Metabolomics Data Processing and Data Analysis—Current Best Practices

Metabolomics data analysis strategies are central to transforming raw metabolomics data files into meaningful biochemical interpretations that answer biological questions or generate novel hypotheses. This book contains a variety of papers from a Special Issue around the theme “Best Practices in Met...

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ভাষা:ইংরেজি
প্রকাশিত: MDPI - Multidisciplinary Digital Publishing Institute 2022
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অনলাইন ব্যবহার করুন:ONIX_20220111_9783036511948_590
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collection Directory of Open Access Books
description Metabolomics data analysis strategies are central to transforming raw metabolomics data files into meaningful biochemical interpretations that answer biological questions or generate novel hypotheses. This book contains a variety of papers from a Special Issue around the theme “Best Practices in Metabolomics Data Analysis”. Reviews and strategies for the whole metabolomics pipeline are included, whereas key areas such as metabolite annotation and identification, compound and spectral databases and repositories, and statistical analysis are highlighted in various papers. Altogether, this book contains valuable information for researchers just starting in their metabolomics career as well as those that are more experienced and look for additional knowledge and best practice to complement key parts of their metabolomics workflows.
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institution Directory of Open Access Books
language eng
publishDate 2022
publishDateRange 2022
publishDateSort 2022
publisher MDPI - Multidisciplinary Digital Publishing Institute
publisherStr MDPI - Multidisciplinary Digital Publishing Institute
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spelling doab-20.500.12854ir-768552024-03-27T16:34:43Z Metabolomics Data Processing and Data Analysis—Current Best Practices Hanhineva, Kati Van der Hooft, Justin metabolic networks mass spectral libraries metabolite annotation metabolomics data mapping nontarget analysis liquid chromatography mass spectrometry compound identification tandem mass spectral library forensics wastewater gut microbiome meta-omics metagenomics metabolomics metabolic reconstructions genome-scale metabolic modeling constraint-based modeling flux balance host–microbiome metabolism global metabolomics LC-MS spectra processing pathway analysis enrichment analysis mass spectrometry liquid chromatography MS spectral prediction metabolite identification structure-based chemical classification rule-based fragmentation combinatorial fragmentation time series PLS NPLS variable selection bootstrapped-VIP data repository computational metabolomics reanalysis lipidomics data processing triplot multivariate risk modeling environmental factors disease risk chemical classification in silico workflows metabolome mining molecular families networking substructures mass spectrometry imaging metabolomics imaging biostatistics ion selection algorithms liquid chromatography high-resolution mass spectrometry data-independent acquisition all ion fragmentation targeted analysis untargeted analysis R programming full-scan MS/MS processing R-MetaboList 2 liquid chromatography–mass spectrometry (LC/MS) fragmentation (MS/MS) data-dependent acquisition (DDA) simulator in silico untargeted metabolomics liquid chromatography–mass spectrometry (LC-MS) experimental design sample preparation univariate and multivariate statistics metabolic pathway and network analysis LC–MS metabolic profiling computational statistical unsupervised learning supervised learning thema EDItEUR::G Reference, Information and Interdisciplinary subjects::GP Research and information: general Metabolomics data analysis strategies are central to transforming raw metabolomics data files into meaningful biochemical interpretations that answer biological questions or generate novel hypotheses. This book contains a variety of papers from a Special Issue around the theme “Best Practices in Metabolomics Data Analysis”. Reviews and strategies for the whole metabolomics pipeline are included, whereas key areas such as metabolite annotation and identification, compound and spectral databases and repositories, and statistical analysis are highlighted in various papers. Altogether, this book contains valuable information for researchers just starting in their metabolomics career as well as those that are more experienced and look for additional knowledge and best practice to complement key parts of their metabolomics workflows. 2022-01-11T13:44:14Z 2022-01-11T13:44:14Z 2021 book ONIX_20220111_9783036511948_590 9783036511948 9783036511955 https://directory.doabooks.org/handle/20.500.12854/76855 eng image/jpeg Attribution 4.0 International https://mdpi.com/books/pdfview/book/4323 https://mdpi.com/books/pdfview/book/4323 MDPI - Multidisciplinary Digital Publishing Institute 10.3390/books978-3-0365-1195-5 10.3390/books978-3-0365-1195-5 46cabcaa-dd94-4bfe-87b4-55023c1b36d0 9783036511948 9783036511955 276 Basel, Switzerland open access
spellingShingle metabolic networks
mass spectral libraries
metabolite annotation
metabolomics data mapping
nontarget analysis
liquid chromatography mass spectrometry
compound identification
tandem mass spectral library
forensics
wastewater
gut microbiome
meta-omics
metagenomics
metabolomics
metabolic reconstructions
genome-scale metabolic modeling
constraint-based modeling
flux balance
host–microbiome
metabolism
global metabolomics
LC-MS
spectra processing
pathway analysis
enrichment analysis
mass spectrometry
liquid chromatography
MS spectral prediction
metabolite identification
structure-based chemical classification
rule-based fragmentation
combinatorial fragmentation
time series
PLS
NPLS
variable selection
bootstrapped-VIP
data repository
computational metabolomics
reanalysis
lipidomics
data processing
triplot
multivariate risk modeling
environmental factors
disease risk
chemical classification
in silico workflows
metabolome mining
molecular families
networking
substructures
mass spectrometry imaging
metabolomics imaging
biostatistics
ion selection algorithms
liquid chromatography high-resolution mass spectrometry
data-independent acquisition
all ion fragmentation
targeted analysis
untargeted analysis
R programming
full-scan MS/MS processing
R-MetaboList 2
liquid chromatography–mass spectrometry (LC/MS)
fragmentation (MS/MS)
data-dependent acquisition (DDA)
simulator
in silico
untargeted metabolomics
liquid chromatography–mass spectrometry (LC-MS)
experimental design
sample preparation
univariate and multivariate statistics
metabolic pathway and network analysis
LC–MS
metabolic profiling
computational statistical
unsupervised learning
supervised learning
thema EDItEUR::G Reference, Information and Interdisciplinary subjects::GP Research and information: general
Metabolomics Data Processing and Data Analysis—Current Best Practices
title Metabolomics Data Processing and Data Analysis—Current Best Practices
title_full Metabolomics Data Processing and Data Analysis—Current Best Practices
title_fullStr Metabolomics Data Processing and Data Analysis—Current Best Practices
title_full_unstemmed Metabolomics Data Processing and Data Analysis—Current Best Practices
title_short Metabolomics Data Processing and Data Analysis—Current Best Practices
title_sort metabolomics data processing and data analysis current best practices
topic metabolic networks
mass spectral libraries
metabolite annotation
metabolomics data mapping
nontarget analysis
liquid chromatography mass spectrometry
compound identification
tandem mass spectral library
forensics
wastewater
gut microbiome
meta-omics
metagenomics
metabolomics
metabolic reconstructions
genome-scale metabolic modeling
constraint-based modeling
flux balance
host–microbiome
metabolism
global metabolomics
LC-MS
spectra processing
pathway analysis
enrichment analysis
mass spectrometry
liquid chromatography
MS spectral prediction
metabolite identification
structure-based chemical classification
rule-based fragmentation
combinatorial fragmentation
time series
PLS
NPLS
variable selection
bootstrapped-VIP
data repository
computational metabolomics
reanalysis
lipidomics
data processing
triplot
multivariate risk modeling
environmental factors
disease risk
chemical classification
in silico workflows
metabolome mining
molecular families
networking
substructures
mass spectrometry imaging
metabolomics imaging
biostatistics
ion selection algorithms
liquid chromatography high-resolution mass spectrometry
data-independent acquisition
all ion fragmentation
targeted analysis
untargeted analysis
R programming
full-scan MS/MS processing
R-MetaboList 2
liquid chromatography–mass spectrometry (LC/MS)
fragmentation (MS/MS)
data-dependent acquisition (DDA)
simulator
in silico
untargeted metabolomics
liquid chromatography–mass spectrometry (LC-MS)
experimental design
sample preparation
univariate and multivariate statistics
metabolic pathway and network analysis
LC–MS
metabolic profiling
computational statistical
unsupervised learning
supervised learning
thema EDItEUR::G Reference, Information and Interdisciplinary subjects::GP Research and information: general
topic_facet metabolic networks
mass spectral libraries
metabolite annotation
metabolomics data mapping
nontarget analysis
liquid chromatography mass spectrometry
compound identification
tandem mass spectral library
forensics
wastewater
gut microbiome
meta-omics
metagenomics
metabolomics
metabolic reconstructions
genome-scale metabolic modeling
constraint-based modeling
flux balance
host–microbiome
metabolism
global metabolomics
LC-MS
spectra processing
pathway analysis
enrichment analysis
mass spectrometry
liquid chromatography
MS spectral prediction
metabolite identification
structure-based chemical classification
rule-based fragmentation
combinatorial fragmentation
time series
PLS
NPLS
variable selection
bootstrapped-VIP
data repository
computational metabolomics
reanalysis
lipidomics
data processing
triplot
multivariate risk modeling
environmental factors
disease risk
chemical classification
in silico workflows
metabolome mining
molecular families
networking
substructures
mass spectrometry imaging
metabolomics imaging
biostatistics
ion selection algorithms
liquid chromatography high-resolution mass spectrometry
data-independent acquisition
all ion fragmentation
targeted analysis
untargeted analysis
R programming
full-scan MS/MS processing
R-MetaboList 2
liquid chromatography–mass spectrometry (LC/MS)
fragmentation (MS/MS)
data-dependent acquisition (DDA)
simulator
in silico
untargeted metabolomics
liquid chromatography–mass spectrometry (LC-MS)
experimental design
sample preparation
univariate and multivariate statistics
metabolic pathway and network analysis
LC–MS
metabolic profiling
computational statistical
unsupervised learning
supervised learning
thema EDItEUR::G Reference, Information and Interdisciplinary subjects::GP Research and information: general
url ONIX_20220111_9783036511948_590