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通过病灶网络映射分析识别优先与致痫性肿块病变相关的神经网络。

Identification of neural networks preferentially engaged by epileptogenic mass lesions through lesion network mapping analysis.

机构信息

Department of Neurosurgery, Penn State Health, Hershey, PA, USA.

University Health Network, Toronto, ON, USA.

出版信息

Sci Rep. 2020 Jul 3;10(1):10989. doi: 10.1038/s41598-020-67626-x.

Abstract

Lesion network mapping (LNM) has been applied to true lesions (e.g., cerebrovascular lesions in stroke) to identify functionally connected brain networks. No previous studies have utilized LNM for analysis of intra-axial mass lesions. Here, we implemented LNM for identification of potentially vulnerable epileptogenic networks in mass lesions causing medically-refractory epilepsy (MRE). Intra-axial brain lesions were manually segmented in patients with MRE seen at our institution (EL_INST). These lesions were then normalized to standard space and used as seeds in a high-resolution normative resting state functional magnetic resonance imaging template. The resulting connectivity maps were first thresholded (p < 0.05) and binarized; the thresholded binarized connectivity maps were subsequently summed to produce overall group connectivity maps, which were compared with established resting-state networks to identify potential networks prone to epileptogenicity. To validate our data, this approach was also applied to an external dataset of epileptogenic lesions identified from the literature (EL_LIT). As an additional exploratory analysis, we also segmented and computed the connectivity of institutional non-epileptogenic lesions (NEL_INST), calculating voxel-wise odds ratios (VORs) to identify voxels more likely to be functionally-connected with EL_INST versus NEL_INST. To ensure connectivity results were not driven by anatomical overlap, the extent of lesion overlap between EL_INST, and EL_LIT and NEL_INST was assessed using the Dice Similarity Coefficient (DSC, lower index ~ less overlap). Twenty-eight patients from our institution were included (EL_INST: 17 patients, 17 lesions, 10 low-grade glioma, 3 cavernoma, 4 focal cortical dysplasia; NEL_INST: 11 patients, 33 lesions, all brain metastases). An additional 23 cases (25 lesions) with similar characteristics to the EL_INST data were identified from the literature (EL_LIT). Despite minimal anatomical overlap of lesions, both EL_INST and EL_LIT showed greatest functional connectivity overlap with structures in the Default Mode Network, Frontoparietal Network, Ventral Attention Network, and the Limbic Network-with percentage volume overlap of 19.5%, 19.1%, 19.1%, and 12.5%, respectively-suggesting them as networks consistently engaged by epileptogenic mass lesions. Our exploratory analysis moreover showed that the mesial frontal lobes, parahippocampal gyrus, and lateral temporal neocortex were at least twice as likely to be functionally connected with the EL_INST compared to the NEL_INST group (i.e. Peak VOR > 2.0); canonical resting-state networks preferentially engaged by EL_INSTs were the Limbic and the Frontoparietal Networks (Mean VOR > 1.5). In this proof of concept study, we demonstrate the feasibility of LNM for intra-axial mass lesions by showing that ELs have discrete functional connections and may preferentially engage in discrete resting-state networks. Thus, the underlying normative neural circuitry may, in part, explain the propensity of particular lesions toward the development of MRE. If prospectively validated, this has ramifications for patient counseling along with both approach and timing of surgery for lesions in locations prone to development of MRE.

摘要

病灶网络映射(LNM)已应用于真正的病灶(例如中风中的脑血管病灶),以识别功能连接的大脑网络。以前没有研究利用 LNM 分析轴内肿块病灶。在这里,我们为导致药物难治性癫痫(MRE)的肿块病灶中潜在的致痫性网络的识别实施了 LNM。在我们机构(EL_INST)看到的患有 MRE 的患者中手动分割了脑内病灶。然后将这些病灶归一化为标准空间,并用作高分辨率规范静息状态功能磁共振成像模板中的种子。将得到的连接图首先进行阈值处理(p<0.05)和二值化;然后将阈值二值化的连接图相加,以生成总体组连接图,将其与已建立的静息状态网络进行比较,以识别潜在的致痫性网络。为了验证我们的数据,该方法还应用于文献中确定的致痫性病灶的外部数据集(EL_LIT)。作为额外的探索性分析,我们还对机构非致痫性病灶(NEL_INST)进行了分割和计算连接性,计算体素的比值比(VOR),以识别与 EL_INST 相比更可能具有功能连接的体素。为了确保连接结果不受解剖重叠的影响,使用 Dice 相似系数(DSC,较低的索引~较少的重叠)评估了 EL_INST、EL_LIT 和 NEL_INST 之间病灶重叠的程度。我们机构纳入了 28 名患者(EL_INST:17 名患者,17 个病灶,10 个低级别胶质瘤,3 个海绵状血管瘤,4 个局灶性皮质发育不良;NEL_INST:11 名患者,33 个病灶,均为脑转移瘤)。从文献中还确定了另外 23 例(25 个病灶)具有与 EL_INST 数据相似特征的病例(EL_LIT)。尽管病灶的解剖重叠很小,但 EL_INST 和 EL_LIT 与默认模式网络、额顶叶网络、腹侧注意网络和边缘网络中的结构显示出最大的功能连接重叠,分别为 19.5%、19.1%、19.1%和 12.5%,这表明它们是始终由致痫性肿块病灶参与的网络。我们的探索性分析还表明,内侧额叶、海马旁回和外侧颞叶新皮质与 EL_INST 的功能连接至少是与 NEL_INST 组的两倍(即峰值 VOR>2.0);EL_INST 优先参与的经典静息状态网络是边缘网络和额顶叶网络(Mean VOR>1.5)。在这项概念验证研究中,我们通过显示 EL 具有离散的功能连接并可能优先参与离散的静息状态网络,证明了 LNM 用于轴内肿块病灶的可行性。因此,潜在的规范神经回路可能部分解释了特定病灶向 MRE 发展的倾向。如果前瞻性验证,这将对患者咨询产生影响,以及对易发生 MRE 发展的病灶进行手术的方法和时机产生影响。

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