Collateral Automation for Triage in Stroke: Evaluating Automated Scoring of Collaterals in Acute Stroke on Computed Tomography Scans

Iris Q. Grunwald(Southend University Hospital NHS Foundation Trust), Johann Kulikovski(Saarland University), Wolfgang Reith(Saarland University), Stephen Gerry(University of Oxford), Rafael Namías(Brainomix (United Kingdom)), Maria Politi(Klinikum Bremen-Mitte), Panagiotis Papanagiotou(Klinikum Bremen-Mitte), Marco Essig(University of Manitoba), Shrey Mathur(Saarland University), Olivier Joly(Brainomix (United Kingdom)), Khawar Hussain(Anglia Ruskin University), Viola Wagner(Saarland University), Sweni Shah(Anglia Ruskin University), George Harston(Brainomix (United Kingdom)), Julija Vlahovic(Anglia Ruskin University), Silke Walter(Saarland University), Anna Podlasek(Southend University Hospital NHS Foundation Trust), Klaus Faßbender(Saarland University)
Cerebrovascular Diseases
January 1, 2019
Cited by 86Open Access
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Abstract

Computed tomography angiography (CTA) collateral scoring can identify patients most likely to benefit from mechanical thrombectomy and those more likely to have good outcomes and ranges from 0 (no collaterals) to 3 (complete collaterals). In this study, we used a machine learning approach to categorise the degree of collateral flow in 98 patients who were eligible for mechanical thrombectomy and generate an e-CTA collateral score (CTA-CS) for each patient (e-STROKE SUITE, Brainomix Ltd., Oxford, UK). Three experienced neuroradiologists (NRs) independently estimated the CTA-CS, first without and then with knowledge of the e-CTA output, before finally agreeing on a consensus score. Addition of the e-CTA improved the intraclass correlation coefficient (ICC) between NRs from 0.58 (0.46-0.67) to 0.77 (0.66-0.85, p = 0.003). Automated e-CTA, without NR input, agreed with the consensus score in 90% of scans with the remaining 10% within 1 point of the consensus (ICC 0.93, 0.90-0.95). Sensitivity and specificity for identifying favourable collateral flow (collateral score 2-3) were 0.99 (0.93-1.00) and 0.94 (0.70-1.00), respectively. e-CTA correlated with the Alberta Stroke Programme Early CT Score (Spearman correlation 0.46, p < 0.001) highlighting the value of good collateral flow in maintaining tissue viability prior to reperfusion. In conclusion, -e-CTA provides a real-time and fully automated approach to collateral scoring with the potential to improve consistency of image interpretation and to independently quantify collateral scores even without expert rater input.


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