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Predicting Thrombectomy Recanalization from CT Imaging Using Deep Learning Models

Authors :
Zhang, Haoyue
Polson, Jennifer S.
Yang, Eric J.
Nael, Kambiz
Speier, William
Arnold, Corey W.
Source :
Medical Imaging with Deep Learning 2022
Publication Year :
2023

Abstract

For acute ischemic stroke (AIS) patients with large vessel occlusions, clinicians must decide if the benefit of mechanical thrombectomy (MTB) outweighs the risks and potential complications following an invasive procedure. Pre-treatment computed tomography (CT) and angiography (CTA) are widely used to characterize occlusions in the brain vasculature. If a patient is deemed eligible, a modified treatment in cerebral ischemia (mTICI) score will be used to grade how well blood flow is reestablished throughout and following the MTB procedure. An estimation of the likelihood of successful recanalization can support treatment decision-making. In this study, we proposed a fully automated prediction of a patient's recanalization score using pre-treatment CT and CTA imaging. We designed a spatial cross attention network (SCANet) that utilizes vision transformers to localize to pertinent slices and brain regions. Our top model achieved an average cross-validated ROC-AUC of 77.33 $\pm$ 3.9\%. This is a promising result that supports future applications of deep learning on CT and CTA for the identification of eligible AIS patients for MTB.<br />Comment: Medical Imaging with Deep Learning 2022 accepted short paper Jun 2022

Details

Database :
arXiv
Journal :
Medical Imaging with Deep Learning 2022
Publication Type :
Report
Accession number :
edsarx.2302.04143
Document Type :
Working Paper