A diagnosis and prediction algorithm for juvenile myoclonic epilepsy based on clinical and quantitative EEG features

IF 2.7 3区 医学 Q2 CLINICAL NEUROLOGY
Yibo Zhao , Qi Wang , Zhe Ren , Bin Wen , Ying Li , Na Wang , Bin Wang , Ting Zhao , Yanan Chen , Pan Zhao , Mingmin Li , Zongya Zhao , Beijia Cui , Jiuyan Han , Yang Hong , Xiong Han
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引用次数: 0

Abstract

Objective

To develop an objective ensemble machine learning model combining clinical features and quantitative EEG metrics (phase locking value [PLV] and multiscale sample entropy [MSE]) to support accurate diagnosis of juvenile myoclonic epilepsy (JME).

Methods

A total of 75 JME patients, 51 frontal lobe epilepsy (FLE) patients, and 30 normal controls were included. Eight clinical features, along with 684 PLV and 152 MSE features derived from EEG data, were extracted. Four models were constructed using ensemble XGBoost and GBDT classifiers, with performance evaluated through accuracy, precision, recall, F1-score, and AUC. The performance of these models was assessed using a five-fold cross-validation method. The Fisher Score method ranked the most influential features in the best-performing model.

Results

The combined model (clinical, PLV, and MSE features) achieved an accuracy of 85.26 % and an AUC of 0.97. Key features included specific PLV metrics and family history of epilepsy. Notably, the PLV of Fp2-O1 in the δ band (δ-PLV_Fp2-O1) significantly differed among JME, FLE, and normal controls.

Conclusion

The ensemble model effectively distinguished JME, and highlighted δ-PLV_Fp2-O1 as a potential distinguishing feature, paving the way for more objective diagnostic approaches.
基于临床与定量脑电图特征的青少年肌阵挛性癫痫诊断与预测算法
目的建立结合临床特征和脑电图定量指标(锁相值(phase locking value, PLV)和多尺度样本熵(multiscale sample entropy, MSE))的客观集成机器学习模型,为青少年肌阵挛性癫痫(JME)的准确诊断提供支持。方法选取JME患者75例,额叶癫痫患者51例,正常人30例。从EEG数据中提取8个临床特征,以及684个PLV和152个MSE特征。使用集成的XGBoost和GBDT分类器构建了四个模型,并通过准确率、精密度、召回率、f1得分和AUC来评估性能。使用五重交叉验证方法评估这些模型的性能。费雪评分法对表现最佳的模型中最具影响力的特征进行排名。结果基于临床特征、PLV特征和MSE特征的联合模型准确率为85.26%,AUC为0.97。主要特征包括特定的PLV指标和癫痫家族史。值得注意的是,δ波段Fp2-O1的PLV (δ- plv_fp2 - o1)在JME、FLE和正常对照中有显著差异。结论集合模型能有效识别JME,并突出δ-PLV_Fp2-O1作为潜在的识别特征,为更客观的诊断方法铺平了道路。
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来源期刊
Seizure-European Journal of Epilepsy
Seizure-European Journal of Epilepsy 医学-临床神经学
CiteScore
5.60
自引率
6.70%
发文量
231
审稿时长
34 days
期刊介绍: Seizure - European Journal of Epilepsy is an international journal owned by Epilepsy Action (the largest member led epilepsy organisation in the UK). It provides a forum for papers on all topics related to epilepsy and seizure disorders.
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