Predicting Fluid Intelligence via Naturalistic Functional Connectivity Using Weighted Ensemble Model and Network Analysis

IF 1.6 Q3 CLINICAL NEUROLOGY
NeuroSci Pub Date : 2021-12-17 DOI:10.3390/neurosci2040032
Xiaobo Liu, Su Yang, Zhengxian Liu
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引用次数: 1

Abstract

Objectives: Functional connectivity triggered by naturalistic stimuli (e.g., movie clips), coupled with machine learning techniques provide great insight in exploring brain functions such as fluid intelligence. However, functional connectivity is multi-layered while traditional machine learning is based on individual model, which is not only limited in performance, but also fails to extract multi-dimensional and multi-layered information from the brain network. Methods: In this study, inspired by multi-layer brain network structure, we propose a new method, namely weighted ensemble model and network analysis, which combines machine learning and graph theory for improved fluid intelligence prediction. Firstly, functional connectivity analysis and graphical theory were jointly employed. The functional connectivity and graphical indices computed using the preprocessed fMRI data were then all fed into an auto-encoder parallelly for automatic feature extraction to predict the fluid intelligence. In order to improve the performance, tree regression and ridge regression models were stacked and fused automatically with weighted values. Finally, layers of auto-encoder were visualized to better illustrate the connectome patterns, followed by the evaluation of the performance to justify the mechanism of brain functions. Results: Our proposed method achieved the best performance with a 3.85 mean absolute deviation, 0.66 correlation coefficient and 0.42 R-squared coefficient; this model outperformed other state-of-the-art methods. It is also worth noting that the optimization of the biological pattern extraction was automated though the auto-encoder algorithm. Conclusion: The proposed method outperforms the state-of-the-art reports, also is able to effectively capture the biological patterns of functional connectivity during a naturalistic movie state for potential clinical explorations.
利用加权集成模型和网络分析通过自然功能连通性预测流体智力
目的:由自然刺激(如电影片段)触发的功能连接,加上机器学习技术,为探索大脑功能(如流体智力)提供了很好的见解。然而,功能连接是多层次的,传统的机器学习是基于个体模型的,不仅性能有限,而且无法从大脑网络中提取多维、多层次的信息。方法:本研究受多层大脑网络结构的启发,提出了一种将机器学习与图论相结合的加权集成模型与网络分析相结合的改进流体智能预测方法。首先,将功能连通性分析与图形理论相结合。利用预处理后的fMRI数据计算功能连通性和图形指数,然后将其并行输入自编码器进行自动特征提取,以预测流体智能。为了提高性能,将树回归和脊回归模型与加权值自动叠加融合。最后,将自动编码器层可视化以更好地说明连接体模式,然后对其性能进行评估以证明脑功能的机制。结果:该方法的平均绝对偏差为3.85,相关系数为0.66,r平方系数为0.42;这个模型优于其他最先进的方法。同样值得注意的是,生物模式提取的优化是通过自编码器算法自动完成的。结论:所提出的方法优于最新的报道,也能够有效地捕捉在自然电影状态下功能连接的生物学模式,为潜在的临床探索。
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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