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SysFungiNet: A Multi-Omics Data Fusion Framework with Explainable AI for Bioactive Prioritization

Oluwagbemi, Johnson Bisi and Oyetayo, Olusegun Victor and Ibam, Emmanuel Onwuka (2026) SysFungiNet: A Multi-Omics Data Fusion Framework with Explainable AI for Bioactive Prioritization. Journal of Future Artificial Intelligence and Technologies, 2 (4). pp. 661-679. ISSN 3048-3719

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Abstract

Macrofungi signify an extensive reservoir of bioactive metabolites. Still, their chemical description is stalled by fragmented analytical pipelines and low reproducibility. This study introduces SysFungiNet, a unified, FAIR-compliant systems-bioinformatics framework designed to accelerate bioactives discovery in non-model fungi. Unlike existing pipelines, SysFungiNet integrates LC-MS/MS metabolomics, transcriptomics, and genomic data with explainable artificial intelligence and molecular docking validation. By reconstructing biosynthetic pathways for Ganoderma lucidum and Craterellus cornucopioides, the framework achieved a Pathway Completeness Index of 0.86. An ensemble machine-learning model predicted bioactivity with an F1-score of 0.91, identifying 312 annotated metabolites. Crucially, decision-making was transparent, with SHAP analysis identifying specific chemical substructures driving predicted immunomodulation. The framework prioritized five high-confidence candidates, including a putative novel terpenoid, Cornucopiolide, which showed high binding affinity (−9.4 kcal/mol) to human immune receptors in silico. Benchmarking against MetaFungi and PhytoOmics demonstrated superior annotation accuracy and reproducibility. SysFungiNet offers a scalable, open-source ecosystem for transforming fungal bioprospecting into an evidence-driven process.

Item Type: Article
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Depositing User: dl fts
Date Deposited: 23 Mar 2026 03:46
Last Modified: 23 Mar 2026 03:46
URI: https://dl.futuretechsci.org/id/eprint/166

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