Rajapandian Meenusree, Amico Enrico, Abbas Kausar, Ventresca Mario, Goñi Joaquín
School of Industrial Engineering, Purdue University, West Lafayette, IN, USA.
Netw Neurosci. 2020 Jul 1;4(3):698-713. doi: 10.1162/netn_a_00140. eCollection 2020.
The identifiability framework (𝕀) has been shown to improve differential identifiability (reliability across-sessions and -sites, and differentiability across-subjects) of functional connectomes for a variety of fMRI tasks. But having a robust single session/subject functional connectome is just the starting point to subsequently assess network properties for characterizing properties of integration, segregation, and communicability, among others. Naturally, one wonders whether uncovering identifiability at the connectome level also uncovers identifiability on the derived network properties. This also raises the question of where to apply the 𝕀 framework: on the connectivity data or directly on each network measurement? Our work answers these questions by exploring the differential identifiability profiles of network measures when 𝕀 is applied (a) on the functional connectomes, and (b) directly on derived network measurements. Results show that improving across-session reliability of functional connectomes (FCs) also improves reliability of derived network measures. We also find that, for specific network properties, application of 𝕀 directly on network properties is more effective. Finally, we discover that applying the framework, either way, increases task sensitivity of network properties. At a time when the neuroscientific community is focused on subject-level inferences, this framework is able to uncover FC fingerprints, which propagate to derived network properties.
识别性框架(𝕀)已被证明可提高各种功能磁共振成像(fMRI)任务中功能连接组的差异识别性(跨会话和跨站点的可靠性,以及跨受试者的可区分性)。但是,拥有一个稳健的单会话/单受试者功能连接组仅仅是后续评估网络属性以表征整合、分离和可通信性等属性的起点。自然而然地,人们会想在连接组层面揭示识别性是否也能揭示派生网络属性的识别性。这也引发了一个问题,即𝕀框架应应用于何处:应用于连接性数据还是直接应用于每个网络测量值?我们的工作通过探索当𝕀分别应用于(a)功能连接组和(b)直接应用于派生网络测量值时网络测量值的差异识别性概况来回答这些问题。结果表明,提高功能连接组(FCs)的跨会话可靠性也能提高派生网络测量值的可靠性。我们还发现,对于特定的网络属性,直接将𝕀应用于网络属性更为有效。最后,我们发现无论以哪种方式应用该框架,都会提高网络属性的任务敏感性。在神经科学界专注于受试者层面推断的当下,这个框架能够揭示功能连接组指纹,并传播到派生网络属性上。