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网络枢纽受缺血性脑卒中影响的程度可预测认知恢复情况。

Extent to Which Network Hubs Are Affected by Ischemic Stroke Predicts Cognitive Recovery.

机构信息

From the Department of Neurology, Elisabeth Tweesteden Hospital, Tilburg, the Netherlands (H.P.A., P.L.M.d.K.).

Department of Neurology and Neurosurgery (H.P.A., G.J.B., N.A.W., Y.D.R.), UMC Utrecht Brain Center, the Netherlands.

出版信息

Stroke. 2019 Oct;50(10):2768-2774. doi: 10.1161/STROKEAHA.119.025637. Epub 2019 Aug 29.

Abstract

Background and Purpose- It is uncertain what determines the potential for cognitive recovery after ischemic stroke. The extent to which strategic areas of the brain network, so-called hubs, are affected by the infarct could be a key factor. We developed a lesion impact score, which estimates the damage to network hubs by integrating information on infarct size with healthy brain network topology. We verified whether the lesion impact score indeed reflects global network disturbances in patients and assessed if it could predict cognitive recovery. Methods- Seventy-five ischemic stroke patients without signs of a prestroke cognitive disorder were included, all with evidence of a cognitive disorder during hospitalization. A brain magnetic resonance imaging and neuropsychological assessment were performed 5 weeks (±1 week) after stroke. Neuropsychological testing was repeated after 1 year to assess cognitive recovery. Brain networks were reconstructed from diffusion-weighted data and consisted of 90 gray matter regions (ie, network nodes). A standard brain network map, indicating the hub-score of each node, was obtained from network data of 44 cognitively healthy adults. For each patient, we calculated the lesion impact score by multiplying the percentage of node volume affected by the infarct with the node's corresponding hub-score. The patients' maximum lesion impact score was used as outcome predictor. Results- A higher lesion impact score in patients, indicating an increasing infarct size in nodes with a higher hub-score, was related to lower global brain network efficiency (β=-0.528 [-0.776 to -0.277]; <0.001), independent of age, brain volume, infarct volume, and white matter hyperintensity severity. A lower lesion impact score, however, was an independent predictor of cognitive recovery 1 year after stroke (odds ratio=0.434 [0.193-0.978]; =0.044). Conclusions- We introduced a lesion impact score that combines information on infarct size and network topology to predict long-term recovery after stroke. This score can potentially be used in a clinical setting, also without availability of high-resolution diffusion-weighted magnetic resonance imaging.

摘要

背景与目的- 目前尚不清楚是什么决定了缺血性中风后的认知恢复潜力。大脑网络的战略区域(即所谓的枢纽)受到梗塞影响的程度可能是一个关键因素。我们开发了一种损伤影响评分,该评分通过整合梗塞大小信息和健康大脑网络拓扑结构来估计网络枢纽的损伤。我们验证了损伤影响评分是否确实反映了患者的全局网络紊乱,并评估了它是否可以预测认知恢复。

方法- 纳入了 75 名无卒中前认知障碍迹象的缺血性卒中患者,所有患者在住院期间均有认知障碍的证据。在卒中后 5 周(±1 周)进行脑磁共振成像和神经心理学评估。在 1 年后进行神经心理学测试,以评估认知恢复情况。从弥散加权数据重建脑网络,由 90 个灰质区域(即网络节点)组成。从 44 名认知健康成年人的网络数据中获得标准脑网络图谱,显示每个节点的枢纽得分。对于每个患者,我们通过将梗塞影响的节点体积百分比乘以节点的相应枢纽得分来计算损伤影响评分。患者的最大损伤影响评分用作结果预测因子。

结果- 患者的损伤影响评分较高,表明节点的梗塞体积越大,节点的枢纽得分越高,与全局脑网络效率越低呈正相关(β=-0.528[-0.776 至-0.277];<0.001),独立于年龄、脑容量、梗塞体积和脑白质高信号严重程度。然而,较低的损伤影响评分是卒中后 1 年认知恢复的独立预测因子(比值比=0.434[0.193-0.978];=0.044)。

结论- 我们引入了一种损伤影响评分,该评分结合了梗塞大小和网络拓扑结构的信息,用于预测卒中后的长期恢复。该评分在没有高分辨率弥散加权磁共振成像的情况下也有可能在临床环境中使用。

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