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Dive into the research topics where Fana Gebreab is active.

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Featured researches published by Fana Gebreab.


Science | 2008

High-quality binary protein interaction map of the yeast interactome network

Haiyuan Yu; Pascal Braun; Muhammed A. Yildirim; Irma Lemmens; Kavitha Venkatesan; Julie M. Sahalie; Tomoko Hirozane-Kishikawa; Fana Gebreab; Nancy Li; Nicolas Simonis; Tong Hao; Jean François Rual; Amélie Dricot; Alexei Vazquez; Ryan R. Murray; Christophe Simon; Leah Tardivo; Stanley Tam; Nenad Svrzikapa; Changyu Fan; Anne-Sophie De Smet; Adriana Motyl; Michael E. Hudson; Juyong Park; Xiaofeng Xin; Michael E. Cusick; Troy Moore; Charlie Boone; Michael Snyder; Frederick P. Roth

Current yeast interactome network maps contain several hundred molecular complexes with limited and somewhat controversial representation of direct binary interactions. We carried out a comparative quality assessment of current yeast interactome data sets, demonstrating that high-throughput yeast two-hybrid (Y2H) screening provides high-quality binary interaction information. Because a large fraction of the yeast binary interactome remains to be mapped, we developed an empirically controlled mapping framework to produce a “second-generation” high-quality, high-throughput Y2H data set covering ∼20% of all yeast binary interactions. Both Y2H and affinity purification followed by mass spectrometry (AP/MS) data are of equally high quality but of a fundamentally different and complementary nature, resulting in networks with different topological and biological properties. Compared to co-complex interactome models, this binary map is enriched for transient signaling interactions and intercomplex connections with a highly significant clustering between essential proteins. Rather than correlating with essentiality, protein connectivity correlates with genetic pleiotropy.


Science | 2011

Independently Evolved Virulence Effectors Converge onto Hubs in a Plant Immune System Network

M. Shahid Mukhtar; Anne-Ruxandra Carvunis; Matija Dreze; Petra Epple; Jens Steinbrenner; Jonathan D. Moore; Murat Tasan; Mary Galli; Tong Hao; Marc T. Nishimura; Samuel J. Pevzner; Susan E. Donovan; Lila Ghamsari; Balaji Santhanam; Viviana Romero; Matthew M. Poulin; Fana Gebreab; Bryan J. Gutierrez; Stanley Tam; Dario Monachello; Mike Boxem; Christopher J. Harbort; Nathan A. McDonald; Lantian Gai; Huaming Chen; Yijian He; Jean Vandenhaute; Frederick P. Roth; David E. Hill; Joseph R. Ecker

An analysis of protein-protein interactions in Arabidopsis identifies the plant interactome. Plants generate effective responses to infection by recognizing both conserved and variable pathogen-encoded molecules. Pathogens deploy virulence effector proteins into host cells, where they interact physically with host proteins to modulate defense. We generated an interaction network of plant-pathogen effectors from two pathogens spanning the eukaryote-eubacteria divergence, three classes of Arabidopsis immune system proteins, and ~8000 other Arabidopsis proteins. We noted convergence of effectors onto highly interconnected host proteins and indirect, rather than direct, connections between effectors and plant immune receptors. We demonstrated plant immune system functions for 15 of 17 tested host proteins that interact with effectors from both pathogens. Thus, pathogens from different kingdoms deploy independently evolved virulence proteins that interact with a limited set of highly connected cellular hubs to facilitate their diverse life-cycle strategies.


Cell | 2015

The BioPlex Network: A Systematic Exploration of the Human Interactome

Edward L. Huttlin; Lily Ting; Raphael J. Bruckner; Fana Gebreab; Melanie P. Gygi; John Szpyt; Stanley Tam; Gabriela Zarraga; Greg Colby; Kurt Baltier; Rui Dong; Virginia Guarani; Laura Pontano Vaites; Alban Ordureau; Ramin Rad; Brian K. Erickson; Martin Wühr; Joel M. Chick; Bo Zhai; Deepak Kolippakkam; Julian Mintseris; Robert A. Obar; Tim Harris; Spyros Artavanis-Tsakonas; Mathew E. Sowa; Pietro De Camilli; Joao A. Paulo; J. Wade Harper; Steven P. Gygi

Protein interactions form a network whose structure drives cellular function and whose organization informs biological inquiry. Using high-throughput affinity-purification mass spectrometry, we identify interacting partners for 2,594 human proteins in HEK293T cells. The resulting network (BioPlex) contains 23,744 interactions among 7,668 proteins with 86% previously undocumented. BioPlex accurately depicts known complexes, attaining 80%-100% coverage for most CORUM complexes. The network readily subdivides into communities that correspond to complexes or clusters of functionally related proteins. More generally, network architecture reflects cellular localization, biological process, and molecular function, enabling functional characterization of thousands of proteins. Network structure also reveals associations among thousands of protein domains, suggesting a basis for examining structurally related proteins. Finally, BioPlex, in combination with other approaches, can be used to reveal interactions of biological or clinical significance. For example, mutations in the membrane protein VAPB implicated in familial amyotrophic lateral sclerosis perturb a defined community of interactors.


Nature Methods | 2011

Next-generation sequencing to generate interactome datasets.

Haiyuan Yu; Leah Tardivo; Stanley Tam; Evan Weiner; Fana Gebreab; Changyu Fan; Nenad Svrzikapa; Tomoko Hirozane-Kishikawa; Edward A. Rietman; Xinping Yang; Julie M. Sahalie; Kourosh Salehi-Ashtiani; Tong Hao; Michael E. Cusick; David E. Hill; Frederick P. Roth; Pascal Braun; Marc Vidal

Next-generation sequencing has not been applied to protein-protein interactome network mapping so far because the association between the members of each interacting pair would not be maintained in en masse sequencing. We describe a massively parallel interactome-mapping pipeline, Stitch-seq, that combines PCR stitching with next-generation sequencing and used it to generate a new human interactome dataset. Stitch-seq is applicable to various interaction assays and should help expand interactome network mapping.


Nature | 2017

Architecture of the human interactome defines protein communities and disease networks

Edward L. Huttlin; Raphael J. Bruckner; Joao A. Paulo; Joe R. Cannon; Lily Ting; Kurt Baltier; Greg Colby; Fana Gebreab; Melanie P. Gygi; Hannah Parzen; John Szpyt; Stanley Tam; Gabriela Zarraga; Laura Pontano-Vaites; Sharan Swarup; Anne E. White; Devin K. Schweppe; Ramin Rad; Brian K. Erickson; Robert A. Obar; K. G. Guruharsha; Kejie Li; Spyros Artavanis-Tsakonas; Steven P. Gygi; J. Wade Harper

The physiology of a cell can be viewed as the product of thousands of proteins acting in concert to shape the cellular response. Coordination is achieved in part through networks of protein–protein interactions that assemble functionally related proteins into complexes, organelles, and signal transduction pathways. Understanding the architecture of the human proteome has the potential to inform cellular, structural, and evolutionary mechanisms and is critical to elucidating how genome variation contributes to disease. Here we present BioPlex 2.0 (Biophysical Interactions of ORFeome-derived complexes), which uses robust affinity purification–mass spectrometry methodology to elucidate protein interaction networks and co-complexes nucleated by more than 25% of protein-coding genes from the human genome, and constitutes, to our knowledge, the largest such network so far. With more than 56,000 candidate interactions, BioPlex 2.0 contains more than 29,000 previously unknown co-associations and provides functional insights into hundreds of poorly characterized proteins while enhancing network-based analyses of domain associations, subcellular localization, and co-complex formation. Unsupervised Markov clustering of interacting proteins identified more than 1,300 protein communities representing diverse cellular activities. Genes essential for cell fitness are enriched within 53 communities representing central cellular functions. Moreover, we identified 442 communities associated with more than 2,000 disease annotations, placing numerous candidate disease genes into a cellular framework. BioPlex 2.0 exceeds previous experimentally derived interaction networks in depth and breadth, and will be a valuable resource for exploring the biology of incompletely characterized proteins and for elucidating larger-scale patterns of proteome organization.


Molecular Systems Biology | 2016

An inter-species protein-protein interaction network across vast evolutionary distance.

Quan Zhong; Samuel J. Pevzner; Tong Hao; Yang Wang; Roberto Mosca; Jörg Menche; Mikko Taipale; Murat Tasan; Changyu Fan; Xinping Yang; Patrick J. Haley; Ryan R. Murray; Flora Mer; Fana Gebreab; Stanley Tam; Andrew MacWilliams; Amélie Dricot; Patrick Reichert; Balaji Santhanam; Lila Ghamsari; Michael A. Calderwood; Thomas Rolland; Benoit Charloteaux; Susan Lindquist; Albert-László Barabási; David E. Hill; Patrick Aloy; Michael E. Cusick; Yu Xia; Frederick P. Roth

In cellular systems, biophysical interactions between macromolecules underlie a complex web of functional interactions. How biophysical and functional networks are coordinated, whether all biophysical interactions correspond to functional interactions, and how such biophysical‐versus‐functional network coordination is shaped by evolutionary forces are all largely unanswered questions. Here, we investigate these questions using an “inter‐interactome” approach. We systematically probed the yeast and human proteomes for interactions between proteins from these two species and functionally characterized the resulting inter‐interactome network. After a billion years of evolutionary divergence, the yeast and human proteomes are still capable of forming a biophysical network with properties that resemble those of intra‐species networks. Although substantially reduced relative to intra‐species networks, the levels of functional overlap in the yeast–human inter‐interactome network uncover significant remnants of co‐functionality widely preserved in the two proteomes beyond human–yeast homologs. Our data support evolutionary selection against biophysical interactions between proteins with little or no co‐functionality. Such non‐functional interactions, however, represent a reservoir from which nascent functional interactions may arise.


Nature Methods | 2009

An empirical framework for binary interactome mapping.

Kavitha Venkatesan; Jean François Rual; Alexei Vazquez; Ulrich Stelzl; Irma Lemmens; Tomoko Hirozane-Kishikawa; Tong Hao; Martina Zenkner; Xiaofeng Xin; K. I. Goh; Muhammed A. Yildirim; Nicolas Simonis; Kathrin Heinzmann; Fana Gebreab; Julie M. Sahalie; Sebiha Cevik; Christophe Simon; Anne Sophie de Smet; Elizabeth Dann; Alex Smolyar; Arunachalam Vinayagam; Haiyuan Yu; David Szeto; Heather Borick; Amélie Dricot; Niels Klitgord; Ryan R. Murray; Chenwei Lin; Maciej Lalowski; Jan Timm


Cell | 2014

A proteome-scale map of the human interactome network

Thomas Rolland; Murat Tasan; Benoit Charloteaux; Samuel J. Pevzner; Quan Zhong; Nidhi Sahni; Song Yi; Irma Lemmens; Celia Fontanillo; Roberto Mosca; Atanas Kamburov; Susan Dina Ghiassian; Xinping Yang; Lila Ghamsari; Dawit Balcha; Bridget E. Begg; Pascal Braun; Marc Brehme; Martin P. Broly; Anne-Ruxandra Carvunis; Dan Convery-Zupan; Roser Corominas; Jasmin Coulombe-Huntington; Elizabeth Dann; Matija Dreze; Amélie Dricot; Changyu Fan; Eric A. Franzosa; Fana Gebreab; Bryan J. Gutierrez


Nature Methods | 2009

Empirically controlled mapping of the Caenorhabditis elegans protein-protein interactome network.

Nicolas Simonis; Jean François Rual; Anne-Ruxandra Carvunis; Murat Tasan; Irma Lemmens; Tomoko Hirozane-Kishikawa; Tong Hao; Julie M. Sahalie; Kavitha Venkatesan; Fana Gebreab; Sebiha Cevik; Niels Klitgord; Changyu Fan; Pascal Braun; Ning Li; Nono Ayivi-Guedehoussou; Elizabeth Dann; Nicolas Bertin; David Szeto; Amélie Dricot; Muhammed A. Yildirim; Chenwei Lin; Anne Sophie de Smet; Huey Ling Kao; Christophe Simon; Alex Smolyar; Jin Sook Ahn; Muneesh Tewari; Mike Boxem; Haiyuan Yu


Nature Publishing Group | 2016

An inter-species protein-protein interaction network across vast evolutionary distance

Quan Zhong; Samuel J. Pevzner; Tong Hao; Yang Wang; Roberto Mosca; Jörg Menche; Mikko Taipale; Murat Tasan; Changyu Fan; Xinping Yang; Patrick J. Haley; Ryan R. Murray; Flora Mer; Fana Gebreab; Stanley Tam; Andrew MacWilliams; Amélie Dricot; Patrick Reichert; Balaji Santhanam; Lila Ghamsari; Michael A. Calderwood; Thomas Rolland; Benoit Charloteaux; Susan Lindquist; Albert-László Barabási; David E. Hill; Patrick Aloy; Michael E. Cusick; Yu Xia; Frederick P. Roth

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