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230515 ||| eng |
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|a books978-3-0365-6640-5
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|a 9783036566405
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|a 9783036561257
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100 |
1 |
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|a Letzel, Thomas
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245 |
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|a (Mass Spectrometric) Non Target Screening-Techniques and Strategies
|h Elektronische Ressource
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260 |
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|a Basel
|b MDPI - Multidisciplinary Digital Publishing Institute
|c 2023
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300 |
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|a 1 electronic resource (256 p.)
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653 |
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|a azoxystrobin
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653 |
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|a machine learning
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|a NTS strategies
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653 |
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|a NTS techniques (separation, ionization, and detection)
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653 |
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|a 2DGC
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653 |
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|a volatilomics
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653 |
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|a urban waters
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653 |
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|a network pharmacology
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|a plant-derived food
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653 |
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|a water quality
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653 |
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|a MS/MS
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653 |
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|a GC-APPI
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653 |
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|a micropollutant fingerprint
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653 |
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|a 2-methylfuran
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|a volatile organic compounds (VOCs)
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653 |
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|a data analysis
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|a analytical
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|a target gas
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|a quantification
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|a pharmaceutical and personal care products
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|a emerging contaminants
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|a glutathione
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|a review
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|a non-targeted screening (NTS) using machine learning
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|a cheminformatics
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|a mass spectrometry
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|a equation
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|a GC-MS
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|a ion mobility spectrometry
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|a ultraviolet photodissociation
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|a glutathione conjugate
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|a α-glucosidase inhibitory activity
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|a solid phase extraction
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|a collision cross section
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|a non-small cell lung cancer
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|a marker compounds
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|a glycosylation
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|a persistent organic pollutants
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|a open access software
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|a LC/IT-TOF-MS
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|a furan
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|a untargeted analysis
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|a untargeted metabolomics
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|a amino acids
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653 |
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|a lipidomics
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653 |
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|a HPLC
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|a nontargeted screening
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653 |
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|a proteomics
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653 |
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|a gas chromatography ion mobility spectroscopy (GC-IMS)
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|a GC-APCI
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|a glycomics
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|a Ganoderma lingzhi
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653 |
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|a nucleosides
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|a in silico docking
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|a developmental stages
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|a non-targeted screening
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|a glycoproteomics
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653 |
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|a NSAIDs
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|a MS subtraction
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653 |
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|a non-target screening
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653 |
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|a urinary metabolites
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653 |
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|a corticosteroids
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653 |
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|a statistical analysis
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653 |
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|a Ionization
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653 |
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|a organic micropollutants
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653 |
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|a software
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653 |
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|a computational mass spectrometry
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653 |
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|a tea
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653 |
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|a GC-API
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653 |
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|a GC/MS
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653 |
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|a decision making
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653 |
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|a UPLC-qToF
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653 |
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|a GC-APLI
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653 |
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|a metabolomics
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653 |
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|a higher-energy collisional dissociation
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653 |
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|a database
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653 |
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|a spectral deconvolution
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653 |
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|a triple quadrupole
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653 |
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|a small molecule fragmentation
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653 |
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|a high-resolution mass spectrometry
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700 |
1 |
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|a Letzel, Thomas
|
041 |
0 |
7 |
|a eng
|2 ISO 639-2
|
989 |
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|b DOAB
|a Directory of Open Access Books
|
500 |
|
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|a Creative Commons (cc), https://creativecommons.org/licenses/by/4.0/
|
024 |
8 |
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|a 10.3390/books978-3-0365-6640-5
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856 |
4 |
2 |
|u https://directory.doabooks.org/handle/20.500.12854/98021
|z DOAB: description of the publication
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856 |
4 |
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|u https://www.mdpi.com/books/pdfview/book/6748
|7 0
|x Verlag
|3 Volltext
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|a 000
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|a 615
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|a 333
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|a 580
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|a (Mass spectrometric) non-target screening is a preferably comprehensive and untargeted (predominantly organic molecules detecting) approach combining (robust) analytical measurements with adapted data evaluation concepts, systematic compound identification workflows, and statistical data interpretation. It is well suitable for the identification of new, unexpected and/or unknown organic compounds as well as monitoring 'molecular fingerprints' and profiling 'process-relevant' molecules via statistical methods. In recent years, 14 articles in various disciplines were published and presented in this Special Issue, whereby it contains 4 peer-reviewed review articles and 10 peer-reviewed research articles dealing with non-target screening strategies and solutions.
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