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Dive into the research topics where Manuel Garber is active.

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Featured researches published by Manuel Garber.


Nature | 2009

Chromatin signature reveals over a thousand highly conserved large non-coding RNAs in mammals

Mitchell Guttman; Ido Amit; Manuel Garber; Courtney French; Michael F. Lin; David M. Feldser; Maite Huarte; Or Zuk; Bryce W. Carey; John P. Cassady; Moran N. Cabili; Rudolf Jaenisch; Tarjei S. Mikkelsen; Tyler Jacks; Nir Hacohen; Bradley E. Bernstein; Manolis Kellis; Aviv Regev; John L. Rinn; Eric S. Lander

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 ∼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, NFκB, 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.


Proceedings of the National Academy of Sciences of the United States of America | 2009

Many human large intergenic noncoding RNAs associate with chromatin-modifying complexes and affect gene expression

Ahmad M. Khalil; Mitchell Guttman; Maite Huarte; Manuel Garber; Arjun Raj; Dianali Rivea Morales; Kelly Thomas; Aviva Presser; Bradley E. Bernstein; Alexander van Oudenaarden; Aviv Regev; Eric S. Lander; John L. Rinn

We recently showed that the mammalian genome encodes >1,000 large intergenic noncoding (linc)RNAs that are clearly conserved across mammals and, thus, functional. Gene expression patterns have implicated these lincRNAs in diverse biological processes, including cell-cycle regulation, immune surveillance, and embryonic stem cell pluripotency. However, the mechanism by which these lincRNAs function is unknown. Here, we expand the catalog of human lincRNAs to ≈3,300 by analyzing chromatin-state maps of various human cell types. Inspired by the observation that the well-characterized lincRNA HOTAIR binds the polycomb repressive complex (PRC)2, we tested whether many lincRNAs are physically associated with PRC2. Remarkably, we observe that ≈20% of lincRNAs expressed in various cell types are bound by PRC2, and that additional lincRNAs are bound by other chromatin-modifying complexes. Also, we show that siRNA-mediated depletion of certain lincRNAs associated with PRC2 leads to changes in gene expression, and that the up-regulated genes are enriched for those normally silenced by PRC2. We propose a model in which some lincRNAs guide chromatin-modifying complexes to specific genomic loci to regulate gene expression.


Nature Biotechnology | 2010

Ab initio reconstruction of cell type-specific transcriptomes in mouse reveals the conserved multi-exonic structure of lincRNAs

Mitchell Guttman; Manuel Garber; Joshua Z. Levin; Julie Donaghey; James Robinson; Xian Adiconis; Lin Fan; Magdalena J. Koziol; Andreas Gnirke; Chad Nusbaum; John L. Rinn; Eric S. Lander; Aviv Regev

Massively parallel cDNA sequencing (RNA-Seq) provides an unbiased way to study a transcriptome, including both coding and noncoding genes. Until now, most RNA-Seq studies have depended crucially on existing annotations and thus focused on expression levels and variation in known transcripts. Here, we present Scripture, a method to reconstruct the transcriptome of a mammalian cell using only RNA-Seq reads and the genome sequence. We applied it to mouse embryonic stem cells, neuronal precursor cells and lung fibroblasts to accurately reconstruct the full-length gene structures for most known expressed genes. We identified substantial variation in protein coding genes, including thousands of novel 5′ start sites, 3′ ends and internal coding exons. We then determined the gene structures of more than a thousand large intergenic noncoding RNA (lincRNA) and antisense loci. Our results open the way to direct experimental manipulation of thousands of noncoding RNAs and demonstrate the power of ab initio reconstruction to render a comprehensive picture of mammalian transcriptomes.RNA-Seq provides an unbiased way to study a transcriptome, including both coding and non-coding genes. To date, most RNA-Seq studies have critically depended on existing annotations, and thus focused on expression levels and variation in known transcripts. Here, we present Scripture, a method to reconstruct the transcriptome of a mammalian cell using only RNA-Seq reads and the genome sequence. We apply it to mouse embryonic stem cells, neuronal precursor cells, and lung fibroblasts to accurately reconstruct the full-length gene structures for the vast majority of known expressed genes. We identify substantial variation in protein-coding genes, including thousands of novel 5′-start sites, 3′-ends, and internal coding exons. We then determine the gene structures of over a thousand lincRNA and antisense loci. Our results open the way to direct experimental manipulation of thousands of non-coding RNAs, and demonstrate the power of ab initio reconstruction to render a comprehensive picture of mammalian transcriptomes.


Nature | 2011

A high-resolution map of human evolutionary constraint using 29 mammals

Kerstin Lindblad-Toh; Manuel Garber; Or Zuk; Michael F. Lin; Brian J. Parker; Stefan Washietl; Pouya Kheradpour; Jason Ernst; Gregory Jordan; Evan Mauceli; Lucas D. Ward; Craig B. Lowe; Alisha K. Holloway; Michele Clamp; Sante Gnerre; Jessica Alföldi; Kathryn Beal; Jean Chang; Hiram Clawson; James Cuff; Federica Di Palma; Stephen Fitzgerald; Paul Flicek; Mitchell Guttman; Melissa J. Hubisz; David B. Jaffe; Irwin Jungreis; W. James Kent; Dennis Kostka; Marcia Lara

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.


Nature Methods | 2011

Computational methods for transcriptome annotation and quantification using RNA-seq

Manuel Garber; Manfred Grabherr; Mitchell Guttman; Cole Trapnell

High-throughput RNA sequencing (RNA-seq) promises a comprehensive picture of the transcriptome, allowing for the complete annotation and quantification of all genes and their isoforms across samples. Realizing this promise requires increasingly complex computational methods. These computational challenges fall into three main categories: (i) read mapping, (ii) transcriptome reconstruction and (iii) expression quantification. Here we explain the major conceptual and practical challenges, and the general classes of solutions for each category. Finally, we highlight the interdependence between these categories and discuss the benefits for different biological applications.


Nature Genetics | 2010

Large intergenic non-coding RNA-RoR modulates reprogramming of human induced pluripotent stem cells

Sabine Loewer; Moran N. Cabili; Mitchell Guttman; Yuin-Han Loh; Kelly Thomas; In-Hyun Park; Manuel Garber; Matthew Curran; Tamer T. Onder; Suneet Agarwal; Philip D. Manos; Sumon Datta; Eric S. Lander; Thorsten M. Schlaeger; George Q. Daley; John L. Rinn

The conversion of lineage-committed cells to induced pluripotent stem cells (iPSCs) by reprogramming is accompanied by a global remodeling of the epigenome, resulting in altered patterns of gene expression. Here we characterize the transcriptional reorganization of large intergenic non-coding RNAs (lincRNAs) that occurs upon derivation of human iPSCs and identify numerous lincRNAs whose expression is linked to pluripotency. Among these, we defined ten lincRNAs whose expression was elevated in iPSCs compared with embryonic stem cells, suggesting that their activation may promote the emergence of iPSCs. Supporting this, our results indicate that these lincRNAs are direct targets of key pluripotency transcription factors. Using loss-of-function and gain-of-function approaches, we found that one such lincRNA (lincRNA-RoR) modulates reprogramming, thus providing a first demonstration for critical functions of lincRNAs in the derivation of pluripotent stem cells.


Science | 2009

Genome Sequence, Comparative Analysis, and Population Genetics of the Domestic Horse

Claire M. Wade; Elena Giulotto; Snaevar Sigurdsson; Monica Zoli; Sante Gnerre; Freyja Imsland; Teri L. Lear; David L. Adelson; Ernest Bailey; Rebecca R. Bellone; Helmut Blöcker; Ottmar Distl; R.C. Edgar; Manuel Garber; Tosso Leeb; Evan Mauceli; James N. MacLeod; M.C.T. Penedo; Joy M. Raison; Ted Sharpe; J. Vogel; Leif Andersson; Douglas F. Antczak; Tara Biagi; M. M. Binns; B.P. Chowdhary; S.J. Coleman; G. Della Valle; Sarah Fryc; Gérard Guérin

A Horse Is a Horse, of Course The history of horse domestication is closely tied to the history of the human society. Wade et al. (p. 865) report on the sequencing and provide a single nucleotide polymorphism map of the horse (Equus caballus) genome. Horses are a member of the order perissodactyla (odd-toed animals with hooves). The analysis reveals an evolutionarily new centromere on equine chromosome 11 that displays properties of an immature but fully functioning centromere and is devoid of centromeric satellite sequence. The findings clarify the nature of genetic diversity within and across horse breeds and suggest that the horse was domesticated from a relatively large number of females, but few males. The horse genome reveals an evolutionary new centromere and conserved chromosomal sequences relative to other mammals. We report a high-quality draft sequence of the genome of the horse (Equus caballus). The genome is relatively repetitive but has little segmental duplication. Chromosomes appear to have undergone few historical rearrangements: 53% of equine chromosomes show conserved synteny to a single human chromosome. Equine chromosome 11 is shown to have an evolutionary new centromere devoid of centromeric satellite DNA, suggesting that centromeric function may arise before satellite repeat accumulation. Linkage disequilibrium, showing the influences of early domestication of large herds of female horses, is intermediate in length between dog and human, and there is long-range haplotype sharing among breeds.


Genome Research | 2012

Systematic identification of long noncoding RNAs expressed during zebrafish embryogenesis

Andrea Pauli; Eivind Valen; Michael F. Lin; Manuel Garber; Nadine L. Vastenhouw; Joshua Z. Levin; Lin Fan; Albin Sandelin; John L. Rinn; Aviv Regev; Alexander F. Schier

Long noncoding RNAs (lncRNAs) comprise a diverse class of transcripts that structurally resemble mRNAs but do not encode proteins. Recent genome-wide studies in humans and the mouse have annotated lncRNAs expressed in cell lines and adult tissues, but a systematic analysis of lncRNAs expressed during vertebrate embryogenesis has been elusive. To identify lncRNAs with potential functions in vertebrate embryogenesis, we performed a time-series of RNA-seq experiments at eight stages during early zebrafish development. We reconstructed 56,535 high-confidence transcripts in 28,912 loci, recovering the vast majority of expressed RefSeq transcripts while identifying thousands of novel isoforms and expressed loci. We defined a stringent set of 1133 noncoding multi-exonic transcripts expressed during embryogenesis. These include long intergenic ncRNAs (lincRNAs), intronic overlapping lncRNAs, exonic antisense overlapping lncRNAs, and precursors for small RNAs (sRNAs). Zebrafish lncRNAs share many of the characteristics of their mammalian counterparts: relatively short length, low exon number, low expression, and conservation levels comparable to that of introns. Subsets of lncRNAs carry chromatin signatures characteristic of genes with developmental functions. The temporal expression profile of lncRNAs revealed two novel properties: lncRNAs are expressed in narrower time windows than are protein-coding genes and are specifically enriched in early-stage embryos. In addition, several lncRNAs show tissue-specific expression and distinct subcellular localization patterns. Integrative computational analyses associated individual lncRNAs with specific pathways and functions, ranging from cell cycle regulation to morphogenesis. Our study provides the first systematic identification of lncRNAs in a vertebrate embryo and forms the foundation for future genetic, genomic, and evolutionary studies.


Science | 2009

Unbiased Reconstruction of a Mammalian Transcriptional Network Mediating Pathogen Responses

Ido Amit; Manuel Garber; Nicolas Chevrier; Ana Paula Leite; Yoni Donner; Thomas Eisenhaure; Mitchell Guttman; Jennifer K. Grenier; Weibo Li; Or Zuk; Lisa A. Schubert; Brian Birditt; Tal Shay; Alon Goren; Xiaolan Zhang; Zachary D. Smith; Raquel P. Deering; Rebecca C. McDonald; Moran N. Cabili; Bradley E. Bernstein; John L. Rinn; Alexander Meissner; David E. Root; Nir Hacohen; Aviv Regev

Peeking at Pathogen Response Networks Networks controlling gene expression serve as key decision-making circuits in cells, but the regulatory networks that control dynamic and specific gene expression responses to stimuli are often not well understood. This is particularly true for immune dendritic cells (DCs), which respond to pathogens by mounting elaborate transcriptional responses, and are centrally involved in infectious diseases, autoimmunity, and vaccines. Amit et al. (p. 257, published online 3 September) explored the transcriptional response of dendritic cells to specific classes of pathogens. The transcriptional subnetworks responsible for mammalian dendritic cell responses to different pathogens were identified, and the function of 100 regulators clarified. Inflammatory and antiviral programs in dendritic cells are controlled and tuned by a network of regulators. 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.


Science | 2010

A Composite of Multiple Signals Distinguishes Causal Variants in Regions of Positive Selection

Sharon R. Grossman; Ilya Shylakhter; Elinor K. Karlsson; Elizabeth H. Byrne; Shannon Morales; Gabriel Frieden; Elizabeth Hostetter; Elaine Angelino; Manuel Garber; Or Zuk; Eric S. Lander; Stephen F. Schaffner; Pardis C. Sabeti

Pinpointing Genetic Selection The human genome contains hundreds of regions with evidence of recent positive natural selection, yet, for all but a handful of cases, the underlying advantageous mutation remains unknown. Current methods to detect the signal of selection often results in the identification of a broad genomic region containing many candidate regions that vary among individuals. By combining existing statistical methods, Grossman et al. (p. 883, published online 7 January) developed a method, termed Composite of Multiple Signals, which can increase the ability to pinpoint the specific variant under selection. Several candidate regions under selection in human populations were identified. Combining statistical methods detects signals of selection with increased sensitivity and a lower false-positive rate. 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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Mitchell Guttman

California Institute of Technology

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Aviv Regev

Massachusetts Institute of Technology

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Ido Amit

Weizmann Institute of Science

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Alper Kucukural

University of Massachusetts Medical School

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Barbara Tabak

University of Massachusetts Medical School

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