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Dive into the research topics where Imad Abugessaisa is active.

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Featured researches published by Imad Abugessaisa.


Genome Biology | 2015

Gateways to the FANTOM5 promoter level mammalian expression atlas

Marina Lizio; Jayson Harshbarger; Hisashi Shimoji; Jessica Severin; Takeya Kasukawa; Serkan Sahin; Imad Abugessaisa; Shiro Fukuda; Fumi Hori; Sachi Ishikawa-Kato; Christopher J. Mungall; Erik Arner; J. Kenneth Baillie; Nicolas Bertin; Hidemasa Bono; Michiel Jl de Hoon; Alexander D. Diehl; Emmanuel Dimont; Tom C. Freeman; Kaori Fujieda; Winston Hide; Rajaram Kaliyaperumal; Toshiaki Katayama; Timo Lassmann; Terrence F. Meehan; Koro Nishikata; Hiromasa Ono; Michael Rehli; Albin Sandelin; Erik Schultes

The FANTOM5 project investigates transcription initiation activities in more than 1,000 human and mouse primary cells, cell lines and tissues using CAGE. Based on manual curation of sample information and development of an ontology for sample classification, we assemble the resulting data into a centralized data resource (http://fantom.gsc.riken.jp/5/). This resource contains web-based tools and data-access points for the research community to search and extract data related to samples, genes, promoter activities, transcription factors and enhancers across the FANTOM5 atlas.


Nature | 2017

An atlas of human long non-coding RNAs with accurate 5′ ends

Chung Chau Hon; Jordan A. Ramilowski; Jayson Harshbarger; Nicolas Bertin; Owen J. L. Rackham; Julian Gough; Elena Denisenko; Sebastian Schmeier; Thomas M. Poulsen; Jessica Severin; Marina Lizio; Hideya Kawaji; Takeya Kasukawa; Masayoshi Itoh; A. Maxwell Burroughs; Shohei Noma; Sarah Djebali; Tanvir Alam; Yulia A. Medvedeva; Alison C. Testa; Leonard Lipovich; Chi Wai Yip; Imad Abugessaisa; Mickal Mendez; Akira Hasegawa; Dave Tang; Timo Lassmann; Peter Heutink; Magda Babina; Christine A. Wells

Long non-coding RNAs (lncRNAs) are largely heterogeneous and functionally uncharacterized. Here, using FANTOM5 cap analysis of gene expression (CAGE) data, we integrate multiple transcript collections to generate a comprehensive atlas of 27,919 human lncRNA genes with high-confidence 5′ ends and expression profiles across 1,829 samples from the major human primary cell types and tissues. Genomic and epigenomic classification of these lncRNAs reveals that most intergenic lncRNAs originate from enhancers rather than from promoters. Incorporating genetic and expression data, we show that lncRNAs overlapping trait-associated single nucleotide polymorphisms are specifically expressed in cell types relevant to the traits, implicating these lncRNAs in multiple diseases. We further demonstrate that lncRNAs overlapping expression quantitative trait loci (eQTL)-associated single nucleotide polymorphisms of messenger RNAs are co-expressed with the corresponding messenger RNAs, suggesting their potential roles in transcriptional regulation. Combining these findings with conservation data, we identify 19,175 potentially functional lncRNAs in the human genome.


Nature Biotechnology | 2017

An integrated expression atlas of miRNAs and their promoters in human and mouse

Derek De Rie; Imad Abugessaisa; Tanvir Alam; Erik Arner; Peter Arner; Haitham Ashoor; Gaby Åström; Magda Babina; Nicolas Bertin; A. Maxwell Burroughs; Ailsa Carlisle; Carsten O. Daub; Michael Detmar; Ruslan Deviatiiarov; Alexandre Fort; Claudia Gebhard; Dan Goldowitz; Sven Guhl; Thomas Ha; Jayson Harshbarger; Akira Hasegawa; Kosuke Hashimoto; Meenhard Herlyn; Peter Heutink; Kelly J Hitchens; Chung Chau Hon; Edward Huang; Yuri Ishizu; Chieko Kai; Takeya Kasukawa

MicroRNAs (miRNAs) are short non-coding RNAs with key roles in cellular regulation. As part of the fifth edition of the Functional Annotation of Mammalian Genome (FANTOM5) project, we created an integrated expression atlas of miRNAs and their promoters by deep-sequencing 492 short RNA (sRNA) libraries, with matching Cap Analysis Gene Expression (CAGE) data, from 396 human and 47 mouse RNA samples. Promoters were identified for 1,357 human and 804 mouse miRNAs and showed strong sequence conservation between species. We also found that primary and mature miRNA expression levels were correlated, allowing us to use the primary miRNA measurements as a proxy for mature miRNA levels in a total of 1,829 human and 1,029 mouse CAGE libraries. We thus provide a broad atlas of miRNA expression and promoters in primary mammalian cells, establishing a foundation for detailed analysis of miRNA expression patterns and transcriptional control regions.


Nucleic Acids Research | 2017

Update of the FANTOM web resource: high resolution transcriptome of diverse cell types in mammals

Marina Lizio; Jayson Harshbarger; Imad Abugessaisa; Shuei Noguchi; Atsushi Kondo; Jessica Severin; Christopher J. Mungall; David J. Arenillas; Anthony Mathelier; Yulia A. Medvedeva; Andreas Lennartsson; Finn Drabløs; Jordan A. Ramilowski; Owen J. L. Rackham; Julian Gough; Robin Andersson; Albin Sandelin; Hans Ienasescu; Hiromasa Ono; Hidemasa Bono; Yoshihide Hayashizaki; Piero Carninci; Alistair R. R. Forrest; Takeya Kasukawa; Hideya Kawaji

Upon the first publication of the fifth iteration of the Functional Annotation of Mammalian Genomes collaborative project, FANTOM5, we gathered a series of primary data and database systems into the FANTOM web resource (http://fantom.gsc.riken.jp) to facilitate researchers to explore transcriptional regulation and cellular states. In the course of the collaboration, primary data and analysis results have been expanded, and functionalities of the database systems enhanced. We believe that our data and web systems are invaluable resources, and we think the scientific community will benefit for this recent update to deepen their understanding of mammalian cellular organization. We introduce the contents of FANTOM5 here, report recent updates in the web resource and provide future perspectives.


Database | 2016

FANTOM5 transcriptome catalog of cellular states based on Semantic MediaWiki

Imad Abugessaisa; Hisashi Shimoji; Serkan Sahin; Atsushi Kondo; Jayson Harshbarger; Marina Lizio; Yoshihide Hayashizaki; Piero Carninci; Alistair R. R. Forrest; Takeya Kasukawa; Hideya Kawaji

The Functional Annotation of the Mammalian Genome project (FANTOM5) mapped transcription start sites (TSSs) and measured their activities in a diverse range of biological samples. The FANTOM5 project generated a large data set; including detailed information about the profiled samples, the uncovered TSSs at high base-pair resolution on the genome, their transcriptional initiation activities, and further information of transcriptional regulation. Data sets to explore transcriptome in individual cellular states encoded in the mammalian genomes have been enriched by a series of additional analysis, based on the raw experimental data, along with the progress of the research activities. To make the heterogeneous data set accessible and useful for investigators, we developed a web-based database called Semantic catalog of Samples, Transcription initiation And Regulators (SSTAR). SSTAR utilizes the open source wiki software MediaWiki along with the Semantic MediaWiki (SMW) extension, which provides flexibility to model, store, and display a series of data sets produced during the course of the FANTOM5 project. Our use of SMW demonstrates the utility of the framework for dissemination of large-scale analysis results. SSTAR is a case study in handling biological data generated from a large-scale research project in terms of maintenance and growth alongside research activities. Database URL: http://fantom.gsc.riken.jp/5/sstar/


Scientific Data | 2017

Monitoring transcription initiation activities in rat and dog

Marina Lizio; Abdul Kadir Mukarram; Mizuho Ohno; Shoko Watanabe; Masayoshi Itoh; Akira Hasegawa; Timo Lassmann; Jessica Severin; Jayson Harshbarger; Imad Abugessaisa; Takeya Kasukawa; Chung Chau Hon; Piero Carninci; Yoshihide Hayashizaki; Alistair R. R. Forrest; Hideya Kawaji

The promoter landscape of several non-human model organisms is far from complete. As a part of FANTOM5 data collection, we generated 13 profiles of transcription initiation activities in dog and rat aortic smooth muscle cells, mesenchymal stem cells and hepatocytes by employing CAGE (Cap Analysis of Gene Expression) technology combined with single molecule sequencing. Our analyses show that the CAGE profiles recapitulate known transcription start sites (TSSs) consistently, in addition to uncover novel TSSs. Our dataset can be thus used with high confidence to support gene annotation in dog and rat species. We identified 28,497 and 23,147 CAGE peaks, or promoter regions, for rat and dog respectively, and associated them to known genes. This approach could be seen as a standard method for improvement of existing gene models, as well as discovery of novel genes. Given that the FANTOM5 data collection includes dog and rat matched cell types in human and mouse as well, this data would also be useful for cross-species studies.


Scientific Data | 2017

FANTOM5 CAGE profiles of human and mouse reprocessed for GRCh38 and GRCm38 genome assemblies

Imad Abugessaisa; Shuhei Noguchi; Akira Hasegawa; Jayson Harshbarger; Atsushi Kondo; Marina Lizio; Jessica Severin; Piero Carninci; Hideya Kawaji; Takeya Kasukawa

The FANTOM5 consortium described the promoter-level expression atlas of human and mouse by using CAGE (Cap Analysis of Gene Expression) with single molecule sequencing. In the original publications, GRCh37/hg19 and NCBI37/mm9 assemblies were used as the reference genomes of human and mouse respectively; later, the Genome Reference Consortium released newer genome assemblies GRCh38/hg38 and GRCm38/mm10. To increase the utility of the atlas in forthcoming researches, we reprocessed the data to make them available on the recent genome assemblies. The data include observed frequencies of transcription starting sites (TSSs) based on the realignment of CAGE reads, and TSS peaks that are converted from those based on the previous reference. Annotations of the peak names were also updated based on the latest public databases. The reprocessed results enable us to examine frequencies of transcription initiations on the recent genome assemblies and to refer promoters with updated information across the genome assemblies consistently.


Scientific Data | 2017

Transcription start site profiling of 15 anatomical regions of the Macaca mulatta central nervous system

Margherita Francescatto; Marina Lizio; Ingrid Philippens; Ronald Bontrop; Mizuho Sakai; Shoko Watanabe; Masayoshi Itoh; Akira Hasegawa; Timo Lassmann; Jessica Severin; Jayson Harshbarger; Imad Abugessaisa; Takeya Kasukawa; Piero Carninci; Yoshihide Hayashizaki; Alistair R. R. Forrest; Hideya Kawaji; Patrizia Rizzu; Peter Heutink

Rhesus macaque was the second non-human primate whose genome has been fully sequenced and is one of the most used model organisms to study human biology and disease, thanks to the close evolutionary relationship between the two species. But compared to human, where several previously unknown RNAs have been uncovered, the macaque transcriptome is less studied. Publicly available RNA expression resources for macaque are limited, even for brain, which is highly relevant to study human cognitive abilities. In an effort to complement those resources, FANTOM5 profiled 15 distinct anatomical regions of the aged macaque central nervous system using Cap Analysis of Gene Expression, a high-resolution, annotation-independent technology that allows monitoring of transcription initiation events with high accuracy. We identified 25,869 CAGE peaks, representing bona fide promoters. For each peak we provide detailed annotation, expanding the landscape of ‘known’ macaque genes, and we show concrete examples on how to use the resulting data. We believe this data represents a useful resource to understand the central nervous system in macaque.


bioRxiv | 2018

C1 CAGE detects transcription start sites and enhancer activity at single-cell resolution

Tsukasa Kouno; Jonathan Moody; Andrew Tae-Jun Kwon; Youtaro Shibayama; Sachi Kato; Yi Huang; Michael Böttcher; Efthymios Motakis; Mickaël Mendez; Jessica Severin; Joachim Luginbühl; Imad Abugessaisa; Akira Hasegawa; Satoshi Takizawa; Takahiro Arakawa; Masaaki Furuno; Naveen Ramalingam; Jay A.A. West; Harukazu Suzuki; Takeya Kasukawa; Timo Lassmann; Chung-Chau Hon; Erik Arner; Piero Carninci; Charles Plessy; Jay W. Shin

Single-cell transcriptomic profiling is a powerful tool to explore cellular heterogeneity. However, most of these methods focus on the 3’-end of polyadenylated transcripts and provide only a partial view of the transcriptome. We introduce C1 CAGE, a method for the detection of transcript 5’-ends with an original sample multiplexing strategy in the C1™ microfluidic system. We first quantified the performance of C1 CAGE and found it as accurate and sensitive as other methods in C1 system. We then used it to profile promoter and enhancer activities in the cellular response to TGF-β of lung cancer cells and discovered subpopulations of cells differing in their response. We also describe enhancer RNA dynamics revealing transcriptional bursts in subsets of cells with transcripts arising from either strand within a single-cell in a mutually exclusive manner, which was validated using single molecule fluorescence in-situ hybridization.


Nucleic Acids Research | 2018

SCPortalen: human and mouse single-cell centric database

Imad Abugessaisa; Shuhei Noguchi; Michael Böttcher; Akira Hasegawa; Tsukasa Kouno; Sachi Kato; Yuhki Tada; Hiroki Ura; Kuniya Abe; Jay W. Shin; Charles Plessy; Piero Carninci; Takeya Kasukawa

Abstract Published single-cell datasets are rich resources for investigators who want to address questions not originally asked by the creators of the datasets. The single-cell datasets might be obtained by different protocols and diverse analysis strategies. The main challenge in utilizing such single-cell data is how we can make the various large-scale datasets to be comparable and reusable in a different context. To challenge this issue, we developed the single-cell centric database ‘SCPortalen’ (http://single-cell.clst.riken.jp/). The current version of the database covers human and mouse single-cell transcriptomics datasets that are publicly available from the INSDC sites. The original metadata was manually curated and single-cell samples were annotated with standard ontology terms. Following that, common quality assessment procedures were conducted to check the quality of the raw sequence. Furthermore, primary data processing of the raw data followed by advanced analyses and interpretation have been performed from scratch using our pipeline. In addition to the transcriptomics data, SCPortalen provides access to single-cell image files whenever available. The target users of SCPortalen are all researchers interested in specific cell types or population heterogeneity. Through the web interface of SCPortalen users are easily able to search, explore and download the single-cell datasets of their interests.

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Piero Carninci

International School for Advanced Studies

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Marina Lizio

Swiss Institute of Bioinformatics

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Timo Lassmann

University of Western Australia

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Jessica Severin

Swiss Institute of Bioinformatics

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Yoshihide Hayashizaki

Roswell Park Cancer Institute

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Erik Arner

Karolinska University Hospital

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