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Dive into the research topics where Vagisha Sharma is active.

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Featured researches published by Vagisha Sharma.


Journal of Proteome Research | 2014

Panorama: A Targeted Proteomics Knowledge Base

Vagisha Sharma; Josh Eckels; Greg Taylor; Nicholas J. Shulman; Andrew B. Stergachis; Shannon A. Joyner; Ping Yan; Jeffrey R. Whiteaker; Goran N. Halusa; Birgit Schilling; Bradford W. Gibson; Christopher M. Colangelo; Amanda G. Paulovich; Steven A. Carr; Jacob D. Jaffe; Michael J. MacCoss; Brendan MacLean

Panorama is a web application for storing, sharing, analyzing, and reusing targeted assays created and refined with Skyline,1 an increasingly popular Windows client software tool for targeted proteomics experiments. Panorama allows laboratories to store and organize curated results contained in Skyline documents with fine-grained permissions, which facilitates distributed collaboration and secure sharing of published and unpublished data via a web-browser interface. It is fully integrated with the Skyline workflow and supports publishing a document directly to a Panorama server from the Skyline user interface. Panorama captures the complete Skyline document information content in a relational database schema. Curated results published to Panorama can be aggregated and exported as chromatogram libraries. These libraries can be used in Skyline to pick optimal targets in new experiments and to validate peak identification of target peptides. Panorama is open-source and freely available. It is distributed as part of LabKey Server,2 an open source biomedical research data management system. Laboratories and organizations can set up Panorama locally by downloading and installing the software on their own servers. They can also request freely hosted projects on https://panoramaweb.org, a Panorama server maintained by the Department of Genome Sciences at the University of Washington.


Nature Methods | 2014

CPTAC Assay Portal: a repository of targeted proteomic assays

Jeffrey R. Whiteaker; Goran N. Halusa; Andrew N. Hoofnagle; Vagisha Sharma; Brendan MacLean; Ping Yan; John A. Wrobel; Jacob Kennedy; D. R. Mani; Lisa J. Zimmerman; Matthew R. Meyer; Mehdi Mesri; Henry Rodriguez; Amanda G. Paulovich

To address these issues, the Clinical Proteomic Tumor Analysis Consortium (CPTAC) of the National Cancer Institute (NCI) has launched an Assay Portal (http://assays.cancer.gov) to serve as a public repository of well-characterized quantitative, MS-based, targeted proteomic assays. The purpose of the CPTAC Assay Portal is to facilitate widespread adoption of targeted MS assays by disseminating SOPs, reagents, and assay characterization data for highly characterized assays. A primary aim of the NCI-supported portal is to bring together clinicians or biologists and analytical chemists to answer hypothesis-driven questions using targeted, MS-based assays. Assay content is easily accessed through queries and filters, enabling investigators to find assays to proteins relevant to their areas of interest. Detailed characterization data are available for each assay, enabling researchers to evaluate assay performance prior to launching the assay in their own laboratory.


Molecular & Cellular Proteomics | 2012

A Mass Spectrometry Proteomics Data Management Platform

Vagisha Sharma; Jimmy K. Eng; Michael J. MacCoss; Michael Riffle

Mass spectrometry-based proteomics is increasingly being used in biomedical research. These experiments typically generate a large volume of highly complex data, and the volume and complexity are only increasing with time. There exist many software pipelines for analyzing these data (each typically with its own file formats), and as technology improves, these file formats change and new formats are developed. Files produced from these myriad software programs may accumulate on hard disks or tape drives over time, with older files being rendered progressively more obsolete and unusable with each successive technical advancement and data format change. Although initiatives exist to standardize the file formats used in proteomics, they do not address the core failings of a file-based data management system: (1) files are typically poorly annotated experimentally, (2) files are “organically” distributed across laboratory file systems in an ad hoc manner, (3) files formats become obsolete, and (4) searching the data and comparing and contrasting results across separate experiments is very inefficient (if possible at all). Here we present a relational database architecture and accompanying web application dubbed Mass Spectrometry Data Platform that is designed to address the failings of the file-based mass spectrometry data management approach. The database is designed such that the output of disparate software pipelines may be imported into a core set of unified tables, with these core tables being extended to support data generated by specific pipelines. Because the data are unified, they may be queried, viewed, and compared across multiple experiments using a common web interface. Mass Spectrometry Data Platform is open source and freely available at http://code.google.com/p/msdapl/.


Journal of Proteome Research | 2013

XLink-DB: database and software tools for storing and visualizing protein interaction topology data

Chunxiang Zheng; Chad R. Weisbrod; Juan D. Chavez; Jimmy K. Eng; Vagisha Sharma; Xia Wu; James E. Bruce

As large-scale cross-linking data becomes available, new software tools for data processing and visualization are required to replace manual data analysis. XLink-DB serves as a data storage site and visualization tool for cross-linking results. XLink-DB accepts data generated with any cross-linker and stores them in a relational database. Cross-linked sites are automatically mapped onto PDB structures if available, and results are compared to existing protein interaction databases. A protein interaction network is also automatically generated for the entire data set. The XLink-DB server, including examples, and a help page are available for noncommercial use at http://brucelab.gs.washington.edu/crosslinkdbv1/ . The source code can be viewed and downloaded at https://sourceforge.net/projects/crosslinkdb/?source=directory .


Methods of Molecular Biology | 2016

Using the CPTAC Assay Portal to Identify and Implement Highly Characterized Targeted Proteomics Assays

Jeffrey R. Whiteaker; Goran N. Halusa; Andrew N. Hoofnagle; Vagisha Sharma; Brendan MacLean; Ping Yan; John A. Wrobel; Jacob Kennedy; D. R. Mani; Lisa J. Zimmerman; Matthew R. Meyer; Mehdi Mesri; Emily S. Boja; Steven A. Carr; Daniel W. Chan; Xian Chen; Jing Chen; Sherri R. Davies; Matthew J. Ellis; David Fenyö; Tara Hiltke; Karen A. Ketchum; Chris Kinsinger; Eric Kuhn; Daniel C. Liebler; Tao Liu; Michael Loss; Michael J. MacCoss; Wei Jun Qian; Robert Rivers

The Clinical Proteomic Tumor Analysis Consortium (CPTAC) of the National Cancer Institute (NCI) has launched an Assay Portal (http://assays.cancer.gov) to serve as an open-source repository of well-characterized targeted proteomic assays. The portal is designed to curate and disseminate highly characterized, targeted mass spectrometry (MS)-based assays by providing detailed assay performance characterization data, standard operating procedures, and access to reagents. Assay content is accessed via the portal through queries to find assays targeting proteins associated with specific cellular pathways, protein complexes, or specific chromosomal regions. The position of the peptide analytes for which there are available assays are mapped relative to other features of interest in the protein, such as sequence domains, isoforms, single nucleotide polymorphisms, and posttranslational modifications. The overarching goals are to enable robust quantification of all human proteins and to standardize the quantification of targeted MS-based assays to ultimately enable harmonization of results over time and across laboratories.


Cell systems | 2018

A Library of Phosphoproteomic and Chromatin Signatures for Characterizing Cellular Responses to Drug Perturbations

Lev Litichevskiy; Ryan Peckner; Jennifer G. Abelin; Jacob K. Asiedu; Amanda L. Creech; John F. Davis; Desiree Davison; Caitlin M. Dunning; Shawn Egri; Joshua Gould; Tak Ko; Sarah A. Johnson; David L. Lahr; Daniel Lam; Zihan Liu; Nicholas J. Lyons; Xiaodong Lu; Brendan MacLean; Alison E. Mungenast; Adam Officer; Ted Natoli; Malvina Papanastasiou; Jinal Patel; Vagisha Sharma; Courtney Toder; Andrew A. Tubelli; Jennie Z. Young; Steven A. Carr; Todd R. Golub; Aravind Subramanian

SUMMARY Although the value of proteomics has been demonstrated, cost and scale are typically prohibitive, and gene expression profiling remains dominant for characterizing cellular responses to perturbations. However, high-throughput sentinel assays provide an opportunity for proteomics to contribute at a meaningful scale. We present a systematic library resource (90 drugs 3 6 cell lines) of proteomic signatures that measure changes in the reduced-representation phosphoproteome (P100) and changes in epigenetic marks on histones (GCP). A majority of these drugs elicited reproducible signatures, but notable cell line- and assay-specific differences were observed. Using the “connectivity” framework, we compared signatures across cell types and integrated data across assays, including a transcriptional assay (L1000). Consistent connectivity among cell types revealed cellular responses that transcended lineage, and consistent connectivity among assays revealed unexpected associations between drugs. We further leveraged the resource against public data to formulate hypotheses for treatment of multiple myeloma and acute lymphocytic leukemia. This resource is publicly available at https://clue.io/proteomics.


Journal of Proteome Research | 2010

Precursor Charge State Prediction for Electron Transfer Dissociation Tandem Mass Spectra

Vagisha Sharma; Jimmy K. Eng; Sergey Feldman; Priska D. von Haller; Michael J. MacCoss; William Stafford Noble

Electron-transfer dissociation (ETD) induces fragmentation along the peptide backbone by transferring an electron from a radical anion to a protonated peptide. In contrast with collision-induced dissociation, side chains and modifications such as phosphorylation are left intact through the ETD process. Because the precursor charge state is an important input to MS/MS sequence database search tools, the ability to accurately determine the precursor charge is helpful for the identification process. Furthermore, because ETD can be applied to large, highly charged peptides, the need for accurate precursor charge state determination is magnified. Otherwise, each spectrum must be searched repeatedly using a large range of possible precursor charge states. To address this problem, we have developed an ETD charge state prediction tool based on support vector machine classifiers that is demonstrated to exhibit superior classification accuracy while minimizing the overall number of predicted charge states. The tool is freely available, open source, cross platform compatible, and demonstrated to perform well when compared with an existing charge state prediction tool. The program is available from http://code.google.com/p/etdz/.


Journal of the American Society for Mass Spectrometry | 2015

Visualization and Dissemination of Multidimensional Proteomics Data Comparing Protein Abundance During Caenorhabditis elegans Development

Michael Riffle; Gennifer Merrihew; Daniel Jaschob; Vagisha Sharma; Trisha N. Davis; William Stafford Noble; Michael J. MacCoss

AbstractRegulation of protein abundance is a critical aspect of cellular function, organism development, and aging. Alternative splicing may give rise to multiple possible proteoforms of gene products where the abundance of each proteoform is independently regulated. Understanding how the abundances of these distinct gene products change is essential to understanding the underlying mechanisms of many biological processes. Bottom-up proteomics mass spectrometry techniques may be used to estimate protein abundance indirectly by sequencing and quantifying peptides that are later mapped to proteins based on sequence. However, quantifying the abundance of distinct gene products is routinely confounded by peptides that map to multiple possible proteoforms. In this work, we describe a technique that may be used to help mitigate the effects of confounding ambiguous peptides and multiple proteoforms when quantifying proteins. We have applied this technique to visualize the distribution of distinct gene products for the whole proteome across 11 developmental stages of the model organism Caenorhabditis elegans. The result is a large multidimensional dataset for which web-based tools were developed for visualizing how translated gene products change during development and identifying possible proteoforms. The underlying instrument raw files and tandem mass spectra may also be downloaded. The data resource is freely available on the web at http://www.yeastrc.org/wormpes/. Graphical Abstractᅟ


Molecular & Cellular Proteomics | 2018

Panorama Public: A public repository for quantitative data sets processed in Skyline

Vagisha Sharma; Josh Eckels; Birgit Schilling; Christina Ludwig; Jacob D. Jaffe; Michael J. MacCoss; Brendan MacLean

To address the growing need for a centralized, community resource of published results processed with Skyline, and to provide reviewers and readers immediate visual access to the data behind published conclusions, we present Panorama Public (https://panoramaweb.org/public.url), a repository of Skyline documents supporting published results. Panorama Public is built on Panorama, an open source data management system for mass spectrometry data processed with the Skyline targeted mass spectrometry environment. The Panorama web application facilitates viewing, sharing, and disseminating results contained in Skyline documents via a web-browser. Skyline users can easily upload their documents to a Panorama server and allow other researchers to explore uploaded results in the Panorama web-interface through a variety of familiar summary graphs as well as annotated views of the chromatographic peaks processed with Skyline. This makes Panorama ideal for sharing targeted, quantitative results contained in Skyline documents with collaborators, reviewers, and the larger proteomics community. The Panorama Public repository employs the full data visualization capabilities of Panorama which facilitates sharing results with reviewers during manuscript review.


Journal of Proteome Research | 2016

An Automated Pipeline to Monitor System Performance in Liquid Chromatography–Tandem Mass Spectrometry Proteomic Experiments

Michael S. Bereman; Joshua Beri; Vagisha Sharma; Cory Nathe; Josh Eckels; Brendan MacLean; Michael J. MacCoss

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Jeffrey R. Whiteaker

Fred Hutchinson Cancer Research Center

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Jimmy K. Eng

University of Washington

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Michael Riffle

University of Washington

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Ping Yan

Fred Hutchinson Cancer Research Center

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Amanda G. Paulovich

Fred Hutchinson Cancer Research Center

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