fMRI functional connectivity is a better predictor of general intelligence than cortical morphometric features and ICA parcellation order affects predictive performance

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2023-03-01 DOI:10.1016/j.intell.2023.101727
Erick Almeida de Souza, Stéphanie Andrade Silva, Bruno Hebling Vieira , Carlos Ernesto Garrido Salmon
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Abstract

Intelligence, as a general cognitive ability, shows a substantial inter-subject variation. Because of its impact on our lives, there is great interest in explaining the neural substrates of these differences. We used a large set of neuroimaging and behavioral data from 805 subjects, provided by the Human Connectome Project, and applied predictive models based on elastic-net regression using functional connectivity and brain morphometric data to predict general intelligence values. Additionally, we explored the impact of brain spatial distribution of the input connectivity data in the regression model using two strategies: brain parcellation and individual components. Features derived from functional connectivity were considerably more correlated with general intelligence than cortical thickness and surface area. Considering the regularization terms in this particular prediction problem, the best performances were obtained when the impact of all the independent variables was considered in the regresion, i.e. null LASSO sparsity term. Using different parcellation schemes affected predictive performances, which indicates spatial heterogeneity in the regression. We were able to explain 17,5% of the general intelligence variance, in the best performance reached, with a brain parcellation of 25 independent components; by other hand, using only cortical morphometric features the performance reduced to 1,6% for both cortical thickness and surface area. While no component, in particular, was responsible for predicting a large portion of the variance, the spatial components with the best results comprehend parietal, frontal and occipital regions, in agreement with the Parieto-Frontal Integration Theory (P-FIT).

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fMRI功能连通性比皮质形态特征更好地预测一般智力,ICA的排列顺序影响预测性能
智力作为一种普遍的认知能力,在主体间表现出很大的差异。由于它对我们生活的影响,人们对解释这些差异的神经基础非常感兴趣。我们使用了人类连接组计划提供的805名受试者的大量神经成像和行为数据,并应用基于弹性网络回归的预测模型,利用功能连接和脑形态测量数据来预测一般智力值。此外,在回归模型中,我们采用脑分割和个体成分两种策略探讨了输入连接数据的脑空间分布对大脑空间分布的影响。与皮质厚度和表面积相比,源自功能连接的特征与一般智力的相关性要大得多。考虑到这一特定预测问题的正则化项,在回归中考虑所有自变量的影响,即零LASSO稀疏性项时,得到了最好的性能。采用不同的分割方案会影响预测性能,表明回归的空间异质性。我们能够解释17.5%的一般智力差异,在达到最佳表现的情况下,用25个独立的大脑成分进行分割;另一方面,仅使用皮质形态测量特征,对皮质厚度和表面积的性能降低到1.6%。虽然没有特别的成分负责预测大部分方差,但具有最佳结果的空间成分包括顶叶,额叶和枕叶区域,这与顶叶-额叶整合理论(P-FIT)一致。
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CiteScore
7.20
自引率
4.30%
发文量
567
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