DeepAutoPIN: An automorphism orbits based deep neural network for
characterizing the organizational diversity of protein interactomes across
the tree of life
- URL: http://arxiv.org/abs/2203.00999v2
- Date: Mon, 29 Jan 2024 05:34:37 GMT
- Title: DeepAutoPIN: An automorphism orbits based deep neural network for
characterizing the organizational diversity of protein interactomes across
the tree of life
- Authors: Vikram Singh and Vikram Singh
- Abstract summary: We study 4,738 protein interaction networks (PINs) belonging to 16 phyla to discover phyla-specific architectural features.
We report that orbit usage profiles (OUPs) of networks belonging to the three domains of life are contrastingly different.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The enormous diversity of life forms thriving in drastically different
environmental milieus involves a complex interplay among constituent proteins
interacting with each other. However, the organizational principles
characterizing the evolution of protein interaction networks (PINs) across the
tree of life are largely unknown. Here we study 4,738 PINs belonging to 16
phyla to discover phyla-specific architectural features and examine if there
are some evolutionary constraints imposed on the networks' topologies. We
utilized positional information of a network's nodes by normalizing the
frequencies of automorphism orbits appearing in graphlets of sizes 2-5. We
report that orbit usage profiles (OUPs) of networks belonging to the three
domains of life are contrastingly different not only at the domain level but
also at the scale of phyla. Integrating the information related to protein
families, domains, subcellular location, gene ontology, and pathways, our
results indicate that wiring patterns of PINs in different phyla are not
randomly generated rather they are shaped by evolutionary constraints imposed
on them. There exist subtle but substantial variations in the wiring patterns
of PINs that enable OUPs to differentiate among different superfamilies. A deep
neural network was trained on differentially expressed orbits resulting in a
prediction accuracy of 85%.
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