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1.
Cell ; 159(5): 1212-1226, 2014 11 20.
Article in English | MEDLINE | ID: mdl-25416956

ABSTRACT

Just as reference genome sequences revolutionized human genetics, reference maps of interactome networks will be critical to fully understand genotype-phenotype relationships. Here, we describe a systematic map of ?14,000 high-quality human binary protein-protein interactions. At equal quality, this map is ?30% larger than what is available from small-scale studies published in the literature in the last few decades. While currently available information is highly biased and only covers a relatively small portion of the proteome, our systematic map appears strikingly more homogeneous, revealing a "broader" human interactome network than currently appreciated. The map also uncovers significant interconnectivity between known and candidate cancer gene products, providing unbiased evidence for an expanded functional cancer landscape, while demonstrating how high-quality interactome models will help "connect the dots" of the genomic revolution.


Subject(s)
Protein Interaction Maps , Proteome/metabolism , Animals , Databases, Protein , Genome-Wide Association Study , Humans , Mice , Neoplasms/metabolism
2.
Nat Methods ; 12(2): 154-9, 2015 Feb.
Article in English | MEDLINE | ID: mdl-25532137

ABSTRACT

Genome-wide association (GWA) studies have linked thousands of loci to human diseases, but the causal genes and variants at these loci generally remain unknown. Although investigators typically focus on genes closest to the associated polymorphisms, the causal gene is often more distal. Reliance on published work to prioritize candidates is biased toward well-characterized genes. We describe a 'prix fixe' strategy and software that uses genome-scale shared-function networks to identify sets of mutually functionally related genes spanning multiple GWA loci. Using associations from ∼100 GWA studies covering ten cancer types, our approach outperformed the common alternative strategy in ranking known cancer genes. As more GWA loci are discovered, the strategy will have increased power to elucidate the causes of human disease.


Subject(s)
Computational Biology/methods , Genes, Neoplasm , Genome-Wide Association Study/methods , Neoplasms/genetics , Polymorphism, Single Nucleotide , Quantitative Trait Loci , Animals , Gene Ontology , Genetic Predisposition to Disease , Humans , Software
3.
Mol Syst Biol ; 13(12): 957, 2017 12 21.
Article in English | MEDLINE | ID: mdl-29269382

ABSTRACT

Although we now routinely sequence human genomes, we can confidently identify only a fraction of the sequence variants that have a functional impact. Here, we developed a deep mutational scanning framework that produces exhaustive maps for human missense variants by combining random codon mutagenesis and multiplexed functional variation assays with computational imputation and refinement. We applied this framework to four proteins corresponding to six human genes: UBE2I (encoding SUMO E2 conjugase), SUMO1 (small ubiquitin-like modifier), TPK1 (thiamin pyrophosphokinase), and CALM1/2/3 (three genes encoding the protein calmodulin). The resulting maps recapitulate known protein features and confidently identify pathogenic variation. Assays potentially amenable to deep mutational scanning are already available for 57% of human disease genes, suggesting that DMS could ultimately map functional variation for all human disease genes.


Subject(s)
DNA Mutational Analysis/methods , Mutation, Missense/genetics , Calmodulin/genetics , Disease/genetics , Humans , Machine Learning , Phenotype , Phylogeny , Reproducibility of Results , SUMO-1 Protein/genetics , Ubiquitin-Conjugating Enzymes/genetics , Ubiquitin-Conjugating Enzymes/metabolism
4.
Nature ; 487(7408): 491-5, 2012 Jul 26.
Article in English | MEDLINE | ID: mdl-22810586

ABSTRACT

Genotypic differences greatly influence susceptibility and resistance to disease. Understanding genotype-phenotype relationships requires that phenotypes be viewed as manifestations of network properties, rather than simply as the result of individual genomic variations. Genome sequencing efforts have identified numerous germline mutations, and large numbers of somatic genomic alterations, associated with a predisposition to cancer. However, it remains difficult to distinguish background, or 'passenger', cancer mutations from causal, or 'driver', mutations in these data sets. Human viruses intrinsically depend on their host cell during the course of infection and can elicit pathological phenotypes similar to those arising from mutations. Here we test the hypothesis that genomic variations and tumour viruses may cause cancer through related mechanisms, by systematically examining host interactome and transcriptome network perturbations caused by DNA tumour virus proteins. The resulting integrated viral perturbation data reflects rewiring of the host cell networks, and highlights pathways, such as Notch signalling and apoptosis, that go awry in cancer. We show that systematic analyses of host targets of viral proteins can identify cancer genes with a success rate on a par with their identification through functional genomics and large-scale cataloguing of tumour mutations. Together, these complementary approaches increase the specificity of cancer gene identification. Combining systems-level studies of pathogen-encoded gene products with genomic approaches will facilitate the prioritization of cancer-causing driver genes to advance the understanding of the genetic basis of human cancer.


Subject(s)
Genes, Neoplasm/genetics , Genome, Human/genetics , Host-Pathogen Interactions , Neoplasms/genetics , Neoplasms/metabolism , Oncogenic Viruses/pathogenicity , Viral Proteins/metabolism , Adenoviridae/genetics , Adenoviridae/metabolism , Adenoviridae/pathogenicity , Gene Expression Profiling , Gene Expression Regulation, Neoplastic , Herpesvirus 4, Human/genetics , Herpesvirus 4, Human/metabolism , Herpesvirus 4, Human/pathogenicity , Host-Pathogen Interactions/genetics , Humans , Neoplasms/pathology , Oncogenic Viruses/genetics , Oncogenic Viruses/metabolism , Open Reading Frames/genetics , Papillomaviridae/genetics , Papillomaviridae/metabolism , Papillomaviridae/pathogenicity , Polyomavirus/genetics , Polyomavirus/metabolism , Polyomavirus/pathogenicity , Receptors, Notch/metabolism , Signal Transduction , Two-Hybrid System Techniques , Viral Proteins/genetics
5.
Development ; 141(1): 224-35, 2014 Jan.
Article in English | MEDLINE | ID: mdl-24346703

ABSTRACT

Comprehensive functional annotation of vertebrate genomes is fundamental to biological discovery. Reverse genetic screening has been highly useful for determination of gene function, but is untenable as a systematic approach in vertebrate model organisms given the number of surveyable genes and observable phenotypes. Unbiased prediction of gene-phenotype relationships offers a strategy to direct finite experimental resources towards likely phenotypes, thus maximizing de novo discovery of gene functions. Here we prioritized genes for phenotypic assay in zebrafish through machine learning, predicting the effect of loss of function of each of 15,106 zebrafish genes on 338 distinct embryonic anatomical processes. Focusing on cardiovascular phenotypes, the learning procedure predicted known knockdown and mutant phenotypes with high precision. In proof-of-concept studies we validated 16 high-confidence cardiac predictions using targeted morpholino knockdown and initial blinded phenotyping in embryonic zebrafish, confirming a significant enrichment for cardiac phenotypes as compared with morpholino controls. Subsequent detailed analyses of cardiac function confirmed these results, identifying novel physiological defects for 11 tested genes. Among these we identified tmem88a, a recently described attenuator of Wnt signaling, as a discrete regulator of the patterning of intercellular coupling in the zebrafish cardiac epithelium. Thus, we show that systematic prioritization in zebrafish can accelerate the pace of developmental gene function discovery.


Subject(s)
Gene Expression Regulation, Developmental , Heart/embryology , Membrane Proteins/metabolism , Myocardium/cytology , Zebrafish Proteins/metabolism , Zebrafish/embryology , Zebrafish/genetics , Animals , Embryo, Nonmammalian/metabolism , Gene Knockdown Techniques , Membrane Proteins/genetics , Morpholinos/genetics , Phenotype , Wnt Signaling Pathway/genetics , Zebrafish Proteins/genetics
6.
Mol Syst Biol ; 12(4): 865, 2016 Apr 22.
Article in English | MEDLINE | ID: mdl-27107014

ABSTRACT

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.


Subject(s)
Fungal Proteins/metabolism , Protein Interaction Mapping/methods , Proteome/metabolism , Computational Biology/methods , Databases, Protein , Evolution, Molecular , Humans
7.
PLoS Genet ; 7(4): e1001366, 2011 Apr.
Article in English | MEDLINE | ID: mdl-21533221

ABSTRACT

In higher eukaryotes, messenger RNAs (mRNAs) are exported from the nucleus to the cytoplasm via factors deposited near the 5' end of the transcript during splicing. The signal sequence coding region (SSCR) can support an alternative mRNA export (ALREX) pathway that does not require splicing. However, most SSCR-containing genes also have introns, so the interplay between these export mechanisms remains unclear. Here we support a model in which the furthest upstream element in a given transcript, be it an intron or an ALREX-promoting SSCR, dictates the mRNA export pathway used. We also experimentally demonstrate that nuclear-encoded mitochondrial genes can use the ALREX pathway. Thus, ALREX can also be supported by nucleotide signals within mitochondrial-targeting sequence coding regions (MSCRs). Finally, we identified and experimentally verified novel motifs associated with the ALREX pathway that are shared by both SSCRs and MSCRs. Our results show strong correlation between 5' untranslated region (5'UTR) intron presence/absence and sequence features at the beginning of the coding region. They also suggest that genes encoding secretory and mitochondrial proteins share a common regulatory mechanism at the level of mRNA export.


Subject(s)
5' Untranslated Regions/genetics , Alternative Splicing , Cell Nucleus/metabolism , RNA Transport , RNA, Messenger/metabolism , Active Transport, Cell Nucleus , Adenine/metabolism , Cytoplasm , Endoplasmic Reticulum/genetics , Gene Expression Regulation , Genes, Mitochondrial , Humans , Introns , Models, Genetic , Open Reading Frames , Protein Sorting Signals , RNA Splicing
8.
Nat Methods ; 6(1): 91-7, 2009 Jan.
Article in English | MEDLINE | ID: mdl-19060903

ABSTRACT

Information on protein-protein interactions is of central importance for many areas of biomedical research. At present no method exists to systematically and experimentally assess the quality of individual interactions reported in interaction mapping experiments. To provide a standardized confidence-scoring method that can be applied to tens of thousands of protein interactions, we have developed an interaction tool kit consisting of four complementary, high-throughput protein interaction assays. We benchmarked these assays against positive and random reference sets consisting of well documented pairs of interacting human proteins and randomly chosen protein pairs, respectively. A logistic regression model was trained using the data from these reference sets to combine the assay outputs and calculate the probability that any newly identified interaction pair is a true biophysical interaction once it has been tested in the tool kit. This general approach will allow a systematic and empirical assignment of confidence scores to all individual protein-protein interactions in interactome networks.


Subject(s)
Protein Interaction Mapping/methods , Proteins/analysis , Proteins/metabolism , Animals , Humans , Protein Binding , Sensitivity and Specificity
9.
Nat Methods ; 6(1): 47-54, 2009 Jan.
Article in English | MEDLINE | ID: mdl-19123269

ABSTRACT

To provide accurate biological hypotheses and elucidate global properties of cellular networks, systematic identification of protein-protein interactions must meet high quality standards.We present an expanded C. elegans protein-protein interaction network, or 'interactome' map, derived from testing a matrix of approximately 10,000 x approximately 10,000 proteins using a highly specific, high-throughput yeast two-hybrid system. Through a new empirical quality control framework, we show that the resulting data set (Worm Interactome 2007, or WI-2007) was similar in quality to low-throughput data curated from the literature. We filtered previous interaction data sets and integrated them with WI-2007 to generate a high-confidence consolidated map (Worm Interactome version 8, or WI8). This work allowed us to estimate the size of the worm interactome at approximately 116,000 interactions. Comparison with other types of functional genomic data shows the complementarity of distinct experimental approaches in predicting different functional relationships between genes or proteins


Subject(s)
Caenorhabditis elegans Proteins/analysis , Caenorhabditis elegans Proteins/metabolism , Caenorhabditis elegans/metabolism , Protein Interaction Mapping/methods , Animals , Caenorhabditis elegans/genetics , Caenorhabditis elegans Proteins/genetics , Cell Line , Humans , Protein Binding , Software
10.
Mol Syst Biol ; 7: 544, 2011 Nov 08.
Article in English | MEDLINE | ID: mdl-22068327

ABSTRACT

Drug synergy allows a therapeutic effect to be achieved with lower doses of component drugs. Drug synergy can result when drugs target the products of genes that act in parallel pathways ('specific synergy'). Such cases of drug synergy should tend to correspond to synergistic genetic interaction between the corresponding target genes. Alternatively, 'promiscuous synergy' can arise when one drug non-specifically increases the effects of many other drugs, for example, by increased bioavailability. To assess the relative abundance of these drug synergy types, we examined 200 pairs of antifungal drugs in S. cerevisiae. We found 38 antifungal synergies, 37 of which were novel. While 14 cases of drug synergy corresponded to genetic interaction, 92% of the synergies we discovered involved only six frequently synergistic drugs. Although promiscuity of four drugs can be explained under the bioavailability model, the promiscuity of Tacrolimus and Pentamidine was completely unexpected. While many drug synergies correspond to genetic interactions, the majority of drug synergies appear to result from non-specific promiscuous synergy.


Subject(s)
Antifungal Agents/pharmacology , Drug Synergism , Saccharomyces cerevisiae/drug effects , Antifungal Agents/pharmacokinetics , Biological Availability , Drug Interactions , Pentamidine/pharmacokinetics , Pentamidine/pharmacology , Saccharomyces cerevisiae/genetics , Saccharomyces cerevisiae/metabolism , Tacrolimus/pharmacokinetics , Tacrolimus/pharmacology
11.
J Clin Invest ; 118(10): 3503-12, 2008 Oct.
Article in English | MEDLINE | ID: mdl-18769631

ABSTRACT

Emerging metabolomic tools have created the opportunity to establish metabolic signatures of myocardial injury. We applied a mass spectrometry-based metabolite profiling platform to 36 patients undergoing alcohol septal ablation treatment for hypertrophic obstructive cardiomyopathy, a human model of planned myocardial infarction (PMI). Serial blood samples were obtained before and at various intervals after PMI, with patients undergoing elective diagnostic coronary angiography and patients with spontaneous myocardial infarction (SMI) serving as negative and positive controls, respectively. We identified changes in circulating levels of metabolites participating in pyrimidine metabolism, the tricarboxylic acid cycle and its upstream contributors, and the pentose phosphate pathway. Alterations in levels of multiple metabolites were detected as early as 10 minutes after PMI in an initial derivation group and were validated in a second, independent group of PMI patients. A PMI-derived metabolic signature consisting of aconitic acid, hypoxanthine, trimethylamine N-oxide, and threonine differentiated patients with SMI from those undergoing diagnostic coronary angiography with high accuracy, and coronary sinus sampling distinguished cardiac-derived from peripheral metabolic changes. Our results identify a role for metabolic profiling in the early detection of myocardial injury and suggest that similar approaches may be used for detection or prediction of other disease states.


Subject(s)
Biomarkers/blood , Heart Injuries/blood , Heart Injuries/diagnosis , Myocardial Infarction/blood , Myocardial Infarction/metabolism , Aged , Animals , Cells, Cultured , Coronary Sinus/metabolism , Female , Heart Injuries/metabolism , Humans , Isotopes , Kinetics , Male , Middle Aged , Myocardial Infarction/diagnosis , Myocytes, Cardiac/metabolism , Rats , Reference Standards , Reproducibility of Results , Time Factors
12.
Bioinformatics ; 26(14): 1806-7, 2010 Jul 15.
Article in English | MEDLINE | ID: mdl-20495000

ABSTRACT

SUMMARY: Computational gene function prediction can serve to focus experimental resources on high-priority experimental tasks. FuncBase is a web resource for viewing quantitative machine learning-based gene function annotations. Quantitative annotations of genes, including fungal and mammalian genes, with Gene Ontology terms are accompanied by a community feedback system. Evidence underlying function annotations is shown. For example, a custom Cytoscape viewer shows functional linkage graphs relevant to the gene or function of interest. FuncBase provides links to external resources, and may be accessed directly or via links from species-specific databases. AVAILABILITY: FuncBase as well as all underlying data and annotations are freely available via http://func.med.harvard.edu/


Subject(s)
Computational Biology/methods , Genes/physiology , Software , Databases, Factual , Internet , Vocabulary, Controlled
13.
Bioinformatics ; 25(22): 3043-4, 2009 Nov 15.
Article in English | MEDLINE | ID: mdl-19717575

ABSTRACT

UNLABELLED: FuncAssociate is a web application that discovers properties enriched in lists of genes or proteins that emerge from large-scale experimentation. Here we describe an updated application with a new interface and several new features. For example, enrichment analysis can now be performed within multiple gene- and protein-naming systems. This feature avoids potentially serious translation artifacts to which other enrichment analysis strategies are subject. AVAILABILITY: The FuncAssociate web application is freely available to all users at http://llama.med.harvard.edu/funcassociate.


Subject(s)
Computational Biology/methods , Software , Databases, Factual , Proteins/chemistry , User-Computer Interface
14.
Nat Biotechnol ; 25(6): 663-8, 2007 Jun.
Article in English | MEDLINE | ID: mdl-17486083

ABSTRACT

Differential regulation of gene expression is essential for cell fate specification in metazoans. Characterizing the transcriptional activity of gene promoters, in time and in space, is therefore a critical step toward understanding complex biological systems. Here we present an in vivo spatiotemporal analysis for approximately 900 predicted C. elegans promoters (approximately 5% of the predicted protein-coding genes), each driving the expression of green fluorescent protein (GFP). Using a flow-cytometer adapted for nematode profiling, we generated 'chronograms', two-dimensional representations of fluorescence intensity along the body axis and throughout development from early larvae to adults. Automated comparison and clustering of the obtained in vivo expression patterns show that genes coexpressed in space and time tend to belong to common functional categories. Moreover, integration of this data set with C. elegans protein-protein interactome data sets enables prediction of anatomical and temporal interaction territories between protein partners.


Subject(s)
Aging/metabolism , Caenorhabditis elegans Proteins/physiology , Caenorhabditis elegans/metabolism , Chromosome Mapping/methods , Gene Expression Profiling/methods , Promoter Regions, Genetic/genetics , Proteome/metabolism , Animals , Caenorhabditis elegans/growth & development , Gene Expression Regulation, Developmental/physiology , Microscopy, Fluorescence , Proteome/genetics , Tissue Distribution
16.
Genome Biol ; 15(12): 534, 2014 Dec 03.
Article in English | MEDLINE | ID: mdl-25633252

ABSTRACT

BACKGROUND: Cardiovascular disease (CVD) is the leading cause of death in the developed world. Human genetic studies, including genome-wide sequencing and SNP-array approaches, promise to reveal disease genes and mechanisms representing new therapeutic targets. In practice, however, identification of the actual genes contributing to disease pathogenesis has lagged behind identification of associated loci, thus limiting the clinical benefits. RESULTS: To aid in localizing causal genes, we develop a machine learning approach, Objective Prioritization for Enhanced Novelty (OPEN), which quantitatively prioritizes gene-disease associations based on a diverse group of genomic features. This approach uses only unbiased predictive features and thus is not hampered by a preference towards previously well-characterized genes. We demonstrate success in identifying genetic determinants for CVD-related traits, including cholesterol levels, blood pressure, and conduction system and cardiomyopathy phenotypes. Using OPEN, we prioritize genes, including FLNC, for association with increased left ventricular diameter, which is a defining feature of a prevalent cardiovascular disorder, dilated cardiomyopathy or DCM. Using a zebrafish model, we experimentally validate FLNC and identify a novel FLNC splice-site mutation in a patient with severe DCM. CONCLUSION: Our approach stands to assist interpretation of large-scale genetic studies without compromising their fundamentally unbiased nature.


Subject(s)
Artificial Intelligence , Filamins/genetics , Genomics/methods , Hypertrophy, Left Ventricular/genetics , Hypertrophy, Left Ventricular/pathology , Algorithms , Animals , Cardiovascular Diseases/genetics , Cardiovascular Diseases/pathology , Disease Models, Animal , Genetic Predisposition to Disease , Genome-Wide Association Study , Humans , Mice , Molecular Sequence Data , Mutation , Zebrafish
17.
Chem Biol ; 21(4): 541-551, 2014 Apr 24.
Article in English | MEDLINE | ID: mdl-24704506

ABSTRACT

One drug may suppress the effects of another. Although knowledge of drug suppression is vital to avoid efficacy-reducing drug interactions or discover countermeasures for chemical toxins, drug-drug suppression relationships have not been systematically mapped. Here, we analyze the growth response of Saccharomyces cerevisiae to anti-fungal compound ("drug") pairs. Among 440 ordered drug pairs, we identified 94 suppressive drug interactions. Using only pairs not selected on the basis of their suppression behavior, we provide an estimate of the prevalence of suppressive interactions between anti-fungal compounds as 17%. Analysis of the drug suppression network suggested that Bromopyruvate is a frequently suppressive drug and Staurosporine is a frequently suppressed drug. We investigated potential explanations for suppressive drug interactions, including chemogenomic analysis, coaggregation, and pH effects, allowing us to explain the interaction tendencies of Bromopyruvate.


Subject(s)
Antifungal Agents/pharmacology , Pyruvates/pharmacology , Saccharomyces cerevisiae/drug effects , Saccharomyces cerevisiae/growth & development , Biological Assay , Drug Interactions , Hydrogen-Ion Concentration , Microbial Sensitivity Tests , Saccharomyces cerevisiae/cytology , Staurosporine/pharmacology , Structure-Activity Relationship
18.
Nat Commun ; 5: 3650, 2014 Apr 11.
Article in English | MEDLINE | ID: mdl-24722188

ABSTRACT

Increased risk for autism spectrum disorders (ASD) is attributed to hundreds of genetic loci. The convergence of ASD variants have been investigated using various approaches, including protein interactions extracted from the published literature. However, these datasets are frequently incomplete, carry biases and are limited to interactions of a single splicing isoform, which may not be expressed in the disease-relevant tissue. Here we introduce a new interactome mapping approach by experimentally identifying interactions between brain-expressed alternatively spliced variants of ASD risk factors. The Autism Spliceform Interaction Network reveals that almost half of the detected interactions and about 30% of the newly identified interacting partners represent contribution from splicing variants, emphasizing the importance of isoform networks. Isoform interactions greatly contribute to establishing direct physical connections between proteins from the de novo autism CNVs. Our findings demonstrate the critical role of spliceform networks for translating genetic knowledge into a better understanding of human diseases.


Subject(s)
Autistic Disorder/metabolism , Alternative Splicing/genetics , Alternative Splicing/physiology , Autistic Disorder/genetics , Genetic Predisposition to Disease/genetics , Humans , Molecular Sequence Data , Protein Interaction Maps/genetics , Protein Interaction Maps/physiology , Protein Isoforms/genetics , Protein Isoforms/metabolism , Risk Factors
19.
G3 (Bethesda) ; 2(2): 223-33, 2012 Feb.
Article in English | MEDLINE | ID: mdl-22384401

ABSTRACT

The body of human genomic and proteomic evidence continues to grow at ever-increasing rates, while annotation efforts struggle to keep pace. A surprisingly small fraction of human genes have clear, documented associations with specific functions, and new functions continue to be found for characterized genes. Here we assembled an integrated collection of diverse genomic and proteomic data for 21,341 human genes and make quantitative associations of each to 4333 Gene Ontology terms. We combined guilt-by-profiling and guilt-by-association approaches to exploit features unique to the data types. Performance was evaluated by cross-validation, prospective validation, and by manual evaluation with the biological literature. Functional-linkage networks were also constructed, and their utility was demonstrated by identifying candidate genes related to a glioma FLN using a seed network from genome-wide association studies. Our annotations are presented-alongside existing validated annotations-in a publicly accessible and searchable web interface.

20.
Science ; 333(6042): 596-601, 2011 Jul 29.
Article in English | MEDLINE | ID: mdl-21798943

ABSTRACT

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.


Subject(s)
Arabidopsis/immunology , Arabidopsis/metabolism , Host-Pathogen Interactions , Plant Diseases/immunology , Plant Immunity , Receptors, Immunologic/metabolism , Virulence Factors/metabolism , Arabidopsis/genetics , Arabidopsis/microbiology , Bacterial Proteins/metabolism , Evolution, Molecular , Genes, Plant , Immunity, Innate , Oomycetes/pathogenicity , Protein Interaction Mapping , Pseudomonas syringae/pathogenicity
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