Artificial intelligence for abnormality detection in high volume neuroimaging: a systematic review and meta-analysis
Siddharth Agarwal, David A. Wood, Mariusz Grzeda, Chandhini Suresh,, Munaib Din, James Cole, Marc Modat, Thomas C Booth

TL;DR
This systematic review and meta-analysis evaluates the diagnostic accuracy of AI models in high-volume neuroimaging, highlighting limited validation and clinical implementation evidence, with promising results for intracranial hemorrhage detection.
Contribution
It provides a comprehensive synthesis of validated AI studies in neuroimaging, emphasizing the need for better validation and clinical integration evidence.
Findings
AI shows high accuracy for intracranial hemorrhage detection
Most studies have high risk of bias and limited clinical validation
Few studies assess AI impact on patient outcomes
Abstract
Purpose: Most studies evaluating artificial intelligence (AI) models that detect abnormalities in neuroimaging are either tested on unrepresentative patient cohorts or are insufficiently well-validated, leading to poor generalisability to real-world tasks. The aim was to determine the diagnostic test accuracy and summarise the evidence supporting the use of AI models performing first-line, high-volume neuroimaging tasks. Methods: Medline, Embase, Cochrane library and Web of Science were searched until September 2021 for studies that temporally or externally validated AI capable of detecting abnormalities in first-line CT or MR neuroimaging. A bivariate random-effects model was used for meta-analysis where appropriate. PROSPERO: CRD42021269563. Results: Only 16 studies were eligible for inclusion. Included studies were not compromised by unrepresentative datasets or inadequate…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Brain Tumor Detection and Classification
MethodsLib
