Center for Minimally Invasive Neurosurgery, Prince of Wales Private Hospital, Suite 3, Level 7, Barker Street, Randwick, Sydney, NSW, 2031, Australia.
Department of Neurosurgery, University of Oklahoma Health Science Center, Oklahoma City, OK, USA.
J Neurooncol. 2020 Jan;146(2):229-238. doi: 10.1007/s11060-019-03327-4. Epub 2020 Jan 1.
Minimizing post-operational neurological deficits as a result of brain surgery has been one of the most pertinent endeavours of neurosurgical research. Studies have utilised fMRIs, EEGs and MEGs in order to delineate and establish eloquent areas, however, these methods have not been utilized by the wider neurosurgical community due to a lack of clinical endpoints. We sought to ascertain if there is a correlation between graph theory metrics and the neurosurgical notion of eloquent brain regions. We also wanted to establish which graph theory based nodal centrality measure performs the best in predicting eloquent areas.
We obtained diffusion neuroimaging data from the Human Connectome Project (HCP) and applied a parcellation scheme to it. This enabled us to construct a weighted adjacency matrix which we then analysed. Our analysis looked at the correlation between PageRank centrality and eloquent areas. We then compared PageRank centrality to eigenvector centrality and degree centrality to see what the best measure of empirical neurosurgical eloquence was.
Areas that are considered neurosurgically eloquent tended to be predicted by high PageRank centrality. By using summary scores for the three nodal centrality measures we found that PageRank centrality best correlated to empirical neurosurgical eloquence.
The notion of eloquent areas is important to neurosurgery and graph theory provides a mathematical framework to predict these areas. PageRank centrality is able to consistently find areas that we consider eloquent. It is able to do so better than eigenvector and degree central measures.
最大限度地减少脑外科手术后的神经功能缺损一直是神经外科研究的主要目标之一。研究利用 fMRI、EEG 和 MEG 来描绘和确定功能区,但由于缺乏临床终点,这些方法并未被更广泛的神经外科界所采用。我们试图确定图论指标与神经外科功能区概念之间是否存在相关性。我们还想确定哪种基于图论的节点中心性度量在预测功能区方面表现最佳。
我们从人类连接组计划(HCP)中获得了扩散神经影像学数据,并对其进行了分区。这使我们能够构建一个加权邻接矩阵,然后对其进行分析。我们的分析研究了 PageRank 中心性与功能区之间的相关性。然后,我们将 PageRank 中心性与特征向量中心性和度中心性进行比较,以确定哪种方法是衡量经验性神经外科功能区的最佳方法。
被认为是神经外科功能区的区域往往可以通过高 PageRank 中心性来预测。通过对三种节点中心性度量的综合评分,我们发现 PageRank 中心性与经验性神经外科功能区的相关性最好。
功能区的概念对神经外科很重要,图论为预测这些区域提供了一个数学框架。PageRank 中心性能够一致地找到我们认为是功能区的区域。它比特征向量和度中心性度量的效果更好。