Can artificial intelligence pass the Fellowship of the Royal College of Radiologists examination? Multi-reader diagnostic accuracy study. (21st December 2022)
- Record Type:
- Journal Article
- Title:
- Can artificial intelligence pass the Fellowship of the Royal College of Radiologists examination? Multi-reader diagnostic accuracy study. (21st December 2022)
- Main Title:
- Can artificial intelligence pass the Fellowship of the Royal College of Radiologists examination? Multi-reader diagnostic accuracy study
- Authors:
- Shelmerdine, Susan Cheng
Martin, Helena
Shirodkar, Kapil
Shamshuddin, Sameer
Weir-McCall, Jonathan Richard - Other Names:
- author non-byline.
AlQarooni Sayed Hashim author non-byline.
Alias Sajay author non-byline.
Aryasomayajula Saraswati Samyukta author non-byline.
Azzi Caline author non-byline.
Ba Hashwan Awadh Ahmed Taiseir author non-byline.
Boon-Itt Anintitha author non-byline.
Butt Momana Tariq author non-byline.
Chang Liisa author non-byline.
Crowe Victoria author non-byline.
Elsaidy Mahmoud Mohamed author non-byline.
Gonegandla Aejaz Ahmed author non-byline.
Hammond Abeeku Afedzi author non-byline.
Jantre Mansi author non-byline.
Karthikeyan Kavya Moonjelil author non-byline.
Koo Sharon author non-byline.
McGlade Sophie author non-byline.
Mehta Aprajita author non-byline.
Mundhada Preeti author non-byline.
Nayel Marwa author non-byline.
Ngu Wee Ping author non-byline.
Norman Ryan author non-byline.
Odeh Amina author non-byline.
Perumala Dileep Kumar author non-byline.
Roy Choudhury Shayeri author non-byline.
Stephen Maria Lourdam Sarath Babu author non-byline.
Virupakshappa Anil Kumar Geetha author non-byline. - Abstract:
- Abstract: Objective: To determine whether an artificial intelligence candidate could pass the rapid (radiographic) reporting component of the Fellowship of the Royal College of Radiologists (FRCR) examination. Design: Prospective multi-reader diagnostic accuracy study. Setting: United Kingdom. Participants: One artificial intelligence candidate (Smarturgences, Milvue) and 26 radiologists who had passed the FRCR examination in the preceding 12 months. Main outcome measures: Accuracy and pass rate of the artificial intelligence compared with radiologists across 10 mock FRCR rapid reporting examinations (each examination containing 30 radiographs, requiring 90% accuracy rate to pass). Results: When non-interpretable images were excluded from the analysis, the artificial intelligence candidate achieved an average overall accuracy of 79.5% (95% confidence interval 74.1% to 84.3%) and passed two of 10 mock FRCR examinations. The average radiologist achieved an average accuracy of 84.8% (76.1-91.9%) and passed four of 10 mock examinations. The sensitivity for the artificial intelligence was 83.6% (95% confidence interval 76.2% to 89.4%) and the specificity was 75.2% (66.7% to 82.5%), compared with summary estimates across all radiologists of 84.1% (81.0% to 87.0%) and 87.3% (85.0% to 89.3%). Across 148/300 radiographs that were correctly interpreted by >90% of radiologists, the artificial intelligence candidate was incorrect in 14/148 (9%). In 20/300 radiographs that most (>50%)Abstract: Objective: To determine whether an artificial intelligence candidate could pass the rapid (radiographic) reporting component of the Fellowship of the Royal College of Radiologists (FRCR) examination. Design: Prospective multi-reader diagnostic accuracy study. Setting: United Kingdom. Participants: One artificial intelligence candidate (Smarturgences, Milvue) and 26 radiologists who had passed the FRCR examination in the preceding 12 months. Main outcome measures: Accuracy and pass rate of the artificial intelligence compared with radiologists across 10 mock FRCR rapid reporting examinations (each examination containing 30 radiographs, requiring 90% accuracy rate to pass). Results: When non-interpretable images were excluded from the analysis, the artificial intelligence candidate achieved an average overall accuracy of 79.5% (95% confidence interval 74.1% to 84.3%) and passed two of 10 mock FRCR examinations. The average radiologist achieved an average accuracy of 84.8% (76.1-91.9%) and passed four of 10 mock examinations. The sensitivity for the artificial intelligence was 83.6% (95% confidence interval 76.2% to 89.4%) and the specificity was 75.2% (66.7% to 82.5%), compared with summary estimates across all radiologists of 84.1% (81.0% to 87.0%) and 87.3% (85.0% to 89.3%). Across 148/300 radiographs that were correctly interpreted by >90% of radiologists, the artificial intelligence candidate was incorrect in 14/148 (9%). In 20/300 radiographs that most (>50%) radiologists interpreted incorrectly, the artificial intelligence candidate was correct in 10/20 (50%). Most imaging pitfalls related to interpretation of musculoskeletal rather than chest radiographs. Conclusions: When special dispensation for the artificial intelligence candidate was provided (that is, exclusion of non-interpretable images), the artificial intelligence candidate was able to pass two of 10 mock examinations. Potential exists for the artificial intelligence candidate to improve its radiographic interpretation skills by focusing on musculoskeletal cases and learning to interpret radiographs of the axial skeleton and abdomen that are currently considered "non-interpretable." … (more)
- Is Part Of:
- BMJ. Volume 379(2022)
- Journal:
- BMJ
- Issue:
- Volume 379(2022)
- Issue Display:
- Volume 379, Issue 2022 (2022)
- Year:
- 2022
- Volume:
- 379
- Issue:
- 2022
- Issue Sort Value:
- 2022-0379-2022-0000
- Page Start:
- Page End:
- Publication Date:
- 2022-12-21
- Subjects:
- Medicine -- Periodicals
Medicine -- Periodicals
Medicine
Periodicals
610 - Journal URLs:
- http://www.bmj.com/archive ↗
http://www.jstor.org/journals/09598138.html ↗
http://www.ncbi.nlm.nih.gov/pmc/journals/3/ ↗
http://www.bmj.com/bmj/ ↗
http://www.bmj.com/archive ↗ - DOI:
- 10.1136/bmj-2022-072826 ↗
- Languages:
- English
- ISSNs:
- 0007-1447
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - BLDSS-3PM
British Library HMNTS - ELD Digital store - Ingest File:
- 24782.xml