Building Efficient CNN Architectures for Histopathology Images Analysis: A Case-Study in Tumor-Infiltrating Lymphocytes Classification.
CNN simplification
deep learning
digital pathology
efficient CNNs
tumor-infiltrating lymphocytes
Journal
Frontiers in medicine
ISSN: 2296-858X
Titre abrégé: Front Med (Lausanne)
Pays: Switzerland
ID NLM: 101648047
Informations de publication
Date de publication:
2022
2022
Historique:
received:
11
03
2022
accepted:
11
05
2022
entrez:
17
6
2022
pubmed:
18
6
2022
medline:
18
6
2022
Statut:
epublish
Résumé
Deep learning methods have demonstrated remarkable performance in pathology image analysis, but they are computationally very demanding. The aim of our study is to reduce their computational cost to enable their use with large tissue image datasets. We propose a method called Network Auto-Reduction (NAR) that simplifies a Convolutional Neural Network (CNN) by reducing the network to minimize the computational cost of doing a prediction. NAR performs a compound scaling in which the width, depth, and resolution dimensions of the network are reduced together to maintain a balance among them in the resulting simplified network. We compare our method with a state-of-the-art solution called ResRep. The evaluation is carried out with popular CNN architectures and a real-world application that identifies distributions of tumor-infiltrating lymphocytes in tissue images. The experimental results show that both ResRep and NAR are able to generate simplified, more efficient versions of ResNet50 V2. The simplified versions by ResRep and NAR require 1.32× and 3.26× fewer floating-point operations (FLOPs), respectively, than the original network without a loss in classification power as measured by the Area under the Curve (AUC) metric. When applied to a deeper and more computationally expensive network, Inception V4, NAR is able to generate a version that requires 4× lower than the original version with the same AUC performance. NAR is able to achieve substantial reductions in the execution cost of two popular CNN architectures, while resulting in small or no loss in model accuracy. Such cost savings can significantly improve the use of deep learning methods in digital pathology. They can enable studies with larger tissue image datasets and facilitate the use of less expensive and more accessible graphics processing units (GPUs), thus reducing the computing costs of a study.
Sections du résumé
Background
UNASSIGNED
Deep learning methods have demonstrated remarkable performance in pathology image analysis, but they are computationally very demanding. The aim of our study is to reduce their computational cost to enable their use with large tissue image datasets.
Methods
UNASSIGNED
We propose a method called Network Auto-Reduction (NAR) that simplifies a Convolutional Neural Network (CNN) by reducing the network to minimize the computational cost of doing a prediction. NAR performs a compound scaling in which the width, depth, and resolution dimensions of the network are reduced together to maintain a balance among them in the resulting simplified network. We compare our method with a state-of-the-art solution called ResRep. The evaluation is carried out with popular CNN architectures and a real-world application that identifies distributions of tumor-infiltrating lymphocytes in tissue images.
Results
UNASSIGNED
The experimental results show that both ResRep and NAR are able to generate simplified, more efficient versions of ResNet50 V2. The simplified versions by ResRep and NAR require 1.32× and 3.26× fewer floating-point operations (FLOPs), respectively, than the original network without a loss in classification power as measured by the Area under the Curve (AUC) metric. When applied to a deeper and more computationally expensive network, Inception V4, NAR is able to generate a version that requires 4× lower than the original version with the same AUC performance.
Conclusions
UNASSIGNED
NAR is able to achieve substantial reductions in the execution cost of two popular CNN architectures, while resulting in small or no loss in model accuracy. Such cost savings can significantly improve the use of deep learning methods in digital pathology. They can enable studies with larger tissue image datasets and facilitate the use of less expensive and more accessible graphics processing units (GPUs), thus reducing the computing costs of a study.
Identifiants
pubmed: 35712087
doi: 10.3389/fmed.2022.894430
pmc: PMC9197439
doi:
Types de publication
Journal Article
Langues
eng
Pagination
894430Subventions
Organisme : NCI NIH HHS
ID : U01 CA242936
Pays : United States
Informations de copyright
Copyright © 2022 Meirelles, Kurc, Kong, Ferreira, Saltz and Teodoro.
Déclaration de conflit d'intérêts
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Références
IEEE Trans Med Imaging. 2019 May;38(5):1284-1294
pubmed: 30489264
IEEE Rev Biomed Eng. 2009;2:147-71
pubmed: 20671804
Front Med (Lausanne). 2019 Aug 05;6:173
pubmed: 31428614
J Clin Oncol. 2011 Feb 20;29(6):601-3
pubmed: 21245434
Front Med (Lausanne). 2019 Nov 22;6:264
pubmed: 31824952
Cell. 2017 Nov 2;171(4):950-965.e28
pubmed: 29100075
Hum Pathol. 2018 Sep;79:188-198
pubmed: 29885403
Comput Biol Med. 2020 Sep;124:103954
pubmed: 32777599
Am J Pathol. 2019 Sep;189(9):1686-1698
pubmed: 31199919
Comput Biol Med. 2021 Apr;131:104253
pubmed: 33601084
J Imaging. 2020 Jun 20;6(6):
pubmed: 34460598
Nat Rev Immunol. 2006 Oct;6(10):715-27
pubmed: 16977338
Cancer Res. 2015 Jun 1;75(11):2139-45
pubmed: 25977340
Semin Cancer Biol. 2018 Oct;52(Pt 2):151-157
pubmed: 29990622
Med Image Anal. 2016 Oct;33:170-175
pubmed: 27423409
Med Image Anal. 2016 May;30:60-71
pubmed: 26854941
PLOS Digit Health. 2022 Feb 17;1(2):e0000016
pubmed: 36812545
IEEE Trans Pattern Anal Mach Intell. 2019 Oct;41(10):2525-2538
pubmed: 30040622
Curr Opin Immunol. 2013 Apr;25(2):261-7
pubmed: 23579076
Cancer Metastasis Rev. 2011 Mar;30(1):5-12
pubmed: 21249426
Front Med (Lausanne). 2019 Oct 01;6:185
pubmed: 31632973
Comput Med Imaging Graph. 2019 Jan;71:90-103
pubmed: 30594745
Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:970-973
pubmed: 31946055
Cancers (Basel). 2019 Oct 28;11(11):
pubmed: 31661863
Comput Biol Med. 2020 Dec;127:104065
pubmed: 33246265
Cancer Immun. 2009 Apr 02;9:3
pubmed: 19338264
Am J Pathol. 2020 Jul;190(7):1491-1504
pubmed: 32277893
Nat Rev Cancer. 2012 Mar 15;12(4):298-306
pubmed: 22419253
Clin Cancer Res. 2013 Sep 15;19(18):4951-60
pubmed: 23864165
Comput Struct Biotechnol J. 2018 Feb 09;16:34-42
pubmed: 30275936
J Clin Pathol. 2019 Feb;72(2):157-164
pubmed: 30518631
Cell Rep. 2018 Apr 3;23(1):181-193.e7
pubmed: 29617659