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Deep learning with robustness to missing data: A novel approach to the detection of COVID-19

Authors :
Robert Herpers
Henk L. Smits
Keelin Murphy
Erdi Calli
Steef Kurstjens
Tijs Samson
Matthieu J. C. M. Rutten
Bram van Ginneken
Source :
PLoS ONE, Vol 16, Iss 7, p e0255301 (2021), PLoS One, 16, PLoS ONE, PLoS One, 16, 7
Publication Year :
2021

Abstract

Contains fulltext : 238626.pdf (Publisher’s version ) (Open Access) In the context of the current global pandemic and the limitations of the RT-PCR test, we propose a novel deep learning architecture, DFCN (Denoising Fully Connected Network). Since medical facilities around the world differ enormously in what laboratory tests or chest imaging may be available, DFCN is designed to be robust to missing input data. An ablation study extensively evaluates the performance benefits of the DFCN as well as its robustness to missing inputs. Data from 1088 patients with confirmed RT-PCR results are obtained from two independent medical facilities. The data includes results from 27 laboratory tests and a chest x-ray scored by a deep learning model. Training and test datasets are taken from different medical facilities. Data is made publicly available. The performance of DFCN in predicting the RT-PCR result is compared with 3 related architectures as well as a Random Forest baseline. All models are trained with varying levels of masked input data to encourage robustness to missing inputs. Missing data is simulated at test time by masking inputs randomly. DFCN outperforms all other models with statistical significance using random subsets of input data with 2-27 available inputs. When all 28 inputs are available DFCN obtains an AUC of 0.924, higher than any other model. Furthermore, with clinically meaningful subsets of parameters consisting of just 6 and 7 inputs respectively, DFCN achieves higher AUCs than any other model, with values of 0.909 and 0.919.

Subjects

Subjects :
FOS: Computer and information sciences
Viral Diseases
Databases, Factual
Computer science
Computer Vision and Pattern Recognition (cs.CV)
Computer Science - Computer Vision and Pattern Recognition
Artificial Gene Amplification and Extension
computer.software_genre
Polymerase Chain Reaction
030218 nuclear medicine & medical imaging
Diagnostic Radiology
Machine Learning
Random Allocation
0302 clinical medicine
Medical Conditions
Medicine and Health Sciences
Virus Testing
Multidisciplinary
Artificial neural network
Radiology and Imaging
Image and Video Processing (eess.IV)
Bone Imaging
Women's cancers Radboud Institute for Health Sciences [Radboudumc 17]
Random forest
Infectious Diseases
Research Design
030220 oncology & carcinogenesis
COVID-19 Nucleic Acid Testing
Medicine
Rare cancers Radboud Institute for Health Sciences [Radboudumc 9]
Research Article
Computer and Information Sciences
Neural Networks
Imaging Techniques
Noise reduction
Science
Context (language use)
Laboratory Tests
Machine learning
Research and Analysis Methods
03 medical and health sciences
Deep Learning
Robustness (computer science)
Diagnostic Medicine
Artificial Intelligence
FOS: Electrical engineering, electronic engineering, information engineering
Humans
Baseline (configuration management)
Molecular Biology Techniques
Molecular Biology
business.industry
SARS-CoV-2
Deep learning
COVID-19
Biology and Life Sciences
Covid 19
Reverse Transcriptase-Polymerase Chain Reaction
Models, Theoretical
Electrical Engineering and Systems Science - Image and Video Processing
Missing data
X-Ray Radiography
Health Care
Health Care Facilities
Artificial intelligence
business
computer
Neuroscience

Details

ISSN :
19326203
Database :
OpenAIRE
Journal :
PLoS ONE, Vol 16, Iss 7, p e0255301 (2021), PLoS One, 16, PLoS ONE, PLoS One, 16, 7
Accession number :
edsair.doi.dedup.....ca4125bf181885761e0748b164f33fa0