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Collaboration between explainable artificial intelligence and pulmonologists improves the accuracy of pulmonary function test interpretation
43
Zitationen
23
Autoren
2023
Jahr
Abstract
BACKGROUND: Few studies have investigated the collaborative potential between artificial intelligence (AI) and pulmonologists for diagnosing pulmonary disease. We hypothesised that the collaboration between a pulmonologist and AI with explanations (explainable AI (XAI)) is superior in diagnostic interpretation of pulmonary function tests (PFTs) than the pulmonologist without support. METHODS: The study was conducted in two phases, a monocentre study (phase 1) and a multicentre intervention study (phase 2). Each phase utilised two different sets of 24 PFT reports of patients with a clinically validated gold standard diagnosis. Each PFT was interpreted without (control) and with XAI's suggestions (intervention). Pulmonologists provided a differential diagnosis consisting of a preferential diagnosis and optionally up to three additional diagnoses. The primary end-point compared accuracy of preferential and additional diagnoses between control and intervention. Secondary end-points were the number of diagnoses in differential diagnosis, diagnostic confidence and inter-rater agreement. We also analysed how XAI influenced pulmonologists' decisions. RESULTS: In phase 1 (n=16 pulmonologists), mean preferential and differential diagnostic accuracy significantly increased by 10.4% and 9.4%, respectively, between control and intervention (p<0.001). Improvements were somewhat lower but highly significant (p<0.0001) in phase 2 (5.4% and 8.7%, respectively; n=62 pulmonologists). In both phases, the number of diagnoses in the differential diagnosis did not reduce, but diagnostic confidence and inter-rater agreement significantly increased during intervention. Pulmonologists updated their decisions with XAI's feedback and consistently improved their baseline performance if AI provided correct predictions. CONCLUSION: A collaboration between a pulmonologist and XAI is better at interpreting PFTs than individual pulmonologists reading without XAI support or XAI alone.
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Autoren
- Nilakash Das
- Sofie Happaerts
- Iwein Gyselinck
- Michaël Staes
- Eric Derom
- Guy Brusselle
- Felip Burgos
- Marco Contoli
- Anh Tuan Dinh‐Xuan
- Frits M.E. Franssen
- Sherif Gonem
- Neil Greening
- Christel Haenebalcke
- William D‐C Man
- Jorge Moisés
- Rudi Peché
- Vitalii Poberezhets
- Jennifer K Quint
- Michael Steiner
- Eef Vanderhelst
- Mustafa Abdo
- Marko Topalovic
- Wim Janssens
Institutionen
- KU Leuven(BE)
- University College Ghent(BE)
- Ghent University Hospital(BE)
- Ghent University(BE)
- Consorci Institut D'Investigacions Biomediques August Pi I Sunyer(ES)
- Universitat de Barcelona(ES)
- University of Ferrara(IT)
- Université Paris Cité(FR)
- Hôpital Cochin(FR)
- Assistance Publique – Hôpitaux de Paris(FR)
- Maastricht University Medical Centre(NL)
- Maastricht University(NL)
- Nottingham University Hospitals NHS Trust(GB)
- University of Leicester(GB)
- NIHR Leicester Biomedical Research Centre(GB)
- AZ Sint-Jan(BE)
- Guy's and St Thomas' NHS Foundation Trust(GB)
- Imperial College London(GB)
- Centre for Biomedical Network Research on Rare Diseases(ES)
- Grand Charleroi Hospital(BE)
- National Pirogov Memorial Medical University, Vinnytsya(UA)
- Vrije Universiteit Brussel(BE)
- LungenClinic Grosshansdorf(DE)