Systematic Review and Meta‐Analysis of Prehospital Machine Learning Scores as Screening Tools for Early Detection of Large Vessel Occlusion in Patients With Suspected Stroke

Author:

Alobaida Muath123ORCID,Joddrell Martha12ORCID,Zheng Yalin14,Lip Gregory Y. H.125ORCID,Rowe Fiona J.6ORCID,El‐Bouri Wahbi K.12ORCID,Hill Andrew127ORCID,Lane Deirdre A.125ORCID,Harrison Stephanie L.128

Affiliation:

1. Liverpool Centre for Cardiovascular Science University of Liverpool, Liverpool John Moores University and Liverpool Heart & Chest Hospital Liverpool UK

2. Department of Cardiovascular and Metabolic Medicine Institute of Life Course and Medical Sciences, University of Liverpool Liverpool UK

3. Department of Basic Science, Prince Sultan Bin Abdulaziz College for Emergency Medical Services King Saud University Riyadh Saudi Arabia

4. Department of Eye and Vision Sciences Institute of Life Course and Medical Sciences, University of Liverpool Liverpool UK

5. Danish Centre for Health Services Research, Department of Clinical Medicine Aalborg University Aalborg Denmark

6. Institute of Population Health, University of Liverpool Liverpool UK

7. Department of Medicine, Whiston Hospital, St Helens and Knowsley Teaching Hospitals NHS Trust Liverpool UK

8. Registry of Senior Australians South Australian Health and Medical Research Institute Adelaide Australia

Abstract

Background Enhanced detection of large vessel occlusion (LVO) through machine learning (ML) for acute ischemic stroke appears promising. This systematic review explored the capabilities of ML models compared with prehospital stroke scales for LVO prediction. Methods and Results Six bibliographic databases were searched from inception until October 10, 2023. Meta‐analyses pooled the model performance using area under the curve (AUC), sensitivity, specificity, and summary receiver operating characteristic curve. Of 1544 studies screened, 8 retrospective studies were eligible, including 32 prehospital stroke scales and 21 ML models. Of the 9 prehospital scales meta‐analyzed, the Rapid Arterial Occlusion Evaluation had the highest pooled AUC (0.82 [95% CI, 0.79–0.84]). Support Vector Machine achieved the highest AUC of 9 ML models included (pooled AUC, 0.89 [95% CI, 0.88–0.89]). Six prehospital stroke scales and 10 ML models were eligible for summary receiver operating characteristic analysis. Pooled sensitivity and specificity for any prehospital stroke scale were 0.72 (95% CI, 0.68–0.75) and 0.77 (95% CI, 0.72–0.81), respectively; summary receiver operating characteristic curve AUC was 0.80 (95% CI, 0.76–0.83). Pooled sensitivity for any ML model for LVO was 0.73 (95% CI, 0.64–0.79), specificity was 0.85 (95% CI, 0.80–0.89), and summary receiver operating characteristic curve AUC was 0.87 (95% CI, 0.83–0.89). Conclusions Both prehospital stroke scales and ML models demonstrated varying accuracies in predicting LVO. Despite ML potential for improved LVO detection in the prehospital setting, application remains limited by the absence of prospective external validation, limited sample sizes, and lack of real‐world performance data in a prehospital setting.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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