Betzel Richard F, Griffa Alessandra, Hagmann Patric, Mišić Bratislav
Department of Psychological and Brain Sciences, Indiana University, Bloomington, IN, USA.
Dutch Connectome Lab, Department of Complex Trait Genetics, Center for Neurogenomics and Cognitive Research, Amsterdam Neuroscience, VU University, Amsterdam, The Netherlands.
Netw Neurosci. 2019 Mar 1;3(2):475-496. doi: 10.1162/netn_a_00075. eCollection 2019.
Large-scale structural brain networks encode white matter connectivity patterns among distributed brain areas. These connection patterns are believed to support cognitive processes and, when compromised, can lead to neurocognitive deficits and maladaptive behavior. A powerful approach for studying the organizing principles of brain networks is to construct group-representative networks from multisubject cohorts. Doing so amplifies signal to noise ratios and provides a clearer picture of brain network organization. Here, we show that current approaches for generating sparse group-representative networks overestimate the proportion of short-range connections present in a network and, as a result, fail to match subject-level networks along a wide range of network statistics. We present an alternative approach that preserves the connection-length distribution of individual subjects. We have used this method in previous papers to generate group-representative networks, though to date its performance has not been appropriately benchmarked and compared against other methods. As a result of this simple modification, the networks generated using this approach successfully recapitulate subject-level properties, outperforming similar approaches by better preserving features that promote integrative brain function rather than segregative. The method developed here holds promise for future studies investigating basic organizational principles and features of large-scale structural brain networks.
大规模脑结构网络编码了分布在不同脑区之间的白质连接模式。这些连接模式被认为支持认知过程,一旦受到损害,可能导致神经认知缺陷和适应不良行为。研究脑网络组织原则的一种有效方法是从多主体队列构建群体代表性网络。这样做可以提高信噪比,并更清晰地呈现脑网络组织。在这里,我们表明,当前生成稀疏群体代表性网络的方法高估了网络中短程连接的比例,因此,在广泛的网络统计数据方面,无法与个体水平的网络相匹配。我们提出了一种替代方法,该方法保留了个体受试者的连接长度分布。我们在之前的论文中使用了这种方法来生成群体代表性网络,不过迄今为止,其性能尚未得到适当的基准测试,也未与其他方法进行比较。通过这一简单修改,使用该方法生成的网络成功地再现了个体水平的属性,通过更好地保留促进大脑整合功能而非分离功能的特征,优于类似方法。这里开发的方法为未来研究大规模脑结构网络的基本组织原则和特征带来了希望。