Biochemical pathways represented by Gene Ontology-Causal Activity Models identify distinct phenotypes resulting from mutations in pathways
Abstract
Gene inactivation can affect the process(es) in which that gene acts and causally downstream ones, yielding diverse mutant phenotypes. Identifying the genetic pathways resulting in a given phenotype helps us understand how individual genes interact in a functional network. Computable representations of biological pathways include detailed process descriptions in the Reactome Knowledgebase and causal activity flows between molecular functions in Gene Ontology-Causal Activity Models (GO-CAMs). A computational process has been developed to convert Reactome pathways to GO-CAMs. Laboratory mice are widely used models of normal and pathological human processes. We have converted human Reactome GO-CAMs to orthologous mouse GO-CAMs, as a resource to transfer pathway knowledge between humans and model organisms. These mouse GO-CAMs allowed us to define sets of genes that function in a causally connected way. To demonstrate that individual variant genes from connected pathways result in similar but distinguishable phenotypes, we used the genes in our pathway models to cross-query mouse phenotype annotations in the Mouse Genome Database (MGD). Using GO-CAM representations of 2 related but distinct pathways, gluconeogenesis and glycolysis, we show that individual causal paths in gene networks give rise to discrete phenotypic outcomes resulting from perturbations of glycolytic and gluconeogenic genes. The accurate and detailed descriptions of gene interactions recovered in this analysis of well-studied processes suggest that this strategy can be applied to less well-understood processes in less well-studied model systems to predict phenotypic outcomes of novel gene variants and to identify potential gene targets in altered processes.
Copyright and License
© The Author(s) 2023. Published by Oxford University Press on behalf of The Genetics Society of America. This is an open access article distributed under the terms of the Creative Commons CC BY license, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Acknowledgement
We dedicate this paper to the memory of Michael Ashburner. The work described here comes out of projects he helped to initiate and guide, and we benefitted immeasurably from his support.
Funding
This work was supported by NIH grants U41 HG002273 and U24 HG012212 (GO Consortium), U24 HG012198 (Reactome), U24 HG002223 (WormBase), U41 HG000330 (The Mouse Genome Database), and U24 HG011851 (Pathways2GO).
Data Availability
Full results of our analyses are given in Tables 1–4 and in the Supplementary Files for this paper. The full Reactome and MGI data sets are freely available to all users at www.reactome.org and https://www.informatics.jax.org/, respectively.
Supplemental material available at GENETICS online.
Conflict of Interest
The author(s) declare no conflict of interest.
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Additional details
Identifiers
- PMCID
- PMC10550311
Funding
- National Institutes of Health
- U41 HG002273
- National Institutes of Health
- U24 HG012212
- National Institutes of Health
- U24 HG012198
- National Institutes of Health
- U24 HG002223
- National Institutes of Health
- U41 HG000330
- National Institutes of Health
- U24 HG011851