Investigating Heritability Across Resting State Brain Networks Via Heat Kernel Smoothing on Persistence Diagrams

Arman P. Kulkarni, M. Chung, B. Bendlin, V. Prabhakaran
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引用次数: 4

Abstract

The brain’s heritable topological differences in resting state functional connectivity (rsfc) measured via resting state fMRI (rsfMRI) provide important insight into brain function and dysfunction. Current techniques investigating heritability are limited by arbitrary rsfc threshold selection and reduction of otherwise detailed brain topological properties into summary measures. Topological Data Analysis (TDA) is a novel tool for addressing these limitations by analyzing how the topological properties of data vary without arbitrary threshold and summary metric construction. TDA applies a filtration to the data and constructs a persistence diagram (PD). Therefore, the purpose of this study was to compute PDs to determine TDAbased heritability of static brain network topological features. To this end, we calculated a robust heritability index map across smoothed PDs derived from twin rsfMRI data.
通过持续图的热核平滑研究静息状态脑网络的遗传性
通过静息状态功能磁共振成像(rsfMRI)测量大脑静息状态功能连接(rsfc)的遗传拓扑差异,为了解大脑功能和功能障碍提供了重要的见解。目前研究遗传性的技术受到任意rsfc阈值选择的限制,并且将其他详细的大脑拓扑特性减少为总结测量。拓扑数据分析(TDA)是一种新的工具,通过分析数据的拓扑属性如何在没有任意阈值和汇总度量构造的情况下变化来解决这些限制。TDA对数据进行过滤,并构造持久性图(PD)。因此,本研究的目的是计算pd以确定基于tda的静态脑网络拓扑特征的遗传力。为此,我们计算了来自双胞胎rsfMRI数据的平滑pd的稳健遗传指数图。
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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