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Dive into the research topics where Mark R. Flory is active.

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Featured researches published by Mark R. Flory.


Molecular & Cellular Proteomics | 2004

Gene expression analyzed by high-resolution state array analysis and quantitative proteomics: response of yeast to mating pheromone.

Vivian L. MacKay; Xiaohong Li; Mark R. Flory; Eileen Turcott; G. Lynn Law; Kyle A. Serikawa; X. L. Xu; Hookeun Lee; David R. Goodlett; Ruedi Aebersold; Lue Ping Zhao; David R. Morris

The transcriptome provides the database from which a cell assembles its collection of proteins. Translation of individual mRNA species into their encoded proteins is regulated, producing discrepancies between mRNA and protein levels. Using a new modeling approach to data analysis, a striking diversity is revealed in association of the transcriptome with the translational machinery. Each mRNA has its own pattern of ribosome loading, a circumstance that provides an extraordinary dynamic range of regulation, above and beyond actual transcript levels. Using this approach together with quantitative proteomics, we explored the immediate changes in gene expression in response to activation of a mitogen-activated protein kinase pathway in yeast by mating pheromone. Interestingly, in 26% of those transcripts where the predicted protein synthesis rate changed by at least 3-fold, more than half of these changes resulted from altered translational efficiencies. These observations underscore that analysis of transcript level, albeit extremely important, is insufficient by itself to describe completely the phenotypes of cells under different conditions.


Molecular & Cellular Proteomics | 2004

Gene expression in yeast responding to mating pheromone: Analysis by high-resolution translation state analysis and quantitative proteomics

Vivian L. MacKay; Xiaohong Li; Mark R. Flory; Eileen Turcott; G. Lynn Law; Kyle A. Serikawa; X. L. Xu; Hookeun Lee; David R. Goodlett; Ruedi Aebersold; Lue Ping Zhao; David R. Morris

The transcriptome provides the database from which a cell assembles its collection of proteins. Translation of individual mRNA species into their encoded proteins is regulated, producing discrepancies between mRNA and protein levels. Using a new modeling approach to data analysis, a striking diversity is revealed in association of the transcriptome with the translational machinery. Each mRNA has its own pattern of ribosome loading, a circumstance that provides an extraordinary dynamic range of regulation, above and beyond actual transcript levels. Using this approach together with quantitative proteomics, we explored the immediate changes in gene expression in response to activation of a mitogen-activated protein kinase pathway in yeast by mating pheromone. Interestingly, in 26% of those transcripts where the predicted protein synthesis rate changed by at least 3-fold, more than half of these changes resulted from altered translational efficiencies. These observations underscore that analysis of transcript level, albeit extremely important, is insufficient by itself to describe completely the phenotypes of cells under different conditions.


Molecular & Cellular Proteomics | 2006

Signal Maps for Mass Spectrometry-based Comparative Proteomics

Armol Prakash; Parag Mallick; Jeffrey R. Whiteaker; Heidi Zhang; Amanda G. Paulovich; Mark R. Flory; Hookeun Lee; Ruedi Aebersold; Benno Schwikowski

Mass spectrometry-based proteomic experiments, in combination with liquid chromatography-based separation, can be used to compare complex biological samples across multiple conditions. These comparisons are usually performed on the level of protein lists generated from individual experiments. Unfortunately given the current technologies, these lists typically cover only a small fraction of the total protein content, making global comparisons extremely limited. Recently approaches have been suggested that are built on the comparison of computationally built feature lists instead of protein identifications. Although these approaches promise to capture a bigger spectrum of the proteins present in a complex mixture, their success is strongly dependent on the correctness of the identified features and the aligned retention times of these features across multiple experiments. In this experimental-computational study, we went one step further and performed the comparisons directly on the signal level. First signal maps were constructed that associate the experimental signals across multiple experiments. Then a feature detection algorithm used this integrated information to identify those features that are discriminating or common across multiple experiments. At the core of our approach is a score function that faithfully recognizes mass spectra from similar peptide mixtures and an algorithm that produces an optimal alignment (time warping) of the liquid chromatography experiments on the basis of raw MS signal, making minimal assumptions on the underlying data. We provide experimental evidence that suggests uniqueness and correctness of the resulting signal maps even on low accuracy mass spectrometers. These maps can be used for a variety of proteomic analyses. Here we illustrate the use of signal maps for the discovery of diagnostic biomarkers. An imple-mentation of our algorithm is available on our Web server.


Trends in Biotechnology | 2002

Advances in quantitative proteomics using stable isotope tags

Mark R. Flory; Timothy J. Griffin; Daniel B. Martin; Ruedi Aebersold

A great deal of current biological and clinical research is directed at the interpretation of the information contained in the human genome sequence in terms of the structure, function and control of biological systems and processes. Proteomics, the systematic analysis of proteins, is becoming a critical component in this endeavor because proteomic measurements are carried out directly on proteins--the catalysts and effectors of essentially all biological functions. To detect changes in protein profiles that might provide important diagnostic or functional insights, proteomic analyses necessarily have to be quantitative. This article summarizes recent technological advances in quantitative proteomics.


Molecular & Cellular Proteomics | 2007

Assessing Bias in Experiment Design for Large Scale Mass Spectrometry-based Quantitative Proteomics

Amol Prakash; Brian D. Piening; Jeff Whiteaker; Heidi Zhang; Scott A. Shaffer; Daniel B. Martin; Laura Hohmann; Kelly Cooke; James M. Olson; Stacey Hansen; Mark R. Flory; Hookeun Lee; Julian D. Watts; David R. Goodlett; Ruedi Aebersold; Amanda G. Paulovich; Benno Schwikowski

Mass spectrometry-based proteomics holds great promise as a discovery tool for biomarker candidates in the early detection of diseases. Recently much emphasis has been placed upon producing highly reliable data for quantitative profiling for which highly reproducible methodologies are indispensable. The main problems that affect experimental reproducibility stem from variations introduced by sample collection, preparation, and storage protocols and LC-MS settings and conditions. On the basis of a formally precise and quantitative definition of similarity between LC-MS experiments, we have developed Chaorder, a fully automatic software tool that can assess experimental reproducibility of sets of large scale LC-MS experiments. By visualizing the similarity relationships within a set of experiments, this tool can form the basis of systematic quality control and thus help assess the comparability of mass spectrometry data over time, across different laboratories, and between instruments. Applying Chaorder to data from multiple laboratories and a range of instruments, experimental protocols, and sample complexities revealed biases introduced by the sample processing steps, experimental protocols, and instrument choices. Moreover we show that reducing bias by correcting for just a few steps, for example randomizing the run order, does not provide much gain in statistical power for biomarker discovery.


Archive | 2017

A Robust Protocol for Protein Extraction and Digestion

Michelle Atallah; Mark R. Flory; Parag Mallick

Proteins play a key role in all aspects of cellular homeostasis. Proteomics, the large-scale study of proteins, provides in-depth data on protein properties, including abundances and post-translational modification states, and as such provides a rich avenue for the investigation of biological and disease processes. While proteomic tools such as mass spectrometry have enabled exquisitely sensitive sample analysis, sample preparation remains a critical unstandardized variable that can have a significant impact on downstream data readouts. Consistency in sample preparation and handling is therefore paramount in the collection and analysis of proteomic data.Here we describe methods for performing protein extraction from cell culture or tissues, digesting the isolated protein into peptides via in-solution enzymatic digest, and peptide cleanup with final preparations for analysis via liquid chromatography-mass spectrometry. These protocols have been optimized and standardized for maximum consistency and maintenance of sample integrity.


Nature Biotechnology | 2007

Computational prediction of proteotypic peptides for quantitative proteomics

Parag Mallick; Markus Schirle; Sharon S. Chen; Mark R. Flory; Hookeun Lee; Daniel B. Martin; Jeffrey A. Ranish; Brian Raught; Robert Schmitt; Thilo Werner; Bernhard Kuster; 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


Molecular Cell | 2004

An SMC-Domain Protein in Fission Yeast Links Telomeres to the Meiotic Centrosome

Mark R. Flory; Andrew R. Carson; Eric G D Muller; Ruedi Aebersold


Proteomics | 2006

Quantitative proteomic analysis of the budding yeast cell cycle using acid-cleavable isotope-coded affinity tag reagents

Mark R. Flory; Hookeun Lee; Richard Bonneau; Parag Mallick; Kyle A. Serikawa; David R. Morris; Ruedi Aebersold

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Ruedi Aebersold

University of British Columbia

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Daniel B. Martin

Fred Hutchinson Cancer Research Center

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Amanda G. Paulovich

Fred Hutchinson Cancer Research Center

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Heidi Zhang

Fred Hutchinson Cancer Research Center

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Benno Schwikowski

Fred Hutchinson Cancer Research Center

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