Kavitha Venkatesan
Novartis
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Publication
Featured researches published by Kavitha Venkatesan.
Nature | 2012
Jordi Barretina; Giordano Caponigro; Nicolas Stransky; Kavitha Venkatesan; Adam A. Margolin; Sungjoon Kim; Christopher J. Wilson; Joseph Lehar; Gregory V. Kryukov; Dmitriy Sonkin; Anupama Reddy; Manway Liu; Lauren Murray; Michael F. Berger; John E. Monahan; Paula Morais; Jodi Meltzer; Adam Korejwa; Judit Jané-Valbuena; Felipa A. Mapa; Joseph Thibault; Eva Bric-Furlong; Pichai Raman; Aaron Shipway; Ingo H. Engels; Jill Cheng; Guoying K. Yu; Jianjun Yu; Peter Aspesi; Melanie de Silva
The systematic translation of cancer genomic data into knowledge of tumour biology and therapeutic possibilities remains challenging. Such efforts should be greatly aided by robust preclinical model systems that reflect the genomic diversity of human cancers and for which detailed genetic and pharmacological annotation is available. Here we describe the Cancer Cell Line Encyclopedia (CCLE): a compilation of gene expression, chromosomal copy number and massively parallel sequencing data from 947 human cancer cell lines. When coupled with pharmacological profiles for 24 anticancer drugs across 479 of the cell lines, this collection allowed identification of genetic, lineage, and gene-expression-based predictors of drug sensitivity. In addition to known predictors, we found that plasma cell lineage correlated with sensitivity to IGF1 receptor inhibitors; AHR expression was associated with MEK inhibitor efficacy in NRAS-mutant lines; and SLFN11 expression predicted sensitivity to topoisomerase inhibitors. Together, our results indicate that large, annotated cell-line collections may help to enable preclinical stratification schemata for anticancer agents. The generation of genetic predictions of drug response in the preclinical setting and their incorporation into cancer clinical trial design could speed the emergence of ‘personalized’ therapeutic regimens.
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.
Nature Methods | 2009
Pascal Braun; Murat Tasan; Matija Dreze; Miriam Barrios-Rodiles; Irma Lemmens; Haiyuan Yu; Julie M. Sahalie; Ryan R. Murray; Luba Roncari; Anne Sophie de Smet; Kavitha Venkatesan; Jean François Rual; Jean Vandenhaute; Michael E. Cusick; Tony Pawson; David E. Hill; Jan Tavernier; Jeffrey L. Wrana; Frederick P. Roth; Marc Vidal
Information on protein-protein interactions is of central importance for many areas of biomedical research. At present no method exists to systematically and experimentally assess the quality of individual interactions reported in interaction mapping experiments. To provide a standardized confidence-scoring method that can be applied to tens of thousands of protein interactions, we have developed an interaction tool kit consisting of four complementary, high-throughput protein interaction assays. We benchmarked these assays against positive and random reference sets consisting of well documented pairs of interacting human proteins and randomly chosen protein pairs, respectively. A logistic regression model was trained using the data from these reference sets to combine the assay outputs and calculate the probability that any newly identified interaction pair is a true biophysical interaction once it has been tested in the tool kit. This general approach will allow a systematic and empirical assignment of confidence scores to all individual protein-protein interactions in interactome networks.
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.
Nature Medicine | 2015
Hui Gao; Joshua Korn; Stephane Ferretti; John E. Monahan; Youzhen Wang; Mallika Singh; Chao Zhang; Christian Schnell; Guizhi Yang; Yun Zhang; O Alejandro Balbin; Stéphanie Barbe; Hongbo Cai; Fergal Casey; Susmita Chatterjee; Derek Y. Chiang; Shannon Chuai; Shawn M Cogan; Scott D Collins; Ernesta Dammassa; Nicolas Ebel; Millicent Embry; John Green; Audrey Kauffmann; Colleen Kowal; Rebecca J. Leary; Joseph Lehar; Ying Liang; Alice Loo; Edward Lorenzana
Profiling candidate therapeutics with limited cancer models during preclinical development hinders predictions of clinical efficacy and identifying factors that underlie heterogeneous patient responses for patient-selection strategies. We established ∼1,000 patient-derived tumor xenograft models (PDXs) with a diverse set of driver mutations. With these PDXs, we performed in vivo compound screens using a 1 × 1 × 1 experimental design (PDX clinical trial or PCT) to assess the population responses to 62 treatments across six indications. We demonstrate both the reproducibility and the clinical translatability of this approach by identifying associations between a genotype and drug response, and established mechanisms of resistance. In addition, our results suggest that PCTs may represent a more accurate approach than cell line models for assessing the clinical potential of some therapeutic modalities. We therefore propose that this experimental paradigm could potentially improve preclinical evaluation of treatment modalities and enhance our ability to predict clinical trial responses.
Molecular Systems Biology | 2009
Quan Zhong; Nicolas Simonis; Qian -Ru Li; Benoit Charloteaux; Fabien Heuze; Niels Klitgord; Stanley Tam; Haiyuan Yu; Kavitha Venkatesan; Danny Mou; Venus Swearingen; Muhammed A. Yildirim; Han Yan; Amélie Dricot; David Szeto; Chenwei Lin; Tong Hao; Changyu Fan; Denis Dupuy; Robert Brasseur; David E. Hill; Michael E. Cusick; Marc Vidal
Cellular functions are mediated through complex systems of macromolecules and metabolites linked through biochemical and physical interactions, represented in interactome models as ‘nodes’ and ‘edges’, respectively. Better understanding of genotype‐to‐phenotype relationships in human disease will require modeling of how disease‐causing mutations affect systems or interactome properties. Here we investigate how perturbations of interactome networks may differ between complete loss of gene products (‘node removal’) and interaction‐specific or edge‐specific (‘edgetic’) alterations. Global computational analyses of ∼50 000 known causative mutations in human Mendelian disorders revealed clear separations of mutations probably corresponding to those of node removal versus edgetic perturbations. Experimental characterization of mutant alleles in various disorders identified diverse edgetic interaction profiles of mutant proteins, which correlated with distinct structural properties of disease proteins and disease mechanisms. Edgetic perturbations seem to confer distinct functional consequences from node removal because a large fraction of cases in which a single gene is linked to multiple disorders can be modeled by distinguishing edgetic network perturbations. Edgetic network perturbation models might improve both the understanding of dissemination of disease alleles in human populations and the development of molecular therapeutic strategies.
Cancer Discovery | 2012
Vito Guagnano; Audrey Kauffmann; Simon Wöhrle; Christelle Stamm; Moriko Ito; Louise Barys; Astrid Pornon; Yao Yao; Fang Li; Yun Zhang; Zhi Chen; Christopher J. Wilson; Vincent Bordas; Mickaël Le Douget; L. Alex Gaither; Jason Borawski; John E. Monahan; Kavitha Venkatesan; Thomas Brümmendorf; David Thomas; Carlos Garcia-Echeverria; Francesco Hofmann; William R. Sellers; Diana Graus-Porta
UNLABELLED Patient stratification biomarkers that enable the translation of cancer genetic knowledge into clinical use are essential for the successful and rapid development of emerging targeted anticancer therapeutics. Here, we describe the identification of patient stratification biomarkers for NVP-BGJ398, a novel and selective fibroblast growth factor receptor (FGFR) inhibitor. By intersecting genome-wide gene expression and genomic alteration data with cell line-sensitivity data across an annotated collection of cancer cell lines called the Cancer Cell Line Encyclopedia, we show that genetic alterations for FGFR family members predict for sensitivity to NVP-BGJ398. For the first time, we report oncogenic FGFR1 amplification in osteosarcoma as a potential patient selection biomarker. Furthermore, we show that cancer cell lines harboring FGF19 copy number gain at the 11q13 amplicon are sensitive to NVP-BGJ398 only when concomitant expression of β-klotho occurs. Thus, our findings provide the rationale for the clinical development of FGFR inhibitors in selected patients with cancer harboring tumors with the identified predictors of sensitivity. SIGNIFICANCE The success of a personalized medicine approach using targeted therapies ultimately depends on being able to identify the patients who will benefit the most from any given drug. To this end, we have integrated the molecular profiles for more than 500 cancer cell lines with sensitivity data for the novel anticancer drug NVP-BGJ398 and showed that FGFR genetic alterations are the most significant predictors for sensitivity. This work has ultimately endorsed the incorporation of specific patient selection biomakers in the clinical trials for NVP-BGJ398.
Nature Genetics | 2013
Jacob D. Jaffe; Yan Wang; Ho Man Chan; Jinghui Zhang; Robert Huether; Gregory V. Kryukov; Hyo-eun C. Bhang; Jordan E. Taylor; Min Hu; Nathan P. Englund; Feng Yan; Zhaofu Wang; E. Robert McDonald; Lei Wei; Jing Ma; John Easton; Zhengtian Yu; Rosalie deBeaumount; Veronica Gibaja; Kavitha Venkatesan; Robert Schlegel; William R. Sellers; Nicholas Keen; Jun Liu; Giordano Caponigro; Jordi Barretina; Vesselina G. Cooke; Charles G. Mullighan; Steven A. Carr; James R. Downing
Epigenetic dysregulation is an emerging hallmark of cancers. We developed a high-information-content mass spectrometry approach to profile global histone modifications in human cancers. When applied to 115 lines from the Cancer Cell Line Encyclopedia, this approach identified distinct molecular chromatin signatures. One signature was characterized by increased histone 3 lysine 36 (H3K36) dimethylation, exhibited by several lines harboring translocations in NSD2, which encodes a methyltransferase. A previously unknown NSD2 p.Glu1099Lys (p.E1099K) variant was identified in nontranslocated acute lymphoblastic leukemia (ALL) cell lines sharing this signature. Ectopic expression of the variant induced a chromatin signature characteristic of NSD2 hyperactivation and promoted transformation. NSD2 knockdown selectively inhibited the proliferation of NSD2-mutant lines and impaired the in vivo growth of an NSD2-mutant ALL xenograft. Sequencing analysis of >1,000 pediatric cancer genomes identified the NSD2 p.E1099K alteration in 14% of t(12;21) ETV6-RUNX1–containing ALLs. These findings identify NSD2 as a potential therapeutic target for pediatric ALL and provide a general framework for the functional annotation of cancer epigenomes.
Nature | 2016
Yan Chen; Matthew J. LaMarche; Ho Man Chan; Peter Fekkes; Garcia-Fortanet J; Acker Mg; Brandon Antonakos; Christine Hiu-Tung Chen; Zhouliang Chen; Vesselina G. Cooke; Zhan Deng; Fei F; Brant Firestone; Michelle Fodor; Cary Fridrich; Hui Gao; Denise Grunenfelder; Hao Hx; Jacob J; Samuel Ho; Kathy Hsiao; Zhao B. Kang; Rajesh Karki; Mitsunori Kato; Jay Larrow; La Bonte Lr; Francois Lenoir; Gang Liu; Shumei Liu; Dyuti Majumdar
The non-receptor protein tyrosine phosphatase SHP2, encoded by PTPN11, has an important role in signal transduction downstream of growth factor receptor signalling and was the first reported oncogenic tyrosine phosphatase. Activating mutations of SHP2 have been associated with developmental pathologies such as Noonan syndrome and are found in multiple cancer types, including leukaemia, lung and breast cancer and neuroblastoma. SHP2 is ubiquitously expressed and regulates cell survival and proliferation primarily through activation of the RAS–ERK signalling pathway. It is also a key mediator of the programmed cell death 1 (PD-1) and B- and T-lymphocyte attenuator (BTLA) immune checkpoint pathways. Reduction of SHP2 activity suppresses tumour cell growth and is a potential target of cancer therapy. Here we report the discovery of a highly potent (IC50 = 0.071 μM), selective and orally bioavailable small-molecule SHP2 inhibitor, SHP099, that stabilizes SHP2 in an auto-inhibited conformation. SHP099 concurrently binds to the interface of the N-terminal SH2, C-terminal SH2, and protein tyrosine phosphatase domains, thus inhibiting SHP2 activity through an allosteric mechanism. SHP099 suppresses RAS–ERK signalling to inhibit the proliferation of receptor-tyrosine-kinase-driven human cancer cells in vitro and is efficacious in mouse tumour xenograft models. Together, these data demonstrate that pharmacological inhibition of SHP2 is a valid therapeutic approach for the treatment of cancers.