Tomoko Hirozane-Kishikawa
Harvard University
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Publication
Featured researches published by Tomoko Hirozane-Kishikawa.
Nature | 2005
Jean François Rual; Kavitha Venkatesan; Tong Hao; Tomoko Hirozane-Kishikawa; Amélie Dricot; Ning Li; Gabriel F. Berriz; Francis D. Gibbons; Matija Dreze; Nono Ayivi-Guedehoussou; Niels Klitgord; Christophe Simon; Mike Boxem; Jennifer Rosenberg; Debra S. Goldberg; Lan V. Zhang; Sharyl L. Wong; Giovanni Franklin; Siming Li; Joanna S. Albala; Janghoo Lim; Carlene Fraughton; Estelle Llamosas; Sebiha Cevik; Camille Bex; Philippe Lamesch; Robert S. Sikorski; Jean Vandenhaute; Huda Y. Zoghbi; Alex Smolyar
Systematic mapping of protein–protein interactions, or ‘interactome’ mapping, was initiated in model organisms, starting with defined biological processes and then expanding to the scale of the proteome. Although far from complete, such maps have revealed global topological and dynamic features of interactome networks that relate to known biological properties, suggesting that a human interactome map will provide insight into development and disease mechanisms at a systems level. Here we describe an initial version of a proteome-scale map of human binary protein–protein interactions. Using a stringent, high-throughput yeast two-hybrid system, we tested pairwise interactions among the products of ∼8,100 currently available Gateway-cloned open reading frames and detected ∼2,800 interactions. This data set, called CCSB-HI1, has a verification rate of ∼78% as revealed by an independent co-affinity purification assay, and correlates significantly with other biological attributes. The CCSB-HI1 data set increases by ∼70% the set of available binary interactions within the tested space and reveals more than 300 new connections to over 100 disease-associated proteins. This work represents an important step towards a systematic and comprehensive human interactome project.
Science | 2008
Haiyuan Yu; Pascal Braun; Muhammed A. Yildirim; Irma Lemmens; Kavitha Venkatesan; Julie M. Sahalie; Tomoko Hirozane-Kishikawa; Fana Gebreab; Nancy Li; Nicolas Simonis; Tong Hao; Jean François Rual; Amélie Dricot; Alexei Vazquez; Ryan R. Murray; Christophe Simon; Leah Tardivo; Stanley Tam; Nenad Svrzikapa; Changyu Fan; Anne-Sophie De Smet; Adriana Motyl; Michael E. Hudson; Juyong Park; Xiaofeng Xin; Michael E. Cusick; Troy Moore; Charlie Boone; Michael Snyder; Frederick P. Roth
Current yeast interactome network maps contain several hundred molecular complexes with limited and somewhat controversial representation of direct binary interactions. We carried out a comparative quality assessment of current yeast interactome data sets, demonstrating that high-throughput yeast two-hybrid (Y2H) screening provides high-quality binary interaction information. Because a large fraction of the yeast binary interactome remains to be mapped, we developed an empirically controlled mapping framework to produce a “second-generation” high-quality, high-throughput Y2H data set covering ∼20% of all yeast binary interactions. Both Y2H and affinity purification followed by mass spectrometry (AP/MS) data are of equally high quality but of a fundamentally different and complementary nature, resulting in networks with different topological and biological properties. Compared to co-complex interactome models, this binary map is enriched for transient signaling interactions and intercomplex connections with a highly significant clustering between essential proteins. Rather than correlating with essentiality, protein connectivity correlates with genetic pleiotropy.
Cell | 2007
Jesse S. Boehm; Jean Zhao; Jun Yao; So Young Kim; Ron Firestein; Ian F. Dunn; Sarah K. Sjostrom; Levi A. Garraway; Stanislawa Weremowicz; Andrea L. Richardson; Heidi Greulich; Carly J. Stewart; Laura Mulvey; Rhine R. Shen; Lauren Ambrogio; Tomoko Hirozane-Kishikawa; David E. Hill; Marc Vidal; Matthew Meyerson; Jennifer K. Grenier; Greg Hinkle; David E. Root; Thomas M. Roberts; Eric S. Lander; Kornelia Polyak; William C. Hahn
The karyotypic chaos exhibited by human epithelial cancers complicates efforts to identify mutations critical for malignant transformation. Here we integrate complementary genomic approaches to identify human oncogenes. We show that activation of the ERK and phosphatidylinositol 3-kinase (PI3K) signaling pathways cooperate to transform human cells. Using a library of activated kinases, we identify several kinases that replace PI3K signaling and render cells tumorigenic. Whole genome structural analyses reveal that one of these kinases, IKBKE (IKKepsilon), is amplified and overexpressed in breast cancer cell lines and patient-derived tumors. Suppression of IKKepsilon expression in breast cancer cell lines that harbor IKBKE amplifications induces cell death. IKKepsilon activates the nuclear factor-kappaB (NF-kappaB) pathway in both cell lines and breast cancers. These observations suggest a mechanism for NF-kappaB activation in breast cancer, implicate the NF-kappaB pathway as a downstream mediator of PI3K, and provide a framework for integrated genomic approaches in oncogene discovery.
Proceedings of the National Academy of Sciences of the United States of America | 2007
Michael A. Calderwood; Kavitha Venkatesan; Li Xing; Michael R. Chase; Alexei Vazquez; Amy M. Holthaus; Alexandra E. Ewence; Ning Li; Tomoko Hirozane-Kishikawa; David E. Hill; Marc Vidal; Elliott Kieff; Eric Johannsen
A comprehensive mapping of interactions among Epstein–Barr virus (EBV) proteins and interactions of EBV proteins with human proteins should provide specific hypotheses and a broad perspective on EBV strategies for replication and persistence. Interactions of EBV proteins with each other and with human proteins were assessed by using a stringent high-throughput yeast two-hybrid system. Overall, 43 interactions between EBV proteins and 173 interactions between EBV and human proteins were identified. EBV–EBV and EBV–human protein interaction, or “interactome” maps provided a framework for hypotheses of protein function. For example, LF2, an EBV protein of unknown function interacted with the EBV immediate early R transactivator (Rta) and was found to inhibit Rta transactivation. From a broader perspective, EBV genes can be divided into two evolutionary classes, “core” genes, which are conserved across all herpesviruses and subfamily specific, or “noncore” genes. Our EBV–EBV interactome map is enriched for interactions among proteins in the same evolutionary class. Furthermore, human proteins targeted by EBV proteins were enriched for highly connected or “hub” proteins and for proteins with relatively short paths to all other proteins in the human interactome network. Targeting of hubs might be an efficient mechanism for EBV reorganization of cellular processes.
Proceedings of the National Academy of Sciences of the United States of America | 2006
Kazuhiro Wada; Jason T. Howard; Patrick McConnell; Osceola Whitney; Thierry Lints; Miriam V. Rivas; Haruhito Horita; Michael A. Patterson; Stephanie A. White; Constance Scharff; Sebastian Haesler; Shengli Zhao; Hironobu Sakaguchi; Masatoshi Hagiwara; Toshiyuki Shiraki; Tomoko Hirozane-Kishikawa; Pate Skene; Yoshihide Hayashizaki; Piero Carninci; Erich D. Jarvis
Songbirds have one of the most accessible neural systems for the study of brain mechanisms of behavior. However, neuroethological studies in songbirds have been limited by the lack of high-throughput molecular resources and gene-manipulation tools. To overcome these limitations, we constructed 21 regular, normalized, and subtracted full-length cDNA libraries from brains of zebra finches in 57 developmental and behavioral conditions in an attempt to clone as much of the brain transcriptome as possible. From these libraries, ≈14,000 transcripts were isolated, representing an estimated 4,738 genes. With the cDNAs, we created a hierarchically organized transcriptome database and a large-scale songbird brain cDNA microarray. We used the arrays to reveal a set of 33 genes that are regulated in forebrain vocal nuclei by singing behavior. These genes clustered into four anatomical and six temporal expression patterns. Their functions spanned a large range of cellular and molecular categories, from signal transduction, trafficking, and structural, to synaptically released molecules. With the full-length cDNAs and a lentiviral vector system, we were able to overexpress, in vocal nuclei, proteins of representative singing-regulated genes in the absence of singing. This publicly accessible resource http://songbirdtranscriptome.net can now be used to study molecular neuroethological mechanisms of behavior.
Nature Methods | 2011
Haiyuan Yu; Leah Tardivo; Stanley Tam; Evan Weiner; Fana Gebreab; Changyu Fan; Nenad Svrzikapa; Tomoko Hirozane-Kishikawa; Edward A. Rietman; Xinping Yang; Julie M. Sahalie; Kourosh Salehi-Ashtiani; Tong Hao; Michael E. Cusick; David E. Hill; Frederick P. Roth; Pascal Braun; Marc Vidal
Next-generation sequencing has not been applied to protein-protein interactome network mapping so far because the association between the members of each interacting pair would not be maintained in en masse sequencing. We describe a massively parallel interactome-mapping pipeline, Stitch-seq, that combines PCR stitching with next-generation sequencing and used it to generate a new human interactome dataset. Stitch-seq is applicable to various interaction assays and should help expand interactome network mapping.
Retrovirology | 2012
Nicolas Simonis; Jean François Rual; Irma Lemmens; Mathieu Boxus; Tomoko Hirozane-Kishikawa; Jean Stéphane Gatot; Amélie Dricot; Tong Hao; Didier Vertommen; Sebastien Legros; Sarah Daakour; Niels Klitgord; Maud Martin; Jean François Willaert; Franck Dequiedt; Vincent Navratil; Michael E. Cusick; Arsène Burny; Carine Van Lint; David E. Hill; Jan Tavernier; Richard Kettmann; Marc Vidal; Jean-Claude Twizere
BackgroundHuman T-cell leukemia virus type 1 (HTLV-1) and type 2 both target T lymphocytes, yet induce radically different phenotypic outcomes. HTLV-1 is a causative agent of Adult T-cell leukemia (ATL), whereas HTLV-2, highly similar to HTLV-1, causes no known overt disease. HTLV gene products are engaged in a dynamic struggle of activating and antagonistic interactions with host cells. Investigations focused on one or a few genes have identified several human factors interacting with HTLV viral proteins. Most of the available interaction data concern the highly investigated HTLV-1 Tax protein. Identifying shared and distinct host-pathogen protein interaction profiles for these two viruses would enlighten how they exploit distinctive or common strategies to subvert cellular pathways toward disease progression.ResultsWe employ a scalable methodology for the systematic mapping and comparison of pathogen-host protein interactions that includes stringent yeast two-hybrid screening and systematic retest, as well as two independent validations through an additional protein interaction detection method and a functional transactivation assay. The final data set contained 166 interactions between 10 viral proteins and 122 human proteins. Among the 166 interactions identified, 87 and 79 involved HTLV-1 and HTLV-2 -encoded proteins, respectively. Targets for HTLV-1 and HTLV-2 proteins implicate a diverse set of cellular processes including the ubiquitin-proteasome system, the apoptosis, different cancer pathways and the Notch signaling pathway.ConclusionsThis study constitutes a first pass, with homogeneous data, at comparative analysis of host targets for HTLV-1 and -2 retroviruses, complements currently existing data for formulation of systems biology models of retroviral induced diseases and presents new insights on biological pathways involved in retroviral infection.
PLOS ONE | 2007
Kouji Satoh; Koji Doi; Toshifumi Nagata; Naoki Kishimoto; Kohji Suzuki; Yasuhiro Otomo; Jun Kawai; Mari Nakamura; Tomoko Hirozane-Kishikawa; Saeko Kanagawa; Takahiro Arakawa; Juri Takahashi-Iida; Mitsuyoshi Murata; Noriko Ninomiya; Daisuke Sasaki; Shiro Fukuda; Michihira Tagami; Harumi Yamagata; Kanako Kurita; Kozue Kamiya; Mayu Yamamoto; Ari Kikuta; Takahito Bito; Nahoko Fujitsuka; Kazue Ito; Hiroyuki Kanamori; Il-Ryong Choi; Yoshiaki Nagamura; Takashi Matsumoto; Kazuo Murakami
Rice (Oryza sativa L.) is a model organism for the functional genomics of monocotyledonous plants since the genome size is considerably smaller than those of other monocotyledonous plants. Although highly accurate genome sequences of indica and japonica rice are available, additional resources such as full-length complementary DNA (FL-cDNA) sequences are also indispensable for comprehensive analyses of gene structure and function. We cross-referenced 28.5K individual loci in the rice genome defined by mapping of 578K FL-cDNA clones with the 56K loci predicted in the TIGR genome assembly. Based on the annotation status and the presence of corresponding cDNA clones, genes were classified into 23K annotated expressed (AE) genes, 33K annotated non-expressed (ANE) genes, and 5.5K non-annotated expressed (NAE) genes. We developed a 60mer oligo-array for analysis of gene expression from each locus. Analysis of gene structures and expression levels revealed that the general features of gene structure and expression of NAE and ANE genes were considerably different from those of AE genes. The results also suggested that the cloning efficiency of rice FL-cDNA is associated with the transcription activity of the corresponding genetic locus, although other factors may also have an effect. Comparison of the coverage of FL-cDNA among gene families suggested that FL-cDNA from genes encoding rice- or eukaryote-specific domains, and those involved in regulatory functions were difficult to produce in bacterial cells. Collectively, these results indicate that rice genes can be divided into distinct groups based on transcription activity and gene structure, and that the coverage bias of FL-cDNA clones exists due to the incompatibility of certain eukaryotic genes in bacteria.
Science | 2004
Siming Li; Christopher M. Armstrong; Nicolas Bertin; Hui Ge; Mike Boxem; Pierre Olivier Vidalain; Jing Dong J Han; Alban Chesneau; Tong Hao; Debra S. Goldberg; Ning Li; Monica Martinez; Jean François Rual; Philippe Lamesch; Lai Xu; Muneesh Tewari; Sharyl L. Wong; Lan V. Zhang; Gabriel F. Berriz; Laurent Jacotot; Philippe Vaglio; Jérôme Reboul; Tomoko Hirozane-Kishikawa; Qian-Ru Li; Harrison W. Gabel; Ahmed M. Elewa; Bridget Baumgartner; Debra J. Rose; Haiyuan Yu; Stephanie Bosak
Nature Methods | 2009
Kavitha Venkatesan; Jean François Rual; Alexei Vazquez; Ulrich Stelzl; Irma Lemmens; Tomoko Hirozane-Kishikawa; Tong Hao; Martina Zenkner; Xiaofeng Xin; K. I. Goh; Muhammed A. Yildirim; Nicolas Simonis; Kathrin Heinzmann; Fana Gebreab; Julie M. Sahalie; Sebiha Cevik; Christophe Simon; Anne Sophie de Smet; Elizabeth Dann; Alex Smolyar; Arunachalam Vinayagam; Haiyuan Yu; David Szeto; Heather Borick; Amélie Dricot; Niels Klitgord; Ryan R. Murray; Chenwei Lin; Maciej Lalowski; Jan Timm