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Ancestral Reconstruction of Protein Interaction Networks

Benjamin J. Liebeskind, Richard W. Aldrich, Edward M. Marcotte
doi: https://doi.org/10.1101/408773
Benjamin J. Liebeskind
1Center for Systems and Synthetic Biology, Department of Molecular Biosciences
2Department of Neuroscience, University of Texas at Austin, Austin, Texas, 78712
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Richard W. Aldrich
2Department of Neuroscience, University of Texas at Austin, Austin, Texas, 78712
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Edward M. Marcotte
1Center for Systems and Synthetic Biology, Department of Molecular Biosciences
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Abstract

The molecular and cellular basis of novelty is a major open question in evolutionary biology. Until very recently, the vast majority of cellular phenomena were so difficult to sample that cross-species studies of biochemistry were rare and comparative analysis at the level of biochemical systems was almost impossible. Recent advances in systems biology are changing what is possible, however, and comparative phylogenetic methods that can handle this new data are wanted. Here, we introduce the term “phylogenetic latent variable models” (PLVMs, pronounced “plums”) for a class of models that has recently been used to infer the evolution of cellular states from systems-level molecular data, and develop a new parameterization and fitting strategy that is useful for comparative inference of biochemical networks. We deploy this new framework to infer the ancestral states and evolutionary dynamics of protein-interaction networks by analyzing >16,000 predominantly metazoan co-fractionation and affinity-purification mass spectrometry experiments. Based on these data, we estimate ancestral interactions across unikonts, broadly recovering protein complexes involved in translation, transcription, proteostasis, transport, and membrane trafficking. Using these results, we predict an ancient core of the Commander complex made up of CCDC22, CCDC93, C16orf62, and DSCR3, with more recent additions of COMMD-containing proteins in tetrapods. We also use simulations to develop model fitting strategies and discuss future model developments.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted September 09, 2018.
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Ancestral Reconstruction of Protein Interaction Networks
Benjamin J. Liebeskind, Richard W. Aldrich, Edward M. Marcotte
bioRxiv 408773; doi: https://doi.org/10.1101/408773
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Ancestral Reconstruction of Protein Interaction Networks
Benjamin J. Liebeskind, Richard W. Aldrich, Edward M. Marcotte
bioRxiv 408773; doi: https://doi.org/10.1101/408773

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