Academic literature on the topic 'ChIP-Seq motifs finding'

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Journal articles on the topic "ChIP-Seq motifs finding"

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Zhang, Yipu, and Ping Wang. "A Fast Cluster Motif Finding Algorithm for ChIP-Seq Data Sets." BioMed Research International 2015 (2015): 1–10. http://dx.doi.org/10.1155/2015/218068.

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New high-throughput technique ChIP-seq, coupling chromatin immunoprecipitation experiment with high-throughput sequencing technologies, has extended the identification of binding locations of a transcription factor to the genome-wide regions. However, the most existing motif discovery algorithms are time-consuming and limited to identify binding motifs in ChIP-seq data which normally has the significant characteristics of large scale data. In order to improve the efficiency, we propose a fast cluster motif finding algorithm, named as FCmotif, to identify the(l, d)motifs in large scale ChIP-seq data set. It is inspired by the emerging substrings mining strategy to find the enriched substrings and then searching the neighborhood instances to construct PWM and cluster motifs in different length. FCmotif is not following the OOPS model constraint and can find long motifs. The effectiveness of proposed algorithm has been proved by experiments on the ChIP-seq data sets from mouse ES cells. The whole detection of the real binding motifs and processing of the full size data of several megabytes finished in a few minutes. The experimental results show that FCmotif has advantageous to deal with the(l, d)motif finding in the ChIP-seq data; meanwhile it also demonstrates better performance than other current widely-used algorithms such as MEME, Weeder, ChIPMunk, and DREME.
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Mukhin, A. M., V. G. Levitsky, and S. A. Lashin. "Developing of WebMCOT Web-Service for Finding Cooperative Site-Binding TF DNA-Motifs." Vestnik NSU. Series: Information Technologies 17, no. 4 (2019): 74–86. http://dx.doi.org/10.25205/1818-7900-2019-17-4-5-74-86.

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Regulation of eukaryotic gene transcription is controlled by specific proteins transcription factors. Transcription factors bind certain regions of genomic DNA (binding sites or motives). Common action of two or more transcription factors is widespread mechanism of transcription factor action. Hence, the term ‘composite element’ implied two closely located and frequently occurred in genomic DNA motives. Composite elements are partitioned onto those with two overlapped motifs, or with these two motifs separated with a spacer. Currently, the chromatin immunoprecipitation high throughput approach ChIP-seq is used to locate binding sites for a certain “anchor” transcription factor in vivo in genomic scale. Thus, the search of composite elements with the help of ChIP-seq whole-genome transcription factor binding profiles is the actual bioinformatics issue. But existing approaches for prediction of composite elements on the basis of ChIP-seq data either omit an overlap of motifs (but require only a single ChIP-seq dataset) or consider an overlap of motifs (but require additional ChIP-seq data for a partner motif). But, ChIP-seq experiments are very expensive. In the Institute of Cytology and Genetics, MCOT program has been recently developed. It performs search of motifs taking into account their overlaps based on a single ChIP-seq dataset. MCOT is a console application and does not have many user friendly functions like data preparation and report generation. This work presents a web service WebMCOT for prediction of co-occurred DNA motifs in ChIP-seq data. WebMCOT consists of three parts: client, server, and worker. Software tools list, architecture and web interface are presented.
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Ngo, Vu, Mengchi Wang, and Wei Wang. "Finding de novo methylated DNA motifs." Bioinformatics 35, no. 18 (2019): 3287–93. http://dx.doi.org/10.1093/bioinformatics/btz079.

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Abstract Motivation Increasing evidence has shown that nucleotide modifications such as methylation and hydroxymethylation on cytosine would greatly impact the binding of transcription factors (TFs). However, there is a lack of motif finding algorithms with the function to search for motifs with modified bases. In this study, we expand on our previous motif finding pipeline Epigram to provide systematic de novo motif discovery and performance evaluation on methylated DNA motifs. Results mEpigram outperforms both MEME and DREME on finding modified motifs in simulated data that mimics various motif enrichment scenarios. Furthermore we were able to identify methylated motifs in Arabidopsis DNA affinity purification sequencing (DAP-seq) data that were previously demonstrated to contain such motifs. When applied to TF ChIP-seq and DNA methylome data in H1 and GM12878, our method successfully identified novel methylated motifs that can be recognized by the TFs or their co-factors. We also observed spacing constraint between the canonical motif of the TF and the newly discovered methylated motifs, which suggests operative recognition of these cis-elements by collaborative proteins. Availability and implementation The mEpigram program is available at http://wanglab.ucsd.edu/star/mEpigram. Supplementary information Supplementary data are available at Bioinformatics online.
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Vishnevsky, Oleg V., Andrey V. Bocharnikov, and Nikolay A. Kolchanov. "Argo_CUDA: Exhaustive GPU based approach for motif discovery in large DNA datasets." Journal of Bioinformatics and Computational Biology 16, no. 01 (2018): 1740012. http://dx.doi.org/10.1142/s0219720017400121.

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The development of chromatin immunoprecipitation sequencing (ChIP-seq) technology has revolutionized the genetic analysis of the basic mechanisms underlying transcription regulation and led to accumulation of information about a huge amount of DNA sequences. There are a lot of web services which are currently available for de novo motif discovery in datasets containing information about DNA/protein binding. An enormous motif diversity makes their finding challenging. In order to avoid the difficulties, researchers use different stochastic approaches. Unfortunately, the efficiency of the motif discovery programs dramatically declines with the query set size increase. This leads to the fact that only a fraction of top “peak” ChIP-Seq segments can be analyzed or the area of analysis should be narrowed. Thus, the motif discovery in massive datasets remains a challenging issue. Argo_Compute Unified Device Architecture (CUDA) web service is designed to process the massive DNA data. It is a program for the detection of degenerate oligonucleotide motifs of fixed length written in 15-letter IUPAC code. Argo_CUDA is a full-exhaustive approach based on the high-performance GPU technologies. Compared with the existing motif discovery web services, Argo_CUDA shows good prediction quality on simulated sets. The analysis of ChIP-Seq sequences revealed the motifs which correspond to known transcription factor binding sites.
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Mahmoud, Hammad, Bani Baker Qanita, Al-Smadi Mohammed, and Alrashdan Wesam. "Towards enhancing the user experience of ChIP-Seq data analysis web tools." International Journal of Electrical and Computer Engineering (IJECE) 12, no. 5 (2022): 5236–47. https://doi.org/10.11591/ijece.v12i5.pp5236-5247.

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Deoxyribonucleic acid (DNA) sequencing is the process of locating the sequence of the main chemical bases in the DNA. Next-generation sequencing (NGS) is the state-of-the-art DNA sequencing technique. The NGS technique advanced the biological science in analyzing human DNA due to its scalability, high throughput, and speed. Analyzing human DNA is crucial to determine the ability of a person to develop certain diseases and his ability to respond to certain medications. ChIP-sequencing is a method that combines chromatin immunoprecipitation (ChIP) with NGS sequencing to analyze protein interactions with DNA to identify binding sites. Many online web tools have been developed to conduct ChIP-Seq data analysis to either discover or find motifs, i.e., patterns of binding sites. Since these ChIP-Seq web tools need to be used by clinical practitioners, they must comply to the web-related usability tasks including effectiveness, efficiency and satisfaction to enhance the user experience (UX). To that end, we have conducted an empirical study to understand their UX design. Specifically, we have evaluated the usability of 8 widely used ChIP-Seq web tools against 6 known usability quality metrics. Our study shows that the design of the studied ChIP-Seq web tools does not follow the UX design principles.
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Tran, Ngoc Tam L., and Chun-Hsi Huang. "A survey of motif finding Web tools for detecting binding site motifs in ChIP-Seq data." Biology Direct 9, no. 1 (2014): 4. http://dx.doi.org/10.1186/1745-6150-9-4.

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Li, Yang, Pengyu Ni, Shaoqiang Zhang, Guojun Li, and Zhengchang Su. "ProSampler: an ultrafast and accurate motif finder in large ChIP-seq datasets for combinatory motif discovery." Bioinformatics 35, no. 22 (2019): 4632–39. http://dx.doi.org/10.1093/bioinformatics/btz290.

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Abstract Motivation The availability of numerous ChIP-seq datasets for transcription factors (TF) has provided an unprecedented opportunity to identify all TF binding sites in genomes. However, the progress has been hindered by the lack of a highly efficient and accurate tool to find not only the target motifs, but also cooperative motifs in very big datasets. Results We herein present an ultrafast and accurate motif-finding algorithm, ProSampler, based on a novel numeration method and Gibbs sampler. ProSampler runs orders of magnitude faster than the fastest existing tools while often more accurately identifying motifs of both the target TFs and cooperators. Thus, ProSampler can greatly facilitate the efforts to identify the entire cis-regulatory code in genomes. Availability and implementation Source code and binaries are freely available for download at https://github.com/zhengchangsulab/prosampler. It was implemented in C++ and supported on Linux, macOS and MS Windows platforms. Supplementary information Supplementary materials are available at Bioinformatics online.
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Zambelli, Federico, Graziano Pesole, and Giulio Pavesi. "PscanChIP: finding over-represented transcription factor-binding site motifs and their correlations in sequences from ChIP-Seq experiments." Nucleic Acids Research 41, W1 (2013): W535—W543. http://dx.doi.org/10.1093/nar/gkt448.

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Korbolina, Elena E., Leonid O. Bryzgalov, Diana Z. Ustrokhanova, et al. "A Panel of rSNPs Demonstrating Allelic Asymmetry in Both ChIP-seq and RNA-seq Data and the Search for Their Phenotypic Outcomes through Analysis of DEGs." International Journal of Molecular Sciences 22, no. 14 (2021): 7240. http://dx.doi.org/10.3390/ijms22147240.

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Currently, the detection of the allele asymmetry of gene expression from RNA-seq data or the transcription factor binding from ChIP-seq data is one of the approaches used to identify the functional genetic variants that can affect gene expression (regulatory SNPs or rSNPs). In this study, we searched for rSNPs using the data for human pulmonary arterial endothelial cells (PAECs) available from the Sequence Read Archive (SRA). Allele-asymmetric binding and expression events are analyzed in paired ChIP-seq data for H3K4me3 mark and RNA-seq data obtained for 19 individuals. Two statistical approaches, weighted z-scores and predicted probabilities, were used to improve the efficiency of finding rSNPs. In total, we identified 14,266 rSNPs associated with both allele-specific binding and expression. Among them, 645 rSNPs were associated with GWAS phenotypes; 4746 rSNPs were reported as eQTLs by GTEx, and 11,536 rSNPs were located in 374 candidate transcription factor binding motifs. Additionally, we searched for the rSNPs associated with gene expression using an SRA RNA-seq dataset for 281 clinically annotated human postmortem brain samples and detected eQTLs for 2505 rSNPs. Based on these results, we conducted Gene Ontology (GO), Disease Ontology (DO), and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analyses and constructed the protein–protein interaction networks to represent the top-ranked biological processes with a possible contribution to the phenotypic outcome.
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Martin-Trujillo, Alejandro, Nihir Patel, Felix Richter, et al. "Rare genetic variation at transcription factor binding sites modulates local DNA methylation profiles." PLOS Genetics 16, no. 11 (2020): e1009189. http://dx.doi.org/10.1371/journal.pgen.1009189.

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Although DNA methylation is the best characterized epigenetic mark, the mechanism by which it is targeted to specific regions in the genome remains unclear. Recent studies have revealed that local DNA methylation profiles might be dictated by cis-regulatory DNA sequences that mainly operate via DNA-binding factors. Consistent with this finding, we have recently shown that disruption of CTCF-binding sites by rare single nucleotide variants (SNVs) can underlie cis-linked DNA methylation changes in patients with congenital anomalies. These data raise the hypothesis that rare genetic variation at transcription factor binding sites (TFBSs) might contribute to local DNA methylation patterning. In this work, by combining blood genome-wide DNA methylation profiles, whole genome sequencing-derived SNVs from 247 unrelated individuals along with 133 predicted TFBS motifs derived from ENCODE ChIP-Seq data, we observed an association between the disruption of binding sites for multiple TFs by rare SNVs and extreme DNA methylation values at both local and, to a lesser extent, distant CpGs. While the majority of these changes affected only single CpGs, 24% were associated with multiple outlier CpGs within ±1kb of the disrupted TFBS. Interestingly, disruption of functionally constrained sites within TF motifs lead to larger DNA methylation changes at nearby CpG sites. Altogether, these findings suggest that rare SNVs at TFBS negatively influence TF-DNA binding, which can lead to an altered local DNA methylation profile. Furthermore, subsequent integration of DNA methylation and RNA-Seq profiles from cardiac tissues enabled us to observe an association between rare SNV-directed DNA methylation and outlier expression of nearby genes. In conclusion, our findings not only provide insights into the effect of rare genetic variation at TFBS on shaping local DNA methylation and its consequences on genome regulation, but also provide a rationale to incorporate DNA methylation data to interpret the functional role of rare variants.
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Book chapters on the topic "ChIP-Seq motifs finding"

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Zambelli, Federico, and Giulio Pavesi. "A Faster Algorithm for Motif Finding in Sequences from ChIP-Seq Data." In Computational Intelligence Methods for Bioinformatics and Biostatistics. Springer Berlin Heidelberg, 2012. http://dx.doi.org/10.1007/978-3-642-35686-5_17.

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