Department of Biostatistics, Epidemiology, and Informatics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
Department of Biostatistics, Epidemiology, and Informatics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
Neuroimage. 2018 Dec;183:872-883. doi: 10.1016/j.neuroimage.2018.09.005. Epub 2018 Sep 6.
As the field of neuroimaging grows, it can be difficult for scientists within the field to gain and maintain a detailed understanding of its ever-changing landscape. While collaboration and citation networks highlight important contributions within the field, the roles of and relations among specific areas of study can remain quite opaque. Here, we apply techniques from network science to map the landscape of neuroimaging research documented in the journal NeuroImage over the past decade. We create a network in which nodes represent research topics, and edges give the degree to which these topics tend to be covered in tandem. The network displays small-world architecture, with communities characterized by common imaging modalities and medical applications, and with hubs that integrate these distinct subfields. Using node-level analysis, we quantify the structural roles of individual topics within the neuroimaging landscape, and find high levels of clustering within the structural MRI subfield as well as increasing participation among topics related to psychiatry. The overall prevalence of a topic is unrelated to the prevalence of its neighbors, but the degree to which a topic becomes more or less popular over time is strongly related to changes in the prevalence of its neighbors. Finally, we incorporate data from PNAS to investigate whether it serves as a trend-setter for topics' use within NeuroImage. We find that popularity trends are correlated across the two journals, and that changes in popularity tend to occur earlier within PNAS among growing topics. Broadly, this work presents a cohesive model for understanding the emergent relationships and dynamics of research topics within NeuroImage.
随着神经影像学领域的发展,该领域的科学家很难深入了解其不断变化的格局。虽然合作和引文网络突出了该领域的重要贡献,但特定研究领域的角色和关系仍然相当不透明。在这里,我们应用网络科学的技术来绘制过去十年在《神经影像》杂志上记录的神经影像学研究的景观。我们创建了一个网络,其中节点代表研究主题,边表示这些主题倾向于一起涵盖的程度。该网络显示出小世界结构,具有以常见成像方式和医学应用为特征的社区,以及整合这些不同子领域的枢纽。使用节点级别的分析,我们量化了个体主题在神经影像学景观中的结构作用,并发现结构磁共振成像子领域内存在高水平的聚类,以及与精神病学相关的主题的参与度增加。主题的整体流行度与邻居的流行度无关,但主题随着时间的推移变得越来越受欢迎或不受欢迎的程度与邻居的流行度变化密切相关。最后,我们结合了来自 PNAS 的数据来研究它是否作为主题在《神经影像》中使用的趋势设定者。我们发现这两个期刊的流行趋势相关,并且在增长的主题中,PNAS 中的流行度变化往往更早发生。总体而言,这项工作为理解《神经影像》中研究主题的新兴关系和动态提供了一个连贯的模型。