Diagnostic Models for Differentiating COVID-19-Related Acute Ischemic Stroke Using Machine Learning Methods.

Publication date: Dec 13, 2024

Backgrounds: Although COVID-19 is primarily known as a respiratory disease, there is growing evidence of neurological complications, such as ischemic stroke, in infected individuals. This study aims to evaluate the impact of COVID-19 on acute ischemic stroke (AIS) using radiomic features extracted from brain MR images and machine learning methods. Methods: This retrospective study included MRI data from 57 patients diagnosed with AIS who presented to the Department of Radiology at Hacettepe University Hospital between March 2020 and September 2021. Patients were stratified into COVID-19-positive (n = 30) and COVID-19-negative (n = 27) groups based on PCR results. Radiomic features were extracted from brain MR images following image processing steps. Various feature selection algorithms were applied to identify the most relevant features, which were then used to train and evaluate machine learning classification models. Model performance was evaluated using a range of classification metrics, including measures of predictive accuracy and diagnostic reliability, with 95% confidence intervals provided to enhance reliability. Results: This study assessed the performance of dimensionality reduction and classification algorithms in distinguishing COVID-19-negative and COVID-19-positive cases using radiomics data from brain MR scans. Without feature selection, ANN achieved the highest AUC of 0. 857 (95% CI: 0. 806-0. 900), demonstrating strong discriminative power. Using the Boruta method for feature selection, the k-NN classifier attained the best performance, with an AUC of 0. 863 (95% CI: 0. 816-0. 904). LASSO-based feature selection showed comparable results across k-NN, RF, and ANN classifiers, while SVM exhibited excellent specificity and high PPV. The RFE method yielded the highest overall performance, with the k-NN classifier achieving an AUC of 0. 882 (95% CI: 0. 838-0. 924) and an accuracy of 79. 1% (95% CI: 73. 6-83. 8). Among the methods, RFE provided the most consistent results, with k-NN and the ANN identified as the most effective classifiers for COVID-19 detection. Conclusions: The proposed radiomics-based classification model effectively distinguishes AIS associated with COVID-19 from brain MRI. These findings demonstrate the potential of AI-driven diagnostic tools to identify high-risk patients, support optimized treatment strategies, and ultimately improve clinical implications.

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Concepts Keywords
March acute ischemia
Pcr COVID-19
Radiology image processing
Stroke long COVID-19
Train machine learning
stroke

Semantics

Type Source Name
disease MESH COVID-19
disease MESH Acute Ischemic Stroke
disease MESH complications
drug DRUGBANK Coenzyme M
disease MESH long COVID
disease MESH stroke
disease MESH ischemia
disease MESH viral pneumonia
disease MESH Intracerebral hemorrhage
disease MESH venous thrombosis
disease MESH death
disease MESH morbidity
disease MESH infection
disease MESH pneumonia
disease MESH hemorrhagic stroke
pathway REACTOME Immune System
disease MESH abnormalities

Original Article

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