Literature DB >> 34531005

Resolution-based distillation for efficient histology image classification.

Joseph DiPalma1, Arief A Suriawinata2, Laura J Tafe2, Lorenzo Torresani1, Saeed Hassanpour3.   

Abstract

Developing deep learning models to analyze histology images has been computationally challenging, as the massive size of the images causes excessive strain on all parts of the computing pipeline. This paper proposes a novel deep learning-based methodology for improving the computational efficiency of histology image classification. The proposed approach is robust when used with images that have reduced input resolution, and it can be trained effectively with limited labeled data. Moreover, our approach operates at either the tissue- or slide-level, removing the need for laborious patch-level labeling. Our method uses knowledge distillation to transfer knowledge from a teacher model pre-trained at high resolution to a student model trained on the same images at a considerably lower resolution. Also, to address the lack of large-scale labeled histology image datasets, we perform the knowledge distillation in a self-supervised fashion. We evaluate our approach on three distinct histology image datasets associated with celiac disease, lung adenocarcinoma, and renal cell carcinoma. Our results on these datasets demonstrate that a combination of knowledge distillation and self-supervision allows the student model to approach and, in some cases, surpass the teacher model's classification accuracy while being much more computationally efficient. Additionally, we observe an increase in student classification performance as the size of the unlabeled dataset increases, indicating that there is potential for this method to scale further with additional unlabeled data. Our model outperforms the high-resolution teacher model for celiac disease in accuracy, F1-score, precision, and recall while requiring 4 times fewer computations. For lung adenocarcinoma, our results at 1.25× magnification are within 1.5% of the results for the teacher model at 10× magnification, with a reduction in computational cost by a factor of 64. Our model on renal cell carcinoma at 1.25× magnification performs within 1% of the teacher model at 5× magnification while requiring 16 times fewer computations. Furthermore, our celiac disease outcomes benefit from additional performance scaling with the use of more unlabeled data. In the case of 0.625× magnification, using unlabeled data improves accuracy by 4% over the tissue-level baseline. Therefore, our approach can improve the feasibility of deep learning solutions for digital pathology on standard computational hardware and infrastructures.
Copyright © 2021 The Author(s). Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep neural networks; Digital pathology; Knowledge distillation; Self-supervised learning

Mesh:

Year:  2021        PMID: 34531005      PMCID: PMC8449014          DOI: 10.1016/j.artmed.2021.102136

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   7.011


  30 in total

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Review 2.  Cloud computing in medical imaging.

Authors:  George C Kagadis; Christos Kloukinas; Kevin Moore; Jim Philbin; Panagiotis Papadimitroulas; Christos Alexakos; Paul G Nagy; Dimitris Visvikis; William R Hendee
Journal:  Med Phys       Date:  2013-07       Impact factor: 4.071

3.  [Immunohistochemical profile of renal cell tumours].

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Journal:  Rev Esp Patol       Date:  2019-04-11

Review 4.  International association for the study of lung cancer/american thoracic society/european respiratory society international multidisciplinary classification of lung adenocarcinoma.

Authors:  William D Travis; Elisabeth Brambilla; Masayuki Noguchi; Andrew G Nicholson; Kim R Geisinger; Yasushi Yatabe; David G Beer; Charles A Powell; Gregory J Riely; Paul E Van Schil; Kavita Garg; John H M Austin; Hisao Asamura; Valerie W Rusch; Fred R Hirsch; Giorgio Scagliotti; Tetsuya Mitsudomi; Rudolf M Huber; Yuichi Ishikawa; James Jett; Montserrat Sanchez-Cespedes; Jean-Paul Sculier; Takashi Takahashi; Masahiro Tsuboi; Johan Vansteenkiste; Ignacio Wistuba; Pan-Chyr Yang; Denise Aberle; Christian Brambilla; Douglas Flieder; Wilbur Franklin; Adi Gazdar; Michael Gould; Philip Hasleton; Douglas Henderson; Bruce Johnson; David Johnson; Keith Kerr; Keiko Kuriyama; Jin Soo Lee; Vincent A Miller; Iver Petersen; Victor Roggli; Rafael Rosell; Nagahiro Saijo; Erik Thunnissen; Ming Tsao; David Yankelewitz
Journal:  J Thorac Oncol       Date:  2011-02       Impact factor: 15.609

5.  Lung cancer incidence trends by gender, race and histology in the United States, 1973-2010.

Authors:  Rafael Meza; Clare Meernik; Jihyoun Jeon; Michele L Cote
Journal:  PLoS One       Date:  2015-03-30       Impact factor: 3.240

Review 6.  Celiac disease: From pathophysiology to treatment.

Authors:  Ilaria Parzanese; Dorina Qehajaj; Federica Patrinicola; Merica Aralica; Maurizio Chiriva-Internati; Sanja Stifter; Luca Elli; Fabio Grizzi
Journal:  World J Gastrointest Pathophysiol       Date:  2017-05-15

Review 7.  The Landscape of Digital Pathology in Transplantation: From the Beginning to the Virtual E-Slide.

Authors:  Ilaria Girolami; Anil Parwani; Valeria Barresi; Stefano Marletta; Serena Ammendola; Lavinia Stefanizzi; Luca Novelli; Arrigo Capitanio; Matteo Brunelli; Liron Pantanowitz; Albino Eccher
Journal:  J Pathol Inform       Date:  2019-07-01

8.  Deep Learning for Classification of Colorectal Polyps on Whole-slide Images.

Authors:  Bruno Korbar; Andrea M Olofson; Allen P Miraflor; Catherine M Nicka; Matthew A Suriawinata; Lorenzo Torresani; Arief A Suriawinata; Saeed Hassanpour
Journal:  J Pathol Inform       Date:  2017-07-25

Review 9.  Twenty Years of Digital Pathology: An Overview of the Road Travelled, What is on the Horizon, and the Emergence of Vendor-Neutral Archives.

Authors:  Liron Pantanowitz; Ashish Sharma; Alexis B Carter; Tahsin Kurc; Alan Sussman; Joel Saltz
Journal:  J Pathol Inform       Date:  2018-11-21

10.  The Cancer Genome Atlas Comprehensive Molecular Characterization of Renal Cell Carcinoma.

Authors:  Christopher J Ricketts; Aguirre A De Cubas; Huihui Fan; Christof C Smith; Martin Lang; Ed Reznik; Reanne Bowlby; Ewan A Gibb; Rehan Akbani; Rameen Beroukhim; Donald P Bottaro; Toni K Choueiri; Richard A Gibbs; Andrew K Godwin; Scott Haake; A Ari Hakimi; Elizabeth P Henske; James J Hsieh; Thai H Ho; Rupa S Kanchi; Bhavani Krishnan; David J Kwiatkowski; Wembin Lui; Maria J Merino; Gordon B Mills; Jerome Myers; Michael L Nickerson; Victor E Reuter; Laura S Schmidt; C Simon Shelley; Hui Shen; Brian Shuch; Sabina Signoretti; Ramaprasad Srinivasan; Pheroze Tamboli; George Thomas; Benjamin G Vincent; Cathy D Vocke; David A Wheeler; Lixing Yang; William Y Kim; A Gordon Robertson; Paul T Spellman; W Kimryn Rathmell; W Marston Linehan
Journal:  Cell Rep       Date:  2018-04-03       Impact factor: 9.423

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  1 in total

1.  A Novel Approach to Classifying Breast Cancer Histopathology Biopsy Images Using Bilateral Knowledge Distillation and Label Smoothing Regularization.

Authors:  Sushovan Chaudhury; Nilesh Shelke; Kartik Sau; B Prasanalakshmi; Mohammad Shabaz
Journal:  Comput Math Methods Med       Date:  2021-10-20       Impact factor: 2.238

  1 in total

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