Literature DB >> 34717189

Self-supervised driven consistency training for annotation efficient histopathology image analysis.

Chetan L Srinidhi1, Seung Wook Kim2, Fu-Der Chen3, Anne L Martel4.   

Abstract

Training a neural network with a large labeled dataset is still a dominant paradigm in computational histopathology. However, obtaining such exhaustive manual annotations is often expensive, laborious, and prone to inter and intra-observer variability. While recent self-supervised and semi-supervised methods can alleviate this need by learning unsupervised feature representations, they still struggle to generalize well to downstream tasks when the number of labeled instances is small. In this work, we overcome this challenge by leveraging both task-agnostic and task-specific unlabeled data based on two novel strategies: (i) a self-supervised pretext task that harnesses the underlying multi-resolution contextual cues in histology whole-slide images to learn a powerful supervisory signal for unsupervised representation learning; (ii) a new teacher-student semi-supervised consistency paradigm that learns to effectively transfer the pretrained representations to downstream tasks based on prediction consistency with the task-specific unlabeled data. We carry out extensive validation experiments on three histopathology benchmark datasets across two classification and one regression based tasks, i.e., tumor metastasis detection, tissue type classification, and tumor cellularity quantification. Under limited-label data, the proposed method yields tangible improvements, which is close to or even outperforming other state-of-the-art self-supervised and supervised baselines. Furthermore, we empirically show that the idea of bootstrapping the self-supervised pretrained features is an effective way to improve the task-specific semi-supervised learning on standard benchmarks. Code and pretrained models are made available at: https://github.com/srinidhiPY/SSL_CR_Histo.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Digital pathology; Histopathology image analysis; Limited annotations; Self-supervised learning; Semi-supervised learning

Mesh:

Year:  2021        PMID: 34717189     DOI: 10.1016/j.media.2021.102256

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  3 in total

Review 1.  Artificial intelligence in histopathology: enhancing cancer research and clinical oncology.

Authors:  Artem Shmatko; Narmin Ghaffari Laleh; Moritz Gerstung; Jakob Nikolas Kather
Journal:  Nat Cancer       Date:  2022-09-22

2.  Global Research Trends of Artificial Intelligence on Histopathological Images: A 20-Year Bibliometric Analysis.

Authors:  Wentong Zhou; Ziheng Deng; Yong Liu; Hui Shen; Hongwen Deng; Hongmei Xiao
Journal:  Int J Environ Res Public Health       Date:  2022-09-15       Impact factor: 4.614

3.  Self-supervised learning mechanism for identification of eyelid malignant melanoma in pathologic slides with limited annotation.

Authors:  Linyan Wang; Zijing Jiang; An Shao; Zhengyun Liu; Renshu Gu; Ruiquan Ge; Gangyong Jia; Yaqi Wang; Juan Ye
Journal:  Front Med (Lausanne)       Date:  2022-09-27
  3 in total

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