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利用神经解剖学特征预测颞叶癫痫发作频率面临的一项挑战。

A challenge of predicting seizure frequency in temporal lobe epilepsy using neuroanatomical features.

作者信息

Park Chang-Hyun, Ohn Suk Hoon

机构信息

Center for Neuroprosthetics and Brain Mind Institute, Swiss Federal Institute of Technology (EPFL), Geneva, Switzerland.

Department of Physical Medicine and Rehabilitation, College of Medicine, Hallym University, Anyang, Gyeonggi, Republic of Korea.

出版信息

Neurosci Lett. 2019 Jan 23;692:115-121. doi: 10.1016/j.neulet.2018.11.005. Epub 2018 Nov 5.

Abstract

The pathological and clinical characteristics of temporal lobe epilepsy (TLE) tend to be affected by epileptic seizures, specifically represented by seizure lateralization and frequency. Although the lateralization of the epileptogenic zone can be clarified in terms of neuroanatomical damage, there have been conflicting findings on the relationship between seizure frequency and neuroanatomical damage. In this study we sought to examine the relationship in the framework of machine learning-based predictive modeling. We acquired 60 grey matter (GM) anatomical features from structural MRI data and 46 white matter (WM) anatomical features from diffusion-weighted MRI data for 42 TLE patients and 45 healthy controls and applied the random forests method to the neuroanatomical features. We demonstrated that, whereas the neuroanatomical features were promising markers for the discrimination of the TLE patients from the healthy controls, the separation between the TLE patients with low and high seizure frequency on the basis of the neuroanatomical features was challenging. When we applied feature selection techniques for the construction of the predictive models, a greater number of features were selected as being relevant to the distinction of the TLE patients from the healthy controls than to the classification of the TLE patients according to seizure frequency. Furthermore, we adopted model-based clustering analysis and showed that seizure frequency-based subgroups were not matched well with neuroanatomy-based subgroups in the TLE patients. We propose that the challenge of predicting seizure frequency using neuroanatomical features could be attributable to considerable inter-individual variability in neuroanatomical damage among seizure frequency-based subgroups.

摘要

颞叶癫痫(TLE)的病理和临床特征往往受癫痫发作的影响,具体表现为发作的侧化和频率。虽然致痫区的侧化可根据神经解剖损伤来明确,但关于发作频率与神经解剖损伤之间的关系,一直存在相互矛盾的研究结果。在本研究中,我们试图在基于机器学习的预测模型框架下研究这种关系。我们从42例TLE患者和45名健康对照的结构MRI数据中获取了60个灰质(GM)解剖特征,并从扩散加权MRI数据中获取了46个白质(WM)解剖特征,然后将随机森林方法应用于这些神经解剖特征。我们证明,虽然神经解剖特征是区分TLE患者和健康对照的有前景的标志物,但基于神经解剖特征区分发作频率低和高的TLE患者具有挑战性。当我们应用特征选择技术构建预测模型时,与区分TLE患者和健康对照相关的特征数量,多于根据发作频率对TLE患者进行分类的相关特征数量。此外,我们采用基于模型的聚类分析,结果显示在TLE患者中,基于发作频率的亚组与基于神经解剖的亚组匹配不佳。我们提出,使用神经解剖特征预测发作频率面临挑战,可能是由于基于发作频率的亚组之间神经解剖损伤存在相当大的个体间差异。

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