Literature DB >> 33129150

Reducing annotation effort in digital pathology: A Co-Representation learning framework for classification tasks.

Pushpak Pati1, Antonio Foncubierta-Rodríguez2, Orcun Goksel3, Maria Gabrani4.   

Abstract

Classification of digital pathology images is imperative in cancer diagnosis and prognosis. Recent advancements in deep learning and computer vision have greatly benefited the pathology workflow by developing automated solutions for classification tasks. However, the cost and time for acquiring high quality task-specific large annotated training data are subject to intra- and inter-observer variability, thus challenging the adoption of such tools. To address these challenges, we propose a classification framework via co-representation learning to maximize the learning capability of deep neural networks while using a reduced amount of training data. The framework captures the class-label information and the local spatial distribution information by jointly optimizing a categorical cross-entropy objective and a deep metric learning objective respectively. A deep metric learning objective is incorporated to enhance the classification, especially in the low training data regime. Further, a neighborhood-aware multiple similarity sampling strategy, and a soft-multi-pair objective that optimizes interactions between multiple informative sample pairs, is proposed to accelerate deep metric learning. We evaluate the proposed framework on five benchmark datasets from three digital pathology tasks, i.e., nuclei classification, mitosis detection, and tissue type classification. For all the datasets, our framework achieves state-of-the-art performance when using approximately only 50% of the training data. On using complete training data, the proposed framework outperforms the state-of-the-art on all the five datasets.
Copyright © 2020. Published by Elsevier B.V.

Entities:  

Keywords:  Co-representation learning; Deep metric learning; Digital pathology; Informative triplet sampling; Limited annotations; Mitosis detection; Nuclei classification; Soft-multi-pair loss; Tissue type classification

Mesh:

Year:  2020        PMID: 33129150     DOI: 10.1016/j.media.2020.101859

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


  2 in total

1.  A user-friendly tool for cloud-based whole slide image segmentation with examples from renal histopathology.

Authors:  Brendon Lutnick; David Manthey; Jan U Becker; Brandon Ginley; Katharina Moos; Jonathan E Zuckerman; Luis Rodrigues; Alexander J Gallan; Laura Barisoni; Charles E Alpers; Xiaoxin X Wang; Komuraiah Myakala; Bryce A Jones; Moshe Levi; Jeffrey B Kopp; Teruhiko Yoshida; Jarcy Zee; Seung Seok Han; Sanjay Jain; Avi Z Rosenberg; Kuang Yu Jen; Pinaki Sarder
Journal:  Commun Med (Lond)       Date:  2022-08-19

2.  Quick Annotator: an open-source digital pathology based rapid image annotation tool.

Authors:  Runtian Miao; Robert Toth; Yu Zhou; Anant Madabhushi; Andrew Janowczyk
Journal:  J Pathol Clin Res       Date:  2021-07-19
  2 in total

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