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Robust Identification of Rich-Club Organization in Weighted and Dense Structural Connectomes

机译:加权和致密结构Concepomes中富人俱乐部组织的鲁棒识别

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The human brain is a complex network, in which some brain regions, denoted as hub' regions, play critically important roles. Some of these hubs are highly interconnected forming a rich-club organization, which has been identified based on the degree metric from structural connectomes constructed using diffusion tensor imaging (DTI)-based fiber tractography. However, given the limitations of DTI, the yielded structural connectomes are largely compromised, possibly affecting the characterization of rich-club organizations. Recent progress in diffusion MRI and fiber tractography now enable more reliable but also very dense structural connectomes to be achieved. However, while the existing rich-club analysis method is based on weighted networks, it is essentially built upon degree metric and, therefore, not suitable for identifying rich-club organizations from such dense networks, as it yields nodes with indistinguishably high degrees. Therefore, we propose a novel method, i.e. Rich-club organization Identification using Combined H-degree and Effective strength to h-degree Ratio (RICHER), to identify rich-club organizations from dense weighted networks. Overall, it is shown that more robust rich-club organizations can be achieved using our proposed framework (i.e., state-of-the-art fiber tractography approaches and our proposed RICHER method) in comparison to the previous method focusing on weighted networks based on degree, i.e., RC-degree. Furthermore, by simulating network attacks in 3 ways, i.e., attack to non-rich-club/non-rich-club edges (NRC2NRC), rich-club/non-rich-club edges (RC2NRC), and rich-club/rich-club edges (RC2RC), brain network damage consequences have been evaluated in terms of global efficiency (GE) reductions. As expected, significant GE reductions have been detected using our proposed framework among conditions, i.e., NRC2NRC RC2NRC, NRC2NRC RC2RC and RC2NRC RC2RC, which however have not been detected otherwise.
机译:人脑是一个复杂的网络,其中一些大脑区域表示为中心地区,发挥着重点重要的作用。这些集线器中的一些是高度互连的,形成丰富的俱乐部组织,该组织已经基于来自使用扩散张量成像(DTI)的光纤牵引器构造的结构螺栓的程度度量来识别。然而,鉴于DTI的局限性,所产生的结构Conceptomes在很大程度上受到影响,可能影响富洛俱乐部组织的特征。最近在扩散MRI和光纤牵引过程中的进展现在能够实现更可靠,但也可以实现非常致密的结构钢丝。然而,虽然现有的Rich-Club分析方法基于加权网络,但它基本上建立在度量等级,因此不适合识别来自这种密集的网络的富杆组织,因为它产生了令人无法区分高度的节点。因此,我们提出了一种新颖的方法,即富人俱乐部组织使用组合的H-Degraety和有效的力量来识别H-Degety比率(更丰富),以确定来自密集加权网络的富杆组织。总的来说,与先前的方法专注于基于加权网络的先前方法相比,可以使用我们提出的框架(即最先进的光纤牵引方法和我们提出的更丰富的方法)来实现更强大的Rick-Club组织。学位,即rc-degraid。此外,通过以3种方式模拟网络攻击,即攻击非富裕俱乐部/非富裕俱乐部边缘(NRC2NRC),Rich-Club /非Rich-Club边缘(RC2NRC)和富俱乐部/富人-Club边缘(RC2RC),在全球效率(GE)减少方面已经评估了脑网络损伤后果。正如预期的那样,使用我们在条件下的拟议框架,即NRC2NRC< RC2NRC,NRC2NRC& RC2RC和RC2NRC&然而,RC2RC尚未以其他方式检测到。

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