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Featured researches published by Parag Mallick.


Bioinformatics | 2008

ProteoWizard: Open Source Software for Rapid Proteomics Tools Development

Darren Kessner; Matt Chambers; Robert Burke; David B. Agus; Parag Mallick

Summary: The ProteoWizard software project provides a modular and extensible set of open-source, cross-platform tools and libraries. The tools perform proteomics data analyses; the libraries enable rapid tool creation by providing a robust, pluggable development framework that simplifies and unifies data file access, and performs standard proteomics and LCMS dataset computations. The library contains readers and writers of the mzML data format, which has been written using modern C++ techniques and design principles and supports a variety of platforms with native compilers. The software has been specifically released under the Apache v2 license to ensure it can be used in both academic and commercial projects. In addition to the library, we also introduce a rapidly growing set of companion tools whose implementation helps to illustrate the simplicity of developing applications on top of the ProteoWizard library. Availability: Cross-platform software that compiles using native compilers (i.e. GCC on Linux, MSVC on Windows and XCode on OSX) is available for download free of charge, at http://proteowizard.sourceforge.net. This website also provides code examples, and documentation. It is our hope the ProteoWizard project will become a standard platform for proteomics development; consequently, code use, contribution and further development are strongly encouraged. Contact: [email protected]; [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Nature Biotechnology | 2012

A Cross-platform Toolkit for Mass Spectrometry and Proteomics

Matthew C. Chambers; Brendan MacLean; Robert Burke; Dario Amodei; Daniel Ruderman; Steffen Neumann; Laurent Gatto; Bernd Fischer; Brian Pratt; Katherine Hoff; Darren Kessner; Natalie Tasman; Nicholas J. Shulman; Barbara Frewen; Tahmina A Baker; Mi-Youn Brusniak; Christopher Paulse; David M. Creasy; Lisa Flashner; Kian Kani; Chris Moulding; Sean L. Seymour; Lydia M Nuwaysir; Brent Lefebvre; Frank Kuhlmann; Joe Roark; Paape Rainer; Suckau Detlev; Tina Hemenway; Andreas Huhmer

Mass-spectrometry-based proteomics has become an important component of biological research. Numerous proteomics methods have been developed to identify and quantify the proteins in biological and clinical samples1, identify pathways affected by endogenous and exogenous perturbations2, and characterize protein complexes3. Despite successes, the interpretation of vast proteomics datasets remains a challenge. There have been several calls for improvements and standardization of proteomics data analysis frameworks, as well as for an application-programming interface for proteomics data access4,5. In response, we have developed the ProteoWizard Toolkit, a robust set of open-source, software libraries and applications designed to facilitate proteomics research. The libraries implement the first-ever, non-commercial, unified data access interface for proteomics, bridging field-standard open formats and all common vendor formats. In addition, diverse software classes enable rapid development of vendor-agnostic proteomics software. Additionally, ProteoWizard projects and applications, building upon the core libraries, are becoming standard tools for enabling significant proteomics inquiries.


Nucleic Acids Research | 2006

The PeptideAtlas project

Frank Desiere; Eric W. Deutsch; Nichole L. King; Alexey I. Nesvizhskii; Parag Mallick; Jimmy K. Eng; Sharon S. Chen; James S. Eddes; Sandra N. Loevenich; Ruedi Aebersold

The completion of the sequencing of the human genome and the concurrent, rapid development of high-throughput proteomic methods have resulted in an increasing need for automated approaches to archive proteomic data in a repository that enables the exchange of data among researchers and also accurate integration with genomic data. PeptideAtlas () addresses these needs by identifying peptides by tandem mass spectrometry (MS/MS), statistically validating those identifications and then mapping identified sequences to the genomes of eukaryotic organisms. A meaningful comparison of data across different experiments generated by different groups using different types of instruments is enabled by the implementation of a uniform analytic process. This uniform statistical validation ensures a consistent and high-quality set of peptide and protein identifications. The raw data from many diverse proteomic experiments are made available in the associated PeptideAtlas repository in several formats. Here we present a summary of our process and details about the Human, Drosophila and Yeast PeptideAtlas builds.


Molecular & Cellular Proteomics | 2011

A High-Confidence Human Plasma Proteome Reference Set with Estimated Concentrations in PeptideAtlas

Terry Farrah; Eric W. Deutsch; Gilbert S. Omenn; David S. Campbell; Zhi Sun; Julie Bletz; Parag Mallick; Jonathan E. Katz; Johan Malmström; Reto Ossola; Julian D. Watts; Biaoyang Lin; Hui Zhang; Robert L. Moritz; Ruedi Aebersold

Human blood plasma can be obtained relatively noninvasively and contains proteins from most, if not all, tissues of the body. Therefore, an extensive, quantitative catalog of plasma proteins is an important starting point for the discovery of disease biomarkers. In 2005, we showed that different proteomics measurements using different sample preparation and analysis techniques identify significantly different sets of proteins, and that a comprehensive plasma proteome can be compiled only by combining data from many different experiments. Applying advanced computational methods developed for the analysis and integration of very large and diverse data sets generated by tandem MS measurements of tryptic peptides, we have now compiled a high-confidence human plasma proteome reference set with well over twice the identified proteins of previous high-confidence sets. It includes a hierarchy of protein identifications at different levels of redundancy following a clearly defined scheme, which we propose as a standard that can be applied to any proteomics data set to facilitate cross-proteome analyses. Further, to aid in development of blood-based diagnostics using techniques such as selected reaction monitoring, we provide a rough estimate of protein concentrations using spectral counting. We identified 20,433 distinct peptides, from which we inferred a highly nonredundant set of 1929 protein sequences at a false discovery rate of 1%. We have made this resource available via PeptideAtlas, a large, multiorganism, publicly accessible compendium of peptides identified in tandem MS experiments conducted by laboratories around the world.


Nature Reviews Molecular Cell Biology | 2005

Scoring proteomes with proteotypic peptide probes

Bernhard Kuster; Markus Schirle; Parag Mallick; Ruedi Aebersold

Technologies for genome-wide analyses typically undergo a transition from a discovery phase to a scoring phase. In the discovery phase, the genomic universe is explored and all pertinent data are noted. In the scoring phase, relevant entities are screened to reveal groups of genes that are associated with specific biological processes or conditions. In this article, we propose that the transition from a discovery to a scoring phase is also essential, feasible and imminent for proteomics.


Genome Biology | 2005

Integration with the human genome of peptide sequences obtained by high-throughput mass spectrometry

Frank Desiere; Eric W. Deutsch; Alexey I. Nesvizhskii; Parag Mallick; Nichole L. King; Jimmy K. Eng; Alan Aderem; Rose Boyle; Erich Brunner; Samuel Donohoe; Nelson Fausto; Ernst Hafen; Lee Hood; Michael G. Katze; Kathleen A. Kennedy; Floyd Kregenow; Hookeun Lee; Biaoyang Lin; Daniel B. Martin; Jeffrey A. Ranish; David J Rawlings; Lawrence E. Samelson; Yuzuru Shiio; Julian D. Watts; Bernd Wollscheid; Michael E. Wright; Wei Yan; Lihong Yang; Eugene C. Yi; Hui Zhang

A crucial aim upon the completion of the human genome is the verification and functional annotation of all predicted genes and their protein products. Here we describe the mapping of peptides derived from accurate interpretations of protein tandem mass spectrometry (MS) data to eukaryotic genomes and the generation of an expandable resource for integration of data from many diverse proteomics experiments. Furthermore, we demonstrate that peptide identifications obtained from high-throughput proteomics can be integrated on a large scale with the human genome. This resource could serve as an expandable repository for MS-derived proteome information.


Molecular & Cellular Proteomics | 2005

High Throughput Quantitative Analysis of Serum Proteins Using Glycopeptide Capture and Liquid Chromatography Mass Spectrometry

Hui Zhang; Eugene C. Yi; Xiao Jun Li; Parag Mallick; Karen S. Kelly-Spratt; Christophe D. Masselon; David G. Camp; Richard D. Smith; Christopher J. Kemp; Ruedi Aebersold

It is expected that the composition of the serum proteome can provide valuable information about the state of the human body in health and disease and that this information can be extracted via quantitative proteomic measurements. Suitable proteomic techniques need to be sensitive, reproducible, and robust to detect potential biomarkers below the level of highly expressed proteins, generate data sets that are comparable between experiments and laboratories, and have high throughput to support statistical studies. Here we report a method for high throughput quantitative analysis of serum proteins. It consists of the selective isolation of peptides that are N-linked glycosylated in the intact protein, the analysis of these now deglycosylated peptides by liquid chromatography electrospray ionization mass spectrometry, and the comparative analysis of the resulting patterns. By focusing selectively on a few formerly N-linked glycopeptides per serum protein, the complexity of the analyte sample is significantly reduced and the sensitivity and throughput of serum proteome analysis are increased compared with the analysis of total tryptic peptides from unfractionated samples. We provide data that document the performance of the method and show that sera from untreated normal mice and genetically identical mice with carcinogen-induced skin cancer can be unambiguously discriminated using unsupervised clustering of the resulting peptide patterns. We further identify, by tandem mass spectrometry, some of the peptides that were consistently elevated in cancer mice compared with their control littermates.


Proceedings of the National Academy of Sciences of the United States of America | 2002

Genomic evidence that the intracellular proteins of archaeal microbes contain disulfide bonds

Parag Mallick; Daniel R. Boutz; David Eisenberg; Todd O. Yeates

Disulfide bonds have only rarely been found in intracellular proteins. That pattern is consistent with the chemically reducing environment inside the cells of well-studied organisms. However, recent experiments and new calculations based on genomic data of archaea provide striking contradictions to this pattern. Our results indicate that the intracellular proteins of certain hyperthermophilic archaea, especially the crenarchaea Pyrobaculum aerophilum and Aeropyrum pernix, are rich in disulfide bonds. This finding implicates disulfide bonding in stabilizing many thermostable proteins and points to novel chemical environments inside these microbes. These unexpected results illustrate the wealth of biochemical insights available from the growing reservoir of genomic data.


Proceedings of the National Academy of Sciences of the United States of America | 2013

Characterizing deformability and surface friction of cancer cells

Sangwon Byun; Sungmin Son; Dario Amodei; Nathan Cermak; Josephine Shaw; Joon Ho Kang; Vivian C. Hecht; Monte M. Winslow; Tyler Jacks; Parag Mallick; Scott R. Manalis

Metastasis requires the penetration of cancer cells through tight spaces, which is mediated by the physical properties of the cells as well as their interactions with the confined environment. Various microfluidic approaches have been devised to mimic traversal in vitro by measuring the time required for cells to pass through a constriction. Although a cell’s passage time is expected to depend on its deformability, measurements from existing approaches are confounded by a cells size and its frictional properties with the channel wall. Here, we introduce a device that enables the precise measurement of (i) the size of a single cell, given by its buoyant mass, (ii) the velocity of the cell entering a constricted microchannel (entry velocity), and (iii) the velocity of the cell as it transits through the constriction (transit velocity). Changing the deformability of the cell by perturbing its cytoskeleton primarily alters the entry velocity, whereas changing the surface friction by immobilizing positive charges on the constrictions walls primarily alters the transit velocity, indicating that these parameters can give insight into the factors affecting the passage of each cell. When accounting for cell buoyant mass, we find that cells possessing higher metastatic potential exhibit faster entry velocities than cells with lower metastatic potential. We additionally find that some cell types with higher metastatic potential exhibit greater than expected changes in transit velocities, suggesting that not only the increased deformability but reduced friction may be a factor in enabling invasive cancer cells to efficiently squeeze through tight spaces.


Cell | 2015

Neuronal Activity Promotes Glioma Growth through Neuroligin-3 Secretion

Humsa Venkatesh; Tessa Johung; Viola Caretti; Alyssa Noll; Yujie Tang; Surya Nagaraja; Erin M. Gibson; Christopher Mount; Jai S. Polepalli; Siddhartha Mitra; Pamelyn Woo; Robert C. Malenka; Hannes Vogel; Markus Bredel; Parag Mallick; Michelle Monje

Active neurons exert a mitogenic effect on normal neural precursor and oligodendroglial precursor cells, the putative cellular origins of high-grade glioma (HGG). By using optogenetic control of cortical neuronal activity in a patient-derived pediatric glioblastoma xenograft model, we demonstrate that active neurons similarly promote HGG proliferation and growth in vivo. Conditioned medium from optogenetically stimulated cortical slices promoted proliferation of pediatric and adult patient-derived HGG cultures, indicating secretion of activity-regulated mitogen(s). The synaptic protein neuroligin-3 (NLGN3) was identified as the leading candidate mitogen, and soluble NLGN3 was sufficient and necessary to promote robust HGG cell proliferation. NLGN3 induced PI3K-mTOR pathway activity and feedforward expression of NLGN3 in glioma cells. NLGN3 expression levels in human HGG negatively correlated with patient overall survival. These findings indicate the important role of active neurons in the brain tumor microenvironment and identify secreted NLGN3 as an unexpected mechanism promoting neuronal activity-regulated cancer growth.

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David B. Agus

University of Southern California

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Shannon M. Mumenthaler

University of Southern California

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Ruedi Aebersold

University of British Columbia

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Kian Kani

University of Southern California

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