Abstract

Biological protein-protein interactions differ from the more general class of physical interactions; in a biological interaction, both proteins must be in their proper states (e.g. covalently modified state, conformational state, cellular location state, etc.). Also in every biological interaction, one or both interacting molecules undergo a transition to a new state. This regulation of protein states through protein-protein interactions underlies many dynamic biological processes inside cells. Therefore, understanding biological interactions requires information on protein states. Toward this goal, DIP (the Database of Interacting Proteins) has been expanded to LiveDIP, which describes protein interactions by protein states and state transitions. This additional level of characterization permits a more complete picture of the protein-protein interaction networks and is crucial to an integrated understanding of genome-scale biology. The search tools provided by LiveDIP, Pathfinder, and Batch Search allow users to assemble biological pathways from all the protein-protein interactions collated from the scientific literature in LiveDIP. Tools have also been developed to integrate the protein-protein interaction networks of LiveDIP with large scale genomic data such as microarray data. An example of these tools applied to analyzing the pheromone response pathway in yeast suggests that the pathway functions in the context of a complex protein-protein interaction network. Seven of the eleven proteins involved in signal transduction are under negative or positive regulation of up to five other proteins through biological protein-protein interactions. During pheromone response, the mRNA expression levels of these signaling proteins exhibit different time course profiles. There is no simple correlation between changes in transcription levels and the signal intensity. This points to the importance of proteomic studies to understand how cells modulate and integrate signals. Integrating large scale, yeast two-hybrid data with mRNA expression data suggests biological interactions that may participate in pheromone response. These examples illustrate how LiveDIP provides data and tools for biological pathway discovery and pathway analysis.

Highlights

  • Biological protein-protein interactions differ from the more general class of physical interactions; in a biological interaction, both proteins must be in their proper states

  • A biological interaction regulates the function of the interacting proteins or transmits a signal from one protein to another and underlies all the dynamic biological processes in cells

  • Information on transitions between protein states is stored in the state transition table, which stores the keys for the initial state and the final state, and the resultant changes

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Summary

Introduction

Biological protein-protein interactions differ from the more general class of physical interactions; in a biological interaction, both proteins must be in their proper states (e.g. covalently modified state, conformational state, cellular location state, etc.). Tools have been developed to integrate the protein-protein interaction networks of LiveDIP with large scale genomic data such as microarray data An example of these tools applied to analyzing the pheromone response pathway in yeast suggests that the pathway functions in the context of a complex protein-protein interaction network. Integrating large scale, yeast two-hybrid data with mRNA expression data suggests biological interactions that may participate in pheromone response These examples illustrate how LiveDIP provides data and tools for biological pathway discovery and pathway analysis. Large scale and high throughput experimental techniques have been developed to address these questions by acquiring data on the whole genome, instead of just a few genes One such example, an integrated genomic and proteomic analysis of a systematically perturbed yeast galactose utilization pathway, suggested the importance of analyzing both mRNAs and proteins for understanding biological systems [1].

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