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Dive into the research topics where Shaheynoor Talukder is active.

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Featured researches published by Shaheynoor Talukder.


Cell | 2008

Variation in homeodomain DNA-binding revealed by high-resolution analysis of sequence preferences

Michael F. Berger; Gwenael Badis; Andrew R. Gehrke; Shaheynoor Talukder; Anthony A. Philippakis; Lourdes Peña-Castillo; Trevis M. Alleyne; Sanie Mnaimneh; Olga Botvinnik; Esther T. Chan; Faiqua Khalid; Wen Zhang; Daniel E. Newburger; Savina A. Jaeger; Quaid Morris; Martha L. Bulyk; Timothy R. Hughes

Most homeodomains are unique within a genome, yet many are highly conserved across vast evolutionary distances, implying strong selection on their precise DNA-binding specificities. We determined the binding preferences of the majority (168) of mouse homeodomains to all possible 8-base sequences, revealing rich and complex patterns of sequence specificity and showing that there are at least 65 distinct homeodomain DNA-binding activities. We developed a computational system that successfully predicts binding sites for homeodomain proteins as distant from mouse as Drosophila and C. elegans, and we infer full 8-mer binding profiles for the majority of known animal homeodomains. Our results provide an unprecedented level of resolution in the analysis of this simple domain structure and suggest that variation in sequence recognition may be a factor in its functional diversity and evolutionary success.


The EMBO Journal | 2010

Genome-wide analysis of ETS-family DNA-binding in vitro and in vivo

Gong-Hong Wei; Gwenael Badis; Michael F. Berger; Teemu Kivioja; Kimmo Palin; Martin Enge; Martin Bonke; Arttu Jolma; Markku Varjosalo; Andrew R. Gehrke; Jian Yan; Shaheynoor Talukder; Mikko Turunen; Mikko Taipale; Hendrik G. Stunnenberg; Esko Ukkonen; Timothy R. Hughes; Martha L. Bulyk; Jussi Taipale

Members of the large ETS family of transcription factors (TFs) have highly similar DNA‐binding domains (DBDs)—yet they have diverse functions and activities in physiology and oncogenesis. Some differences in DNA‐binding preferences within this family have been described, but they have not been analysed systematically, and their contributions to targeting remain largely uncharacterized. We report here the DNA‐binding profiles for all human and mouse ETS factors, which we generated using two different methods: a high‐throughput microwell‐based TF DNA‐binding specificity assay, and protein‐binding microarrays (PBMs). Both approaches reveal that the ETS‐binding profiles cluster into four distinct classes, and that all ETS factors linked to cancer, ERG, ETV1, ETV4 and FLI1, fall into just one of these classes. We identify amino‐acid residues that are critical for the differences in specificity between all the classes, and confirm the specificities in vivo using chromatin immunoprecipitation followed by sequencing (ChIP‐seq) for a member of each class. The results indicate that even relatively small differences in in vitro binding specificity of a TF contribute to site selectivity in vivo.


Molecular Cell | 2008

A Library of Yeast Transcription Factor Motifs Reveals a Widespread Function for Rsc3 in Targeting Nucleosome Exclusion at Promoters

Gwenael Badis; Esther T. Chan; Harm van Bakel; Lourdes Peña-Castillo; Desiree Tillo; Kyle Tsui; Clayton D. Carlson; Andrea J. Gossett; Michael J. Hasinoff; Christopher L. Warren; Marinella Gebbia; Shaheynoor Talukder; Ally Yang; Sanie Mnaimneh; Dimitri Terterov; David Coburn; Ai Li Yeo; Zhen Xuan Yeo; Neil D. Clarke; Jason D. Lieb; Aseem Z. Ansari; Corey Nislow; Timothy R. Hughes

The sequence specificity of DNA-binding proteins is the primary mechanism by which the cell recognizes genomic features. Here, we describe systematic determination of yeast transcription factor DNA-binding specificities. We obtained binding specificities for 112 DNA-binding proteins representing 19 distinct structural classes. One-third of the binding specificities have not been previously reported. Several binding sequences have striking genomic distributions relative to transcription start sites, supporting their biological relevance and suggesting a role in promoter architecture. Among these are Rsc3 binding sequences, containing the core CGCG, which are found preferentially approximately 100 bp upstream of transcription start sites. Mutation of RSC3 results in a dramatic increase in nucleosome occupancy in hundreds of proximal promoters containing a Rsc3 binding element, but has little impact on promoters lacking Rsc3 binding sequences, indicating that Rsc3 plays a broad role in targeting nucleosome exclusion at yeast promoters.


Nature Biotechnology | 2009

Rapid and systematic analysis of the RNA recognition specificities of RNA-binding proteins.

Debashish Ray; Hilal Kazan; Esther T. Chan; Lourdes Peña Castillo; Sidharth Chaudhry; Shaheynoor Talukder; Benjamin J. Blencowe; Quaid Morris; Timothy R. Hughes

Metazoan genomes encode hundreds of RNA-binding proteins (RBPs) but RNA-binding preferences for relatively few RBPs have been well defined. Current techniques for determining RNA targets, including in vitro selection and RNA co-immunoprecipitation, require significant time and labor investment. Here we introduce RNAcompete, a method for the systematic analysis of RNA binding specificities that uses a single binding reaction to determine the relative preferences of RBPs for short RNAs that contain a complete range of k-mers in structured and unstructured RNA contexts. We tested RNAcompete by analyzing nine diverse RBPs (HuR, Vts1, FUSIP1, PTB, U1A, SF2/ASF, SLM2, RBM4 and YB1). RNAcompete identified expected and previously unknown RNA binding preferences. Using in vitro and in vivo binding data, we demonstrate that preferences for individual 7-mers identified by RNAcompete are a more accurate representation of binding activity than are conventional motif models. We anticipate that RNAcompete will be a valuable tool for the study of RNA-protein interactions.


Genome Research | 2010

Multiplexed massively parallel SELEX for characterization of human transcription factor binding specificities

Arttu Jolma; Teemu Kivioja; Jarkko Toivonen; Lu Cheng; Gong-Hong Wei; Martin Enge; Mikko Taipale; Juan M. Vaquerizas; Jian Yan; Mikko J. Sillanpää; Martin Bonke; Kimmo Palin; Shaheynoor Talukder; Timothy Hughes; Nicholas M. Luscombe; Esko Ukkonen; Jussi Taipale

The genetic code-the binding specificity of all transfer-RNAs--defines how protein primary structure is determined by DNA sequence. DNA also dictates when and where proteins are expressed, and this information is encoded in a pattern of specific sequence motifs that are recognized by transcription factors. However, the DNA-binding specificity is only known for a small fraction of the approximately 1400 human transcription factors (TFs). We describe here a high-throughput method for analyzing transcription factor binding specificity that is based on systematic evolution of ligands by exponential enrichment (SELEX) and massively parallel sequencing. The method is optimized for analysis of large numbers of TFs in parallel through the use of affinity-tagged proteins, barcoded selection oligonucleotides, and multiplexed sequencing. Data are analyzed by a new bioinformatic platform that uses the hundreds of thousands of sequencing reads obtained to control the quality of the experiments and to generate binding motifs for the TFs. The described technology allows higher throughput and identification of much longer binding profiles than current microarray-based methods. In addition, as our method is based on proteins expressed in mammalian cells, it can also be used to characterize DNA-binding preferences of full-length proteins or proteins requiring post-translational modifications. We validate the method by determining binding specificities of 14 different classes of TFs and by confirming the specificities for NFATC1 and RFX3 using ChIP-seq. Our results reveal unexpected dimeric modes of binding for several factors that were thought to preferentially bind DNA as monomers.


Cell | 2011

An alternative splicing switch regulates embryonic stem cell pluripotency and reprogramming.

Mathieu Gabut; Payman Samavarchi-Tehrani; Xinchen Wang; Valentina Slobodeniuc; Dave O'Hanlon; Hoon-Ki Sung; Manuel M Alvarez; Shaheynoor Talukder; Qun Pan; Esteban O. Mazzoni; Stephane Nedelec; Hynek Wichterle; Knut Woltjen; Timothy R. Hughes; Peter W. Zandstra; Andras Nagy; Jeffrey L. Wrana; Benjamin J. Blencowe

Alternative splicing (AS) is a key process underlying the expansion of proteomic diversity and the regulation of gene expression. Here, we identify an evolutionarily conserved embryonic stem cell (ESC)-specific AS event that changes the DNA-binding preference of the forkhead family transcription factor FOXP1. We show that the ESC-specific isoform of FOXP1 stimulates the expression of transcription factor genes required for pluripotency, including OCT4, NANOG, NR5A2, and GDF3, while concomitantly repressing genes required for ESC differentiation. This isoform also promotes the maintenance of ESC pluripotency and contributes to efficient reprogramming of somatic cells into induced pluripotent stem cells. These results reveal a pivotal role for an AS event in the regulation of pluripotency through the control of critical ESC-specific transcriptional programs.


Nature Biotechnology | 2013

Evaluation of methods for modeling transcription factor sequence specificity

Matthew T. Weirauch; Raquel Norel; Matti Annala; Yue Zhao; Todd Riley; Julio Saez-Rodriguez; Thomas Cokelaer; Anastasia Vedenko; Shaheynoor Talukder; Phaedra Agius; Aaron Arvey; Philipp Bucher; Curtis G. Callan; Cheng Wei Chang; Chien-Yu Chen; Yong-Syuan Chen; Yu-Wei Chu; Jan Grau; Ivo Grosse; Vidhya Jagannathan; Jens Keilwagen; Szymon M. Kiełbasa; Justin B. Kinney; Holger Klein; Miron B. Kursa; Harri Lähdesmäki; Kirsti Laurila; Chengwei Lei; Christina S. Leslie; Chaim Linhart

Genomic analyses often involve scanning for potential transcription factor (TF) binding sites using models of the sequence specificity of DNA binding proteins. Many approaches have been developed to model and learn a proteins DNA-binding specificity, but these methods have not been systematically compared. Here we applied 26 such approaches to in vitro protein binding microarray data for 66 mouse TFs belonging to various families. For nine TFs, we also scored the resulting motif models on in vivo data, and found that the best in vitro–derived motifs performed similarly to motifs derived from the in vivo data. Our results indicate that simple models based on mononucleotide position weight matrices trained by the best methods perform similarly to more complex models for most TFs examined, but fall short in specific cases (<10% of the TFs examined here). In addition, the best-performing motifs typically have relatively low information content, consistent with widespread degeneracy in eukaryotic TF sequence preferences.


Journal of Proteome Research | 2008

Evaluation of data-dependent versus targeted shotgun proteomic approaches for monitoring transcription factor expression in breast cancer.

Charanjit Sandhu; Johannes A. Hewel; Gwenael Badis; Shaheynoor Talukder; Jian Liu; Timothy Hughes; Andrew Emili

In breast cancer, there is a significant degree of molecular diversity among tumors. Multiple perturbations in signal transduction pathways impinge on transcriptional networks that in turn dictate malignant transformation and metastatic progression. Detailed knowledge of the sequence-specific transcription factors that become activated or repressed within a tumor and comparison of their relative levels of expression in cancer versus normal tissue should therefore provide insight into disease mechanisms, improving patient stratification and facilitating personalized treatment. While high-throughput tandem mass spectrometry methods for global proteome profiling have been developed, existing approaches have limited sensitivity and are often unable to detect low-abundance transcription factors in a complex biological specimen like a biopsy or tumor cell extract. To this end, we have undertaken a systematic comparative evaluation of three MS/MS methods for the ability to detect reference transcription factors spiked in known amounts into a cell-free breast cancer nuclear extract: Data-Dependent Acquisition (DDA), wherein precursor ion intensity dictates selection for fragmentation; Targeted Peptide Monitoring (TPM), a directed approach using successive isolation and fragmentation of predefined m/ z ratios; and Multiple Reaction Monitoring (MRM), in which specific precursor ion to product ion transitions are selectively monitored. Through a series of controlled, parallel benchmarking experiments, we have determined the relative figures-of-merit of each approach, and have established that prior knowledge of signature proteotypic peptides markedly improves overall detection sensitivity, reliability, and quantification.


Bioinformatics | 2009

Predicting the binding preference of transcription factors to individual DNA k-mers

Trevis M. Alleyne; Lourdes Peña-Castillo; Gwenael Badis; Shaheynoor Talukder; Michael F. Berger; Andrew R. Gehrke; Anthony A. Philippakis; Martha L. Bulyk; Quaid D. Morris; Timothy R. Hughes

Motivation: Recognition of specific DNA sequences is a central mechanism by which transcription factors (TFs) control gene expression. Many TF-binding preferences, however, are unknown or poorly characterized, in part due to the difficulty associated with determining their specificity experimentally, and an incomplete understanding of the mechanisms governing sequence specificity. New techniques that estimate the affinity of TFs to all possible k-mers provide a new opportunity to study DNA–protein interaction mechanisms, and may facilitate inference of binding preferences for members of a given TF family when such information is available for other family members. Results: We employed a new dataset consisting of the relative preferences of mouse homeodomains for all eight-base DNA sequences in order to ask how well we can predict the binding profiles of homeodomains when only their protein sequences are given. We evaluated a panel of standard statistical inference techniques, as well as variations of the protein features considered. Nearest neighbour among functionally important residues emerged among the most effective methods. Our results underscore the complexity of TF–DNA recognition, and suggest a rational approach for future analyses of TF families. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Developmental Biology | 2011

BzpF is a CREB-like transcription factor that regulates spore maturation and stability in Dictyostelium.

Eryong Huang; Shaheynoor Talukder; Timothy R. Hughes; Tomaz Curk; Blaz Zupan; Gad Shaulsky; Mariko Katoh-Kurasawa

The cAMP response element-binding protein (CREB) is a highly conserved transcription factor that integrates signaling through the cAMP-dependent protein kinase A (PKA) in many eukaryotes. PKA plays a critical role in Dictyostelium development but no CREB homologue has been identified in this system. Here we show that Dictyostelium utilizes a CREB-like protein, BzpF, to integrate PKA signaling during late development. bzpF(-) mutants produce compromised spores, which are extremely unstable and germination defective. Previously, we have found that BzpF binds the canonical CRE motif in vitro. In this paper, we determined the DNA binding specificity of BzpF using protein binding microarray (PBM) and showed that the motif with the highest specificity is a CRE-like sequence. BzpF is necessary to activate the transcription of at least 15 PKA-regulated, late-developmental target genes whose promoters contain BzpF binding motifs. BzpF is sufficient to activate two of these genes. The comparison of RNA sequencing data between wild type and bzpF(-) mutant revealed that the mutant fails to express 205 genes, many of which encode cellulose-binding and sugar-binding proteins. We propose that BzpF is a CREB-like transcription factor that regulates spore maturation and stability in a PKA-related manner.

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Martha L. Bulyk

Brigham and Women's Hospital

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Michael F. Berger

Massachusetts Institute of Technology

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Mikko Taipale

Massachusetts Institute of Technology

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Lourdes Peña-Castillo

Memorial University of Newfoundland

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