论文标题
基于连接组的高级方法的人类智能预测建模:一种基于皮质形象的个体差异的新方法
Advanced Methods for Connectome-Based Predictive Modeling of Human Intelligence: A Novel Approach Based on Individual Differences in Cortical Topography
论文作者
论文摘要
可以通过体内神经生物学连通性对人类智力的个体差异进行建模和预测。但是,许多建立的建模框架用于预测智力,但是,丢弃了有关大脑网络拓扑中个体差异的高阶信息,并且仅在概括地进行样本外受试者进行预测时才显示中等的性能。在本文中,我们提出,基于Connectome的预测建模是神经科学数据的常见预测建模框架,可以进行有效的修改,以通过合并包装的决策树和基于网络的统计量来整合有关大脑网络拓扑和个体差异的信息。这些修饰产生了一种新颖的预测建模框架,该框架利用皮质拖拉机中的个体差异来产生智能得分的准确回归预测。基于网络拓扑的功能选择为输入功能提供了本地可解释的网络,从而提高了模型的解释性。在研究提出的建模框架的功效时,我们发现基于高级连接的预测建模产生了神经科学预测,该预测比以前确定的方法相比,构成一般智能评分方差的比例要大得多,从而促进了我们对基于人类智能的网络结构的科学理解。
Individual differences in human intelligence can be modeled and predicted from in vivo neurobiological connectivity. Many established modeling frameworks for predicting intelligence, however, discard higher-order information about individual differences in brain network topology, and show only moderate performance when generalized to make predictions in out-of-sample subjects. In this paper, we propose that connectome-based predictive modeling, a common predictive modeling framework for neuroscience data, can be productively modified to incorporate information about brain network topology and individual differences via the incorporation of bagged decision trees and the network based statistic. These modifications produce a novel predictive modeling framework that leverages individual differences in cortical tractography to generate accurate regression predictions of intelligence scores. Network topology-based feature selection provides for natively interpretable networks as input features, increasing the model's explainability. Investigating the proposed modeling framework's efficacy, we find that advanced connectome-based predictive modeling generates neuroscience predictions that account for a significantly greater proportion of variance in general intelligence scores than previously established methods, advancing our scientific understanding of the network architecture that underlies human intelligence.