Flexible parametrization of graph-theoretical features from individual-specific networks for prediction
Mariella Gregorich, Sean L. Simpson, Georg Heinze

TL;DR
This paper introduces a flexible weighting approach to analyze individual-specific network features from fMRI data, improving prediction accuracy and inference efficiency over traditional threshold-based methods.
Contribution
It extends functional data analysis concepts to graph-theoretical features, allowing for threshold variability modeling in network analysis.
Findings
Accurate estimation of the weight function in simulations.
Improved prediction accuracy and inference efficiency.
Demonstrated utility in predicting biological age from fMRI data.
Abstract
Statistical techniques are needed to analyse data structures with complex dependencies such that clinically useful information can be extracted. Individual-specific networks, which capture dependencies in complex biological systems, are often summarized by graph-theoretical features. These features, which lend themselves to outcome modelling, can be subject to high variability due to arbitrary decisions in network inference and noise. Correlation-based adjacency matrices often need to be sparsified before meaningful graph-theoretical features can be extracted, requiring the data analysts to determine an optimal threshold.. To address this issue, we propose to incorporate a flexible weighting function over the full range of possible thresholds to capture the variability of graph-theoretical features over the threshold domain. The potential of this approach, which extends concepts from…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Health, Environment, Cognitive Aging
