Evaluation of the impact of artificial intelligence-assisted image interpretation on the diagnostic performance of clinicians in identifying pneumothoraces on plain chest X-ray: a multi-case multi-reader study.

chest emergency department pneumothorax

Journal

Emergency medicine journal : EMJ
ISSN: 1472-0213
Titre abrégé: Emerg Med J
Pays: England
ID NLM: 100963089

Informations de publication

Date de publication:
15 Jul 2024
Historique:
received: 15 09 2023
accepted: 10 06 2024
medline: 16 7 2024
pubmed: 16 7 2024
entrez: 15 7 2024
Statut: aheadofprint

Résumé

Artificial intelligence (AI)-assisted image interpretation is a fast-developing area of clinical innovation. Most research to date has focused on the performance of AI-assisted algorithms in comparison with that of radiologists rather than evaluating the algorithms' impact on the clinicians who often undertake initial image interpretation in routine clinical practice. This study assessed the impact of AI-assisted image interpretation on the diagnostic performance of frontline acute care clinicians for the detection of pneumothoraces (PTX). A multicentre blinded multi-case multi-reader study was conducted between October 2021 and January 2022. The online study recruited 18 clinician readers from six different clinical specialties, with differing levels of seniority, across four English hospitals. The study included 395 plain CXR images, 189 positive for PTX and 206 negative. The reference standard was the consensus opinion of two thoracic radiologists with a third acting as arbitrator. General Electric Healthcare Critical Care Suite (GEHC CCS) PTX algorithm was applied to the final dataset. Readers individually interpreted the dataset without AI assistance, recording the presence or absence of a PTX and a confidence rating. Following a 'washout' period, this process was repeated including the AI output. Analysis of the performance of the algorithm for detecting or ruling out a PTX revealed an overall AUROC of 0.939. Overall reader sensitivity increased by 11.4% (95% CI 4.8, 18.0, p=0.002) from 66.8% (95% CI 57.3, 76.2) unaided to 78.1% aided (95% CI 72.2, 84.0, p=0.002), specificity 93.9% (95% CI 90.9, 97.0) without AI to 95.8% (95% CI 93.7, 97.9, p=0.247). The junior reader subgroup showed the largest improvement at 21.7% (95% CI 10.9, 32.6), increasing from 56.0% (95% CI 37.7, 74.3) to 77.7% (95% CI 65.8, 89.7, p<0.01). The study indicates that AI-assisted image interpretation significantly enhances the diagnostic accuracy of clinicians in detecting PTX, particularly benefiting less experienced practitioners. While overall interpretation time remained unchanged, the use of AI improved diagnostic confidence and sensitivity, especially among junior clinicians. These findings underscore the potential of AI to support less skilled clinicians in acute care settings.

Sections du résumé

BACKGROUND BACKGROUND
Artificial intelligence (AI)-assisted image interpretation is a fast-developing area of clinical innovation. Most research to date has focused on the performance of AI-assisted algorithms in comparison with that of radiologists rather than evaluating the algorithms' impact on the clinicians who often undertake initial image interpretation in routine clinical practice. This study assessed the impact of AI-assisted image interpretation on the diagnostic performance of frontline acute care clinicians for the detection of pneumothoraces (PTX).
METHODS METHODS
A multicentre blinded multi-case multi-reader study was conducted between October 2021 and January 2022. The online study recruited 18 clinician readers from six different clinical specialties, with differing levels of seniority, across four English hospitals. The study included 395 plain CXR images, 189 positive for PTX and 206 negative. The reference standard was the consensus opinion of two thoracic radiologists with a third acting as arbitrator. General Electric Healthcare Critical Care Suite (GEHC CCS) PTX algorithm was applied to the final dataset. Readers individually interpreted the dataset without AI assistance, recording the presence or absence of a PTX and a confidence rating. Following a 'washout' period, this process was repeated including the AI output.
RESULTS RESULTS
Analysis of the performance of the algorithm for detecting or ruling out a PTX revealed an overall AUROC of 0.939. Overall reader sensitivity increased by 11.4% (95% CI 4.8, 18.0, p=0.002) from 66.8% (95% CI 57.3, 76.2) unaided to 78.1% aided (95% CI 72.2, 84.0, p=0.002), specificity 93.9% (95% CI 90.9, 97.0) without AI to 95.8% (95% CI 93.7, 97.9, p=0.247). The junior reader subgroup showed the largest improvement at 21.7% (95% CI 10.9, 32.6), increasing from 56.0% (95% CI 37.7, 74.3) to 77.7% (95% CI 65.8, 89.7, p<0.01).
CONCLUSION CONCLUSIONS
The study indicates that AI-assisted image interpretation significantly enhances the diagnostic accuracy of clinicians in detecting PTX, particularly benefiting less experienced practitioners. While overall interpretation time remained unchanged, the use of AI improved diagnostic confidence and sensitivity, especially among junior clinicians. These findings underscore the potential of AI to support less skilled clinicians in acute care settings.

Identifiants

pubmed: 39009424
pii: emermed-2023-213620
doi: 10.1136/emermed-2023-213620
pii:
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Informations de copyright

© Author(s) (or their employer(s)) 2024. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Déclaration de conflit d'intérêts

Competing interests: AS, SG and AB are employed by GE HealthCare, a key NCIMI stakeholder. AN and CB have undertaken paid consultancy work for GEHC. PA, SA and FG are employees of Report and Image Quality Control (www.raiqc.com), a spin-out company from Oxford University Hospitals NHS Foundation Trust.

Auteurs

Alex Novak (A)

Emergency Department, Oxford University Hospitals NHS Foundation Trust, Oxford, UK alex.novak@ouh.nhs.uk.

Sarim Ather (S)

Radiology Department, Oxford University Hospitals, Oxford, UK.

Avneet Gill (A)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Peter Aylward (P)

Report and Image Quality Control (RAIQC), London, UK, UK.

Giles Maskell (G)

Royal Cornwall Hospitals NHS Trust, Truro, Cornwall, UK.

Gordon W Cowell (GW)

Queen Elizabeth University Hospital Campus, Glasgow, UK.

Abdala Trinidad Espinosa Morgado (AT)

Emergency Department, Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Tom Duggan (T)

Buckinghamshire Healthcare NHS Trust, Amersham, UK.

Melissa Keevil (M)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Oliva Gordon (O)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Osama Akrama (O)

Emergency Department, Royal Berkshire NHS Foundation Trust, Reading, UK.

Elizabeth Belcher (E)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Rhona Taberham (R)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Rob Hallifax (R)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Jasdeep Bahra (J)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Abhishek Banerji (A)

Buckinghamshire Healthcare NHS Trust, Amersham, UK.

Jon Bailey (J)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Antonia James (A)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Ali Ansaripour (A)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Nathan Spence (N)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

John Wrightson (J)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Waqas Jarral (W)

Frimley Health NHS Foundation Trust, Frimley, UK.

Steven Barry (S)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Saher Bhatti (S)

Frimley Health NHS Foundation Trust, Frimley, UK.

Kerry Astley (K)

Oxford University Hospitals NHS Foundation Trust, Oxford, UK.

Amied Shadmaan (A)

GE Healthcare Diagnostic Imaging, Little Chalfont, Buckinghamshire, UK.

Sharon Ghelman (S)

GE Healthcare, Chicago, Illinois, USA.

Alec Baenen (A)

GE Healthcare Ltd, Chicago, Illinois, USA.

Jason Oke (J)

University of Oxford Greyfriars, Oxford, UK.

Claire Bloomfield (C)

University of Oxford, Oxford, Oxfordshire, UK.

Mark Beggs (M)

University of Oxford, Oxford, Oxfordshire, UK.

Fergus Gleeson (F)

Radiology Department, Oxford University Hospitals, Oxford, UK.

Classifications MeSH