Weighted Ensemble-model and Network Analysis: A method to predict fluid intelligence via naturalistic functional connectivity
Xiaobo Liu, Su Yang

TL;DR
This paper introduces a novel weighted ensemble and network analysis method combining machine learning and graph theory to predict fluid intelligence from naturalistic fMRI data, outperforming existing approaches.
Contribution
It presents a multi-layer brain network-based approach integrating auto-encoders and ensemble models for improved fluid intelligence prediction.
Findings
Achieved best performance with 3.85 mean absolute deviation
Correlation coefficient of 0.66 indicating strong prediction accuracy
Effectively captured biological connectome patterns during naturalistic stimuli
Abstract
Objectives: Functional connectivity triggered by naturalistic stimulus (e.g., movies) and machine learning techniques provide a great insight in exploring the brain functions such as fluid intelligence. However, functional connectivity are considered to be multi-layered, while traditional machine learning based on individual models not only are limited in performance, but also fail to extract multi-dimensional and multi-layered information from 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 the 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…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Mental Health Research Topics
