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arxiv 1512.09347 v3 pith:BYGNJCJ4 submitted 2015-12-31 q-bio.QM

De novo visual proteomics in single cells through pattern mining

classification q-bio.QM
keywords novopatternproteomicstomogramsvisualanalysiscellscellular
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Cryo-electron tomography enables 3D visualization of cells in a near native state at molecular resolution. The produced cellular tomograms contain detailed information about all macromolecular complexes, their structures, their abundances and their specific spatial locations in the cell. However, extracting this information is very challenging and current methods usually rely on templates of known structure. Here, we formulate a template-free visual proteomics analysis as a de novo pattern mining problem and propose a new framework called "Multi Pattern Pursuit" for supporting proteome-scale de novo discovery of macromolecular complexes in cellular tomograms without using templates of known structures. Our tests on simulated and experimental tomograms show that our method is a promising tool for template-free visual proteomics analysis.

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