty of examples. In many tasks, however, satisfying these requirements can be a formidable challenge. In this paper, we contend that histopathology image classification is a compelling use case for curriculum learning. Based on the nature of histopathology images, a range of difficulty inherently exists among examples, and, since medical datasets are often labeled by multiple annotators, annotator agreement can be used as a natural proxy for the difficulty of a given example. Hence, we propose a simple curriculum learning method that trains on progressively-harder images as determined by annotator agreement. We evaluate our hypothesis on the challenging and clinically-important task of colorectal polyp classification. Whereas vanilla training achieves an AUC of 83.7% for this task, a model trained with our proposed curriculum learning approach achieves an AUC of 88.2%, an improvement of 4.5%. Our work aims to inspire researchers to think more creatively and rigorously when choosing contexts for applying curriculum learning.

Citation:

Jerry Wei, Arief Suriawinata, Bing Ren, Xiaoying Liu, Mikhail Lisovsky, Louis Vaickus, Charles Brown, Michael Baker, Mustafa Nasir-Moin, Naofumi Tomita, Lorenzo Torresani, Jason Wei, Saeed Hassanpour, “Learn like a Pathologist: Curriculum Learning by Annotator Agreement for Histopathology Image Classification”, IEEE/CVF Winter Conference on Applications of Computer Vision (WACV), 2473-2483, 2021.

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