Efficient marginalization to compute protein posterior probabilities from shotgun mass spectrometry data
about
The probabilistic convolution tree: efficient exact Bayesian inference for faster LC-MS/MS protein inferenceConic sampling: an efficient method for solving linear and quadratic programming by randomly linking constraints within the interiorOpenMS: a flexible open-source software platform for mass spectrometry data analysisCurrent algorithmic solutions for peptide-based proteomics data generation and identificationFast and Accurate Protein False Discovery Rates on Large-Scale Proteomics Data Sets with Percolator 3.0.Flexible Data Analysis Pipeline for High-Confidence Proteogenomics.Confetti: a multiprotease map of the HeLa proteome for comprehensive proteomics.Computational and statistical analysis of protein mass spectrometry data.Faster mass spectrometry-based protein inference: junction trees are more efficient than sampling and marginalization by enumeration.Efficient exact maximum a posteriori computation for bayesian SNP genotyping in polyploids.A survey of computational methods and error rate estimation procedures for peptide and protein identification in shotgun proteomics.A cross-validation scheme for machine learning algorithms in shotgun proteomics.Computational approaches to protein inference in shotgun proteomics.A face in the crowd: recognizing peptides through database searchMSProGene: integrative proteogenomics beyond six-frames and single nucleotide polymorphisms.MSAcquisitionSimulator: data-dependent acquisition simulator for LC-MS shotgun proteomics.ProteinInferencer: Confident protein identification and multiple experiment comparison for large scale proteomics projectsInference and validation of protein identifications.Mass spectrometrists should search only for peptides they care about.Recognizing uncertainty increases robustness and reproducibility of mass spectrometry-based protein inferencesMass fingerprinting of complex mixtures: protein inference from high-resolution peptide masses and predicted retention times.Multi-omic network signatures of disease.Statistical approach to protein quantification.Fast and accurate database searches with MS-GF+Percolator.Protein identification problem from a Bayesian point of view.Protein inference: a review.A review of statistical methods for protein identification using tandem mass spectrometry.PECAN: library-free peptide detection for data-independent acquisition tandem mass spectrometry data.Computational Methods in Mass Spectrometry-Based Proteomics.How to talk about protein-level false discovery rates in shotgun proteomics.A non-parametric cutout index for robust evaluation of identified proteins.DeepPep: Deep proteome inference from peptide profiles.Determining the calibration of confidence estimation procedures for unique peptides in shotgun proteomicsCrux: rapid open source protein tandem mass spectrometry analysis.Concerning the accuracy of Fido and parameter choice.Assessing species biomass contributions in microbial communities via metaproteomics.A linear programming model for protein inference problem in shotgun proteomics.Membrane protein shaving with thermolysin can be used to evaluate topology predictors.
P2860
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P2860
Efficient marginalization to compute protein posterior probabilities from shotgun mass spectrometry data
description
2010 nî lūn-bûn
@nan
2010 թուականի Հոկտեմբերին հրատարակուած գիտական յօդուած
@hyw
2010 թվականի հոտեմբերին հրատարակված գիտական հոդված
@hy
2010年の論文
@ja
2010年論文
@yue
2010年論文
@zh-hant
2010年論文
@zh-hk
2010年論文
@zh-mo
2010年論文
@zh-tw
2010年论文
@wuu
name
Efficient marginalization to c ...... shotgun mass spectrometry data
@ast
Efficient marginalization to c ...... shotgun mass spectrometry data
@en
type
label
Efficient marginalization to c ...... shotgun mass spectrometry data
@ast
Efficient marginalization to c ...... shotgun mass spectrometry data
@en
prefLabel
Efficient marginalization to c ...... shotgun mass spectrometry data
@ast
Efficient marginalization to c ...... shotgun mass spectrometry data
@en
P2860
P356
P1476
Efficient marginalization to c ...... shotgun mass spectrometry data
@en
P2093
Oliver Serang
P2860
P304
P356
10.1021/PR100594K
P577
2010-10-01T00:00:00Z