Machine learning is a valid method for predicting prehospital delay after acute ischemic stroke

Abstract Objectives This study aimed to identify the influencing factors associated with long onset‐to‐door time and establish predictive models that could help to assess the probability of prehospital delay in populations with a high risk for stroke. Materials and Methods Patients who were diagnose...

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Bibliographic Details
Main Authors: Li Yang, Qinqin Liu, Qiuli Zhao, Xuemei Zhu, Ling Wang
Format: Article
Language:English
Published: Wiley 2020-10-01
Series:Brain and Behavior
Subjects:
Online Access:https://doi.org/10.1002/brb3.1794
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Summary:Abstract Objectives This study aimed to identify the influencing factors associated with long onset‐to‐door time and establish predictive models that could help to assess the probability of prehospital delay in populations with a high risk for stroke. Materials and Methods Patients who were diagnosed with acute ischemic stroke (AIS) and hospitalized between 1 November 2018 and 31 July 2019 were interviewed, and their medical records were extracted for data analysis. Two machine learning algorithms (support vector machine and Bayesian network) were applied in this study, and their predictive performance was compared with that of the classical logistic regression models after using several variable selection methods. Timely admission (onset‐to‐door time < 3 hr) and prehospital delay (onset‐to‐door time ≥ 3 hr) were the outcome variables. We computed the area under curve (AUC) and the difference in the mean AUC values between the models. Results A total of 450 patients with AIS were enrolled; 57 (12.7%) with timely admission and 393 (87.3%) patients with prehospital delay. All models, both those constructed by logistic regression and those by machine learning, performed well in predicting prehospital delay (range mean AUC: 0.800–0.846). The difference in the mean AUC values between the best performing machine learning model and the best performing logistic regression model was negligible (0.014; 95% CI: 0.013–0.015). Conclusions Machine learning algorithms were not inferior to logistic regression models for prediction of prehospital delay after stroke. All models provided good discrimination, thereby creating valuable diagnostic programs for prehospital delay prediction.
ISSN:2162-3279