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Identification of Active Pulmonary Tuberculosis Among Patients With Positive Interferon-Gamma Release Assay Results Value of a Deep Learning-based Computer-aided Detection System in Different Scenarios of Implementation

Cited 2 time in Web of Science Cited 4 time in Scopus
Authors

Park, Jongsoo; Hwang, Eui Jin; Lee, Jong Hyuk; Hong, Wonju; Nam, Ju Gang; Lim, Woo Hyeon; Kim, Jae Hyun; Goo, Jin Mo; Park, Chang Min

Issue Date
2023-05
Publisher
Lippincott Williams & Wilkins Ltd.
Citation
Journal of Thoracic Imaging, Vol.38 No.3, pp.145-153
Abstract
Purpose:To evaluate the accuracy of a deep learning-based computer-aided detection (CAD) system in identifying active pulmonary tuberculosis on chest radiographs (CRs) of patients with positive interferon-gamma release assay (IGRA) results in different scenarios of clinical implementation. Materials and Methods:We collected the CRs of consecutive patients with positive IGRA results. Findings of active pulmonary tuberculosis on CRs were independently evaluated by the CAD and a thoracic radiologist, followed by interpretation using the CAD. Sensitivity and specificity were evaluated in different scenarios: (a) radiologists' interpretation, (b) radiologists' CAD-assisted interpretation, and (c) CAD-based prescreening (radiologists' interpretation for positive CAD results only). We conducted a reader test to compare the accuracy of the CAD with those of 5 radiologists. Results:Among 1780 patients (men, 53.8%; median age, 56 y), 44 (2.5%) were diagnosed with active pulmonary tuberculosis. The CAD-assisted interpretation exhibited a higher sensitivity (81.8% vs. 72.7%; P=0.046) but lower specificity than the radiologists' interpretation (84.1% vs. 85.7%; P<0.001). The CAD-based prescreening exhibited a higher specificity than the radiologists' interpretation (88.8% vs. 85.7%; P<0.001) at the same sensitivity, with a workload reduction of 85.2% (1780 to 263). In the reader test, the CAD exhibited a higher sensitivity than radiologists (72.7% vs. 59.5%; P=0.005) at the same specificity (88.0%), and CAD-assisted interpretation significantly improved the sensitivity of radiologists' interpretation (72.3%; P<0.001). Conclusions:For identifying active pulmonary tuberculosis among patients with positive IGRA results, deep learning-based CAD can enhance the sensitivity of interpretation. CAD-based prescreening may reduce the radiologists' workload at an improved specificity.
ISSN
0883-5993
URI
https://hdl.handle.net/10371/208859
DOI
https://doi.org/10.1097/RTI.0000000000000691
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  • College of Medicine
  • Department of Medicine
Research Area Radiology

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