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Machine learning models for outcome prediction in thrombectomy for large anterior vessel occlusion

Authors :
Omid Shirvani
Stefanie Warnat‐Herresthal
Ivan Savchuk
Felix J. Bode
Louisa Nitsch
Sebastian Stösser
Taraneh Ebrahimi
Niklas vonDanwitz
Hannah Asperger
Julia Layer
Julius Meissner
Christian Thielscher
Franziska Dorn
Nils Lehnen
Joachim L. Schultze
Gabor C. Petzold
Johannes M. Weller
the GSR‐ET Investigators
Source :
Annals of Clinical and Translational Neurology, Vol 11, Iss 10, Pp 2696-2706 (2024)
Publication Year :
2024
Publisher :
Wiley, 2024.

Abstract

Abstract Objective Predicting long‐term functional outcomes shortly after a stroke is challenging, even for experienced neurologists. Therefore, we aimed to evaluate multiple machine learning models and the importance of clinical/radiological parameters to develop a model that balances minimal input data with reliable predictions of long‐term functional independency. Methods Our study utilized data from the German Stroke Registry on patients with large anterior vessel occlusion who underwent endovascular treatment. We trained seven machine learning models using 30 parameters from the first day postadmission to predict a modified Ranking Scale of 0–2 at 90 days poststroke. Model performance was assessed using a 20‐fold cross‐validation and one‐sided Wilcoxon rank‐sum tests. Key features were identified through backward feature selection. Results We included 7485 individuals with a median age of 75 years and a median NIHSS score at admission of 14 in our analysis. Our Deep Neural Network model demonstrated the best performance among all models including data from 24 h postadmission. Backward feature selection identified the seven most important features to be NIHSS after 24 h, age, modified Ranking Scale after 24 h, premorbid modified Ranking Scale, intracranial hemorrhage within 24 h, intravenous thrombolysis, and NIHSS at admission. Narrowing the Deep Neural Network model's input data to these features preserved the high performance with an AUC of 0.9 (CI: 0.89–0.91). Interpretation Our Deep Neural Network model, trained on over 7000 patients, predicts 90‐day functional independence using only seven clinical/radiological features from the first day postadmission, demonstrating both high accuracy and practicality for clinical implementation on stroke units.

Details

Language :
English
ISSN :
23289503
Volume :
11
Issue :
10
Database :
Directory of Open Access Journals
Journal :
Annals of Clinical and Translational Neurology
Publication Type :
Academic Journal
Accession number :
edsdoj.2a8db70bfeaa4e69a593a79d4b971fee
Document Type :
article
Full Text :
https://doi.org/10.1002/acn3.52185