Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Brian C. Searle is active.

Publication


Featured researches published by Brian C. Searle.


Proteomics | 2010

Scaffold: A bioinformatic tool for validating MS/MS-based proteomic studies

Brian C. Searle

Over‐reporting of unreliable protein identifications has reduced the accuracy and reproducibility of MS/MS‐based proteomic studies. In this work, we demonstrate the analysis workflow used by a bioinformatic tool called Scaffold, which attempts to increase the confidence in protein identification reports through the use of several statistical methods. In addition, this work describes an advanced protein grouping method used by Scaffold to further reduce falsely reported protein identifications, particularly when using large or otherwise sequence redundant protein databases.


Molecular & Cellular Proteomics | 2012

The mzIdentML Data Standard for Mass Spectrometry-Based Proteomics Results

Andrew R. Jones; Martin Eisenacher; Gerhard Mayer; Oliver Kohlbacher; Jennifer A. Siepen; Simon J. Hubbard; Julian N. Selley; Brian C. Searle; James Shofstahl; Sean L. Seymour; Randall K. Julian; Pierre Alain Binz; Eric W. Deutsch; Henning Hermjakob; Florian Reisinger; Johannes Griss; Juan Antonio Vizcaíno; Matthew C. Chambers; Angel Pizarro; David M. Creasy

We report the release of mzIdentML, an exchange standard for peptide and protein identification data, designed by the Proteomics Standards Initiative. The format was developed by the Proteomics Standards Initiative in collaboration with instrument and software vendors, and the developers of the major open-source projects in proteomics. Software implementations have been developed to enable conversion from most popular proprietary and open-source formats, and mzIdentML will soon be supported by the major public repositories. These developments enable proteomics scientists to start working with the standard for exchanging and publishing data sets in support of publications and they provide a stable platform for bioinformatics groups and commercial software vendors to work with a single file format for identification data.


Journal of Proteome Research | 2008

Improving Sensitivity by Probabilistically Combining Results from Multiple MS/MS Search Methodologies

Brian C. Searle; Mark Turner; Alexey I. Nesvizhskii

Database-searching programs generally identify only a fraction of the spectra acquired in a standard LC/MS/MS study of digested proteins. Subtle variations in database-searching algorithms for assigning peptides to MS/MS spectra have been known to provide different identification results. To leverage this variation, a probabilistic framework is developed for combining the results of multiple search engines. The scores for each search engine are first independently converted into peptide probabilities. These probabilities can then be readily combined across search engines using Bayesian rules and the expectation maximization learning algorithm. A significant gain in the number of peptides identified with high confidence with each additional search engine is demonstrated using several data sets of increasing complexity, from a control protein mixture to a human plasma sample, searched using SEQUEST, Mascot, and X! Tandem database-searching programs. The increased rate of peptide assignments also translates into a substantially larger number of protein identifications in LC/MS/MS studies compared to a typical analysis using a single database-search tool.


Molecular & Cellular Proteomics | 2011

A Face in the Crowd: Recognizing Peptides Through Database Search

Jimmy K. Eng; Brian C. Searle; Karl R. Clauser; David L. Tabb

Peptide identification via tandem mass spectrometry sequence database searching is a key method in the array of tools available to the proteomics researcher. The ability to rapidly and sensitively acquire tandem mass spectrometry data and perform peptide and protein identifications has become a commonly used proteomics analysis technique because of advances in both instrumentation and software. Although many different tandem mass spectrometry database search tools are currently available from both academic and commercial sources, these algorithms share similar core elements while maintaining distinctive features. This review revisits the mechanism of sequence database searching and discusses how various parameter settings impact the underlying search.


Nature Methods | 2016

Plug-and-play analysis of the human phosphoproteome by targeted high-resolution mass spectrometry

Robert T. Lawrence; Brian C. Searle; Ariadna Llovet; Judit Villén

Systematic approaches to studying cellular signaling require phosphoproteomic techniques that reproducibly measure the same phosphopeptides across multiple replicates, conditions, and time points. Here we present a method to mine information from large-scale, heterogeneous phosphoproteomics data sets to rapidly generate robust targeted mass spectrometry (MS) assays. We demonstrate the performance of our method by interrogating the IGF-1/AKT signaling pathway, showing that even rarely observed phosphorylation events can be consistently detected and precisely quantified.


Proteomics | 2013

Interlaboratory studies and initiatives developing standards for proteomics

Alexander R. Ivanov; Christopher M. Colangelo; Craig Dufresne; David B. Friedman; Kathryn S. Lilley; Karl Mechtler; Brett S. Phinney; Kristie Rose; Paul A. Rudnick; Brian C. Searle; Scott A. Shaffer; Susan T. Weintraub

Proteomics is a rapidly transforming interdisciplinary field of research that embraces a diverse set of analytical approaches to tackle problems in fundamental and applied biology. This viewpoint article highlights the benefits of interlaboratory studies and standardization initiatives to enable investigators to address many of the challenges found in proteomics research. Among these initiatives, we discuss our efforts on a comprehensive performance standard for characterizing PTMs by MS that was recently developed by the Association of Biomolecular Resource Facilities (ABRF) Proteomics Standards Research Group (sPRG).


Molecular & Cellular Proteomics | 2015

Using Data Independent Acquisition (DIA) to Model High-responding Peptides for Targeted Proteomics Experiments

Brian C. Searle; James G. Bollinger; Andrew B. Stergachis; Michael J. MacCoss

Targeted mass spectrometry is an essential tool for detecting quantitative changes in low abundant proteins throughout the proteome. Although selected reaction monitoring (SRM) is the preferred method for quantifying peptides in complex samples, the process of designing SRM assays is laborious. Peptides have widely varying signal responses dictated by sequence-specific physiochemical properties; one major challenge is in selecting representative peptides to target as a proxy for protein abundance. Here we present PREGO, a software tool that predicts high-responding peptides for SRM experiments. PREGO predicts peptide responses with an artificial neural network trained using 11 minimally redundant, maximally relevant properties. Crucial to its success, PREGO is trained using fragment ion intensities of equimolar synthetic peptides extracted from data independent acquisition experiments. Because of similarities in instrumentation and the nature of data collection, relative peptide responses from data independent acquisition experiments are a suitable substitute for SRM experiments because they both make quantitative measurements from integrated fragment ion chromatograms. Using an SRM experiment containing 12,973 peptides from 724 synthetic proteins, PREGO exhibits a 40–85% improvement over previously published approaches at selecting high-responding peptides. These results also represent a dramatic improvement over the rules-based peptide selection approaches commonly used in the literature.


Mass Spectrometry Reviews | 2017

The Skyline ecosystem: Informatics for quantitative mass spectrometry proteomics

Lindsay Pino; Brian C. Searle; James G. Bollinger; Brook L. Nunn; Brendan MacLean; Michael J. MacCoss

Skyline is a freely available, open-source Windows client application for accelerating targeted proteomics experimentation, with an emphasis on the proteomics and mass spectrometry community as users and as contributors. This review covers the informatics encompassed by the Skyline ecosystem, from computationally assisted targeted mass spectrometry method development, to raw acquisition file data processing, and quantitative analysis and results sharing.


Nature Methods | 2017

PECAN: library-free peptide detection for data-independent acquisition tandem mass spectrometry data

Ying S Ting; James G. Bollinger; Brian C. Searle; Samuel H. Payne; William Stafford Noble; Michael J. MacCoss

Data-independent acquisition (DIA) is an emerging mass spectrometry (MS)-based technique for unbiased and reproducible measurement of protein mixtures. DIA tandem mass spectrometry spectra are often highly multiplexed, containing product ions from multiple cofragmenting precursors. Detecting peptides directly from DIA data is therefore challenging; most DIA data analyses require spectral libraries. Here we present PECAN (http://pecan.maccosslab.org), a library-free, peptide-centric tool that robustly and accurately detects peptides directly from DIA data. PECAN reports evidence of detection based on product ion scoring, which enables detection of low-abundance analytes with poor precursor ion signal. We demonstrate the chromatographic peak picking accuracy and peptide detection capability of PECAN, and we further validate its detection with data-dependent acquisition and targeted analyses. Lastly, we used PECAN to build a plasma proteome library from DIA data and to query known sequence variants.


Proteomics | 2014

A standardized framing for reporting protein identifications in mzIdentML 1.2

Sean L. Seymour; Terry Farrah; Pierre-Alain Binz; Robert J. Chalkley; John S. Cottrell; Brian C. Searle; David L. Tabb; Juan Antonio Vizcaíno; Gorka Prieto; Julian Uszkoreit; Martin Eisenacher; Salvador Martínez-Bartolomé; Fawaz Ghali; Andrew R. Jones

Inferring which protein species have been detected in bottom‐up proteomics experiments has been a challenging problem for which solutions have been maturing over the past decade. While many inference approaches now function well in isolation, comparing and reconciling the results generated across different tools remains difficult. It presently stands as one of the greatest barriers in collaborative efforts such as the Human Proteome Project and public repositories such as the PRoteomics IDEntifications (PRIDE) database. Here we present a framework for reporting protein identifications that seeks to improve capabilities for comparing results generated by different inference tools. This framework standardizes the terminology for describing protein identification results, associated with the HUPO‐Proteomics Standards Initiative (PSI) mzIdentML standard, while still allowing for differing methodologies to reach that final state. It is proposed that developers of software for reporting identification results will adopt this terminology in their outputs. While the new terminology does not require any changes to the core mzIdentML model, it represents a significant change in practice, and, as such, the rules will be released via a new version of the mzIdentML specification (version 1.2) so that consumers of files are able to determine whether the new guidelines have been adopted by export software.

Collaboration


Dive into the Brian C. Searle's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar

Paul A. Rudnick

National Institute of Standards and Technology

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Craig Dufresne

Thermo Fisher Scientific

View shared research outputs
Top Co-Authors

Avatar

Kristie Rose

Thermo Fisher Scientific

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Scott A. Shaffer

University of Massachusetts Medical School

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge