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Interpretable machine learning for early neurological deterioration prediction in atrial fibrillation-related stroke
被引:0
|作者:
Seong-Hwan Kim
Eun-Tae Jeon
Sungwook Yu
Kyungmi Oh
Chi Kyung Kim
Tae-Jin Song
Yong-Jae Kim
Sung Hyuk Heo
Kwang-Yeol Park
Jeong-Min Kim
Jong-Ho Park
Jay Chol Choi
Man-Seok Park
Joon-Tae Kim
Kang-Ho Choi
Yang Ha Hwang
Bum Joon Kim
Jong-Won Chung
Oh Young Bang
Gyeongmoon Kim
Woo-Keun Seo
Jin-Man Jung
机构:
[1] Korea University College of Medicine,Department of Neurology, Korea University Ansan Hospital
[2] Korea University College of Medicine,Department of Neurology, Korea University Anam Hospital
[3] Korea University College of Medicine,Department of Neurology, Korea University Guro Hospital
[4] Ewha University College of Medicine,Department of Neurology, Seoul Hospital
[5] The Catholic University of Korea,Department of Neurology, Eunpyeong St. Mary’s Hospital
[6] Kyung Hee University College of Medicine,Department of Neurology
[7] Chung-Ang University Hospital,Department of Neurology, Chung
[8] Hanyang University Myongji Hospital Seoul,Ang University College of Medicine
[9] Jeju National University,Department of Neurology
[10] Chonnam National University Hospital,Department of Neurology
[11] Chonnam National University Hwasun Hospital,Department of Neurology
[12] Kyungpook National University Hospital,Department of Neurology
[13] University of Ulsan College of Medicine,Department of Neurology
[14] Samsung Medical Center,Department of Neurology, Asan Medical Center
[15] Korea University Zebrafish Translational Medical Research Center,Department of Neurology and Stroke Center
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摘要:
We aimed to develop a novel prediction model for early neurological deterioration (END) based on an interpretable machine learning (ML) algorithm for atrial fibrillation (AF)-related stroke and to evaluate the prediction accuracy and feature importance of ML models. Data from multicenter prospective stroke registries in South Korea were collected. After stepwise data preprocessing, we utilized logistic regression, support vector machine, extreme gradient boosting, light gradient boosting machine (LightGBM), and multilayer perceptron models. We used the Shapley additive explanation (SHAP) method to evaluate feature importance. Of the 3,213 stroke patients, the 2,363 who had arrived at the hospital within 24 h of symptom onset and had available information regarding END were included. Of these, 318 (13.5%) had END. The LightGBM model showed the highest area under the receiver operating characteristic curve (0.772; 95% confidence interval, 0.715–0.829). The feature importance analysis revealed that fasting glucose level and the National Institute of Health Stroke Scale score were the most influential factors. Among ML algorithms, the LightGBM model was particularly useful for predicting END, as it revealed new and diverse predictors. Additionally, the effects of the features on the predictive power of the model were individualized using the SHAP method.
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