发作间期低于 45 Hz 的立体脑电图特征足以正确定位致痫区并预测手术后的结果。

IF 6.6 1区 医学 Q1 CLINICAL NEUROLOGY Epilepsia Pub Date : 2024-08-24 DOI:10.1111/epi.18081
Petr Klimes, Petr Nejedly, Valentina Hrtonova, Jan Cimbalnik, Vojtech Travnicek, Martin Pail, Laure Peter-Derex, Jeffery Hall, Raluca Pana, Josef Halamek, Pavel Jurak, Milan Brazdil, Birgit Frauscher
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引用次数: 0

摘要

目的:有证据表明,在机器学习模型中结合多种立体脑电图(SEEG)生物标志物,可取得最有希望的致痫区(EZ)发作间期定位结果。这些生物标志物通常包括以标准频段计算的 SEEG 特征,也包括高频(HF)频段。遗憾的是,高频特征需要额外的记录、存储和处理工作。在此,我们研究了这些高频特征对 EZ 定位和手术后结果预测的附加价值:我们分析了 50 名患者在非快速眼动睡眠期间记录的 30 分钟 SEEG,并用三组不同的特征对逻辑回归模型进行了测试。第一个模型使用宽带特征(1-500 Hz);第二个模型使用 45 Hz 以下的低频特征;第三个模型使用 65 Hz 以上的高频特征。每个模型的 EZ 定位效果都通过各种指标进行了评估,包括精确度-召回曲线下面积 (AUPRC) 和阳性预测值 (PPV)。模型之间的差异通过 Wilcoxon 符号秩检验和 Cliff's Delta效应大小进行检验。McNemar检验进一步检验了基于PPV值的结果预测差异:结果:随机机会分类器的 AUPRC 得分为 0.098。模型(宽带、低频、高频)的中位数AUPRC分别为.608、.582和.522,分别正确预测了38、38和33名患者的结果。三种模型的 AUPRC 或其他指标在统计学上没有明显差异。在模型中加入高频特征没有任何额外的贡献:意义:低频特征足以正确定位 EZ 和预测结果,在考虑高频特征时没有额外价值。这一发现大大简化了特征计算过程,并为在采样率较低的 SEEG 记录中使用这些模型提供了可能性,而这在临床常规中是很常见的。
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Interictal stereo-electroencephalography features below 45 Hz are sufficient for correct localization of the epileptogenic zone and postsurgical outcome prediction

Objective

Evidence suggests that the most promising results in interictal localization of the epileptogenic zone (EZ) are achieved by a combination of multiple stereo-electroencephalography (SEEG) biomarkers in machine learning models. These biomarkers usually include SEEG features calculated in standard frequency bands, but also high-frequency (HF) bands. Unfortunately, HF features require extra effort to record, store, and process. Here we investigate the added value of these HF features for EZ localization and postsurgical outcome prediction.

Methods

In 50 patients we analyzed 30 min of SEEG recorded during non–rapid eye movement sleep and tested a logistic regression model with three different sets of features. The first model used broadband features (1–500 Hz); the second model used low-frequency features up to 45 Hz; and the third model used HF features above 65 Hz. The EZ localization by each model was evaluated by various metrics including the area under the precision-recall curve (AUPRC) and the positive predictive value (PPV). The differences between the models were tested by the Wilcoxon signed-rank tests and Cliff's Delta effect size. The differences in outcome predictions based on PPV values were further tested by the McNemar test.

Results

The AUPRC score of the random chance classifier was .098. The models (broad-band, low-frequency, high-frequency) achieved median AUPRCs of .608, .582, and .522, respectively, and correctly predicted outcomes in 38, 38, and 33 patients. There were no statistically significant differences in AUPRC or any other metric between the three models. Adding HF features to the model did not have any additional contribution.

Significance

Low-frequency features are sufficient for correct localization of the EZ and outcome prediction with no additional value when considering HF features. This finding allows significant simplification of the feature calculation process and opens the possibility of using these models in SEEG recordings with lower sampling rates, as commonly performed in clinical routines.

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来源期刊
Epilepsia
Epilepsia 医学-临床神经学
CiteScore
10.90
自引率
10.70%
发文量
319
审稿时长
2-4 weeks
期刊介绍: Epilepsia is the leading, authoritative source for innovative clinical and basic science research for all aspects of epilepsy and seizures. In addition, Epilepsia publishes critical reviews, opinion pieces, and guidelines that foster understanding and aim to improve the diagnosis and treatment of people with seizures and epilepsy.
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