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Effect of a comprehensive deep-learning model on the accuracy of chest x-ray interpretation by radiologists: a retrospective, multireader multicase study.
Seah, Jarrel C Y; Tang, Cyril H M; Buchlak, Quinlan D; Holt, Xavier G; Wardman, Jeffrey B; Aimoldin, Anuar; Esmaili, Nazanin; Ahmad, Hassan; Pham, Hung; Lambert, John F; Hachey, Ben; Hogg, Stephen J F; Johnston, Benjamin P; Bennett, Christine; Oakden-Rayner, Luke; Brotchie, Peter; Jones, Catherine M.
Afiliación
  • Seah JCY; Annalise.ai, Sydney, NSW, Australia; Department of Radiology, Alfred Health, Melbourne, VIC, Australia.
  • Tang CHM; Annalise.ai, Sydney, NSW, Australia.
  • Buchlak QD; Annalise.ai, Sydney, NSW, Australia. Electronic address: quinlan.buchlak1@my.nd.edu.au.
  • Holt XG; Annalise.ai, Sydney, NSW, Australia.
  • Wardman JB; Annalise.ai, Sydney, NSW, Australia.
  • Aimoldin A; Annalise.ai, Sydney, NSW, Australia.
  • Esmaili N; School of Medicine, University of Notre Dame Australia, Sydney, NSW, Australia; Faculty of Engineering and IT, University of Technology Sydney, Sydney, NSW, Australia.
  • Ahmad H; Annalise.ai, Sydney, NSW, Australia.
  • Pham H; Annalise.ai, Sydney, NSW, Australia.
  • Lambert JF; Annalise.ai, Sydney, NSW, Australia.
  • Hachey B; Annalise.ai, Sydney, NSW, Australia.
  • Hogg SJF; Annalise.ai, Sydney, NSW, Australia.
  • Johnston BP; Annalise.ai, Sydney, NSW, Australia.
  • Bennett C; School of Medicine, University of Notre Dame Australia, Sydney, NSW, Australia.
  • Oakden-Rayner L; Australian Institute for Machine Learning, The University of Adelaide, Adelaide, SA, Australia.
  • Brotchie P; Annalise.ai, Sydney, NSW, Australia; Department of Radiology, St Vincent's Health Australia, Melbourne, VIC, Australia.
  • Jones CM; I-MED Radiology Network, Brisbane, QLD, Australia.
Lancet Digit Health ; 3(8): e496-e506, 2021 08.
Article en En | MEDLINE | ID: mdl-34219054
BACKGROUND: Chest x-rays are widely used in clinical practice; however, interpretation can be hindered by human error and a lack of experienced thoracic radiologists. Deep learning has the potential to improve the accuracy of chest x-ray interpretation. We therefore aimed to assess the accuracy of radiologists with and without the assistance of a deep-learning model. METHODS: In this retrospective study, a deep-learning model was trained on 821 681 images (284 649 patients) from five data sets from Australia, Europe, and the USA. 2568 enriched chest x-ray cases from adult patients (≥16 years) who had at least one frontal chest x-ray were included in the test dataset; cases were representative of inpatient, outpatient, and emergency settings. 20 radiologists reviewed cases with and without the assistance of the deep-learning model with a 3-month washout period. We assessed the change in accuracy of chest x-ray interpretation across 127 clinical findings when the deep-learning model was used as a decision support by calculating area under the receiver operating characteristic curve (AUC) for each radiologist with and without the deep-learning model. We also compared AUCs for the model alone with those of unassisted radiologists. If the lower bound of the adjusted 95% CI of the difference in AUC between the model and the unassisted radiologists was more than -0·05, the model was considered to be non-inferior for that finding. If the lower bound exceeded 0, the model was considered to be superior. FINDINGS: Unassisted radiologists had a macroaveraged AUC of 0·713 (95% CI 0·645-0·785) across the 127 clinical findings, compared with 0·808 (0·763-0·839) when assisted by the model. The deep-learning model statistically significantly improved the classification accuracy of radiologists for 102 (80%) of 127 clinical findings, was statistically non-inferior for 19 (15%) findings, and no findings showed a decrease in accuracy when radiologists used the deep-learning model. Unassisted radiologists had a macroaveraged mean AUC of 0·713 (0·645-0·785) across all findings, compared with 0·957 (0·954-0·959) for the model alone. Model classification alone was significantly more accurate than unassisted radiologists for 117 (94%) of 124 clinical findings predicted by the model and was non-inferior to unassisted radiologists for all other clinical findings. INTERPRETATION: This study shows the potential of a comprehensive deep-learning model to improve chest x-ray interpretation across a large breadth of clinical practice. FUNDING: Annalise.ai.
Asunto(s)

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Rayos X / Radiografía Torácica / Interpretación de Imagen Radiográfica Asistida por Computador / Tamizaje Masivo / Aprendizaje Profundo / Modelos Biológicos Tipo de estudio: Diagnostic_studies / Evaluation_studies / Observational_studies / Prognostic_studies / Risk_factors_studies / Screening_studies Límite: Adolescent / Adult / Aged / Aged80 / Female / Humans / Male / Middle aged Idioma: En Revista: Lancet Digit Health Año: 2021 Tipo del documento: Article País de afiliación: Australia

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Rayos X / Radiografía Torácica / Interpretación de Imagen Radiográfica Asistida por Computador / Tamizaje Masivo / Aprendizaje Profundo / Modelos Biológicos Tipo de estudio: Diagnostic_studies / Evaluation_studies / Observational_studies / Prognostic_studies / Risk_factors_studies / Screening_studies Límite: Adolescent / Adult / Aged / Aged80 / Female / Humans / Male / Middle aged Idioma: En Revista: Lancet Digit Health Año: 2021 Tipo del documento: Article País de afiliación: Australia