Quantitative Assessment of the Effects of Compression on Deep Learning in Digital Pathology Image Analysis.

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Version: Final published version
License: CC BY 4.0
Serval ID
serval:BIB_A6FE6C74F9FC
Type
Article: article from journal or magazin.
Collection
Publications
Title
Quantitative Assessment of the Effects of Compression on Deep Learning in Digital Pathology Image Analysis.
Journal
JCO clinical cancer informatics
Author(s)
Chen Y., Janowczyk A., Madabhushi A.
ISSN
2473-4276 (Electronic)
ISSN-L
2473-4276
Publication state
Published
Issued date
03/2020
Peer-reviewed
Oui
Volume
4
Pages
221-233
Language
english
Notes
Publication types: Journal Article ; Research Support, N.I.H., Extramural ; Research Support, Non-U.S. Gov't ; Research Support, U.S. Gov't, Non-P.H.S.
Publication Status: ppublish
Abstract
Deep learning (DL), a class of approaches involving self-learned discriminative features, is increasingly being applied to digital pathology (DP) images for tasks such as disease identification and segmentation of tissue primitives (eg, nuclei, glands, lymphocytes). One application of DP is in telepathology, which involves digitally transmitting DP slides over the Internet for secondary diagnosis by an expert at a remote location. Unfortunately, the places benefiting most from telepathology often have poor Internet quality, resulting in prohibitive transmission times of DP images. Image compression may help, but the degree to which image compression affects performance of DL algorithms has been largely unexplored.
We investigated the effects of image compression on the performance of DL strategies in the context of 3 representative use cases involving segmentation of nuclei (n = 137), segmentation of lymph node metastasis (n = 380), and lymphocyte detection (n = 100). For each use case, test images at various levels of compression (JPEG compression quality score ranging from 1-100 and JPEG2000 compression peak signal-to-noise ratio ranging from 18-100 dB) were evaluated by a DL classifier. Performance metrics including F1 score and area under the receiver operating characteristic curve were computed at the various compression levels.
Our results suggest that DP images can be compressed by 85% while still maintaining the performance of the DL algorithms at 95% of what is achievable without any compression. Interestingly, the maximum compression level sustainable by DL algorithms is similar to where pathologists also reported difficulties in providing accurate interpretations.
Our findings seem to suggest that in low-resource settings, DP images can be significantly compressed before transmission for DL-based telepathology applications.
Keywords
Algorithms, Benchmarking/standards, Data Compression/methods, Deep Learning/standards, Humans, Image Interpretation, Computer-Assisted/methods, Neoplasms/pathology, Neoplasms/therapy, Observer Variation, Pathology, Clinical/standards, Quality Control, ROC Curve, Signal Processing, Computer-Assisted/instrumentation, Telepathology/standards
Pubmed
Open Access
Yes
Create date
09/11/2020 15:14
Last modification date
11/01/2022 11:57
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