panomiX: Investigating Mechanisms Of Trait Emergence Through Multi-Omics Data Integration

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panomiX: Investigating Mechanisms Of Trait Emergence Through Multi-Omics Data Integration

Authors

Sahu, A.; Psaroudakis, D.; Rolletschek, H.; Neumann, K.; Borisjuk, L.; Himmelbach, A.; Pinninti, K.; Töpfer, N.; Szymanski, J. J.

Abstract

Complex omics approaches and high-throughput phenotyping generate large, heterogeneous datasets that make linking molecular signatures to plant traits challenging. To address this challenge, here we introduce panomiX, a user-friendly toolbox for multi-omics integration, designed to enable non-experts to apply advanced computational methods with ease. panomiX automates data preprocessing, variance analysis, multi-omics prediction, and interaction modeling through machine learning, revealing meaningful molecular interactions and synergies. We applied panomiX to a tomato heat-stress experiment combining image-based phenotyping, transcriptomics, and Fourier-transform infrared spectroscopy data, with the aim of identification of condition-specific, cross-domain relationships between gene expression, metabolite levels, and phenotypic traits. Our approach identified a network of such connections, with those linking photosynthesis traits with stress-responsive kinases in elevated temperatures among most significant ones. By simplifying complex analyses and improving interpretability, panomiX offers a platform to accelerate the discovery of trait emergence in plants and select specific candidate genes based on multi-omics analyses.

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