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Research ArticleNeurointervention

A Deep Learning Approach to Predict Recanalization First-Pass Effect following Mechanical Thrombectomy in Patients with Acute Ischemic Stroke

Haoyue Zhang, Jennifer S. Polson, Zichen Wang, Kambiz Nael, Neal M. Rao, William F. Speier and Corey W. Arnold
American Journal of Neuroradiology August 2024, 45 (8) 1044-1052; DOI: https://doi.org/10.3174/ajnr.A8272
Haoyue Zhang
aFrom the Computational Diagnostics Lab (H.Z., J.S.P., Z.W., W.F.S., C.W.A.), University of California, Los Angeles, California
bDepartment of Bioengineering (H.Z., J.S.P., Z.W., C.W.A.), University of California, Los Angeles, California
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Jennifer S. Polson
aFrom the Computational Diagnostics Lab (H.Z., J.S.P., Z.W., W.F.S., C.W.A.), University of California, Los Angeles, California
bDepartment of Bioengineering (H.Z., J.S.P., Z.W., C.W.A.), University of California, Los Angeles, California
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Zichen Wang
aFrom the Computational Diagnostics Lab (H.Z., J.S.P., Z.W., W.F.S., C.W.A.), University of California, Los Angeles, California
bDepartment of Bioengineering (H.Z., J.S.P., Z.W., C.W.A.), University of California, Los Angeles, California
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Kambiz Nael
cDepartment of Radiology (K.N., W.F.S., C.W.A.), University of California, Los Angeles, California
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Neal M. Rao
dDepartment of Neurology (N.M.R.), University of California, Los Angeles, California
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William F. Speier
aFrom the Computational Diagnostics Lab (H.Z., J.S.P., Z.W., W.F.S., C.W.A.), University of California, Los Angeles, California
cDepartment of Radiology (K.N., W.F.S., C.W.A.), University of California, Los Angeles, California
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Corey W. Arnold
aFrom the Computational Diagnostics Lab (H.Z., J.S.P., Z.W., W.F.S., C.W.A.), University of California, Los Angeles, California
bDepartment of Bioengineering (H.Z., J.S.P., Z.W., C.W.A.), University of California, Los Angeles, California
cDepartment of Radiology (K.N., W.F.S., C.W.A.), University of California, Los Angeles, California
eDepartment of Pathology (C.W.A.), University of California, Los Angeles, California
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Abstract

BACKGROUND AND PURPOSE: Following endovascular thrombectomy in patients with large-vessel occlusion stroke, successful recanalization from 1 attempt, known as the first-pass effect, has correlated favorably with long-term outcomes. Pretreatment imaging may contain information that can be used to predict the first-pass effect. Recently, applications of machine learning models have shown promising results in predicting recanalization outcomes, albeit requiring manual segmentation. In this study, we sought to construct completely automated methods using deep learning to predict the first-pass effect from pretreatment CT and MR imaging.

MATERIALS AND METHODS: Our models were developed and evaluated using a cohort of 326 patients who underwent endovascular thrombectomy at UCLA Ronald Reagan Medical Center from 2014 to 2021. We designed a hybrid transformer model with nonlocal and cross-attention modules to predict the first-pass effect on MR imaging and CT series.

RESULTS: The proposed method achieved a mean 0.8506 (SD, 0.0712) for cross-validation receiver operating characteristic area under the curve (ROC-AUC) on MR imaging and 0.8719 (SD, 0.0831) for cross-validation ROC-AUC on CT. When evaluated on the prospective test sets, our proposed model achieved a mean ROC-AUC of 0.7967 (SD, 0.0335) with a mean sensitivity of 0.7286 (SD, 0.1849) and specificity of 0.8462 (SD, 0.1216) for MR imaging and a mean ROC-AUC of 0.8051 (SD, 0.0377) with a mean sensitivity of 0.8615 (SD, 0.1131) and specificity 0.7500 (SD, 0.1054) for CT, respectively, representing the first classification of the first-pass effect from MR imaging alone and the first automated first-pass effect classification method in CT.

CONCLUSIONS: Results illustrate that both nonperfusion MR imaging and CT from admission contain signals that can predict a successful first-pass effect following endovascular thrombectomy using our deep learning methods without requiring time-intensive manual segmentation.

ABBREVIATIONS:

AIS
acute ischemic stroke
DL
deep learning
EVT
endovascular thrombectomy
FPE
first-pass effect
IQR
interquartile range
LVO
large-vessel occlusion
ML
machine learning
MNT-DL
multisequence neighborhood transformer model
mTICI
modified TICI
ROC-AUC
receiver operating characteristic area under the curve
SSL
self-supervised learning
  • © 2024 by American Journal of Neuroradiology
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American Journal of Neuroradiology: 45 (8)
American Journal of Neuroradiology
Vol. 45, Issue 8
1 Aug 2024
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Cite this article
Haoyue Zhang, Jennifer S. Polson, Zichen Wang, Kambiz Nael, Neal M. Rao, William F. Speier, Corey W. Arnold
A Deep Learning Approach to Predict Recanalization First-Pass Effect following Mechanical Thrombectomy in Patients with Acute Ischemic Stroke
American Journal of Neuroradiology Aug 2024, 45 (8) 1044-1052; DOI: 10.3174/ajnr.A8272

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A Deep Learning Approach to Predict Recanalization First-Pass Effect following Mechanical Thrombectomy in Patients with Acute Ischemic Stroke
Haoyue Zhang, Jennifer S. Polson, Zichen Wang, Kambiz Nael, Neal M. Rao, William F. Speier, Corey W. Arnold
American Journal of Neuroradiology Aug 2024, 45 (8) 1044-1052; DOI: 10.3174/ajnr.A8272
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