MEANtools integrates multi-omics data to identify metabolites and predict biosynthetic pathways

Publication date

2025-07-28

Authors

Singh, Kumar SaurabhISNI 0000000509763933
Duran, Hernando Suarez
Del Pup, Elena
Zafra-Delgado, Olga
van Wees, S.C.M.ISNI 0000000388268855
van der Hooft, Justin J J
Medema, Marnix H

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

During evolution, plants have developed the ability to produce a vast array of specialized metabolites, which play crucial roles in helping plants adapt to different environmental niches. However, their biosynthetic pathways remain largely elusive. In the past decades, increasing numbers of plant biosynthetic pathways have been elucidated based on approaches utilizing genomics, transcriptomics, and metabolomics. These efforts, however, are limited by the fact that they typically adopt a target-based approach, requiring prior knowledge. Here, we present MEANtools, a systematic and unsupervised computational integrative omics workflow to predict candidate metabolic pathways de novo by leveraging knowledge of general reaction rules and metabolic structures stored in public databases. In our approach, possible connections between metabolites and transcripts that show correlated abundance across samples are identified using reaction rules linked to the transcript-encoded enzyme families. MEANtools thus assesses whether these reactions can connect transcript-correlated mass features within a candidate metabolic pathway. We validate MEANtools using a paired transcriptomic-metabolomic dataset recently generated to reconstruct the falcarindiol biosynthetic pathway in tomato. MEANtools correctly anticipated five out of seven steps of the characterized pathway and also identified other candidate pathways involved in specialized metabolism, which demonstrates its potential for hypothesis generation. Altogether, MEANtools represents a significant advancement to integrate multi-omics data for the elucidation of biochemical pathways in plants and beyond.

Keywords

General Neuroscience, General Biochemistry,Genetics and Molecular Biology, General Immunology and Microbiology, General Agricultural and Biological Sciences

Citation

Singh, K S, Duran, H S, Del Pup, E, Zafra-Delgado, O, Van Wees, S C M, van der Hooft, J J J & Medema, M H 2025, 'MEANtools integrates multi-omics data to identify metabolites and predict biosynthetic pathways', PLoS Biology, vol. 23, no. 7 July, e3003307. https://doi.org/10.1371/journal.pbio.3003307