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Purpose: To develop and validate a turn-key system for automated detection of
organic contaminants in food matrices and economic adulteration.
http://www.thermoscientific.com/asms
Methods: A benchtop
high resolution Orbitrap (Exactive) mass spectrometer system
(Figure 1) at 50
000 resolution (FWHM at m/z 200) coupled with ultra-high-pressure
liquid chromatography (UHPLC)
followed by SIEVE software analysis was used for
screening unknown samples. The final results were searched against the ChemSpider
database (Royal Society of Chemistry) using accurate mass data generated by the
Exactive system.
Purpose: To develop and validate a turn-key system for automated detection of
organic contaminants in food matrices and economic adulteration.
2013-04-10T22:29:38.573-04:00
James Chang, Jessica Wang, Jennifer Sutton, Thermo Fisher Scientific, San Jose, CA
A Turn-key System for Automated Detection of Organic Contaminants in Food Matrices and Economic Adulteration
2011-07-20T00:00:54-04:00
2011-05-31T18:38:32-04:00
2011-07-20T00:00:54-04:00
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James Chang, Jessica Wang, Jennifer Sutton, Thermo Fisher Scientific, San Jose, CA
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Methods: A benchtop, high resolution Orbitrap (Exactive) mass spectrometer system
(Figure 1) at 50,000 resolution (FWHM at m/z 200) coupled with ultra-high-pressure
liquid chromatography (UHPLC), followed by SIEVE software analysis was used for
screening unknown samples. The final results were searched against the ChemSpider
database (Royal Society of Chemistry) using accurate mass data generated by the
Exactive system.
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