8 results on '"Lassmann, T."'
Search Results
2. Automatic assessment of alignment quality
- Author
-
Lassmann, T., primary
- Published
- 2005
- Full Text
- View/download PDF
3. Integration of genetics and miRNA-target gene network identified disease biology implicated in tissue specificity.
- Author
-
Sakaue S, Hirata J, Maeda Y, Kawakami E, Nii T, Kishikawa T, Ishigaki K, Terao C, Suzuki K, Akiyama M, Suita N, Masuda T, Ogawa K, Yamamoto K, Saeki Y, Matsushita M, Yoshimura M, Matsuoka H, Ikari K, Taniguchi A, Yamanaka H, Kawaji H, Lassmann T, Itoh M, Yoshitomi H, Ito H, Ohmura K, R Forrest AR, Hayashizaki Y, Carninci P, Kumanogoh A, Kamatani Y, de Hoon M, Yamamoto K, and Okada Y
- Subjects
- Algorithms, Arthritis, Rheumatoid immunology, Arthritis, Rheumatoid pathology, Asthma immunology, Asthma pathology, Biomarkers metabolism, Case-Control Studies, Colitis, Ulcerative immunology, Colitis, Ulcerative pathology, Computational Biology methods, Gene Expression Profiling, Gene Expression Regulation, Genetic Loci, Genome-Wide Association Study, Graves Disease immunology, Graves Disease pathology, Humans, MicroRNAs classification, MicroRNAs metabolism, Multifactorial Inheritance genetics, Multifactorial Inheritance immunology, Organ Specificity, Signal Transduction, Arthritis, Rheumatoid genetics, Asthma genetics, Colitis, Ulcerative genetics, Gene Regulatory Networks, Genome, Human, Graves Disease genetics, MicroRNAs genetics
- Abstract
MicroRNAs (miRNAs) modulate the post-transcriptional regulation of target genes and are related to biology of complex human traits, but genetic landscape of miRNAs remains largely unknown. Given the strikingly tissue-specific miRNA expression profiles, we here expand a previous method to quantitatively evaluate enrichment of genome-wide association study (GWAS) signals on miRNA-target gene networks (MIGWAS) to further estimate tissue-specific enrichment. Our approach integrates tissue-specific expression profiles of miRNAs (∼1800 miRNAs in 179 cells) with GWAS to test whether polygenic signals enrich in miRNA-target gene networks and whether they fall within specific tissues. We applied MIGWAS to 49 GWASs (nTotal = 3 520 246), and successfully identified biologically relevant tissues. Further, MIGWAS could point miRNAs as candidate biomarkers of the trait. As an illustrative example, we performed differentially expressed miRNA analysis between rheumatoid arthritis (RA) patients and healthy controls (n = 63). We identified novel biomarker miRNAs (e.g. hsa-miR-762) by integrating differentially expressed miRNAs with MIGWAS results for RA, as well as novel associated loci with significant genetic risk (rs56656810 at MIR762 at 16q11; n = 91 482, P = 3.6 × 10-8). Our result highlighted that miRNA-target gene network contributes to human disease genetics in a cell type-specific manner, which could yield an efficient screening of miRNAs as promising biomarkers.
- Published
- 2018
- Full Text
- View/download PDF
4. Functional annotation of the vlinc class of non-coding RNAs using systems biology approach.
- Author
-
St Laurent G, Vyatkin Y, Antonets D, Ri M, Qi Y, Saik O, Shtokalo D, de Hoon MJ, Kawaji H, Itoh M, Lassmann T, Arner E, Forrest AR, Nicolas E, McCaffrey TA, Carninci P, Hayashizaki Y, Wahlestedt C, and Kapranov P
- Subjects
- Cell Nucleus genetics, Embryonic Development genetics, Gene Expression Regulation, Humans, Insulator Elements, Molecular Sequence Annotation, Promoter Regions, Genetic, RNA, Long Noncoding classification, RNA, Long Noncoding metabolism, Retroviridae genetics, Systems Biology, Terminal Repeat Sequences, Transcription Factors metabolism, RNA, Long Noncoding genetics
- Abstract
Functionality of the non-coding transcripts encoded by the human genome is the coveted goal of the modern genomics research. While commonly relied on the classical methods of forward genetics, integration of different genomics datasets in a global Systems Biology fashion presents a more productive avenue of achieving this very complex aim. Here we report application of a Systems Biology-based approach to dissect functionality of a newly identified vast class of very long intergenic non-coding (vlinc) RNAs. Using highly quantitative FANTOM5 CAGE dataset, we show that these RNAs could be grouped into 1542 novel human genes based on analysis of insulators that we show here indeed function as genomic barrier elements. We show that vlinc RNAs genes likely function in cisto activate nearby genes. This effect while most pronounced in closely spaced vlinc RNA-gene pairs can be detected over relatively large genomic distances. Furthermore, we identified 101 vlinc RNA genes likely involved in early embryogenesis based on patterns of their expression and regulation. We also found another 109 such genes potentially involved in cellular functions also happening at early stages of development such as proliferation, migration and apoptosis. Overall, we show that Systems Biology-based methods have great promise for functional annotation of non-coding RNAs., (© The Author(s) 2016. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2016
- Full Text
- View/download PDF
5. Redefining the transcriptional regulatory dynamics of classically and alternatively activated macrophages by deepCAGE transcriptomics.
- Author
-
Roy S, Schmeier S, Arner E, Alam T, Parihar SP, Ozturk M, Tamgue O, Kawaji H, de Hoon MJ, Itoh M, Lassmann T, Carninci P, Hayashizaki Y, Forrest AR, Bajic VB, Guler R, Brombacher F, and Suzuki H
- Subjects
- Animals, Cells, Cultured, DNA chemistry, Gene Expression Profiling, High-Throughput Nucleotide Sequencing, Interferon-gamma pharmacology, Interleukin-13 pharmacology, Interleukin-4 pharmacology, Macrophages drug effects, Male, Mice, Inbred BALB C, Nucleotide Motifs, Promoter Regions, Genetic, Sequence Analysis, DNA, Transcription Factors metabolism, Gene Expression Regulation, Macrophage Activation genetics, Macrophages metabolism, Transcriptome
- Abstract
Classically or alternatively activated macrophages (M1 and M2, respectively) play distinct and important roles for microbiocidal activity, regulation of inflammation and tissue homeostasis. Despite this, their transcriptional regulatory dynamics are poorly understood. Using promoter-level expression profiling by non-biased deepCAGE we have studied the transcriptional dynamics of classically and alternatively activated macrophages. Transcription factor (TF) binding motif activity analysis revealed four motifs, NFKB1_REL_RELA, IRF1,2, IRF7 and TBP that are commonly activated but have distinct activity dynamics in M1 and M2 activation. We observe matching changes in the expression profiles of the corresponding TFs and show that only a restricted set of TFs change expression. There is an overall drastic and transient up-regulation in M1 and a weaker and more sustainable up-regulation in M2. Novel TFs, such as Thap6, Maff, (M1) and Hivep1, Nfil3, Prdm1, (M2) among others, were suggested to be involved in the activation processes. Additionally, 52 (M1) and 67 (M2) novel differentially expressed genes and, for the first time, several differentially expressed long non-coding RNA (lncRNA) transcriptome markers were identified. In conclusion, the finding of novel motifs, TFs and protein-coding and lncRNA genes is an important step forward to fully understand the transcriptional machinery of macrophage activation., (© The Author(s) 2015. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2015
- Full Text
- View/download PDF
6. Building promoter aware transcriptional regulatory networks using siRNA perturbation and deepCAGE.
- Author
-
Vitezic M, Lassmann T, Forrest AR, Suzuki M, Tomaru Y, Kawai J, Carninci P, Suzuki H, Hayashizaki Y, and Daub CO
- Subjects
- Binding Sites, Cell Line, Tumor, Gene Expression Profiling, Gene Knockdown Techniques, Humans, Interferon Regulatory Factors antagonists & inhibitors, Interferon Regulatory Factors genetics, Interferon Regulatory Factors metabolism, Oligonucleotide Array Sequence Analysis, Proto-Oncogene Proteins antagonists & inhibitors, Proto-Oncogene Proteins genetics, Proto-Oncogene Proteins metabolism, RNA, Small Interfering, Sequence Analysis, DNA, Trans-Activators antagonists & inhibitors, Trans-Activators genetics, Trans-Activators metabolism, Gene Regulatory Networks, Promoter Regions, Genetic, Transcription Factors metabolism, Transcription, Genetic
- Abstract
Perturbation and time-course data sets, in combination with computational approaches, can be used to infer transcriptional regulatory networks which ultimately govern the developmental pathways and responses of cells. Here, we individually knocked down the four transcription factors PU.1, IRF8, MYB and SP1 in the human monocyte leukemia THP-1 cell line and profiled the genome-wide transcriptional response of individual transcription starting sites using deep sequencing based Cap Analysis of Gene Expression. From the proximal promoter regions of the responding transcription starting sites, we derived de novo binding-site motifs, characterized their biological function and constructed a network. We found a previously described composite motif for PU.1 and IRF8 that explains the overlapping set of transcriptional responses upon knockdown of either factor.
- Published
- 2010
- Full Text
- View/download PDF
7. Kalign2: high-performance multiple alignment of protein and nucleotide sequences allowing external features.
- Author
-
Lassmann T, Frings O, and Sonnhammer EL
- Subjects
- Reproducibility of Results, Time Factors, Sequence Alignment methods, Sequence Analysis, Protein, Sequence Analysis, RNA, Software
- Abstract
In the growing field of genomics, multiple alignment programs are confronted with ever increasing amounts of data. To address this growing issue we have dramatically improved the running time and memory requirement of Kalign, while maintaining its high alignment accuracy. Kalign version 2 also supports nucleotide alignment, and a newly introduced extension allows for external sequence annotation to be included into the alignment procedure. We demonstrate that Kalign2 is exceptionally fast and memory-efficient, permitting accurate alignment of very large numbers of sequences. The accuracy of Kalign2 compares well to the best methods in the case of protein alignments while its accuracy on nucleotide alignments is generally superior. In addition, we demonstrate the potential of using known or predicted sequence annotation to improve the alignment accuracy. Kalign2 is freely available for download from the Kalign web site (http://msa.sbc.su.se/).
- Published
- 2009
- Full Text
- View/download PDF
8. Pfam: clans, web tools and services.
- Author
-
Finn RD, Mistry J, Schuster-Böckler B, Griffiths-Jones S, Hollich V, Lassmann T, Moxon S, Marshall M, Khanna A, Durbin R, Eddy SR, Sonnhammer EL, and Bateman A
- Subjects
- Computer Graphics, Internet, Markov Chains, Protein Structure, Tertiary, Proteins chemistry, Sequence Alignment, Software, User-Computer Interface, Databases, Protein, Proteins classification
- Abstract
Pfam is a database of protein families that currently contains 7973 entries (release 18.0). A recent development in Pfam has enabled the grouping of related families into clans. Pfam clans are described in detail, together with the new associated web pages. Improvements to the range of Pfam web tools and the first set of Pfam web services that allow programmatic access to the database and associated tools are also presented. Pfam is available on the web in the UK (http://www.sanger.ac.uk/Software/Pfam/), the USA (http://pfam.wustl.edu/), France (http://pfam.jouy.inra.fr/) and Sweden (http://pfam.cgb.ki.se/).
- Published
- 2006
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.