Shijun Yang , Siying Chen , Yaling Huang , Yang Lu , Yi Chen , Liyun Ye , Qunhui Liu
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引用次数: 0
Abstract
Objective
To identify newly diagnosed patients with drug-resistant epilepsy (DRE) based on radiomics and clinical features.
Methods
A radiomics approach was used to combine clinical features with magnetic resonance imaging (MRI) features extracted by the ResNet-18 deep learning model to predict DRE. Three machine learning classifiers were built, and k-fold cross-validation was used to assess the classifier outcomes, and other evaluation metrics of accuracy, sensitivity, specificity, F1 score, and area under the curve (AUC) were used to evaluate the performance of these models.
Results
One hundred and thirty-four newly diagnosed epilepsy patients with 13 available clinical features and 1394 MRI features extracted by the ResNet-18 model were included in our study. Then three machine learning classifiers were built based on5 clinical features and 8 MRI features, including Support Vector Machine (SVM), Gradient-Boosted Decision Tree (GBDT) and Random Forest. After internally validation, the GBDT model performed the best, with an average accuracy of 0.85 [95% confidence interval (CI) 0.77–0.91], sensitivity of 0.97 [95% CI 0.85–1.00], specificity of 0.96 [95% CI 0.83–1.00], F1 score of 0.81 [95% CI 0.77–0.89], AUC of 0.95 [95% CI 0.82–0.99], and ten-fold cross validation avg score of 0.96 [95% CI 0.89–0.99] in test set.
Significance
This study offers a novel approach for early diagnosis of DRE. Radiomics can provide potential diagnostic and predictive information to support personalized treatment decisions.
期刊介绍:
Epilepsy & Behavior is the fastest-growing international journal uniquely devoted to the rapid dissemination of the most current information available on the behavioral aspects of seizures and epilepsy.
Epilepsy & Behavior presents original peer-reviewed articles based on laboratory and clinical research. Topics are drawn from a variety of fields, including clinical neurology, neurosurgery, neuropsychiatry, neuropsychology, neurophysiology, neuropharmacology, and neuroimaging.
From September 2012 Epilepsy & Behavior stopped accepting Case Reports for publication in the journal. From this date authors who submit to Epilepsy & Behavior will be offered a transfer or asked to resubmit their Case Reports to its new sister journal, Epilepsy & Behavior Case Reports.