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Dive into the research topics where Ronald J. Moore is active.

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Featured researches published by Ronald J. Moore.


Molecular & Cellular Proteomics | 2002

Toward a Human Blood Serum Proteome Analysis By Multidimensional Separation Coupled With Mass Spectrometry

Joshua N. Adkins; Susan M. Varnum; Kenneth J. Auberry; Ronald J. Moore; Nicolas H. Angell; Richard D. Smith; David L. Springer; Joel G. Pounds

Blood serum is a complex body fluid that contains various proteins ranging in concentration over at least 9 orders of magnitude. Using a combination of mass spectrometry technologies with improvements in sample preparation, we have performed a proteomic analysis with submilliliter quantities of serum and increased the measurable concentration range for proteins in blood serum beyond previous reports. We have detected 490 proteins in serum by on-line reversed-phase microcapillary liquid chromatography coupled with ion trap mass spectrometry. To perform this analysis, immunoglobulins were removed from serum using protein A/G, and the remaining proteins were digested with trypsin. Resulting peptides were separated by strong cation exchange chromatography into distinct fractions prior to analysis. This separation resulted in a 3–5-fold increase in the number of proteins detected in an individual serum sample. With this increase in the number of proteins identified we have detected some lower abundance serum proteins (ng/ml range) including human growth hormone, interleukin-12, and prostate-specific antigen. We also used SEQUEST to compare different protein databases with and without filtering. This comparison is plotted to allow for a quick visual assessment of different databases as a subjective measure of analytical quality. With this study, we have performed the most extensive analysis of serum proteins to date and laid the foundation for future refinements in the identification of novel protein biomarkers of disease.


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

Global analysis of the Deinococcus radiodurans proteome by using accurate mass tags

Mary S. Lipton; Ljiljana Pǎá-Toli; Gordon A. Anderson; David J. Anderson; Deanna L. Auberry; John R. Battista; Michael J. Daly; Jim K. Fredrickson; Kim K. Hixson; Heather M. Kostandarithes; Christophe D. Masselon; Lye Meng Markillie; Ronald J. Moore; Margaret F. Romine; Yufeng Shen; Eric Stritmatter; Nikola Tolić; Harold R. Udseth; Amudhan Venkateswaran; Kwong Kwok Wong; Rui Zhao; Richard D. Smith

Understanding biological systems and the roles of their constituents is facilitated by the ability to make quantitative, sensitive, and comprehensive measurements of how their proteome changes, e.g., in response to environmental perturbations. To this end, we have developed a high-throughput methodology to characterize an organisms dynamic proteome based on the combination of global enzymatic digestion, high-resolution liquid chromatographic separations, and analysis by Fourier transform ion cyclotron resonance mass spectrometry. The peptides produced serve as accurate mass tags for the proteins and have been used to identify with high confidence >61% of the predicted proteome for the ionizing radiation-resistant bacterium Deinococcus radiodurans. This fraction represents the broadest proteome coverage for any organism to date and includes 715 proteins previously annotated as either hypothetical or conserved hypothetical.


Proteomics | 2011

Reversed-phase chromatography with multiple fraction concatenation strategy for proteome profiling of human MCF10A cells†

Yuexi Wang; Feng Yang; Marina A. Gritsenko; Yingchun Wang; Therese R. Clauss; Tao Liu; Yufeng Shen; Matthew E. Monroe; Daniel Lopez-Ferrer; Theresa Reno; Ronald J. Moore; Richard L. Klemke; David G. Camp; Richard D. Smith

In this study, we evaluated a concatenated low pH (pH 3) and high pH (pH 10) reversed‐phase liquid chromatography strategy as a first dimension for two‐dimensional liquid chromatography tandem mass spectrometry (“shotgun”) proteomic analysis of trypsin‐digested human MCF10A cell sample. Compared with the more traditional strong cation exchange method, the use of concatenated high pH reversed‐phase liquid chromatography as a first‐dimension fractionation strategy resulted in 1.8‐ and 1.6‐fold increases in the number of peptide and protein identifications (with two or more unique peptides), respectively. In addition to broader identifications, advantages of the concatenated high pH fractionation approach include improved protein sequence coverage, simplified sample processing, and reduced sample losses. The results demonstrate that the concatenated high pH reversed‐phased strategy is an attractive alternative to strong cation exchange for two‐dimensional shotgun proteomic analysis.


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

Global Analysis of Deinococcus Radiodurans Proteome by Csing Accurate Mass Tags

Mary S. Lipton; Liljiana Pasa-Tolic; Gordon A. Anderson; David J. Anderson; Deanna L. Auberry; John R. Battista; Michael J. Daly; Jim K. Fredrickson; Kim K. Hixson; Heather M. Kostandarithes; Christophe D. Masselon; Lye Meng Markillie; Ronald J. Moore; Margaret F. Romine; Yufeng Shen; Eric F. Strittmatter; Nikola Tolić; Harold R. Udseth; Amudhan Venkateswaran; Kwong Kwok Wong; Rui Zhao; Richard D. Smith

Understanding biological systems and the roles of their constituents is facilitated by the ability to make quantitative, sensitive, and comprehensive measurements of how their proteome changes, e.g., in response to environmental perturbations. To this end, we have developed a high-throughput methodology to characterize an organisms dynamic proteome based on the combination of global enzymatic digestion, high-resolution liquid chromatographic separations, and analysis by Fourier transform ion cyclotron resonance mass spectrometry. The peptides produced serve as accurate mass tags for the proteins and have been used to identify with high confidence >61% of the predicted proteome for the ionizing radiation-resistant bacterium Deinococcus radiodurans. This fraction represents the broadest proteome coverage for any organism to date and includes 715 proteins previously annotated as either hypothetical or conserved hypothetical.


Molecular & Cellular Proteomics | 2006

Evaluation of Multiprotein Immunoaffinity Subtraction for Plasma Proteomics and Candidate Biomarker Discovery Using Mass Spectrometry

Tao Liu; Wei Jun Qian; Heather M. Mottaz; Marina A. Gritsenko; Angela D. Norbeck; Ronald J. Moore; Samuel O. Purvine; David G. Camp; Richard D. Smith

Strategies for removal of high abundance proteins have been increasingly utilized in proteomic studies of serum/plasma and other body fluids to enhance the detection of low abundance proteins and achieve broader proteome coverage; however, both the reproducibility and specificity of the high abundance protein depletion process still represent common concerns. Here we report a detailed evaluation of immunoaffinity subtraction performed applying the ProteomeLab IgY-12 system that is commonly used in human serum/plasma proteome characterization in combination with high resolution LC-MS/MS. Plasma samples were repeatedly processed using this approach, and the resulting flow-through fractions and bound fractions were individually analyzed for comparison. The removal of target proteins by the immunoaffinity subtraction system and the overall process was highly reproducible. Non-target proteins, including one spiked protein standard (rabbit glyceraldehyde-3-phosphate dehydrogenase), were also observed to bind to the column at different levels but also in a reproducible manner. The results suggest that multiprotein immunoaffinity subtraction systems can be readily integrated into quantitative strategies to enhance detection of low abundance proteins in biomarker discovery studies.


PLOS Biology | 2004

Integrative Analysis of the Mitochondrial Proteome in Yeast

Holger Prokisch; Curt Scharfe; David G. Camp; Wenzhong Xiao; Lior David; Christophe Andreoli; Matthew E. Monroe; Ronald J. Moore; Marina A. Gritsenko; Christian Kozany; Kim K. Hixson; Heather M. Mottaz; Hans Zischka; Marius Ueffing; Zelek S. Herman; Ronald W. Davis; Thomas Meitinger; Peter J. Oefner; Richard D. Smith; Lars M. Steinmetz

In this study yeast mitochondria were used as a model system to apply, evaluate, and integrate different genomic approaches to define the proteins of an organelle. Liquid chromatography mass spectrometry applied to purified mitochondria identified 546 proteins. By expression analysis and comparison to other proteome studies, we demonstrate that the proteomic approach identifies primarily highly abundant proteins. By expanding our evaluation to other types of genomic approaches, including systematic deletion phenotype screening, expression profiling, subcellular localization studies, protein interaction analyses, and computational predictions, we show that an integration of approaches moves beyond the limitations of any single approach. We report the success of each approach by benchmarking it against a reference set of known mitochondrial proteins, and predict approximately 700 proteins associated with the mitochondrial organelle from the integration of 22 datasets. We show that a combination of complementary approaches like deletion phenotype screening and mass spectrometry can identify over 75% of the known mitochondrial proteome. These findings have implications for choosing optimal genome-wide approaches for the study of other cellular systems, including organelles and pathways in various species. Furthermore, our systematic identification of genes involved in mitochondrial function and biogenesis in yeast expands the candidate genes available for mapping Mendelian and complex mitochondrial disorders in humans.


Cell | 2016

Integrated proteogenomic characterization of human high-grade serous ovarian cancer

Hui Zhang; Tao Liu; Zhen Zhang; Samuel H. Payne; Bai Zhang; Jason E. McDermott; Jian-Ying Zhou; Vladislav A. Petyuk; Li Chen; Debjit Ray; Shisheng Sun; Feng Yang; Lijun Chen; Jing Wang; Punit Shah; Seong Won Cha; Paul Aiyetan; Sunghee Woo; Yuan Tian; Marina A. Gritsenko; Therese R. Clauss; Caitlin H. Choi; Matthew E. Monroe; Stefani N. Thomas; Song Nie; Chaochao Wu; Ronald J. Moore; Kun-Hsing Yu; David L. Tabb; David Fenyö

To provide a detailed analysis of the molecular components and underlying mechanisms associated with ovarian cancer, we performed a comprehensive mass-spectrometry-based proteomic characterization of 174 ovarian tumors previously analyzed by The Cancer Genome Atlas (TCGA), of which 169 were high-grade serous carcinomas (HGSCs). Integrating our proteomic measurements with the genomic data yielded a number of insights into disease, such as how different copy-number alternations influence the proteome, the proteins associated with chromosomal instability, the sets of signaling pathways that diverse genome rearrangements converge on, and the ones most associated with short overall survival. Specific protein acetylations associated with homologous recombination deficiency suggest a potential means for stratifying patients for therapy. In addition to providing a valuable resource, these findings provide a view of how the somatic genome drives the cancer proteome and associations between protein and post-translational modification levels and clinical outcomes in HGSC. VIDEO ABSTRACT.


Proceedings of the National Academy of Sciences of the United States of America | 2012

Antibody-free, targeted mass-spectrometric approach for quantification of proteins at low picogram per milliliter levels in human plasma/serum

Tujin Shi; Thomas L. Fillmore; Xuefei Sun; Rui Zhao; Athena A. Schepmoes; Mahmud Hossain; Fang Xie; Si Wu; Jong-Seo Kim; Nathaniel J. Jones; Ronald J. Moore; Ljiljana Paša-Tolić; Jacob Kagan; Karin D. Rodland; Tao Liu; Keqi Tang; David G. Camp; Richard D. Smith; Wei Jun Qian

Sensitive detection of low-abundance proteins in complex biological samples has typically been achieved by immunoassays that use antibodies specific to target proteins; however, de novo development of antibodies is associated with high costs, long development lead times, and high failure rates. To address these challenges, we developed an antibody-free strategy that involves PRISM (high-pressure, high-resolution separations coupled with intelligent selection and multiplexing) for sensitive selected reaction monitoring (SRM)–based targeted protein quantification. The strategy capitalizes on high-resolution reversed-phase liquid chromatographic separations for analyte enrichment, intelligent selection of target fractions via on-line SRM monitoring of internal standards, and fraction multiplexing before nano–liquid chromatography-SRM quantification. Application of this strategy to human plasma/serum demonstrated accurate and reproducible quantification of proteins at concentrations in the 50–100 pg/mL range, which represents a major advance in the sensitivity of targeted protein quantification without the need for specific-affinity reagents. Application to a set of clinical serum samples illustrated an excellent correlation between the results obtained from the PRISM-SRM assay and those from clinical immunoassay for the prostate-specific antigen level.


Molecular & Cellular Proteomics | 2005

Quantitative proteome analysis of human plasma following in vivo lypopolysaccharide administration using 16O/18O labeling and the accurate mass and time tag approach

Wei Jun Qian; Matthew E. Monroe; Tao Liu; Jon M. Jacobs; Gordon A. Anderson; Yufeng Shen; Ronald J. Moore; David J. Anderson; Rui Zhang; Steve E. Calvano; Stephen F. Lowry; Wenzhong Xiao; Lyle L. Moldawer; Ronald W. Davis; Ronald G. Tompkins; David G. Camp; Richard D. Smith; Henry V. Baker; Paul E. Bankey; Timothy R. Billiar; Bernard H. Brownstein; Irshad H. Chaudry; J. Perren Cobb; Adrian Fay; Robert J. Feezor; Brad Freeman; Richard L. Gamelli; Nicole S. Gibran; Brian G. Harbrecht; Doug Hayden

Identification of novel diagnostic or therapeutic biomarkers from human blood plasma would benefit significantly from quantitative measurements of the proteome constituents over a range of physiological conditions. Herein we describe an initial demonstration of proteome-wide quantitative analysis of human plasma. The approach utilizes postdigestion trypsin-catalyzed 16O/18O peptide labeling, two-dimensional LC-FTICR mass spectrometry, and the accurate mass and time (AMT) tag strategy to identify and quantify peptides/proteins from complex samples. A peptide accurate mass and LC elution time AMT tag data base was initially generated using MS/MS following extensive multidimensional LC separations to provide the basis for subsequent peptide identifications. The AMT tag data base contains >8,000 putative identified peptides, providing 938 confident plasma protein identifications. The quantitative approach was applied without depletion of high abundance proteins for comparative analyses of plasma samples from an individual prior to and 9 h after lipopolysaccharide (LPS) administration. Accurate quantification of changes in protein abundance was demonstrated by both 1:1 labeling of control plasma and the comparison between the plasma samples following LPS administration. A total of 429 distinct plasma proteins were quantified from the comparative analyses, and the protein abundances for 25 proteins, including several known inflammatory response mediators, were observed to change significantly following LPS administration.


PLOS Pathogens | 2012

Dengue Virus Infection Perturbs Lipid Homeostasis in Infected Mosquito Cells

Rushika Perera; Catherine P. Riley; Giorgis Isaac; Amber S. Hopf-Jannasch; Ronald J. Moore; Karl W. Weitz; Ljiljana Paša-Tolić; Thomas O. Metz; Jiri Adamec; Richard J. Kuhn

Dengue virus causes ∼50–100 million infections per year and thus is considered one of the most aggressive arthropod-borne human pathogen worldwide. During its replication, dengue virus induces dramatic alterations in the intracellular membranes of infected cells. This phenomenon is observed both in human and vector-derived cells. Using high-resolution mass spectrometry of mosquito cells, we show that this membrane remodeling is directly linked to a unique lipid repertoire induced by dengue virus infection. Specifically, 15% of the metabolites detected were significantly different between DENV infected and uninfected cells while 85% of the metabolites detected were significantly different in isolated replication complex membranes. Furthermore, we demonstrate that intracellular lipid redistribution induced by the inhibition of fatty acid synthase, the rate-limiting enzyme in lipid biosynthesis, is sufficient for cell survival but is inhibitory to dengue virus replication. Lipids that have the capacity to destabilize and change the curvature of membranes as well as lipids that change the permeability of membranes are enriched in dengue virus infected cells. Several sphingolipids and other bioactive signaling molecules that are involved in controlling membrane fusion, fission, and trafficking as well as molecules that influence cytoskeletal reorganization are also up regulated during dengue infection. These observations shed light on the emerging role of lipids in shaping the membrane and protein environments during viral infections and suggest membrane-organizing principles that may influence virus-induced intracellular membrane architecture.

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Richard D. Smith

Pacific Northwest National Laboratory

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Matthew E. Monroe

Pacific Northwest National Laboratory

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David G. Camp

Pacific Northwest National Laboratory

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Wei Jun Qian

Environmental Molecular Sciences Laboratory

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Rui Zhao

Environmental Molecular Sciences Laboratory

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Tao Liu

Pacific Northwest National Laboratory

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Marina A. Gritsenko

Pacific Northwest National Laboratory

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Daniel J. Orton

Pacific Northwest National Laboratory

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Yufeng Shen

Pacific Northwest National Laboratory

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Anil K. Shukla

Pacific Northwest National Laboratory

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