32 results on '"Zuk, O"'
Search Results
2. The Entropy of a Binary Hidden Markov Process
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Zuk, O., Kanter, I., and Domany, E.
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Computer Science - Information Theory ,Condensed Matter - Statistical Mechanics ,Mathematics - Statistics Theory - Abstract
The entropy of a binary symmetric Hidden Markov Process is calculated as an expansion in the noise parameter epsilon. We map the problem onto a one-dimensional Ising model in a large field of random signs and calculate the expansion coefficients up to second order in epsilon. Using a conjecture we extend the calculation to 11th order and discuss the convergence of the resulting series.
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- 2005
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3. Polygenic embryo screening: four clinical considerations warrant further attention
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Pereira, S, primary, Carmi, S, additional, Altarescu, G, additional, Austin, J, additional, Barlevy, D, additional, Hershlag, A, additional, Juengst, E, additional, Kostick-Quenet, K, additional, Kovanci, E, additional, Lathi, R B, additional, Mukherjee, M, additional, Van den Veyver, I, additional, Zuk, O, additional, Lázaro-Muñoz, G, additional, and Lencz, T, additional
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- 2022
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4. O-056 Evaluating the utility of screening human IVF embryos with polygenic risk scores for complex diseases
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Carmi, S, primary, Backenroth, D, additional, Green, A, additional, Weissbrod, O, additional, Zuk, O, additional, and Lencz, T, additional
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- 2021
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5. Screening Human Embryos for Polygenic Traits Has Limited Utility
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Karavani, E. Zuk, O. Zeevi, D. Barzilai, N. Stefanis, N.C. Hatzimanolis, A. Smyrnis, N. Avramopoulos, D. Kruglyak, L. Atzmon, G. Lam, M. Lencz, T. Carmi, S.
- Subjects
animal structures ,embryonic structures - Abstract
The increasing proportion of variance in human complex traits explained by polygenic scores, along with progress in preimplantation genetic diagnosis, suggests the possibility of screening embryos for traits such as height or cognitive ability. However, the expected outcomes of embryo screening are unclear, which undermines discussion of associated ethical concerns. Here, we use theory, simulations, and real data to evaluate the potential gain of embryo screening, defined as the difference in trait value between the top-scoring embryo and the average embryo. The gain increases very slowly with the number of embryos but more rapidly with the variance explained by the score. Given current technology, the average gain due to screening would be ≈2.5 cm for height and ≈2.5 IQ points for cognitive ability. These mean values are accompanied by wide prediction intervals, and indeed, in large nuclear families, the majority of children top-scoring for height are not the tallest. © 2019 Elsevier Inc. Recent progress in genetic testing of embryos has made it technically feasible to profile IVF embryos for polygenic traits such as height or IQ, but simulations, models, and empirical data show that the gain in trait value when selecting the top-scoring embryo is currently limited and uncertain. © 2019 Elsevier Inc.
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- 2019
6. Sorting points into neighborhoods (SPIN): data analysis and visualization by ordering distance matrices
- Author
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Tsafrir, D., Tsafrir, I., Ein-Dor, L., Zuk, O., Notterman, D.A., and Domany, E.
- Published
- 2005
7. Identification of transcriptional regulators in the mouse immune system
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Jojic, V, Shay, T, Sylvia, K, Zuk, O, Sun, X, Kang, J, Regev, A, Koller, D, Best, AJ, Knell, J, Goldrath, A, Joic, V, Cohen, N, Brennan, P, Brenner, M, Kim, F, Rao, TN, Wagers, A, Heng, T, Ericson, J, Rothamel, K, Ortiz-Lopez, A, Mathis, D, Benoist, C, Bezman, NA, Sun, JC, Min-Oo, G, Kim, CC, Lanier, LL, Miller, J, Brown, B, Merad, M, Gautier, EL, Jakubzick, C, Randolph, GJ, Monach, P, Blair, DA, Dustin, ML, Shinton, SA, Hardy, RR, Laidlaw, D, Collins, J, Gazit, R, Rossi, DJ, Malhotra, N, Kreslavsky, T, Fletcher, A, Elpek, K, Bellemarte-Pelletier, A, Malhotra, D, and Turley, S
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Cell type ,Transcription, Genetic ,T-Lymphocytes ,Immunology ,Computational biology ,Biology ,Article ,03 medical and health sciences ,Mice ,0302 clinical medicine ,Immune system ,Gene expression ,Immunology and Allergy ,Animals ,Humans ,Cell Lineage ,Gene Regulatory Networks ,Gene ,030304 developmental biology ,Oligonucleotide Array Sequence Analysis ,Genetics ,0303 health sciences ,Gene Expression Profiling ,Cell Differentiation ,Receptors, Antigen, T-Cell, gamma-delta ,Genome project ,DNA-Binding Proteins ,Repressor Proteins ,Haematopoiesis ,Gene Expression Regulation ,030220 oncology & carcinogenesis ,Immune System ,Trans-Activators ,Identification (biology) ,Stem cell ,Transcriptome ,Algorithms ,Transcription Factors - Abstract
The differentiation of hematopoietic stem cells into cells of the immune system has been studied extensively in mammals, but the transcriptional circuitry that controls it is still only partially understood. Here, the Immunological Genome Project gene-expression profiles across mouse immune lineages allowed us to systematically analyze these circuits. To analyze this data set we developed Ontogenet, an algorithm for reconstructing lineage-specific regulation from gene-expression profiles across lineages. Using Ontogenet, we found differentiation stage-specific regulators of mouse hematopoiesis and identified many known hematopoietic regulators and 175 previously unknown candidate regulators, as well as their target genes and the cell types in which they act. Among the previously unknown regulators, we emphasize the role of ETV5 in the differentiation of γδ T cells. As the transcriptional programs of human and mouse cells are highly conserved, it is likely that many lessons learned from the mouse model apply to humans.
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- 2013
8. Identification of rare alleles and their carriers using compressed se(que)nsing
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Shental, N., primary, Amirand, A., additional, and Zuk, O., additional
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- 2011
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9. Identification of rare alleles and their carriers using compressed se(que)nsing
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Shental, N., primary, Amir, A., additional, and Zuk, O., additional
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- 2010
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10. Co-evolution based machine-learning for predicting functional interactions between human genes.
- Author
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Stupp D, Sharon E, Bloch I, Zitnik M, Zuk O, and Tabach Y
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- DNA Repair genetics, DNA Repair physiology, Evolution, Molecular, Humans, Phylogeny, Sequence Analysis, DNA methods, Machine Learning
- Abstract
Over the next decade, more than a million eukaryotic species are expected to be fully sequenced. This has the potential to improve our understanding of genotype and phenotype crosstalk, gene function and interactions, and answer evolutionary questions. Here, we develop a machine-learning approach for utilizing phylogenetic profiles across 1154 eukaryotic species. This method integrates co-evolution across eukaryotic clades to predict functional interactions between human genes and the context for these interactions. We benchmark our approach showing a 14% performance increase (auROC) compared to previous methods. Using this approach, we predict functional annotations for less studied genes. We focus on DNA repair and verify that 9 of the top 50 predicted genes have been identified elsewhere, with others previously prioritized by high-throughput screens. Overall, our approach enables better annotation of function and functional interactions and facilitates the understanding of evolutionary processes underlying co-evolution. The manuscript is accompanied by a webserver available at: https://mlpp.cs.huji.ac.il ., (© 2021. The Author(s).)
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- 2021
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11. Utility of polygenic embryo screening for disease depends on the selection strategy.
- Author
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Lencz T, Backenroth D, Granot-Hershkovitz E, Green A, Gettler K, Cho JH, Weissbrod O, Zuk O, and Carmi S
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- Computer Simulation, Female, Genetic Predisposition to Disease, Humans, Male, Predictive Value of Tests, Pregnancy, Risk Assessment, Risk Factors, Crohn Disease genetics, Fertilization in Vitro, Genetic Testing, Models, Genetic, Multifactorial Inheritance, Preimplantation Diagnosis, Schizophrenia genetics
- Abstract
Polygenic risk scores (PRSs) have been offered since 2019 to screen in vitro fertilization embryos for genetic liability to adult diseases, despite a lack of comprehensive modeling of expected outcomes. Here we predict, based on the liability threshold model, the expected reduction in complex disease risk following polygenic embryo screening for a single disease. A strong determinant of the potential utility of such screening is the selection strategy , a factor that has not been previously studied. When only embryos with a very high PRS are excluded, the achieved risk reduction is minimal. In contrast, selecting the embryo with the lowest PRS can lead to substantial relative risk reductions, given a sufficient number of viable embryos. We systematically examine the impact of several factors on the utility of screening, including: variance explained by the PRS, number of embryos, disease prevalence, parental PRSs, and parental disease status. We consider both relative and absolute risk reductions, as well as population-averaged and per-couple risk reductions, and also examine the risk of pleiotropic effects. Finally, we confirm our theoretical predictions by simulating 'virtual' couples and offspring based on real genomes from schizophrenia and Crohn's disease case-control studies. We discuss the assumptions and limitations of our model, as well as the potential emerging ethical concerns., Competing Interests: TL, EG, AG, KG, JC, OW, OZ No competing interests declared, DB Employee and shareholder at The Janssen Pharmaceutical Companies of Johnson & Johnson. SC Paid consultant to MyHeritage., (© 2021, Lencz et al.)
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- 2021
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12. Comprehensive Gene Expression Analysis Detects Global Reduction of Proteasome Subunits in Schizophrenia.
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Hertzberg L, Maggio N, Muler I, Yitzhaky A, Majer M, Haroutunian V, Zuk O, Katsel P, Domany E, and Weiser M
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- Adult, Aged, Aged, 80 and over, Datasets as Topic, Diagnosis, Down-Regulation, Female, Humans, Male, Middle Aged, Proteasome Endopeptidase Complex genetics, Schizophrenia genetics, Temporal Lobe enzymology, Brain enzymology, Gene Expression Profiling, Proteasome Endopeptidase Complex metabolism, Schizophrenia enzymology, Transcriptome genetics
- Abstract
Background: The main challenge in the study of schizophrenia is its high heterogeneity. While it is generally accepted that there exist several biological mechanisms that may define distinct schizophrenia subtypes, they have not been identified yet. We performed comprehensive gene expression analysis to search for molecular signals that differentiate schizophrenia patients from healthy controls and examined whether an identified signal was concentrated in a subgroup of the patients., Methods: Transcriptome sequencing of 14 superior temporal gyrus (STG) samples of subjects with schizophrenia and 15 matched controls from the Stanley Medical Research Institute (SMRI) was performed. Differential expression and pathway enrichment analysis results were compared to an independent cohort. Replicability was tested on 6 additional independent datasets., Results: The 2 STG cohorts showed high replicability. Pathway enrichment analysis of the down-regulated genes pointed to proteasome-related pathways. Meta-analysis of differential expression identified down-regulation of 12 of 39 proteasome subunit genes in schizophrenia. The signal of proteasome subunits down-regulation was replicated in 6 additional datasets (overall 8 cohorts with 267 schizophrenia and 266 control samples, from 5 brain regions). The signal was concentrated in a subgroup of patients with schizophrenia., Conclusions: We detected global down-regulation of proteasome subunits in a subgroup of patients with schizophrenia. We hypothesize that the down-regulation of proteasome subunits leads to proteasome dysfunction that causes accumulation of ubiquitinated proteins, which has been recently detected in a subgroup of schizophrenia patients. Thus, down-regulation of proteasome subunits might define a biological subtype of schizophrenia., (© The Author(s) 2020. Published by Oxford University Press on behalf of the Maryland Psychiatric Research Center.All rights reserved. For permissions, please email: journals.permissions@oup.com.)
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- 2021
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13. Screening Human Embryos for Polygenic Traits Has Limited Utility.
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Karavani E, Zuk O, Zeevi D, Barzilai N, Stefanis NC, Hatzimanolis A, Smyrnis N, Avramopoulos D, Kruglyak L, Atzmon G, Lam M, Lencz T, and Carmi S
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- Adult, Family, Genome-Wide Association Study, Humans, Phenotype, Embryo, Mammalian metabolism, Genetic Testing, Multifactorial Inheritance genetics
- Abstract
The increasing proportion of variance in human complex traits explained by polygenic scores, along with progress in preimplantation genetic diagnosis, suggests the possibility of screening embryos for traits such as height or cognitive ability. However, the expected outcomes of embryo screening are unclear, which undermines discussion of associated ethical concerns. Here, we use theory, simulations, and real data to evaluate the potential gain of embryo screening, defined as the difference in trait value between the top-scoring embryo and the average embryo. The gain increases very slowly with the number of embryos but more rapidly with the variance explained by the score. Given current technology, the average gain due to screening would be ≈2.5 cm for height and ≈2.5 IQ points for cognitive ability. These mean values are accompanied by wide prediction intervals, and indeed, in large nuclear families, the majority of children top-scoring for height are not the tallest., (Copyright © 2019 Elsevier Inc. All rights reserved.)
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- 2019
- Full Text
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14. ImmGen report: sexual dimorphism in the immune system transcriptome.
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Gal-Oz ST, Maier B, Yoshida H, Seddu K, Elbaz N, Czysz C, Zuk O, Stranger BE, Ner-Gaon H, and Shay T
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- Animals, Computational Biology, Epigenomics, Female, Gene Expression Profiling, Gene Expression Regulation, Genomics, Humans, Immunity, Innate genetics, Interferons metabolism, Macrophages, Male, Mice, Mice, Inbred C57BL, Monocytes, RNA, Sex Factors, Immune System, Sex Characteristics, Transcriptome
- Abstract
Sexual dimorphism in the mammalian immune system is manifested as more frequent and severe infectious diseases in males and, on the other hand, higher rates of autoimmune disease in females, yet insights underlying those differences are still lacking. Here we characterize sex differences in the immune system by RNA and ATAC sequence profiling of untreated and interferon-induced immune cell types in male and female mice. We detect very few differentially expressed genes between male and female immune cells except in macrophages from three different tissues. Accordingly, very few genomic regions display differences in accessibility between sexes. Transcriptional sexual dimorphism in macrophages is mediated by genes of innate immune pathways, and increases after interferon stimulation. Thus, the stronger immune response of females may be due to more activated innate immune pathways prior to pathogen invasion.
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- 2019
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15. Substantial batch effects in TCGA exome sequences undermine pan-cancer analysis of germline variants.
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Rasnic R, Brandes N, Zuk O, and Linial M
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- Genetic Association Studies, Genetic Predisposition to Disease, Humans, Kaplan-Meier Estimate, Neoplasms diagnosis, Neoplasms mortality, Neoplasms therapy, Precision Medicine methods, Exome, Genome, Human, Genomics, Germ-Line Mutation, Neoplasms genetics
- Abstract
Background: In recent years, research on cancer predisposition germline variants has emerged as a prominent field. The identity of somatic mutations is based on a reliable mapping of the patient germline variants. In addition, the statistics of germline variants frequencies in healthy individuals and cancer patients is the basis for seeking candidates for cancer predisposition genes. The Cancer Genome Atlas (TCGA) is one of the main sources of such data, providing a diverse collection of molecular data including deep sequencing for more than 30 types of cancer from > 10,000 patients., Methods: Our hypothesis in this study is that whole exome sequences from blood samples of cancer patients are not expected to show systematic differences among cancer types. To test this hypothesis, we analyzed common and rare germline variants across six cancer types, covering 2241 samples from TCGA. In our analysis we accounted for inherent variables in the data including the different variant calling protocols, sequencing platforms, and ethnicity., Results: We report on substantial batch effects in germline variants associated with cancer types. We attribute the effect to the specific sequencing centers that produced the data. Specifically, we measured 30% variability in the number of reported germline variants per sample across sequencing centers. The batch effect is further expressed in nucleotide composition and variant frequencies. Importantly, the batch effect causes substantial differences in germline variant distribution patterns across numerous genes, including prominent cancer predisposition genes such as BRCA1, RET, MAX, and KRAS. For most of known cancer predisposition genes, we found a distinct batch-dependent difference in germline variants., Conclusion: TCGA germline data is exposed to strong batch effects with substantial variabilities among TCGA sequencing centers. We claim that those batch effects are consequential for numerous TCGA pan-cancer studies. In particular, these effects may compromise the reliability and the potency to detect new cancer predisposition genes. Furthermore, interpretation of pan-cancer analyses should be revisited in view of the source of the genomic data after accounting for the reported batch effects.
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- 2019
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16. Exome sequencing identifies rare LDLR and APOA5 alleles conferring risk for myocardial infarction.
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Do R, Stitziel NO, Won HH, Jørgensen AB, Duga S, Angelica Merlini P, Kiezun A, Farrall M, Goel A, Zuk O, Guella I, Asselta R, Lange LA, Peloso GM, Auer PL, Girelli D, Martinelli N, Farlow DN, DePristo MA, Roberts R, Stewart AF, Saleheen D, Danesh J, Epstein SE, Sivapalaratnam S, Hovingh GK, Kastelein JJ, Samani NJ, Schunkert H, Erdmann J, Shah SH, Kraus WE, Davies R, Nikpay M, Johansen CT, Wang J, Hegele RA, Hechter E, Marz W, Kleber ME, Huang J, Johnson AD, Li M, Burke GL, Gross M, Liu Y, Assimes TL, Heiss G, Lange EM, Folsom AR, Taylor HA, Olivieri O, Hamsten A, Clarke R, Reilly DF, Yin W, Rivas MA, Donnelly P, Rossouw JE, Psaty BM, Herrington DM, Wilson JG, Rich SS, Bamshad MJ, Tracy RP, Cupples LA, Rader DJ, Reilly MP, Spertus JA, Cresci S, Hartiala J, Tang WH, Hazen SL, Allayee H, Reiner AP, Carlson CS, Kooperberg C, Jackson RD, Boerwinkle E, Lander ES, Schwartz SM, Siscovick DS, McPherson R, Tybjaerg-Hansen A, Abecasis GR, Watkins H, Nickerson DA, Ardissino D, Sunyaev SR, O'Donnell CJ, Altshuler D, Gabriel S, and Kathiresan S
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- Age Factors, Age of Onset, Apolipoprotein A-V, Case-Control Studies, Cholesterol, LDL blood, Coronary Artery Disease genetics, Female, Genetics, Population, Heterozygote, Humans, Male, Middle Aged, Mutation genetics, Myocardial Infarction blood, National Heart, Lung, and Blood Institute (U.S.), Triglycerides blood, United States, Alleles, Apolipoproteins A genetics, Exome genetics, Genetic Predisposition to Disease genetics, Myocardial Infarction genetics, Receptors, LDL genetics
- Abstract
Myocardial infarction (MI), a leading cause of death around the world, displays a complex pattern of inheritance. When MI occurs early in life, genetic inheritance is a major component to risk. Previously, rare mutations in low-density lipoprotein (LDL) genes have been shown to contribute to MI risk in individual families, whereas common variants at more than 45 loci have been associated with MI risk in the population. Here we evaluate how rare mutations contribute to early-onset MI risk in the population. We sequenced the protein-coding regions of 9,793 genomes from patients with MI at an early age (≤50 years in males and ≤60 years in females) along with MI-free controls. We identified two genes in which rare coding-sequence mutations were more frequent in MI cases versus controls at exome-wide significance. At low-density lipoprotein receptor (LDLR), carriers of rare non-synonymous mutations were at 4.2-fold increased risk for MI; carriers of null alleles at LDLR were at even higher risk (13-fold difference). Approximately 2% of early MI cases harbour a rare, damaging mutation in LDLR; this estimate is similar to one made more than 40 years ago using an analysis of total cholesterol. Among controls, about 1 in 217 carried an LDLR coding-sequence mutation and had plasma LDL cholesterol > 190 mg dl(-1). At apolipoprotein A-V (APOA5), carriers of rare non-synonymous mutations were at 2.2-fold increased risk for MI. When compared with non-carriers, LDLR mutation carriers had higher plasma LDL cholesterol, whereas APOA5 mutation carriers had higher plasma triglycerides. Recent evidence has connected MI risk with coding-sequence mutations at two genes functionally related to APOA5, namely lipoprotein lipase and apolipoprotein C-III (refs 18, 19). Combined, these observations suggest that, as well as LDL cholesterol, disordered metabolism of triglyceride-rich lipoproteins contributes to MI risk.
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- 2015
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17. Searching for missing heritability: designing rare variant association studies.
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Zuk O, Schaffner SF, Samocha K, Do R, Hechter E, Kathiresan S, Daly MJ, Neale BM, Sunyaev SR, and Lander ES
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- Gene Frequency, Genetic Predisposition to Disease, Genome-Wide Association Study, Humans, Mutation, Genetic Variation
- Abstract
Genetic studies have revealed thousands of loci predisposing to hundreds of human diseases and traits, revealing important biological pathways and defining novel therapeutic hypotheses. However, the genes discovered to date typically explain less than half of the apparent heritability. Because efforts have largely focused on common genetic variants, one hypothesis is that much of the missing heritability is due to rare genetic variants. Studies of common variants are typically referred to as genomewide association studies, whereas studies of rare variants are often simply called sequencing studies. Because they are actually closely related, we use the terms common variant association study (CVAS) and rare variant association study (RVAS). In this paper, we outline the similarities and differences between RVAS and CVAS and describe a conceptual framework for the design of RVAS. We apply the framework to address key questions about the sample sizes needed to detect association, the relative merits of testing disruptive alleles vs. missense alleles, frequency thresholds for filtering alleles, the value of predictors of the functional impact of missense alleles, the potential utility of isolated populations, the value of gene-set analysis, and the utility of de novo mutations. The optimal design depends critically on the selection coefficient against deleterious alleles and thus varies across genes. The analysis shows that common variant and rare variant studies require similarly large sample collections. In particular, a well-powered RVAS should involve discovery sets with at least 25,000 cases, together with a substantial replication set., Competing Interests: The authors declare no conflict of interest.
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- 2014
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18. High-resolution microbial community reconstruction by integrating short reads from multiple 16S rRNA regions.
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Amir A, Zeisel A, Zuk O, Elgart M, Stern S, Shamir O, Turnbaugh PJ, Soen Y, and Shental N
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- Acetobacter genetics, Acetobacter isolation & purification, Animals, Bacteria genetics, Bacteria isolation & purification, Drosophila melanogaster microbiology, Humans, Models, Statistical, Saliva microbiology, Wolbachia genetics, Wolbachia isolation & purification, Bacteria classification, High-Throughput Nucleotide Sequencing methods, Phylogeny, RNA, Ribosomal, 16S genetics, Sequence Analysis, DNA methods
- Abstract
The emergence of massively parallel sequencing technology has revolutionized microbial profiling, allowing the unprecedented comparison of microbial diversity across time and space in a wide range of host-associated and environmental ecosystems. Although the high-throughput nature of such methods enables the detection of low-frequency bacteria, these advances come at the cost of sequencing read length, limiting the phylogenetic resolution possible by current methods. Here, we present a generic approach for integrating short reads from large genomic regions, thus enabling phylogenetic resolution far exceeding current methods. The approach is based on a mapping to a statistical model that is later solved as a constrained optimization problem. We demonstrate the utility of this method by analyzing human saliva and Drosophila samples, using Illumina single-end sequencing of a 750 bp amplicon of the 16S rRNA gene. Phylogenetic resolution is significantly extended while reducing the number of falsely detected bacteria, as compared with standard single-region Roche 454 Pyrosequencing. Our approach can be seamlessly applied to simultaneous sequencing of multiple genes providing a higher resolution view of the composition and activity of complex microbial communities.
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- 2013
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19. Conservation and divergence in the transcriptional programs of the human and mouse immune systems.
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Shay T, Jojic V, Zuk O, Rothamel K, Puyraimond-Zemmour D, Feng T, Wakamatsu E, Benoist C, Koller D, and Regev A
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- Animals, Humans, Lymphocyte Activation, Mice, T-Lymphocytes immunology, Gene Expression Profiling, Immune System metabolism, Transcription, Genetic
- Abstract
Much of the knowledge about cell differentiation and function in the immune system has come from studies in mice, but the relevance to human immunology, diseases, and therapy has been challenged, perhaps more from anecdotal than comprehensive evidence. To this end, we compare two large compendia of transcriptional profiles of human and mouse immune cell types. Global transcription profiles are conserved between corresponding cell lineages. The expression patterns of most orthologous genes are conserved, particularly for lineage-specific genes. However, several hundred genes show clearly divergent expression across the examined cell lineages, and among them, 169 genes did so even with highly stringent criteria. Finally, regulatory mechanisms--reflected by regulators' differential expression or enriched cis-elements--are conserved between the species but to a lower degree, suggesting that distinct regulation may underlie some of the conserved transcriptional responses.
- Published
- 2013
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20. Identification of small RNA pathway genes using patterns of phylogenetic conservation and divergence.
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Tabach Y, Billi AC, Hayes GD, Newman MA, Zuk O, Gabel H, Kamath R, Yacoby K, Chapman B, Garcia SM, Borowsky M, Kim JK, and Ruvkun G
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- Animals, Caenorhabditis elegans classification, Caenorhabditis elegans Proteins genetics, Eukaryota classification, Eukaryota genetics, Genome genetics, MicroRNAs genetics, Proteome, RNA Splicing, Caenorhabditis elegans genetics, Genetic Variation, Phylogeny, RNA, Small Interfering genetics
- Abstract
Genetic and biochemical analyses of RNA interference (RNAi) and microRNA (miRNA) pathways have revealed proteins such as Argonaute and Dicer as essential cofactors that process and present small RNAs to their targets. Well-validated small RNA pathway cofactors such as these show distinctive patterns of conservation or divergence in particular animal, plant, fungal and protist species. We compared 86 divergent eukaryotic genome sequences to discern sets of proteins that show similar phylogenetic profiles with known small RNA cofactors. A large set of additional candidate small RNA cofactors have emerged from functional genomic screens for defects in miRNA- or short interfering RNA (siRNA)-mediated repression in Caenorhabditis elegans and Drosophila melanogaster, and from proteomic analyses of proteins co-purifying with validated small RNA pathway proteins. The phylogenetic profiles of many of these candidate small RNA pathway proteins are similar to those of known small RNA cofactor proteins. We used a Bayesian approach to integrate the phylogenetic profile analysis with predictions from diverse transcriptional coregulation and proteome interaction data sets to assign a probability for each protein for a role in a small RNA pathway. Testing high-confidence candidates from this analysis for defects in RNAi silencing, we found that about one-half of the predicted small RNA cofactors are required for RNAi silencing. Many of the newly identified small RNA pathway proteins are orthologues of proteins implicated in RNA splicing. In support of a deep connection between the mechanism of RNA splicing and small-RNA-mediated gene silencing, the presence of the Argonaute proteins and other small RNA components in the many species analysed strongly correlates with the number of introns in those species.
- Published
- 2013
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21. The mystery of missing heritability: Genetic interactions create phantom heritability.
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Zuk O, Hechter E, Sunyaev SR, and Lander ES
- Subjects
- Humans, Genetic Diseases, Inborn genetics, Genetic Predisposition to Disease genetics, Genetic Variation, Genetics, Population, Models, Genetic, Multifactorial Inheritance genetics
- Abstract
Human genetics has been haunted by the mystery of "missing heritability" of common traits. Although studies have discovered >1,200 variants associated with common diseases and traits, these variants typically appear to explain only a minority of the heritability. The proportion of heritability explained by a set of variants is the ratio of (i) the heritability due to these variants (numerator), estimated directly from their observed effects, to (ii) the total heritability (denominator), inferred indirectly from population data. The prevailing view has been that the explanation for missing heritability lies in the numerator--that is, in as-yet undiscovered variants. While many variants surely remain to be found, we show here that a substantial portion of missing heritability could arise from overestimation of the denominator, creating "phantom heritability." Specifically, (i) estimates of total heritability implicitly assume the trait involves no genetic interactions (epistasis) among loci; (ii) this assumption is not justified, because models with interactions are also consistent with observable data; and (iii) under such models, the total heritability may be much smaller and thus the proportion of heritability explained much larger. For example, 80% of the currently missing heritability for Crohn's disease could be due to genetic interactions, if the disease involves interaction among three pathways. In short, missing heritability need not directly correspond to missing variants, because current estimates of total heritability may be significantly inflated by genetic interactions. Finally, we describe a method for estimating heritability from isolated populations that is not inflated by genetic interactions.
- Published
- 2012
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22. Bacterial community reconstruction using compressed sensing.
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Amir A and Zuk O
- Subjects
- Algorithms, Markov Chains, RNA, Ribosomal, 16S genetics, Sequence Analysis, DNA, Signal-To-Noise Ratio, Bacteria genetics, Computer Simulation, Metagenome, Models, Genetic, Molecular Typing methods
- Abstract
Bacteria are the unseen majority on our planet, with millions of species and comprising most of the living protoplasm. We propose a novel approach for reconstruction of the composition of an unknown mixture of bacteria using a single Sanger-sequencing reaction of the mixture. Our method is based on compressive sensing theory, which deals with reconstruction of a sparse signal using a small number of measurements. Utilizing the fact that in many cases each bacterial community is comprised of a small subset of all known bacterial species, we show the feasibility of this approach for determining the composition of a bacterial mixture. Using simulations, we show that sequencing a few hundred base-pairs of the 16S rRNA gene sequence may provide enough information for reconstruction of mixtures containing tens of species, out of tens of thousands, even in the presence of realistic measurement noise. Finally, we show initial promising results when applying our method for the reconstruction of a toy experimental mixture with five species. Our approach may have a potential for a simple and efficient way for identifying bacterial species compositions in biological samples. All supplementary data and the MATLAB code are available at www.broadinstitute.org/?orzuk/publications/BCS/.
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- 2011
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23. A high-resolution map of human evolutionary constraint using 29 mammals.
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Lindblad-Toh K, Garber M, Zuk O, Lin MF, Parker BJ, Washietl S, Kheradpour P, Ernst J, Jordan G, Mauceli E, Ward LD, Lowe CB, Holloway AK, Clamp M, Gnerre S, Alföldi J, Beal K, Chang J, Clawson H, Cuff J, Di Palma F, Fitzgerald S, Flicek P, Guttman M, Hubisz MJ, Jaffe DB, Jungreis I, Kent WJ, Kostka D, Lara M, Martins AL, Massingham T, Moltke I, Raney BJ, Rasmussen MD, Robinson J, Stark A, Vilella AJ, Wen J, Xie X, Zody MC, Baldwin J, Bloom T, Chin CW, Heiman D, Nicol R, Nusbaum C, Young S, Wilkinson J, Worley KC, Kovar CL, Muzny DM, Gibbs RA, Cree A, Dihn HH, Fowler G, Jhangiani S, Joshi V, Lee S, Lewis LR, Nazareth LV, Okwuonu G, Santibanez J, Warren WC, Mardis ER, Weinstock GM, Wilson RK, Delehaunty K, Dooling D, Fronik C, Fulton L, Fulton B, Graves T, Minx P, Sodergren E, Birney E, Margulies EH, Herrero J, Green ED, Haussler D, Siepel A, Goldman N, Pollard KS, Pedersen JS, Lander ES, and Kellis M
- Subjects
- Animals, Disease, Exons genetics, Genomics, Health, Humans, Molecular Sequence Annotation, Phylogeny, RNA classification, RNA genetics, Selection, Genetic genetics, Sequence Alignment, Sequence Analysis, DNA, Evolution, Molecular, Genome genetics, Genome, Human genetics, Mammals genetics
- Abstract
The comparison of related genomes has emerged as a powerful lens for genome interpretation. Here we report the sequencing and comparative analysis of 29 eutherian genomes. We confirm that at least 5.5% of the human genome has undergone purifying selection, and locate constrained elements covering ∼4.2% of the genome. We use evolutionary signatures and comparisons with experimental data sets to suggest candidate functions for ∼60% of constrained bases. These elements reveal a small number of new coding exons, candidate stop codon readthrough events and over 10,000 regions of overlapping synonymous constraint within protein-coding exons. We find 220 candidate RNA structural families, and nearly a million elements overlapping potential promoter, enhancer and insulator regions. We report specific amino acid residues that have undergone positive selection, 280,000 non-coding elements exapted from mobile elements and more than 1,000 primate- and human-accelerated elements. Overlap with disease-associated variants indicates that our findings will be relevant for studies of human biology, health and disease.
- Published
- 2011
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24. A large intergenic noncoding RNA induced by p53 mediates global gene repression in the p53 response.
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Huarte M, Guttman M, Feldser D, Garber M, Koziol MJ, Kenzelmann-Broz D, Khalil AM, Zuk O, Amit I, Rabani M, Attardi LD, Regev A, Lander ES, Jacks T, and Rinn JL
- Subjects
- Animals, Apoptosis, Heterogeneous-Nuclear Ribonucleoprotein K metabolism, Humans, Mice, Molecular Sequence Data, Transcription, Genetic, Down-Regulation, RNA, Untranslated metabolism, Tumor Suppressor Protein p53 metabolism
- Abstract
Recently, more than 1000 large intergenic noncoding RNAs (lincRNAs) have been reported. These RNAs are evolutionarily conserved in mammalian genomes and thus presumably function in diverse biological processes. Here, we report the identification of lincRNAs that are regulated by p53. One of these lincRNAs (lincRNA-p21) serves as a repressor in p53-dependent transcriptional responses. Inhibition of lincRNA-p21 affects the expression of hundreds of gene targets enriched for genes normally repressed by p53. The observed transcriptional repression by lincRNA-p21 is mediated through the physical association with hnRNP-K. This interaction is required for proper genomic localization of hnRNP-K at repressed genes and regulation of p53 mediates apoptosis. We propose a model whereby transcription factors activate lincRNAs that serve as key repressors by physically associating with repressive complexes and modulate their localization to sets of previously active genes., (Copyright 2010 Elsevier Inc. All rights reserved.)
- Published
- 2010
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25. A composite of multiple signals distinguishes causal variants in regions of positive selection.
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Grossman SR, Shlyakhter I, Karlsson EK, Byrne EH, Morales S, Frieden G, Hostetter E, Angelino E, Garber M, Zuk O, Lander ES, Schaffner SF, and Sabeti PC
- Subjects
- Computational Biology methods, DNA, Intergenic genetics, Evolution, Molecular, Genetic Loci, Haplotypes, Humans, Polymorphism, Genetic, Population Groups genetics, Regulatory Sequences, Nucleic Acid genetics, Software, Genetic Variation, Genome, Human, Selection, Genetic
- Abstract
The human genome contains hundreds of regions whose patterns of genetic variation indicate recent positive natural selection, yet for most the underlying gene and the advantageous mutation remain unknown. We developed a method, composite of multiple signals (CMS), that combines tests for multiple signals of selection and increases resolution by up to 100-fold. By applying CMS to candidate regions from the International Haplotype Map, we localized population-specific selective signals to 55 kilobases (median), identifying known and novel causal variants. CMS can not just identify individual loci but implicates precise variants selected by evolution.
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- 2010
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26. Unbiased reconstruction of a mammalian transcriptional network mediating pathogen responses.
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Amit I, Garber M, Chevrier N, Leite AP, Donner Y, Eisenhaure T, Guttman M, Grenier JK, Li W, Zuk O, Schubert LA, Birditt B, Shay T, Goren A, Zhang X, Smith Z, Deering R, McDonald RC, Cabili M, Bernstein BE, Rinn JL, Meissner A, Root DE, Hacohen N, and Regev A
- Subjects
- Animals, Chromatin Assembly and Disassembly, DNA, Single-Stranded immunology, Feedback, Physiological, Gene Expression Profiling, Inflammation immunology, Lipopeptides immunology, Lipopolysaccharides immunology, Mice, Mice, Inbred C57BL, Poly I-C immunology, RNA-Binding Proteins metabolism, Toll-Like Receptors agonists, Transcription Factors metabolism, Transcription, Genetic, Bacteria immunology, Dendritic Cells immunology, Dendritic Cells metabolism, Gene Expression Regulation, Gene Regulatory Networks, Inflammation metabolism, Viruses immunology
- Abstract
Models of mammalian regulatory networks controlling gene expression have been inferred from genomic data but have largely not been validated. We present an unbiased strategy to systematically perturb candidate regulators and monitor cellular transcriptional responses. We applied this approach to derive regulatory networks that control the transcriptional response of mouse primary dendritic cells to pathogens. Our approach revealed the regulatory functions of 125 transcription factors, chromatin modifiers, and RNA binding proteins, which enabled the construction of a network model consisting of 24 core regulators and 76 fine-tuners that help to explain how pathogen-sensing pathways achieve specificity. This study establishes a broadly applicable, comprehensive, and unbiased approach to reveal the wiring and functions of a regulatory network controlling a major transcriptional response in primary mammalian cells.
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- 2009
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27. Association of survival and disease progression with chromosomal instability: a genomic exploration of colorectal cancer.
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Sheffer M, Bacolod MD, Zuk O, Giardina SF, Pincas H, Barany F, Paty PB, Gerald WL, Notterman DA, and Domany E
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- Chromosome Deletion, Disease Progression, Fibroblast Growth Factor-23, Gene Dosage genetics, Gene Expression Regulation, Neoplastic, Humans, Oligonucleotide Array Sequence Analysis, Oxidation-Reduction, Phosphorylation, Polymorphism, Single Nucleotide genetics, RNA, Untranslated genetics, Survival Rate, Chromosomal Instability genetics, Colorectal Neoplasms genetics, Colorectal Neoplasms pathology, Genome, Human genetics
- Abstract
During disease progression the cells that comprise solid malignancies undergo significant changes in gene copy number and chromosome structure. Colorectal cancer provides an excellent model to study this process. To indentify and characterize chromosomal abnormalities in colorectal cancer, we performed a statistical analysis of 299 expression and 130 SNP arrays profiled at different stages of the disease, including normal tissue, adenoma, stages 1-4 adenocarcinoma, and metastasis. We identified broad (> 1/2 chromosomal arm) and focal (< 1/2 chromosomal arm) events. Broad amplifications were noted on chromosomes 7, 8q, 13q, 20, and X and broad deletions on chromosomes 4, 8p, 14q, 15q, 17p, 18, 20p, and 22q. Focal events (gains or losses) were identified in regions containing known cancer pathway genes, such as VEGFA, MYC, MET, FGF6, FGF23, LYN, MMP9, MYBL2, AURKA, UBE2C, and PTEN. Other focal events encompassed potential new candidate tumor suppressors (losses) and oncogenes (gains), including CCDC68, CSMD1, POLR1D, and PMEPA1. From the expression data, we identified genes whose expression levels reflected their copy number changes and used this relationship to impute copy number changes to samples without accompanying SNP data. This analysis provided the statistical power to show that deletions of 8p, 4p, and 15q are associated with survival and disease progression, and that samples with simultaneous deletions in 18q, 8p, 4p, and 15q have a particularly poor prognosis. Annotation analysis reveals that the oxidative phosphorylation pathway shows a strong tendency for decreased expression in the samples characterized by poor prognosis.
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- 2009
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28. Chromatin signature reveals over a thousand highly conserved large non-coding RNAs in mammals.
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Guttman M, Amit I, Garber M, French C, Lin MF, Feldser D, Huarte M, Zuk O, Carey BW, Cassady JP, Cabili MN, Jaenisch R, Mikkelsen TS, Jacks T, Hacohen N, Bernstein BE, Kellis M, Regev A, Rinn JL, and Lander ES
- Subjects
- Animals, Base Sequence, Cells, Cultured, DNA, Intergenic, Exons genetics, Mice, Promoter Regions, Genetic genetics, Reproducibility of Results, Transcription Factors metabolism, Chromatin genetics, Conserved Sequence genetics, Mammals genetics, RNA genetics
- Abstract
There is growing recognition that mammalian cells produce many thousands of large intergenic transcripts. However, the functional significance of these transcripts has been particularly controversial. Although there are some well-characterized examples, most (>95%) show little evidence of evolutionary conservation and have been suggested to represent transcriptional noise. Here we report a new approach to identifying large non-coding RNAs using chromatin-state maps to discover discrete transcriptional units intervening known protein-coding loci. Our approach identified approximately 1,600 large multi-exonic RNAs across four mouse cell types. In sharp contrast to previous collections, these large intervening non-coding RNAs (lincRNAs) show strong purifying selection in their genomic loci, exonic sequences and promoter regions, with greater than 95% showing clear evolutionary conservation. We also developed a functional genomics approach that assigns putative functions to each lincRNA, demonstrating a diverse range of roles for lincRNAs in processes from embryonic stem cell pluripotency to cell proliferation. We obtained independent functional validation for the predictions for over 100 lincRNAs, using cell-based assays. In particular, we demonstrate that specific lincRNAs are transcriptionally regulated by key transcription factors in these processes such as p53, NFkappaB, Sox2, Oct4 (also known as Pou5f1) and Nanog. Together, these results define a unique collection of functional lincRNAs that are highly conserved and implicated in diverse biological processes.
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- 2009
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29. Wide-scale analysis of human functional transcription factor binding reveals a strong bias towards the transcription start site.
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Tabach Y, Brosh R, Buganim Y, Reiner A, Zuk O, Yitzhaky A, Koudritsky M, Rotter V, and Domany E
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- Animals, Binding Sites, Cell Cycle, Humans, Mice, TATA Box, Transcription Factors chemistry, Promoter Regions, Genetic, Transcription Factors metabolism, Transcription Initiation Site
- Abstract
Background: Transcription factors (TF) regulate expression by binding to specific DNA sequences. A binding event is functional when it affects gene expression. Functionality of a binding site is reflected in conservation of the binding sequence during evolution and in over represented binding in gene groups with coherent biological functions. Functionality is governed by several parameters such as the TF-DNA binding strength, distance of the binding site from the transcription start site (TSS), DNA packing, and more. Understanding how these parameters control functionality of different TFs in different biological contexts is a must for identifying functional TF binding sites and for understanding regulation of transcription., Methodology/principal Findings: We introduce a novel method to screen the promoters of a set of genes with shared biological function (obtained from the functional Gene Ontology (GO) classification) against a precompiled library of motifs, and find those motifs which are statistically over-represented in the gene set. More than 8,000 human (and 23,000 mouse) genes, were assigned to one of 134 GO sets. Their promoters were searched (from 200 bp downstream to 1,000 bp upstream the TSS) for 414 known DNA motifs. We optimized the sequence similarity score threshold, independently for every location window, taking into account nucleotide heterogeneity along the promoters of the target genes. The method, combined with binding sequence and location conservation between human and mouse, identifies with high probability functional binding sites for groups of functionally-related genes. We found many location-sensitive functional binding events and showed that they clustered close to the TSS. Our method and findings were tested experimentally., Conclusions/significance: We identified reliably functional TF binding sites. This is an essential step towards constructing regulatory networks. The promoter region proximal to the TSS is of central importance for regulation of transcription in human and mouse, just as it is in bacteria and yeast.
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- 2007
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30. Thousands of samples are needed to generate a robust gene list for predicting outcome in cancer.
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Ein-Dor L, Zuk O, and Domany E
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- Computer Simulation, Female, Gene Expression Profiling methods, Humans, Models, Genetic, Neoplasm Proteins genetics, Neoplasms pathology, Predictive Value of Tests, Prognosis, Reproducibility of Results, Breast Neoplasms genetics, Gene Expression Regulation, Neoplastic, Neoplasms genetics, Treatment Outcome
- Abstract
Predicting at the time of discovery the prognosis and metastatic potential of cancer is a major challenge in current clinical research. Numerous recent studies searched for gene expression signatures that outperform traditionally used clinical parameters in outcome prediction. Finding such a signature will free many patients of the suffering and toxicity associated with adjuvant chemotherapy given to them under current protocols, even though they do not need such treatment. A reliable set of predictive genes also will contribute to a better understanding of the biological mechanism of metastasis. Several groups have published lists of predictive genes and reported good predictive performance based on them. However, the gene lists obtained for the same clinical types of patients by different groups differed widely and had only very few genes in common. This lack of agreement raised doubts about the reliability and robustness of the reported predictive gene lists, and the main source of the problem was shown to be the small number of samples that were used to generate the gene lists. Here, we introduce a previously undescribed mathematical method, probably approximately correct (PAC) sorting, for evaluating the robustness of such lists. We calculate for several published data sets the number of samples that are needed to achieve any desired level of reproducibility. For example, to achieve a typical overlap of 50% between two predictive lists of genes, breast cancer studies would need the expression profiles of several thousand early discovery patients.
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- 2006
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31. Finding motifs in promoter regions.
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Hertzberg L, Zuk O, Getz G, and Domany E
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- Algorithms, Computer Simulation, Data Interpretation, Statistical, Genome, Fungal, ROC Curve, Saccharomyces cerevisiae genetics, Software, Promoter Regions, Genetic, Sequence Analysis, DNA
- Abstract
A central issue in molecular biology is understanding the regulatory mechanisms that control gene expression. The availability of whole genome sequences opens the way for computational methods to search for the key elements in transcription regulation. These include methods for discovering the binding sites of DNA-binding proteins, such as transcription factors. A common representation of transcription factor binding sites is a position specific score matrix (PSSM). We developed a probabilistic approach for searching for putative binding sites. Given a promoter sequence and a PSSM, we scan the promoter and find the position with the maximal score. Then we calculate the probability to get such a maximal score or higher on a random promoter. This is the p-value of the putative binding site. In this way, we searched for putative binding sites in the upstream sequences of Saccharomyces cerevisiae, where some binding sites are known (according to the Saccharomyces cerevisiae Promoters Database, SCPD). Our method produces either exact p-values, or a better estimate for them than other methods, and this improves the results of the search. For each gene we found its statistically significant putative binding sites. We measured the rates of true positives, by a comparison to the known binding sites, and also compared our results to these of MatInspector, a commercially available software that looks for putative binding sites in DNA sequences according to PSSMs. Our results were significantly better. In contrast with us, MatInspector doesn't calculate the exact statistical significance of its results.
- Published
- 2005
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32. The promoters of human cell cycle genes integrate signals from two tumor suppressive pathways during cellular transformation.
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Tabach Y, Milyavsky M, Shats I, Brosh R, Zuk O, Yitzhaky A, Mantovani R, Domany E, Rotter V, and Pilpel Y
- Subjects
- Animals, Cell Cycle Proteins physiology, Cell Division, Cell Line, Transformed metabolism, Cell Line, Transformed transplantation, Computational Biology, DNA-Binding Proteins genetics, DNA-Binding Proteins physiology, Fibroblasts cytology, Fibroblasts metabolism, Gene Expression Regulation, Genes, p16, Genes, p53, Humans, Mice, Mice, Nude, Promoter Regions, Genetic genetics, Recombinant Fusion Proteins physiology, Regulatory Sequences, Nucleic Acid, Spindle Apparatus metabolism, Telomerase genetics, Telomerase physiology, Transcription, Genetic, Transplantation, Heterologous, Cell Cycle Proteins biosynthesis, Cell Transformation, Neoplastic genetics, Cyclin-Dependent Kinase Inhibitor p16 physiology, Gene Expression Profiling, Genes, Tumor Suppressor, Genes, cdc, Promoter Regions, Genetic physiology, Tumor Suppressor Protein p53 physiology
- Abstract
Deciphering regulatory events that drive malignant transformation represents a major challenge for systems biology. Here, we analyzed genome-wide transcription profiling of an in vitro cancerous transformation process. We focused on a cluster of genes whose expression levels increased as a function of p53 and p16(INK4A) tumor suppressors inactivation. This cluster predominantly consists of cell cycle genes and constitutes a signature of a diversity of cancers. By linking expression profiles of the genes in the cluster with the dynamic behavior of p53 and p16(INK4A), we identified a promoter architecture that integrates signals from the two tumor suppressive channels and that maps their activity onto distinct levels of expression of the cell cycle genes, which, in turn, correspond to different cellular proliferation rates. Taking components of the mitotic spindle as an example, we experimentally verified our predictions that p53-mediated transcriptional repression of several of these novel targets is dependent on the activities of p21, NFY, and E2F. Our study demonstrates how a well-controlled transformation process allows linking between gene expression, promoter architecture, and activity of upstream signaling molecules.
- Published
- 2005
- Full Text
- View/download PDF
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