Using AI to Improve Radiologist Performance in Detection of Abnormalities on Chest Radiographs

被引:24
|
作者
Bennani, Souhail [1 ,2 ]
Regnard, Nor-Eddine [2 ,3 ]
Ventre, Jeanne [2 ]
Lassalle, Louis [2 ,3 ]
Nguyen, Toan [2 ,4 ]
Ducarouge, Alexis [2 ]
Dargent, Lucas [1 ]
Guillo, Enora
Gouhier, Elodie [1 ]
Zaimi, Sophie-Helene
Canniff, Emma
Malandrin, Cecile
Khafagy, Philippe [5 ]
Chassagnon, Guillaume [1 ]
Koulakian, Hasmik [6 ]
Revel, Marie-Pierre [1 ]
机构
[1] Cochin Hosp, AP HP, Dept Thorac Imaging, 27 Rue Faubourg St Jacques, F-75014 Paris, France
[2] Gleamer, Paris, France
[3] Reseau Imagerie Sud Francilien, Lieusant, France
[4] Armand Trousseau Hosp, AP HP, Dept Pediat Radiol, Paris, France
[5] HFR Fribourg, Fribourg, Switzerland
[6] Ctr Imagerie Medicale Ouest Parisien, Paris, France
关键词
COMPUTER-AIDED DIAGNOSIS; ARTIFICIAL-INTELLIGENCE; PULMONARY NODULES;
D O I
10.1148/radiol.230860
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background: Chest radiography remains the most common radiologic examination, and interpretation of its results can be difficult. Purpose: To explore the potential benefit of artificial intelligence (AI) assistance in the detection of thoracic abnormalities on chest radiographs by evaluating the performance of radiologists with different levels of expertise, with and without AI assistance. Materials and Methods: Patients who underwent both chest radiography and thoracic CT within 72 hours between January 2010 and December 2020 in a French public hospital were screened retrospectively. Radiographs were randomly included until reaching 500 radiographs, with about 50% of radiographs having abnormal findings. A senior thoracic radiologist annotated the radiographs for five abnormalities (pneumothorax, pleural effusion, consolidation, mediastinal and hilar mass, lung nodule) based on the corresponding CT results (ground truth). A total of 12 readers (four thoracic radiologists, four general radiologists, four radiology residents) read half the radiographs without AI and half the radiographs with AI (ChestView; Gleamer). Changes in sensitivity and specificity were measured using paired t tests. Results: The study included 500 patients (mean age, 54 years +/- 19 [SD]; 261 female, 239 male), with 522 abnormalities visible on 241 radiographs. On average, for all readers, AI use resulted in an absolute increase in sensitivity of 26% (95% CI: 20, 32), 14% (95% CI: 11, 17), 12% (95% CI: 10, 14), 8.5% (95% CI: 6, 11), and 5.9% (95% CI: 4, 8) for pneumothorax, consolidation, nodule, pleural effusion, and mediastinal and hilar mass, respectively (P < .001). Specificity increased with AI assistance (3.9% [95% CI: 3.2, 4.6], 3.7% [95% CI: 3, 4.4], 2.9% [95% CI: 2.3, 3.5], and 2.1% [95% CI: 1.6, 2.6] for pleural effusion, mediastinal and hilar mass, consolidation, and nodule, respectively), except in the diagnosis of pneumothorax (-0.2%; 95% CI: -0.36, -0.04; P = .01). The mean reading time was 81 seconds without AI versus 56 seconds with AI (31% decrease, P < .001). Conclusion: AI-assisted chest radiography interpretation resulted in absolute increases in sensitivity for all radiologists of various levels of expertise and reduced the reading times; specificity increased with AI, except in the diagnosis of pneumothorax.
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页数:12
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