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Off-Label use of Woven EndoBridge device for intracranial brain aneurysm treatment: Modeling of occlusion outcome.

Authors :
Essibayi MA
Jabal MS
Musmar B
Adeeb N
Salim H
Aslan A
Cancelliere NM
McLellan RM
Algin O
Ghozy S
Lay SV
Guenego A
Renieri L
Carnevale J
Saliou G
Mastorakos P
Naamani KE
Shotar E
Premat K
Möhlenbruch M
Kral M
Doron O
Chung C
Salem MM
Lylyk I
Foreman PM
Vachhani JA
Shaikh H
Župančić V
Hafeez MU
Catapano J
Waqas M
Yavuz K
Gunes YC
Rabinov JD
Ren Y
Schirmer CM
Piano M
Kühn AL
Michelozzi C
Starke RM
Hassan A
Ogilvie M
Nguyen A
Jones J
Brinjikji W
Nawka MT
Psychogios M
Ulfert C
Diestro JDB
Pukenas B
Burkhardt JK
Huynh T
Gutierrez JCM
Sheth SA
Spiegel G
Tawk R
Lubicz B
Panni P
Puri AS
Pero G
Nossek E
Raz E
Killer-Oberfalzer M
Griessenauer CJ
Asadi H
Siddiqui A
Brook AL
Haranhalli N
Ducruet AF
Albuquerque FC
Regenhardt RW
Stapleton CJ
Kan P
Kalousek V
Lylyk P
Boddu S
Knopman J
Aziz-Sultan MA
Tjoumakaris SI
Clarençon F
Limbucci N
Cuellar-Saenz HH
Jabbour PM
Pereira VM
Patel AB
Altschul D
Dmytriw AA
Source :
Journal of stroke and cerebrovascular diseases : the official journal of National Stroke Association [J Stroke Cerebrovasc Dis] 2024 Jul 26; Vol. 33 (11), pp. 107897. Date of Electronic Publication: 2024 Jul 26.
Publication Year :
2024
Publisher :
Ahead of Print

Abstract

Introduction: The Woven EndoBridge (WEB) device is emerging as a novel therapy for intracranial aneurysms, but its use for off-label indications requires further study. Using machine learning, we aimed to develop predictive models for complete occlusion after off-label WEB treatment and to identify factors associated with occlusion outcomes.<br />Methods: This multicenter, retrospective study included 162 patients who underwent off-label WEB treatment for intracranial aneurysms. Baseline, morphological, and procedural variables were utilized to develop machine-learning models predicting complete occlusion. Model interpretation was performed to determine significant predictors. Ordinal regression was also performed with occlusion status as an ordinal outcome from better (Raymond Roy Occlusion Classification [RROC] grade 1) to worse (RROC grade 3) status. Odds ratios (OR) with 95 % confidence intervals (CI) were reported.<br />Results: The best performing model achieved an AUROC of 0.8 for predicting complete occlusion. Larger neck diameter and daughter sac were significant independent predictors of incomplete occlusion. On multivariable ordinal regression, higher RROC grades (OR 1.86, 95 % CI 1.25-2.82), larger neck diameter (OR 1.69, 95 % CI 1.09-2.65), and presence of daughter sacs (OR 2.26, 95 % CI 0.99-5.15) were associated with worse aneurysm occlusion after WEB treatment, independent of other factors.<br />Conclusion: This study found that larger neck diameter and daughter sacs were associated with worse occlusion after WEB therapy for aneurysms. The machine learning approach identified anatomical factors related to occlusion outcomes that may help guide patient selection and monitoring with this technology. Further validation is needed.<br />Competing Interests: Declaration of competing interest None.<br /> (Copyright © 2024 Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1532-8511
Volume :
33
Issue :
11
Database :
MEDLINE
Journal :
Journal of stroke and cerebrovascular diseases : the official journal of National Stroke Association
Publication Type :
Academic Journal
Accession number :
39069148
Full Text :
https://doi.org/10.1016/j.jstrokecerebrovasdis.2024.107897