A Principled Framework to Assess the Information-Theoretic Fitness of Brain Functional Sub-Circuits.

IF 2.2 3区 数学 Q1 MATHEMATICS
Mathematics Pub Date : 2024-10-01 Epub Date: 2024-09-24 DOI:10.3390/math12192967
Duy Duong-Tran, Nghi Nguyen, Shizhuo Mu, Jiong Chen, Jingxuan Bao, Frederick H Xu, Sumita Garai, Jose Cadena-Pico, Alan David Kaplan, Tianlong Chen, Yize Zhao, Li Shen, Joaquín Goñi
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引用次数: 0

Abstract

In systems and network neuroscience, many common practices in brain connectomic analysis are often not properly scrutinized. One such practice is mapping a predetermined set of sub-circuits, like functional networks (FNs), onto subjects' functional connectomes (FCs) without adequately assessing the information-theoretic appropriateness of the partition. Another practice that goes unchallenged is thresholding weighted FCs to remove spurious connections without justifying the chosen threshold. This paper leverages recent theoretical advances in Stochastic Block Models (SBMs) to formally define and quantify the information-theoretic fitness (e.g., prominence) of a predetermined set of FNs when mapped to individual FCs under different fMRI task conditions. Our framework allows for evaluating any combination of FC granularity, FN partition, and thresholding strategy, thereby optimizing these choices to preserve the important topological features of the human brain connectomes. By applying to the Human Connectome Project with Schaefer parcellations at multiple levels of granularity, the framework showed that the common thresholding value of 0.25 was indeed information-theoretically valid for group-average FCs, despite its previous lack of justification. Our results pave the way for the proper use of FNs and thresholding methods, and provide insights for future research in individualized parcellations.

脑功能子回路信息论适应度评估的原则框架。
在系统和网络神经科学中,大脑连接组分析的许多常见做法往往没有得到适当的审查。其中一种做法是将一组预先确定的子电路,如功能网络(FNs),映射到被试的功能连接体(fc)上,而没有充分评估这种划分在信息论上的适当性。另一种不受质疑的做法是设置阈值加权fc,在不证明所选阈值的情况下删除虚假连接。本文利用随机块模型(sbm)的最新理论进展,正式定义和量化在不同功能磁共振成像任务条件下,一组预定的FNs映射到单个FCs时的信息理论适应度(例如,突出性)。我们的框架允许评估FC粒度、FN划分和阈值策略的任何组合,从而优化这些选择,以保留人类大脑连接体的重要拓扑特征。通过在多个粒度级别上应用Schaefer分组的人类连接组项目,该框架表明,尽管之前缺乏理由,但0.25的常见阈值确实在信息理论上对群体平均fc有效。我们的结果为正确使用FNs和阈值方法铺平了道路,并为个性化包装的未来研究提供了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mathematics
Mathematics Mathematics-General Mathematics
CiteScore
4.00
自引率
16.70%
发文量
4032
审稿时长
21.9 days
期刊介绍: Mathematics (ISSN 2227-7390) is an international, open access journal which provides an advanced forum for studies related to mathematical sciences. It devotes exclusively to the publication of high-quality reviews, regular research papers and short communications in all areas of pure and applied mathematics. Mathematics also publishes timely and thorough survey articles on current trends, new theoretical techniques, novel ideas and new mathematical tools in different branches of mathematics.
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