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Peptidomics

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Cover of 'Peptidomics'

Table of Contents

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    Book Overview
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    Chapter 1 Origins, Technological Development, and Applications of Peptidomics
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    Chapter 2 Brain Tissue Sample Stabilization and Extraction Strategies for Neuropeptidomics
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    Chapter 3 Isolation of Endogenous Peptides from Cultured Cell Conditioned Media for Mass Spectrometry
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    Chapter 4 Mass Spectrometric Identification of Endogenous Peptides
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    Chapter 5 Bioinformatics for Prohormone and Neuropeptide Discovery
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    Chapter 6 Substrate Capture Assay Using Inactive Oligopeptidases to Identify Novel Peptides
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    Chapter 7 Non-targeted Identification of d-Amino Acid-Containing Peptides Through Enzymatic Screening, Chiral Amino Acid Analysis, and LC-MS
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    Chapter 8 Quantitative Peptidomics: General Considerations
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    Chapter 9 Quantitative Peptidomics with Isotopic and Isobaric Tags
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    Chapter 10 Quantitative Peptidomics Using Reductive Methylation of Amines
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    Chapter 11 Metabolic Labeling to Quantify Drosophila Neuropeptides and Peptide Hormones
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    Chapter 12 Data Preprocessing, Visualization, and Statistical Analyses of Nontargeted Peptidomics Data from MALDI-MS
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    Chapter 13 Affinity Purification of Neuropeptide Precursors from Mice Lacking Carboxypeptidase E Activity
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    Chapter 14 Mass Spectrometry Based Immunopeptidomics for the Discovery of Cancer Neoantigens
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    Chapter 15 Milk Peptidomics to Identify Functional Peptides and for Quality Control of Dairy Products
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    Chapter 16 Neuropeptidomic Analysis of Zebrafish Brain
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    Chapter 17 Identification, Quantitation, and Imaging of the Crustacean Peptidome
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    Chapter 18 Identification of Endogenous Neuropeptides in the Nematode C. elegans Using Mass Spectrometry
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    Chapter 19 EndoProteoFASP as a Tool to Unveil the Peptidome-Protease Profile: Application to Salivary Diagnostics
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    Chapter 20 Methodology for Urine Peptidome Analysis Based on Nano-HPLC Coupled to Fourier Transform Ion Cyclotron Resonance Mass Spectrometry
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    Chapter 21 Identification of Components in Frog Skin Secretions with Therapeutic Potential as Antidiabetic Agents
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    Chapter 22 High-Accuracy Mass Spectrometry Based Screening Method for the Discovery of Cysteine Containing Peptides in Animal Venoms and Toxins
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    Chapter 23 Analysis of the Snake Venom Peptidome
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    Chapter 24 Identification of Peptides in Spider Venom Using Mass Spectrometry
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    Chapter 25 Single Cell Peptidomics: Approach for Peptide Identification by N-Terminal Peptide Derivatization
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    Chapter 26 Peptidomic Identification of Cysteine-Rich Peptides from Plants
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    Chapter 27 Analysis of Endogenous Peptide Pools of Physcomitrella patens Moss
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    Chapter 28 The Bright Future of Peptidomics
Attention for Chapter 12: Data Preprocessing, Visualization, and Statistical Analyses of Nontargeted Peptidomics Data from MALDI-MS
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Chapter title
Data Preprocessing, Visualization, and Statistical Analyses of Nontargeted Peptidomics Data from MALDI-MS
Chapter number 12
Book title
Peptidomics
Published by
Humana Press, New York, NY, February 2018
DOI 10.1007/978-1-4939-7537-2_12
Pubmed ID
Book ISBNs
978-1-4939-7536-5, 978-1-4939-7537-2
Authors

Harald Tammen, Rüdiger Hess

Abstract

Mass spectrometric (MS) comparative analysis of peptides in biological specimens (nontargeted peptidomics) can result in large amounts of data due to chromatographic separation of a multitude of samples and subsequent MS analysis of numerous chromatographic fractions. Efficient yet effective strategies are needed to obtain relevant information. Combining visual and numerical data analysis offers a suitable approach to retrieve information and to filter data for significant differences as targets for succeeding MS/MS identifications.Visual analysis allows assessing features within a spatial context. Specific patterns are easily recognizable by the human eye. For example, derivatives representing modified forms of signals present are easily identifiable due to an apparent shift in mass and chromatographic retention times. On the other hand numerical data analysis offers the possibility to optimize spectra and to perform high-throughput calculations. A useful tool for such calculations is R, a freely available language and environment for statistical computing. R can be extended via packages to enable functionalities like mzML (open mass spectrometric data format) import and processing. R is capable of parallel processing enabling faster computation using the power of multicore systems.The combination and interplay of both approaches allows evaluating the data in a holistic way, thus helping the researcher to better understand data and experimental outcomes.

Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 6 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
Unknown 6 100%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 2 33%
Student > Master 2 33%
Other 1 17%
Unknown 1 17%
Readers by discipline Count As %
Medicine and Dentistry 2 33%
Computer Science 1 17%
Energy 1 17%
Immunology and Microbiology 1 17%
Unknown 1 17%