Please use this identifier to cite or link to this item: https://hdl.handle.net/10356/164836
Title: Diagnostic performance of a deep learning model deployed at a national COVID-19 screening facility for detection of pneumonia on frontal chest radiographs
Authors: Sim, Jordan Z. T.
Ting, Yong-Han
Tang, Yuan
Feng, Yangqin
Lei, Xiaofeng
Wang, Xiaohong
Chen, Wen-Xiang
Huang, Su
Wong, Sum-Thai
Lu, Zhongkang
Cui, Yingnan
Teo, Soo-Kng
Xu, Xin-Xing
Huang, Wei-Min
Tan, Cher Heng
Keywords: Science::Medicine
Issue Date: 2022
Source: Sim, J. Z. T., Ting, Y., Tang, Y., Feng, Y., Lei, X., Wang, X., Chen, W., Huang, S., Wong, S., Lu, Z., Cui, Y., Teo, S., Xu, X., Huang, W. & Tan, C. H. (2022). Diagnostic performance of a deep learning model deployed at a national COVID-19 screening facility for detection of pneumonia on frontal chest radiographs. Healthcare, 10(1), 10010175-. https://dx.doi.org/10.3390/healthcare10010175
Project: ACCL/19-GAP012-R20H 
ACCL/19-GAP004-R20H 
Journal: Healthcare 
Abstract: (1) Background: Chest radiographs are the mainstay of initial radiological investigation in this COVID-19 pandemic. A reliable and readily deployable artificial intelligence (AI) algorithm that detects pneumonia in COVID-19 suspects can be useful for screening or triage in a hospital setting. This study has a few objectives: first, to develop a model that accurately detects pneumonia in COVID-19 suspects; second, to assess its performance in a real-world clinical setting; and third, by integrating the model with the daily clinical workflow, to measure its impact on report turn-around time. (2) Methods: The model was developed from the NIH Chest-14 open-source dataset and fine-tuned using an internal dataset comprising more than 4000 CXRs acquired in our institution. Input from two senior radiologists provided the reference standard. The model was integrated into daily clinical workflow, prioritising abnormal CXRs for expedited reporting. Area under the receiver operating characteristic curve (AUC), F1 score, sensitivity, and specificity were calculated to characterise diagnostic performance. The average time taken by radiologists in reporting the CXRs was compared against the mean baseline time taken prior to implementation of the AI model. (3) Results: 9431 unique CXRs were included in the datasets, of which 1232 were ground truth-labelled positive for pneumonia. On the "live" dataset, the model achieved an AUC of 0.95 (95% confidence interval (CI): 0.92, 0.96) corresponding to a specificity of 97% (95% CI: 0.97, 0.98) and sensitivity of 79% (95% CI: 0.72, 0.84). No statistically significant degradation of diagnostic performance was encountered during clinical deployment, and report turn-around time was reduced by 22%. (4) Conclusion: In real-world clinical deployment, our model expedites reporting of pneumonia in COVID-19 suspects while preserving diagnostic performance without significant model drift.
URI: https://hdl.handle.net/10356/164836
ISSN: 2227-9032
DOI: 10.3390/healthcare10010175
Schools: Lee Kong Chian School of Medicine (LKCMedicine) 
School of Electrical and Electronic Engineering 
Organisations: Tan Tock Seng Hospital
Rights: © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/).
Fulltext Permission: open
Fulltext Availability: With Fulltext
Appears in Collections:EEE Journal Articles
LKCMedicine Journal Articles

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