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脑电图与生活质量的相关性及其与癫痫患者无察觉性发作和抑郁的关系。

EEG correlates of quality of life and associations with seizure without awareness and depression in patients with epilepsy.

机构信息

Department of Psychiatry and Cognitive-Behavioral Medicine, Nagoya City University Graduate School of Medical Sciences, Nagoya, Japan.

出版信息

Neuropsychopharmacol Rep. 2022 Sep;42(3):333-342. doi: 10.1002/npr2.12276. Epub 2022 Jun 20.

Abstract

AIMS

Quality of life (QOL) is an important issue for not only patients with epilepsy but also physicians. Depression has a large impact on QOL. Nonlinear electroencephalogram (EEG) analysis using machine learning (ML) has the potential to improve the accuracy of the diagnosis of epilepsy. Therefore, in this study, we examined EEG nonlinearity, EEG correlates of QOL in patients with epilepsy, and the accuracy of EEG for the interval from seizure without awareness (SA-) and for depression, using ML.

METHODS

The Side Effects and Life Satisfaction (SEALS) inventory was used to assess QOL, and the Neurological Disorders Depression Inventory for Epilepsy (NDDI-E) was used as a screening tool for depression on the date of the EEG recording. EEG with wavelet denoising (WD), the Savitzky-Golay filter, and non-denoising were created in combination with low- and high-pass filters. These EEG sets were adopted for phase space reconstruction methods. Using a generalized linear mixed-effects model for SEALS, sample entropy as a measurement of regularity, SA-, seizure with awareness, and depression were examined.

RESULTS

WD and non-denoising EEG sets in the bilateral posterior temporal-occipital, centro-parietal, parieto-occipital, and Fz-Cz of the 10-20 method were associated with SEALS and demonstrated nonlinearity, and the moderate effects of classification for the interval elapsed from SA- and for depression. When the intervals from SA- were added, the effects of the EEG classification for depression increased.

CONCLUSION

These findings suggest that EEG regions associated with QOL showing nonlinearity are useful for classifying SA- and depression.

摘要

目的

生活质量(QOL)不仅是癫痫患者,也是医生关注的重要问题。抑郁对 QOL 有很大影响。使用机器学习(ML)对非线性脑电图(EEG)进行分析有可能提高癫痫诊断的准确性。因此,在这项研究中,我们使用 ML 检查了癫痫患者的 EEG 非线性、与 QOL 相关的 EEG 以及 EEG 对无察觉发作间期(SA-)和抑郁的准确性。

方法

使用副作用和生活满意度(SEALS)量表评估 QOL,在 EEG 记录当天使用癫痫神经障碍抑郁量表(NDDI-E)作为抑郁筛查工具。结合低通和高通滤波器,创建了带有小波去噪(WD)、Savitzky-Golay 滤波器和非去噪的 EEG。这些 EEG 集被用于相空间重建方法。使用 SEALS 的广义线性混合效应模型,样本熵作为规则性的测量指标,对 SA-、有察觉的发作和抑郁进行了检查。

结果

WD 和非去噪 EEG 集在双侧颞枕叶、中央顶叶、顶枕叶和 Fz-Cz 区与 SEALS 相关,显示出非线性,并对 SA-和抑郁的间隔具有中等分类效果。当加入 SA-的间隔时,对抑郁的 EEG 分类效果增加。

结论

这些发现表明,与 QOL 相关的表现出非线性的 EEG 区域可用于分类 SA-和抑郁。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aeb2/9515718/664fe6bbd469/NPR2-42-333-g002.jpg

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