Functional annotation of proteins for signaling network inference in non-model species

Author:

Broeck Lisa Van den1ORCID,Bhosale Dinesh2,Song Kuncheng3,de Lima Cássio Fonseca4,Ashley Michael2,Zhu Tingting4ORCID,Zhu Shanshuo4,De Cotte Brigitte Van4,Neyt Pia4,Ortiz Anna5,Sikes Tiffany5,Aper Jonas6,Lootens Peter6,Locke Anna7,De Smet Ive4,Sozzani Rosangela1ORCID

Affiliation:

1. Department of Plant and Microbial Biology, North Carolina State University

2. Electrical and Computer Engineering Department, North Carolina State University

3. Bioinformatics Research Center, North Carolina State University

4. VIB Center for Plant Systems Biology

5. USDA-ARS Soybean & Nitrogen Fixation Research Unit

6. Plant Sciences Unit, Flanders Research Institute for Agriculture, Fisheries and Food (ILVO)

7. North Carolina State University

Abstract

Abstract Molecular biology aims to understand the molecular basis of cellular responses, unravel dynamic regulatory networks, and model complex biological systems. However, these studies remain challenging in non-model species as a result of poor functional annotation of regulatory proteins, like kinases or phosphatases. To overcome this limitation, we developed a multi-layer neural network that annotates proteins by determining functionality directly from the protein sequence. We annotated the kinases and phosphatases in the non-model species, Glycine max (soybean), achieving a prediction sensitivity of up to 97%. To demonstrate the applicability, we used our functional annotations in combination with Bayesian network principles to predict signaling cascades using time series phosphoproteomics. We shed light on phosphorylation cascades in soybean seedlings upon cold treatment and identified Glyma.10G173000 (TOI5) and Glyma.19G007300 (TOT3) as predicted key temperature response regulators in soybean. Importantly, the network inference does not rely upon known upstream kinases, kinase motifs, or protein interaction data, enabling de novo identification of kinase-substrate interactions. In addition to high accuracy and strong generalization, we showed that our functional prediction neural network is scalable to other model and non-model species, including Oryza sativa (rice), Zea mays(maize), Sorghum bicolor (sorghum), and Triticum aestivum (wheat). Taking together, we demonstrated a data-driven systems biology approach for non-model species leveraging our predicted upstream kinases and phosphatases.

Publisher

Research Square Platform LLC

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