Diagnostic performance of an algorithm for automated large vessel occlusion detection on CT angiography

Author:

Luijten Sven P RORCID,Wolff Lennard,Duvekot Martijne H C,van Doormaal Pieter-Jan,Moudrous Walid,Kerkhoff Henk,Lycklama a Nijeholt Geert J,Bokkers Reinoud P H,Yo Lonneke S F,Hofmeijer Jeannette,van Zwam Wim HORCID,van Es Adriaan C G M,Dippel Diederik W JORCID,Roozenbeek Bob,van der Lugt Aad

Abstract

BackgroundMachine learning algorithms hold the potential to contribute to fast and accurate detection of large vessel occlusion (LVO) in patients with suspected acute ischemic stroke. We assessed the diagnostic performance of an automated LVO detection algorithm on CT angiography (CTA).MethodsData from the MR CLEAN Registry and PRESTO were used including patients with and without LVO. CTA data were analyzed by the algorithm for detection and localization of LVO (intracranial internal carotid artery (ICA)/ICA terminus (ICA-T), M1, or M2). Assessments done by expert neuroradiologists were used as reference. Diagnostic performance was assessed for detection of LVO and per occlusion location by means of sensitivity, specificity, and area under the curve (AUC).ResultsWe analyzed CTAs of 1110 patients from the MR CLEAN Registry (median age (IQR) 71 years (60–80); 584 men; 1110 with LVO) and of 646 patients from PRESTO (median age (IQR) 73 years (62–82); 358 men; 141 with and 505 without LVO). For detection of LVO, the algorithm yielded a sensitivity of 89% in the MR CLEAN Registry and a sensitivity of 72%, specificity of 78%, and AUC of 0.75 in PRESTO. Sensitivity per occlusion location was 88% for ICA/ICA-T, 94% for M1, and 72% for M2 occlusion in the MR CLEAN Registry, and 80% for ICA/ICA-T, 95% for M1, and 49% for M2 occlusion in PRESTO.ConclusionThe algorithm provided a high detection rate for proximal LVO, but performance varied significantly by occlusion location. Detection of M2 occlusion needs further improvement.

Funder

BeterKeten Collaboration

Erasmus MC University Medical Center, Maastricht University Medical Center, and Amsterdam University Medical Center

Theia Foundation

TWIN Foundation

Publisher

BMJ

Subject

Neurology (clinical),General Medicine,Surgery

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