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Development and Validation of a Deep Learning-Based Automated Detection Algorithm for Major Thoracic Diseases on Chest Radiographs

Cited 242 time in Web of Science Cited 284 time in Scopus
Authors

Hwang, Eui Jin; Park, Sunggyun; Jin, Kwang-Nam; Kim, Jung Im; Choi, So Young; Lee, Jong Hyuk; Goo, Jin Mo; Aum, Jaehong; Yim, Jae-Joon; Cohen, Julien G.; Ferretti, Gilbert R.; Park, Chang Min; Kim, Dong Hyeon; Woo, Sungmin; Choi, Wonseok; Hwang, In Pyung; Song, Yong Sub; Lim, Jiyeon; Kim, Hyungjin; Wi, Jae Yeon; Oh, Su Suk; Kang, Mi-Jin; Lee, Nyoung Keun; Yoo, Jin Young; Suh, Young Joo

Issue Date
2019-03
Publisher
American Medical Association
Citation
Jama Network Open, Vol.2 No.3, p. e191095
Abstract
IMPORTANCE Interpretation of chest radiographs is a challenging task prone to errors, requiring expert readers. An automated system that can accurately classify chest radiographs may help streamline the clinical workflow. OBJECTIVES To develop a deep learning-based algorithm that can classify normal and abnormal results from chest radiographs with major thoracic diseases including pulmonary malignant neoplasm, active tuberculosis, pneumonia, and pneumothorax and to validate the algorithm's performance using independent data sets. DESIGN, SETTING, AND PARTICIPANTS This diagnostic study developed a deep learning-based algorithm using single-center data collected between November 1, 2016, and January 31, 2017. The algorithm was externally validated with multicenter data collected between May 1 and July 31, 2018. A total of 54 221 chest radiographs with normal findings from 47 917 individuals (21 556 men and 26 361 women; mean [SD] age, 51 [16] years) and 35 613 chest radiographs with abnormal findings from 14 102 individuals (8373 men and 5729 women; mean [SD] age, 62 [15] years) were used to develop the algorithm. A total of 486 chest radiographs with normal results and 529 with abnormal results (1 from each participant; 628 men and 387 women; mean [SD] age, 53 [18] years) from 5 institutions were used for external validation. Fifteen physicians, including nonradiology physicians, board-certified radiologists, and thoracic radiologists, participated in observer performance testing. Data were analyzed in August 2018. EXPOSURES Deep learning-based algorithm. MAIN OUTCOMES AND MEASURES Image-wise classification performances measured by area under the receiver operating characteristic curve; lesion-wise localization performances measured by area under the alternative free-response receiver operating characteristic curve. RESULTS The algorithm demonstrated a median (range) area under the curve of 0.979 (0.973-1.000) for image-wise classification and 0.972 (0.923-0.985) for lesion-wise localization; the algorithm demonstrated significantly higher performance than all 3 physician groups in both image-wise classification (0.983 vs 0.814-0.932; all P < .005) and lesion-wise localization (0.985 vs 0.781-0.907; all P < .001). Significant improvements in both image-wise classification (0.814-0.932 to 0.904-0.958; all P < .005) and lesion-wise localization (0.781-0.907 to 0.873-0.938; all P < .001) were observed in all 3 physician groups with assistance of the algorithm. CONCLUSIONS AND RELEVANCE The algorithm consistently outperformed physicians, including thoracic radiologists, in the discrimination of chest radiographs with major thoracic diseases, demonstrating its potential to improve the quality and efficiency of clinical practice.
ISSN
2574-3805
URI
https://hdl.handle.net/10371/206277
DOI
https://doi.org/10.1001/jamanetworkopen.2019.1095
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  • College of Medicine
  • Department of Medicine
Research Area Nontuberculous Mycobacteria, Tuberculosis, multidrug-resistant tuberculosis, 결핵, 다제내성결핵, 비결핵항산균 폐질환

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