Beare Richard, Chen Jian, Phan Thanh G
Stroke Unit, Stroke and Aging Research Group, Monash University, Melbourne, Australia; Developmental Imaging, Murdoch Childrens Research Institute, Royal Childrens Hospital, Melbourne, Australia.
Stroke Unit, Stroke and Aging Research Group, Monash University, Melbourne, Australia; Monash Health and Stroke and Aging Research Group, Monash University, Melbourne, Australia.
PLoS One. 2015 May 11;10(5):e0125687. doi: 10.1371/journal.pone.0125687. eCollection 2015.
The summed Alberta Stroke Program Early CT Score (ASPECTS) is useful for predicting stroke outcome. The anatomical information in the CT template is rarely used for this purpose because traditional regression methods are not adept at handling collinearity (relatedness) among brain regions. While penalized logistic regression (PLR) can handle collinearity, it does not provide an intuitive understanding of the interaction among network structures in a way that eigenvector method such as PageRank can (used in Google search engine). In this exploratory analysis we applied graph theoretical analysis to explore the relationship among ASPECTS regions with respect to disability outcome. The Virtual International Stroke Trials Archive (VISTA) was searched for patients who had infarct in at least one ASPECTS region (ASPECTS ≤ 9, ASPECTS = 10 were excluded), and disability (modified Rankin score/mRS). A directed graph was created from a cross correlation matrix (thresholded at false discovery rate of 0.01) of the ASPECTS regions and demographic variables and disability (mRS > 2). We estimated the network-based importance of each ASPECTS region by comparing PageRank and node strength measures. These results were compared with those from PLR. There were 185 subjects, average age 67.5 ± 12.8 years (55% Males). Model 1: demographic variables having no direct connection with disability, the highest PageRank was M2 (0.225, bootstrap 95% CI 0.215-0.347). Model 2: demographic variables having direct connection with disability, the highest PageRank were M2 (0.205, bootstrap 95% CI 0.194-0.367) and M5 (0.125, bootstrap 95% CI 0.096-0.204). Both models illustrate the importance of M2 region to disability. The PageRank method reveals complex interaction among ASPECTS regions with respects to disability. This approach may help to understand the infarcted brain network involved in stroke disability.
阿尔伯塔卒中项目早期CT评分(ASPECTS)总和有助于预测卒中预后。CT模板中的解剖学信息很少用于此目的,因为传统回归方法不擅长处理脑区之间的共线性(相关性)。虽然惩罚逻辑回归(PLR)可以处理共线性,但它无法像PageRank等特征向量方法(用于谷歌搜索引擎)那样直观地理解网络结构之间的相互作用。在这项探索性分析中,我们应用图论分析来探究ASPECTS各区域与残疾预后之间的关系。在虚拟国际卒中试验档案库(VISTA)中搜索至少有一个ASPECTS区域梗死(ASPECTS≤9,ASPECTS = 10被排除)且有残疾(改良Rankin评分/mRS)的患者。根据ASPECTS区域与人口统计学变量以及残疾(mRS>2)的互相关矩阵(以错误发现率0.01为阈值)创建了一个有向图。我们通过比较PageRank和节点强度指标来估计每个ASPECTS区域基于网络的重要性。将这些结果与PLR的结果进行比较。共有185名受试者,平均年龄67.5±12.8岁(55%为男性)。模型1:人口统计学变量与残疾无直接关联,PageRank最高的是M2(0.225,自助法95%CI 0.215 - 0.347)。模型2:人口统计学变量与残疾有直接关联,PageRank最高的是M2(0.205,自助法95%CI 0.194 - 0.367)和M5(0.125,自助法95%CI 0.096 - 0.204)。两个模型均表明M2区域对残疾的重要性。PageRank方法揭示了ASPECTS区域在残疾方面的复杂相互作用。这种方法可能有助于理解与卒中残疾相关的梗死脑网络。