Article (Scientific journals)
Artificial intelligence outperforms pulmonologists in the interpretation of pulmonary function tests.
Topalovic, Marko; Das, Nilakash; Burgel, Pierre-Regis et al.
2019In European Respiratory Journal, 53 (4)
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Abstract :
[en] The interpretation of pulmonary function tests (PFTs) to diagnose respiratory diseases is built on expert opinion that relies on the recognition of patterns and the clinical context for detection of specific diseases. In this study, we aimed to explore the accuracy and interrater variability of pulmonologists when interpreting PFTs compared with artificial intelligence (AI)-based software that was developed and validated in more than 1500 historical patient cases.120 pulmonologists from 16 European hospitals evaluated 50 cases with PFT and clinical information, resulting in 6000 independent interpretations. The AI software examined the same data. American Thoracic Society/European Respiratory Society guidelines were used as the gold standard for PFT pattern interpretation. The gold standard for diagnosis was derived from clinical history, PFT and all additional tests.The pattern recognition of PFTs by pulmonologists (senior 73%, junior 27%) matched the guidelines in 74.4+/-5.9% of the cases (range 56-88%). The interrater variability of kappa=0.67 pointed to a common agreement. Pulmonologists made correct diagnoses in 44.6+/-8.7% of the cases (range 24-62%) with a large interrater variability (kappa=0.35). The AI-based software perfectly matched the PFT pattern interpretations (100%) and assigned a correct diagnosis in 82% of all cases (p<0.0001 for both measures).The interpretation of PFTs by pulmonologists leads to marked variations and errors. AI-based software provides more accurate interpretations and may serve as a powerful decision support tool to improve clinical practice.
Disciplines :
Cardiovascular & respiratory systems
Author, co-author :
Topalovic, Marko
Das, Nilakash
Burgel, Pierre-Regis
Daenen, Marc
Derom, Eric
Haenebalcke, Christel
Janssen, Rob
Kerstjens, Huib A. M.
Liistro, Giuseppe
Louis, Renaud ;  Université de Liège - ULiège > Département des sciences cliniques > Pneumologie - Allergologie
Ninane, Vincent
Pison, Christophe
Schlesser, Marc
Vercauter, Piet
Vogelmeier, Claus F.
Wouters, Emiel
Wynants, Jokke
Janssens, Wim
More authors (8 more) Less
Language :
English
Title :
Artificial intelligence outperforms pulmonologists in the interpretation of pulmonary function tests.
Publication date :
April 2019
Journal title :
European Respiratory Journal
ISSN :
0903-1936
eISSN :
1399-3003
Publisher :
European Respiratory Society, United Kingdom
Volume :
53
Issue :
4
Peer reviewed :
Peer Reviewed verified by ORBi
Commentary :
Copyright (c)ERS 2019.
Available on ORBi :
since 12 November 2019

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