Deep learning for chest radiograph diagnosis: A retrospective comparison of the CheXNeXt algorithm to practicing radiologists

被引:779
作者
Rajpurkar, Pranav [1 ]
Irvin, Jeremy [1 ]
Ball, Robyn L. [2 ]
Zhu, Kaylie [1 ]
Yang, Brandon [1 ]
Mehta, Hershel [1 ]
Duan, Tony [1 ]
Ding, Daisy [1 ]
Bagul, Aarti [1 ]
Langlotz, Curtis P. [3 ]
Patel, Bhavik N. [3 ]
Yeom, Kristen W. [3 ]
Shpanskaya, Katie [3 ]
Blankenberg, Francis G. [3 ]
Seekins, Jayne [3 ]
Amrhein, Timothy J. [4 ]
Mong, David A. [5 ]
Halabi, Safwan S. [3 ]
Zucker, Evan J. [3 ]
Ng, Andrew Y. [1 ]
Lungren, Matthew P. [3 ]
机构
[1] Stanford Univ, Dept Comp Sci, Stanford, CA 94305 USA
[2] Stanford Univ, Dept Med, Quantitat Sci Unit, Stanford, CA 94305 USA
[3] Stanford Univ, Dept Radiol, Stanford, CA 94305 USA
[4] Duke Univ, Dept Radiol, Durham, NC 27710 USA
[5] Univ Colorado, Dept Radiol, Denver, CO 80202 USA
关键词
PULMONARY TUBERCULOSIS; LUNG-CANCER; CLASSIFICATION; IMMIGRANTS; AID;
D O I
10.1371/journal.pmed.1002686
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Chest radiograph interpretation is critical for the detection of thoracic diseases, including tuberculosis and lung cancer, which affect millions of people worldwide each year. This time-consuming task typically requires expert radiologists to read the images, leading to fatigue-based diagnostic error and lack of diagnostic expertise in areas of the world where radiologists are not available. Recently, deep learning approaches have been able to achieve expert-level performance in medical image interpretation tasks, powered by large network architectures and fueled by the emergence of large labeled datasets. The purpose of this study is to investigate the performance of a deep learning algorithm on the detection of pathologies in chest radiographs compared with practicing radiologists. Methods and findings We developed CheXNeXt, a convolutional neural network to concurrently detect the presence of 14 different pathologies, including pneumonia, pleural effusion, pulmonary masses, and nodules in frontal-view chest radiographs. CheXNeXt was trained and internally validated on the ChestX-ray8 dataset, with a held-out validation set consisting of 420 images, sampled to contain at least 50 cases of each of the original pathology labels. On this validation set, the majority vote of a panel of 3 board-certified cardiothoracic specialist radiologists served as reference standard. We compared CheXNeXt's discriminative performance on the validation set to the performance of 9 radiologists using the area under the receiver operating characteristic curve (AUC). The radiologists included 6 board-certified radiologists (average experience 12 years, range 4-28 years) and 3 senior radiology residents, from 3 academic institutions. We found that CheXNeXt achieved radiologist-level performance on 11 pathologies and did not achieve radiologist-level performance on 3 pathologies. The radiologists achieved statistically significantly higher AUC performance on cardiomegaly, emphysema, and hiatal hernia, with AUCs of 0.888 (95% confidence interval [CI] 0.863-0.910), 0.911 (95% CI 0.866-0.947), and 0.985 (95% CI 0.974-0.991), respectively, whereas CheXNeXt's AUCs were 0.831 (95% CI 0.790-0.870), 0.704 (95% CI 0.567-0.833), and 0.851 (95% CI 0.785-0.909), respectively. CheXNeXt performed better than radiologists in detecting atelectasis, with an AUC of 0.862 (95% CI 0.825-0.895), statistically significantly higher than radiologists' AUC of 0.808 (95% CI 0.777-0.838); there were no statistically significant differences in AUCs for the other 10 pathologies. The average time to interpret the 420 images in the validation set was substantially longer for the radiologists (240 minutes) than for CheXNeXt (1.5 minutes). The main limitations of our study are that neither CheXNeXt nor the radiologists were permitted to use patient history or review prior examinations and that evaluation was limited to a dataset from a single institution. Conclusions In this study, we developed and validated a deep learning algorithm that classified clinically important abnormalities in chest radiographs at a performance level comparable to practicing radiologists. Once tested prospectively in clinical settings, the algorithm could have the potential to expand patient access to chest radiograph diagnostics.
引用
收藏
页数:17
相关论文
共 49 条
[1]  
[Anonymous], ARXIV171010501 CS
[2]  
[Anonymous], CONSPLINE PARTIAL LI
[3]  
[Anonymous], 2017, R LANG ENV STAT COMP
[4]  
[Anonymous], 1994, An introduction to the bootstrap
[5]  
[Anonymous], 2018, ARXIV180109927 CS
[6]  
[Anonymous], P 3 INT C LEARN REPR
[7]  
[Anonymous], JAMA
[8]  
[Anonymous], 2017, GRIDEXTRA MISCELLANE
[9]  
[Anonymous], ARXIV171200996 CS ST
[10]  
[Anonymous], 2017, BMJ BRIT MED J, DOI DOI 10.1136/BMJ.J4683