» Articles » PMID: 30418527

Development and Validation of a Deep Learning-based Automatic Detection Algorithm for Active Pulmonary Tuberculosis on Chest Radiographs

Overview
Journal Clin Infect Dis
Date 2018 Nov 13
PMID 30418527
Citations 79
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Detection of active pulmonary tuberculosis on chest radiographs (CRs) is critical for the diagnosis and screening of tuberculosis. An automated system may help streamline the tuberculosis screening process and improve diagnostic performance.

Methods: We developed a deep learning-based automatic detection (DLAD) algorithm using 54c221 normal CRs and 6768 CRs with active pulmonary tuberculosis that were labeled and annotated by 13 board-certified radiologists. The performance of DLAD was validated using 6 external multicenter, multinational datasets. To compare the performances of DLAD with physicians, an observer performance test was conducted by 15 physicians including nonradiology physicians, board-certified radiologists, and thoracic radiologists. Image-wise classification and lesion-wise localization performances were measured using area under the receiver operating characteristic (ROC) curves and area under the alternative free-response ROC curves, respectively. Sensitivities and specificities of DLAD were calculated using 2 cutoffs (high sensitivity [98%] and high specificity [98%]) obtained through in-house validation.

Results: DLAD demonstrated classification performance of 0.977-1.000 and localization performance of 0.973-1.000. Sensitivities and specificities for classification were 94.3%-100% and 91.1%-100% using the high-sensitivity cutoff and 84.1%-99.0% and 99.1%-100% using the high-specificity cutoff. DLAD showed significantly higher performance in both classification (0.993 vs 0.746-0.971) and localization (0.993 vs 0.664-0.925) compared to all groups of physicians.

Conclusions: Our DLAD demonstrated excellent and consistent performance in the detection of active pulmonary tuberculosis on CR, outperforming physicians, including thoracic radiologists.

Citing Articles

Lung image segmentation with improved U-Net, V-Net and Seg-Net techniques.

Turk F, Kilicaslan M PeerJ Comput Sci. 2025; 11:e2700.

PMID: 40062241 PMC: 11888921. DOI: 10.7717/peerj-cs.2700.


Development and Validation of Deep Learning-Based Infectivity Prediction in Pulmonary Tuberculosis Through Chest Radiography: Retrospective Study.

Chung W, Yoon J, Yoon D, Kim S, Kim Y, Park J J Med Internet Res. 2024; 26:e58413.

PMID: 39509691 PMC: 11582483. DOI: 10.2196/58413.


Can AI generate diagnostic reports for radiologist approval on CXR images? A multi-reader and multi-case observer performance study.

Guo L, Xia L, Zheng Q, Zheng B, Jaeger S, Giger M J Xray Sci Technol. 2024; 32(6):1465-1480.

PMID: 39422982 PMC: 11787813. DOI: 10.3233/XST-240051.


Spatial lung imaging in clinical and translational settings.

Mahmutovic Persson I, Bozovic G, Westergren-Thorsson G, Rolandsson Enes S Breathe (Sheff). 2024; 20(3):230224.

PMID: 39360023 PMC: 11444490. DOI: 10.1183/20734735.0224-2023.


Artificial intelligence system for identification of overlooked lung metastasis in abdominopelvic computed tomography scans of patients with malignancy.

Cho H, Hwang E, Yi J, Choi B, Park C Diagn Interv Radiol. 2024; 31(2):102-110.

PMID: 39248126 PMC: 11880870. DOI: 10.4274/dir.2024.242835.


References
1.
Dorfman D, Berbaum K, Metz C . Receiver operating characteristic rating analysis. Generalization to the population of readers and patients with the jackknife method. Invest Radiol. 1992; 27(9):723-31. View

2.
Den Boon S, White N, van Lill S, Borgdorff M, Verver S, Lombard C . An evaluation of symptom and chest radiographic screening in tuberculosis prevalence surveys. Int J Tuberc Lung Dis. 2006; 10(8):876-82. View

3.
Petrick N, Haider M, Summers R, Yeshwant S, Brown L, Iuliano E . CT colonography with computer-aided detection as a second reader: observer performance study. Radiology. 2007; 246(1):148-56. DOI: 10.1148/radiol.2453062161. View

4.
Gilbert F, Astley S, Gillan M, Agbaje O, Wallis M, James J . Single reading with computer-aided detection for screening mammography. N Engl J Med. 2008; 359(16):1675-84. DOI: 10.1056/NEJMoa0803545. View

5.
Hogeweg L, Mol C, de Jong P, Dawson R, Ayles H, van Ginneken B . Fusion of local and global detection systems to detect tuberculosis in chest radiographs. Med Image Comput Comput Assist Interv. 2010; 13(Pt 3):650-7. DOI: 10.1007/978-3-642-15711-0_81. View