Literature DB >> 32960729

Performance of a Deep Learning Algorithm Compared with Radiologic Interpretation for Lung Cancer Detection on Chest Radiographs in a Health Screening Population.

Jong Hyuk Lee1, Hye Young Sun1, Sunggyun Park1, Hyungjin Kim1, Eui Jin Hwang1, Jin Mo Goo1, Chang Min Park1.   

Abstract

Background The performance of a deep learning algorithm for lung cancer detection on chest radiographs in a health screening population is unknown. Purpose To validate a commercially available deep learning algorithm for lung cancer detection on chest radiographs in a health screening population. Materials and Methods Out-of-sample testing of a deep learning algorithm was retrospectively performed using chest radiographs from individuals undergoing a comprehensive medical check-up between July 2008 and December 2008 (validation test). To evaluate the algorithm performance for visible lung cancer detection, the area under the receiver operating characteristic curve (AUC) and diagnostic measures, including sensitivity and false-positive rate (FPR), were calculated. The algorithm performance was compared with that of radiologists using the McNemar test and the Moskowitz method. Additionally, the deep learning algorithm was applied to a screening cohort undergoing chest radiography between January 2008 and December 2012, and its performances were calculated. Results In a validation test comprising 10 285 radiographs from 10 202 individuals (mean age, 54 years ± 11 [standard deviation]; 5857 men) with 10 radiographs of visible lung cancers, the algorithm's AUC was 0.99 (95% confidence interval: 0.97, 1), and it showed comparable sensitivity (90% [nine of 10 radiographs]) to that of the radiologists (60% [six of 10 radiographs]; P = .25) with a higher FPR (3.1% [319 of 10 275 radiographs] vs 0.3% [26 of 10 275 radiographs]; P < .001). In the screening cohort of 100 525 chest radiographs from 50 070 individuals (mean age, 53 years ± 11; 28 090 men) with 47 radiographs of visible lung cancers, the algorithm's AUC was 0.97 (95% confidence interval: 0.95, 0.99), and its sensitivity and FPR were 83% (39 of 47 radiographs) and 3% (2999 of 100 478 radiographs), respectively. Conclusion A deep learning algorithm detected lung cancers on chest radiographs with a performance comparable to that of radiologists, which will be helpful for radiologists in healthy populations with a low prevalence of lung cancer. © RSNA, 2020 Online supplemental material is available for this article. See also the editorial by Armato in this issue.

Entities:  

Mesh:

Year:  2020        PMID: 32960729     DOI: 10.1148/radiol.2020201240

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  9 in total

Review 1.  Artificial intelligence for early diagnosis of lung cancer through incidental nodule detection in low- and middle-income countries-acceleration during the COVID-19 pandemic but here to stay.

Authors:  Susana Goncalves; Pei-Chieh Fong; Mariya Blokhina
Journal:  Am J Cancer Res       Date:  2022-01-15       Impact factor: 6.166

Review 2.  A narrative review of deep learning applications in lung cancer research: from screening to prognostication.

Authors:  Jong Hyuk Lee; Eui Jin Hwang; Hyungjin Kim; Chang Min Park
Journal:  Transl Lung Cancer Res       Date:  2022-06

3.  Development and Validation of a Multimodal-Based Prognosis and Intervention Prediction Model for COVID-19 Patients in a Multicenter Cohort.

Authors:  Jeong Hoon Lee; Jong Seok Ahn; Myung Jin Chung; Yeon Joo Jeong; Jin Hwan Kim; Jae Kwang Lim; Jin Young Kim; Young Jae Kim; Jong Eun Lee; Eun Young Kim
Journal:  Sensors (Basel)       Date:  2022-07-02       Impact factor: 3.847

4.  Diagnostic performance of artificial intelligence approved for adults for the interpretation of pediatric chest radiographs.

Authors:  Hyun Joo Shin; Nak-Hoon Son; Min Jung Kim; Eun-Kyung Kim
Journal:  Sci Rep       Date:  2022-06-17       Impact factor: 4.996

Review 5.  Applications of artificial intelligence in the thorax: a narrative review focusing on thoracic radiology.

Authors:  Yisak Kim; Ji Yoon Park; Eui Jin Hwang; Sang Min Lee; Chang Min Park
Journal:  J Thorac Dis       Date:  2021-12       Impact factor: 2.895

6.  Artificial Intelligence-Based Detection of Pneumonia in Chest Radiographs.

Authors:  Judith Becker; Josua A Decker; Christoph Römmele; Maria Kahn; Helmut Messmann; Markus Wehler; Florian Schwarz; Thomas Kroencke; Christian Scheurig-Muenkler
Journal:  Diagnostics (Basel)       Date:  2022-06-14

Review 7.  Possible Bias in Supervised Deep Learning Algorithms for CT Lung Nodule Detection and Classification.

Authors:  Nikos Sourlos; Jingxuan Wang; Yeshaswini Nagaraj; Peter van Ooijen; Rozemarijn Vliegenthart
Journal:  Cancers (Basel)       Date:  2022-08-10       Impact factor: 6.575

8.  Successful Implementation of an Artificial Intelligence-Based Computer-Aided Detection System for Chest Radiography in Daily Clinical Practice.

Authors:  Seungsoo Lee; Hyun Joo Shin; Sungwon Kim; Eun-Kyung Kim
Journal:  Korean J Radiol       Date:  2022-06-20       Impact factor: 7.109

9.  Artificial Intelligence-Based Identification of Normal Chest Radiographs: A Simulation Study in a Multicenter Health Screening Cohort.

Authors:  Hyunsuk Yoo; Eun Young Kim; Hyungjin Kim; Ye Ra Choi; Moon Young Kim; Sung Ho Hwang; Young Joong Kim; Young Jun Cho; Kwang Nam Jin
Journal:  Korean J Radiol       Date:  2022-10       Impact factor: 7.109

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.