Coluzzi Davide, Pirastru Alice, Pelizzari Laura, Cabinio Monia, Laganà Maria Marcella, Baselli Giuseppe, Baglio Francesca
Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, Milan, Italy.
IRCCS Fondazione Don Carlo Gnocchi Onlus, Milan, Italy.
Front Neurosci. 2022 Mar 17;16:818385. doi: 10.3389/fnins.2022.818385. eCollection 2022.
Brain connectomics consists in the modeling of human brain as networks, mathematically represented as numerical connectivity matrices. However, this representation may result in difficult interpretation of the data. To overcome this limitation, graphical representation by connectograms is currently used via open-source tools, which, however, lack user-friendly interfaces and options to explore specific sub-networks. In this context, we developed SPIDER-NET (Software Package Ideal for Deriving Enhanced Representations of brain NETworks), an easy-to-use, flexible, and interactive tool for connectograms generation and sub-network exploration. This study aims to present SPIDER-NET and to test its potential impact on pilot cases. As a working example, structural connectivity (SC) was investigated with SPIDER-NET in a group of 17 healthy controls (HCs) and in two subjects with stroke injury (Case 1 and Case 2, both with a focal lesion affecting part of the right frontal lobe, insular cortex and subcortical structures). 165 parcels were determined from individual structural magnetic resonance imaging data by using the Destrieux atlas, and defined as nodes. SC matrices were derived with Diffusion Tensor Imaging tractography. SC matrices of HCs were averaged to obtain a single group matrix. SC matrices were then used as input for SPIDER-NET. First, SPIDER-NET was used to derive the connectogram of the right hemisphere of Case 1 and Case 2. Then, a sub-network of interest (i.e., including gray matter regions affected by the stroke lesions) was interactively selected and the associated connectograms were derived for Case 1, Case 2 and HCs. Finally, graph-based metrics were derived for whole-brain SC matrices of Case 1, Case 2 and HCs. The software resulted effective in representing the expected (dis) connectivity pattern in the hemisphere affected by the stroke lesion in Cases 1 and 2. Furthermore, SPIDER-NET allowed to test an hypothesis by interactively extracting a sub-network of interest: Case 1 showed a sub-network connectivity pattern different from Case 2, reflecting the different clinical severity. Global and local graph-based metrics derived with SPIDER-NET were different between cases with stroke injury and HCs. The tool proved to be accessible, intuitive, and interactive in brain connectivity investigation and provided both qualitative and quantitative evidence.
脑连接组学包括将人类大脑建模为网络,以数值连接矩阵的形式进行数学表示。然而,这种表示方式可能导致数据难以解释。为了克服这一局限性,目前通过开源工具使用连接图进行图形化表示,不过这些工具缺乏用户友好的界面和探索特定子网的选项。在此背景下,我们开发了SPIDER-NET(用于推导增强型脑网络表示的理想软件包),这是一个易于使用、灵活且交互式的工具,用于生成连接图和探索子网。本研究旨在介绍SPIDER-NET并测试其对试点案例的潜在影响。作为一个实例,我们使用SPIDER-NET对一组17名健康对照者(HCs)以及两名中风患者(病例1和病例2,均有影响右侧额叶、岛叶皮质和皮质下结构部分的局灶性病变)的结构连接性(SC)进行了研究。通过使用德斯崔厄斯图谱从个体结构磁共振成像数据中确定了165个脑区,并将其定义为节点。通过扩散张量成像纤维束成像得出SC矩阵。对HCs的SC矩阵进行平均以获得单个组矩阵。然后将SC矩阵用作SPIDER-NET的输入。首先,使用SPIDER-NET推导病例1和病例2右半球的连接图。然后,交互式选择一个感兴趣的子网(即包括受中风病变影响的灰质区域),并为病例1、病例2和HCs推导相关的连接图。最后,为病例1、病例2和HCs的全脑SC矩阵得出基于图的指标。该软件有效地呈现了病例1和病例2中受中风病变影响的半球中预期的(不)连接模式。此外,SPIDER-NET允许通过交互式提取感兴趣的子网来检验一个假设:病例1显示出与病例2不同的子网连接模式,反映了不同的临床严重程度。中风损伤病例和HCs之间通过SPIDER-NET得出的全局和局部基于图的指标有所不同。该工具在脑连接性研究中被证明是易于使用、直观且交互式的,并提供了定性和定量证据。