Proteomics and genomics projects have yielded a detailed inventory of proteins in a cell. However, little is known about how these proteins are spatially and temporally arranged within the cell. Such knowledge is essential to understanding how proteins contribute to the structure and function of a living cell. Just as words must be assembled into sentences, paragraphs, and chapters to make sense, vital cellular functions are performed by structured assemblies (or complexes) of proteins rather than individual molecules. Often, these complexes comprise tens or hundreds of proteins. This proposal describes a set of computational methods that will exploit and integrate several kinds of emerging experimental data to uncover the structure and dynamics of protein complexes, toward the ultimate goal of achieving a mechanistic understanding of the cell. In particular, we will characterize proteome organization on two levels through the following projects. (1) We will develop an efficient computational method to determine the structure of individual protein complexes by simultaneously fitting multiple components to cryo-electron microscopy maps. (2) We will develop advanced pattern mining methods to discover and localize unknown protein complexes in whole-cell cryo- electron tomograms - a prerequisite towards comprehensive visual proteomics. We will also develop methods to study the systems dynamics of protein interaction networks within realistic cellular environments. With these tools, we are poised to model the spatial and temporal organizations of proteome. We will freely provide software packages and source code for all methods to the scientific community.
(Public Health Relevance) Detailed knowledge concerning the spatial and temporal organization of the proteome is essential to understanding how proteins perform their functions in a cell. Proteins need to appear in exactly in the right places at exactly the right times in order to accomplish their roles. Any discrepancies may lead to diseases. In fact, many diseases are known to be caused by malfunctions in proteins or protein interactions. Our proposed methods will significantly contribute to knowledge in this area, so are highly relevant to public health.
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