» Articles » PMID: 35146385

Spectral Decoupling for Training Transferable Neural Networks in Medical Imaging

Overview
Journal iScience
Publisher Cell Press
Date 2022 Feb 11
PMID 35146385
Authors
Affiliations
Soon will be listed here.
Abstract

Many neural networks for medical imaging generalize poorly to data unseen during training. Such behavior can be caused by overfitting easy-to-learn features while disregarding other potentially informative features. A recent implicit bias mitigation technique called spectral decoupling provably encourages neural networks to learn more features by regularizing the networks' unnormalized prediction scores with an L2 penalty. We show that spectral decoupling increases the networks' robustness for data distribution shifts and prevents overfitting on easy-to-learn features in medical images. To validate our findings, we train networks with and without spectral decoupling to detect prostate cancer on tissue slides and COVID-19 in chest radiographs. Networks trained with spectral decoupling achieve up to 9.5 percent point higher performance on external datasets. Spectral decoupling alleviates generalization issues associated with neural networks and can be used to complement or replace computationally expensive explicit bias mitigation methods, such as stain normalization in histological images.

Citing Articles

Harnessing artificial intelligence for prostate cancer management.

Zhu L, Pan J, Mou W, Deng L, Zhu Y, Wang Y Cell Rep Med. 2024; 5(4):101506.

PMID: 38593808 PMC: 11031422. DOI: 10.1016/j.xcrm.2024.101506.


Mutation-Attention (MuAt): deep representation learning of somatic mutations for tumour typing and subtyping.

Sanjaya P, Maljanen K, Katainen R, Waszak S, Aaltonen L, Stegle O Genome Med. 2023; 15(1):47.

PMID: 37420249 PMC: 10326961. DOI: 10.1186/s13073-023-01204-4.

References
1.
Janowczyk A, Basavanhally A, Madabhushi A . Stain Normalization using Sparse AutoEncoders (StaNoSA): Application to digital pathology. Comput Med Imaging Graph. 2016; 57:50-61. PMC: 5112159. DOI: 10.1016/j.compmedimag.2016.05.003. View

2.
Winkler J, Fink C, Toberer F, Enk A, Deinlein T, Hofmann-Wellenhof R . Association Between Surgical Skin Markings in Dermoscopic Images and Diagnostic Performance of a Deep Learning Convolutional Neural Network for Melanoma Recognition. JAMA Dermatol. 2019; 155(10):1135-1141. PMC: 6694463. DOI: 10.1001/jamadermatol.2019.1735. View

3.
Zech J, Badgeley M, Liu M, Costa A, Titano J, Oermann E . Variable generalization performance of a deep learning model to detect pneumonia in chest radiographs: A cross-sectional study. PLoS Med. 2018; 15(11):e1002683. PMC: 6219764. DOI: 10.1371/journal.pmed.1002683. View

4.
Bustos A, Pertusa A, Salinas J, Iglesia-Vaya M . PadChest: A large chest x-ray image dataset with multi-label annotated reports. Med Image Anal. 2020; 66:101797. DOI: 10.1016/j.media.2020.101797. View

5.
Wang L, Lin Z, Wong A . COVID-Net: a tailored deep convolutional neural network design for detection of COVID-19 cases from chest X-ray images. Sci Rep. 2020; 10(1):19549. PMC: 7658227. DOI: 10.1038/s41598-020-76550-z. View