Kernel Method for Detecting Higher Order Interactions in multi-view Data: An Application to Imaging, Genetics, and Epigenetics
Md. Ashad Alam, Hui-Yi Lin, Vince Calhoun, Yu-Ping Wang

TL;DR
This paper introduces a kernel-based semiparametric method to detect higher order interactions in multi-view biological data, demonstrating its effectiveness on imaging, genetics, and epigenetics data related to schizophrenia.
Contribution
The study develops a novel RKHS-based framework for identifying complex multi-view interactions, including three-way interactions, in biological datasets.
Findings
Identified 13 triplets significantly associated with hippocampal volume changes.
Detected triplet involving MAGI2, CRBLCrus1.L, FBXO28 distinguishing schizophrenia from controls.
Method outperforms existing approaches in simulation studies.
Abstract
In this study, we tested the interaction effect of multimodal datasets using a novel method called the kernel method for detecting higher order interactions among biologically relevant mulit-view data. Using a semiparametric method on a reproducing kernel Hilbert space (RKHS), we used a standard mixed-effects linear model and derived a score-based variance component statistic that tests for higher order interactions between multi-view data. The proposed method offers an intangible framework for the identification of higher order interaction effects (e.g., three way interaction) between genetics, brain imaging, and epigenetic data. Extensive numerical simulation studies were first conducted to evaluate the performance of this method. Finally, this method was evaluated using data from the Mind Clinical Imaging Consortium (MCIC) including single nucleotide polymorphism (SNP) data,…
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Taxonomy
TopicsGenetic Associations and Epidemiology · Bioinformatics and Genomic Networks · Functional Brain Connectivity Studies
