颞叶癫痫灰质萎缩的连接体结构和手术结果。

IF 6.6 1区 医学 Q1 CLINICAL NEUROLOGY Epilepsia Pub Date : 2025-03-08 DOI:10.1111/epi.18343
Qiuxing Lin, Danyang Cao, Wei Li, Yingying Zhang, Yuming Li, Peiwen Liu, Xiang Huang, Kailing Huang, Qiyong Gong, Dong Zhou, Dongmei An
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引用次数: 0

摘要

目的:颞叶癫痫(TLE)被认为是一种广泛的灰质萎缩的网络障碍。然而,连接体结构在塑造形态改变和识别萎缩中心中的作用仍不清楚。此外,萎缩中心的个体化建模及其潜在的临床应用尚未得到很好的建立。本研究旨在探讨灰质萎缩与正常连接体结构的关系,识别潜在的萎缩震中,并采用个性化建模方法评估不同震中模式对TLE患者手术结果的影响。方法:本研究利用126例接受前颞叶切除术的难治性TLE患者和60例健康对照(hc)的解剖MRI数据,以及规范的功能和结构连接组数据,研究灰质体积(GMV)变化与功能或结构连接的关系。研究人员使用了两种模型来识别萎缩中心:一种是数据驱动的方法,评估节点和邻居的萎缩排名,另一种是网络扩散模型(NDM),模拟不同种子区域的病理传播。k -均值聚类应用于患者定制模型,以揭示不同的震中亚型。结果:我们的研究结果表明,颞叶颞叶灰质萎缩的模式主要受结构连接而不是功能连接的限制。利用结构连接体,我们确定海马体和邻近的颞边缘区域是关键的萎缩中心。患者定制的模型揭示了震中分布的显著差异,使我们能够将它们分为两种不同的亚型。值得注意的是,与震中位于额中央区域的1型患者相比,震中位于同侧颞极和内侧颞叶的2型患者表现出明显更高的无癫痫发作率。意义:这些发现强调了结构连通性在形成tle相关形态变化中的核心作用。个性化震中模型可以提高手术决策和改善预后分层在TLE管理。
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Connectome architecture for gray matter atrophy and surgical outcomes in temporal lobe epilepsy

Objective

Temporal lobe epilepsy (TLE) has been recognized as a network disorder with widespread gray matter atrophy. However, the role of connectome architecture in shaping morphological alterations and identifying atrophy epicenters remains unclear. Furthermore, individualized modeling of atrophy epicenters and their potential clinical applications have not been well established. This study aims to explore how gray matter atrophy correlates with normal connectome architecture, identify potential atrophy epicenters, and employ individualized modeling approach to evaluate the impact of different epicenter patterns on surgical outcomes in patients with TLE.

Methods

This study utilized anatomic MRI data from 126 refractory TLE patients who underwent anterior temporal lobectomy and 60 healthy controls (HCs), along with normative functional and structural connectome data, to investigate the relationship between gray matter volume (GMV) changes and functional or structural connectivity. Two models were employed to identify atrophy epicenters: a data-driven approach evaluating nodal and neighbor atrophy rankings, and a network diffusion model (NDM) simulating the spread of pathology from different seed regions. K-means clustering was applied in patient-tailored modeling to uncover distinct epicenter subtypes.

Results

Our findings indicate that the pattern of gray matter atrophy in TLE is constrained primarily by structural connectivity rather than by functional connectivity. Using the structural connectome, we pinpointed the hippocampus and adjacent temporo-limbic regions as key atrophy epicenters. The patient-tailored modeling revealed significant variability in epicenter distribution, allowing us to categorize them into two distinct subtypes. Notably, patients in subtype 2, with epicenters localized to the ipsilateral temporal pole and medial temporal lobe, exhibited significantly higher seizure-free rates compared to patients in subtype 1, whose epicenters situated in frontocentral regions.

Significance

These findings highlight the central role of structural connectivity in shaping TLE-related morphological changes. Individualized epicenter modeling may enhance surgical decisions and improve prognostic stratification in TLE management.

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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.
期刊最新文献
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