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Objective evaluation of deep uncertainty predictions for COVID-19 detection

Asgharnezhad, H, Shamsi, A, Alizadehsani, Roohallah, Khosravi, Abbas, Nahavandi, Saeid, Sani, ZA, Srinivasan, D and Islam, Shariful 2022, Objective evaluation of deep uncertainty predictions for COVID-19 detection, Scientific Reports, vol. 12, pp. 1-11, doi: 10.1038/s41598-022-05052-x.

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Title Objective evaluation of deep uncertainty predictions for COVID-19 detection
Author(s) Asgharnezhad, H
Shamsi, A
Alizadehsani, RoohallahORCID iD for Alizadehsani, Roohallah orcid.org/0000-0001-6927-0744
Khosravi, AbbasORCID iD for Khosravi, Abbas orcid.org/0000-0002-0360-5270
Nahavandi, Saeid
Sani, ZA
Srinivasan, DORCID iD for Srinivasan, D orcid.org/0000-0001-7926-9368
Islam, Shariful
Journal name Scientific Reports
Volume number 12
Article ID 815
Start page 1
End page 11
Total pages 11
Publisher Nature
Place of publication London, Eng.
Publication date 2022
ISSN 2045-2322
2045-2322
Keyword(s) Multidisciplinary Sciences
Science & Technology
Science & Technology - Other Topics
Summary Deep neural networks (DNNs) have been widely applied for detecting COVID-19 in medical images. Existing studies mainly apply transfer learning and other data representation strategies to generate accurate point estimates. The generalization power of these networks is always questionable due to being developed using small datasets and failing to report their predictive confidence. Quantifying uncertainties associated with DNN predictions is a prerequisite for their trusted deployment in medical settings. Here we apply and evaluate three uncertainty quantification techniques for COVID-19 detection using chest X-Ray (CXR) images. The novel concept of uncertainty confusion matrix is proposed and new performance metrics for the objective evaluation of uncertainty estimates are introduced. Through comprehensive experiments, it is shown that networks pertained on CXR images outperform networks pretrained on natural image datasets such as ImageNet. Qualitatively and quantitatively evaluations also reveal that the predictive uncertainty estimates are statistically higher for erroneous predictions than correct predictions. Accordingly, uncertainty quantification methods are capable of flagging risky predictions with high uncertainty estimates. We also observe that ensemble methods more reliably capture uncertainties during the inference. DNN-based solutions for COVID-19 detection have been mainly proposed without any principled mechanism for risk mitigation. Previous studies have mainly focused on on generating single-valued predictions using pretrained DNNs. In this paper, we comprehensively apply and comparatively evaluate three uncertainty quantification techniques for COVID-19 detection using chest X-Ray images. The novel concept of uncertainty confusion matrix is proposed and new performance metrics for the objective evaluation of uncertainty estimates are introduced for the first time. Using these new uncertainty performance metrics, we quantitatively demonstrate when we could trust DNN predictions for COVID-19 detection from chest X-rays. It is important to note the proposed novel uncertainty evaluation metrics are generic and could be applied for evaluation of probabilistic forecasts in all classification problems.
Language eng
DOI 10.1038/s41598-022-05052-x
HERDC Research category C1 Refereed article in a scholarly journal
Free to Read? Yes
Persistent URL http://hdl.handle.net/10536/DRO/DU:30161936

Document type: Journal Article
Collections: Faculty of Science, Engineering and Built Environment
Institute for Intelligent Systems Research and Innovation (IISRI)
Open Access Collection
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Created: Mon, 24 Jan 2022, 16:28:53 EST

Every reasonable effort has been made to ensure that permission has been obtained for items included in DRO. If you believe that your rights have been infringed by this repository, please contact drosupport@deakin.edu.au.