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Dive into the research topics where Nichole L. King is active.

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Featured researches published by Nichole L. King.


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.


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 | 2008

Targeted Quantitative Analysis of Streptococcus pyogenes Virulence Factors by Multiple Reaction Monitoring

Vinzenz Lange; Johan Malmström; John Didion; Nichole L. King; Björn Johansson; Juliane Schäfer; Jonathan Rameseder; Chee-Hong Wong; Eric W. Deutsch; Mi-Youn Brusniak; Peter Bühlmann; Lars Björck; Bruno Domon; Ruedi Aebersold

In many studies, particularly in the field of systems biology, it is essential that identical protein sets are precisely quantified in multiple samples such as those representing differentially perturbed cell states. The high degree of reproducibility required for such experiments has not been achieved by classical mass spectrometry-based proteomics methods. In this study we describe the implementation of a targeted quantitative approach by which predetermined protein sets are first identified and subsequently quantified at high sensitivity reliably in multiple samples. This approach consists of three steps. First, the proteome is extensively mapped out by multidimensional fractionation and tandem mass spectrometry, and the data generated are assembled in the PeptideAtlas database. Second, based on this proteome map, peptides uniquely identifying the proteins of interest, proteotypic peptides, are selected, and multiple reaction monitoring (MRM) transitions are established and validated by MS2 spectrum acquisition. This process of peptide selection, transition selection, and validation is supported by a suite of software tools, TIQAM (Targeted Identification for Quantitative Analysis by MRM), described in this study. Third, the selected target protein set is quantified in multiple samples by MRM. Applying this approach we were able to reliably quantify low abundance virulence factors from cultures of the human pathogen Streptococcus pyogenes exposed to increasing amounts of plasma. The resulting quantitative protein patterns enabled us to clearly define the subset of virulence proteins that is regulated upon plasma exposure.


Journal of Proteome Research | 2008

Halobacterium salinarum NRC-1 PeptideAtlas: Toward Strategies for Targeted Proteomics and Improved Proteome Coverage

Phu T. Van; Amy K. Schmid; Nichole L. King; Amardeep Kaur; Min Pan; Kenia Whitehead; Tie Koide; Marc T. Facciotti; Young Ah Goo; Eric W. Deutsch; David Reiss; Parag Mallick; Nitin S. Baliga

The relatively small numbers of proteins and fewer possible post-translational modifications in microbes provide a unique opportunity to comprehensively characterize their dynamic proteomes. We have constructed a PeptideAtlas (PA) covering 62.7% of the predicted proteome of the extremely halophilic archaeon Halobacterium salinarum NRC-1 by compiling approximately 636 000 tandem mass spectra from 497 mass spectrometry runs in 88 experiments. Analysis of the PA with respect to biophysical properties of constituent peptides, functional properties of parent proteins of detected peptides, and performance of different mass spectrometry approaches has highlighted plausible strategies for improving proteome coverage and selecting signature peptides for targeted proteomics. Notably, discovery of a significant correlation between absolute abundances of mRNAs and proteins has helped identify low abundance of proteins as the major limitation in peptide detection. Furthermore, we have discovered that iTRAQ labeling for quantitative proteomic analysis introduces a significant bias in peptide detection by mass spectrometry. Therefore, despite identifying at least one proteotypic peptide for almost all proteins in the PA, a context-dependent selection of proteotypic peptides appears to be the most effective approach for targeted proteomics.


Journal of Proteome Research | 2008

Halobacterium salinarum NRC-1 PeptideAtlas: strategies for targeted proteomics

Phu T. Van; Amy K. Schmid; Nichole L. King; Amardeep Kaur; Min Pan; Kenia Whitehead; Tie Koide; Marc T. Facciotti; Young-Ah Goo; Eric W. Deutsch; David Reiss; Parag Mallick; Nitin S. Baliga

The relatively small numbers of proteins and fewer possible post-translational modifications in microbes provide a unique opportunity to comprehensively characterize their dynamic proteomes. We have constructed a PeptideAtlas (PA) covering 62.7% of the predicted proteome of the extremely halophilic archaeon Halobacterium salinarum NRC-1 by compiling approximately 636 000 tandem mass spectra from 497 mass spectrometry runs in 88 experiments. Analysis of the PA with respect to biophysical properties of constituent peptides, functional properties of parent proteins of detected peptides, and performance of different mass spectrometry approaches has highlighted plausible strategies for improving proteome coverage and selecting signature peptides for targeted proteomics. Notably, discovery of a significant correlation between absolute abundances of mRNAs and proteins has helped identify low abundance of proteins as the major limitation in peptide detection. Furthermore, we have discovered that iTRAQ labeling for quantitative proteomic analysis introduces a significant bias in peptide detection by mass spectrometry. Therefore, despite identifying at least one proteotypic peptide for almost all proteins in the PA, a context-dependent selection of proteotypic peptides appears to be the most effective approach for targeted proteomics.


Journal of Proteome Research | 2008

Halobacterium salinarum NRC-1 peptideAtlas

T. Van Phu; Amy K. Schmid; Nichole L. King; Amardeep Kaur; Min Pan; Kenia Whitehead; Tie Koide; Marc T. Facciotti; Young Ah Goo; Eric W. Deutsch; David Reiss; Parag Mallick; Nitin S. Baliga

The relatively small numbers of proteins and fewer possible post-translational modifications in microbes provide a unique opportunity to comprehensively characterize their dynamic proteomes. We have constructed a PeptideAtlas (PA) covering 62.7% of the predicted proteome of the extremely halophilic archaeon Halobacterium salinarum NRC-1 by compiling approximately 636 000 tandem mass spectra from 497 mass spectrometry runs in 88 experiments. Analysis of the PA with respect to biophysical properties of constituent peptides, functional properties of parent proteins of detected peptides, and performance of different mass spectrometry approaches has highlighted plausible strategies for improving proteome coverage and selecting signature peptides for targeted proteomics. Notably, discovery of a significant correlation between absolute abundances of mRNAs and proteins has helped identify low abundance of proteins as the major limitation in peptide detection. Furthermore, we have discovered that iTRAQ labeling for quantitative proteomic analysis introduces a significant bias in peptide detection by mass spectrometry. Therefore, despite identifying at least one proteotypic peptide for almost all proteins in the PA, a context-dependent selection of proteotypic peptides appears to be the most effective approach for targeted proteomics.


Proteomics | 2005

Human Plasma PeptideAtlas

Eric W. Deutsch; Jimmy K. Eng; Hui Zhang; Nichole L. King; Alexey I. Nesvizhskii; Biaoyang Lin; Hookeun Lee; Eugene C. Yi; Reto Ossola; Ruedi Aebersold


Genome Biology | 2006

Analysis of the Saccharomyces cerevisiae proteome with PeptideAtlas

Nichole L. King; Eric W. Deutsch; Jeffrey A. Ranish; Alexey I. Nesvizhskii; James S. Eddes; Parag Mallick; Jimmy K. Eng; Frank Desiere; Mark R. Flory; Daniel B. Martin; Bong Kim; Hookeun Lee; Brian Raught; Ruedi Aebersold


Archive | 2008

The PeptideAtlas as a tool for targeted proteomics

D. Campbell; Eric W. Deutsch; V. Lange; Paola Picotti; Nichole L. King; S. Letarte; Henry H N Lam; N. Zhang; Ruedi Aebersold


Archive | 2007

Development of a spectral library building tool and re-analysis of Human Plasma PeptideAtlas datasets using spectral searching

Henry H N Lam; Eric W. Deutsch; James S. Eddes; Jimmy K. Eng; Nichole L. King; Stephen E. Stein; Ruedi Aebersold

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Jimmy K. Eng

University of Washington

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James S. Eddes

Walter and Eliza Hall Institute of Medical Research

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