Buch, Englisch, 393 Seiten, Format (B × H): 178 mm x 254 mm, Gewicht: 764 g
Reihe: Methods in Molecular Biology
Methods and Tools
Buch, Englisch, 393 Seiten, Format (B × H): 178 mm x 254 mm, Gewicht: 764 g
Reihe: Methods in Molecular Biology
ISBN: 978-1-0716-1969-8
Verlag: Springer US
Authoritative and practical, Statistical Analysis of Proteomic Data: Methods and Tools serves as an ideal guide for proteomics researchers looking to extract the best of their data with state-of-the art tools while also deepening their understanding of data analysis.
Zielgruppe
Professional/practitioner
Autoren/Hrsg.
Fachgebiete
Weitere Infos & Material
Unveiling the Links between Peptide Identification and Differential Analysis FDR Controls by Means of a Practical Introduction to Knockoff Filters.- A Pipeline for Peptide Detection Using Multiple Decoys.- Enhanced Proteomic Data Analysis with MetaMorpheus.- Validation of MS/MS Identifications and Label-Free Quantification Using Proline.- Integrating Identification and Quantification Uncertainty for Differential Protein Abundance Analysis with Triqler.- Left-Censored Missing Value Imputation Approach for MS-Based Proteomics Data with Gsimp.- Towards a More Accurate Differential Analysis of Multiple Imputed Proteomics Data with mi4limma.- Uncertainty Aware Protein-Level Quantification and Differential Expression Analysis of Proteomics Data with seaMass.- Statistical Analysis of Quantitative Peptidomics and Peptide-Level Proteomics Data with Prostar.- msmsEDA and msmsTests: Label-Free Differential Expression by Spectral Counts.- Exploring Protein Interactome Data with IPinquiry: Statistical Analysis and Data Visualization by Spectral Counts.- Statistical Analysis of Post-Translational Modifications Quantified by Label-Free Proteomics Across Multiple Biological Conditions with R: Illustration from SARS-CoV-2 Infected Cells.- Fast, Free, and Flexible Peptide and Protein Quantification with FlashLFQ.- Robust Prediction and Protein Selection with Adaptive PENSE.- Multivariate Analysis with the R Package mixOmics.- Integrating Multiple Quantitative Proteomic Analyses Using MetaMSD.- Application of WGCNA and PloGO2 in the Analysis of Complex Proteomic Data.




