识别复杂大脑网络中的模块关系

Kasper Winther Andersen, Morten Mørup, H. Siebner, Kristoffer Hougaard Madsen, L. K. Hansen
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引用次数: 13

摘要

我们将无限关系模型(IRM)与两种更简单的非参数贝叶斯模型进行比较,以识别多主体大脑网络中的结构。对这些模型进行评估是因为它们预测新数据和推断可重复结构的能力。在数据驱动的NPAIRS拆分半框架中测量预测和再现性。使用从每个生成模型中提取的综合数据,我们表明当数据包含关系结构时,IRM模型优于两个竞争模型。对于从其他两个更简单的模型中提取的数据,IRM不会过度拟合,并获得相当的再现性和可预测性。对于30名健康对照者的静息状态功能磁共振成像数据,IRM模型也优于两种更简单的选择,这表明大脑网络确实在人群中表现出普遍的复杂关系结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying modular relations in complex brain networks
We evaluate the infinite relational model (IRM) against two simpler alternative nonparametric Bayesian models for identifying structures in multi subject brain networks. The models are evaluated for their ability to predict new data and infer reproducible structures. Prediction and reproducibility are measured within the data driven NPAIRS split-half framework. Using synthetic data drawn from each of the generative models we show that the IRM model outperforms the two competing models when data contain relational structure. For data drawn from the other two simpler models the IRM does not overfit and obtains comparable reproducibility and predictability. For resting state functional magnetic resonance imaging data from 30 healthy controls the IRM model is also superior to the two simpler alternatives, suggesting that brain networks indeed exhibit universal complex relational structure in the population.
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