Materials
Name | Company | Catalog Number | Comments |
96 well plates - 500 μl wells | VWR | 40002-020 | These are used for sample preparation |
96 well plate mats | VWR | 89026-514 | These are used for sample preparation |
96 well plates - 350 μl wells | Waters Corporation | WAT058943 | These are used for sample injection |
96 well plate mats | Waters Corporation | 186000857 | These are used for sample injection |
96 well plate heat seals | Waters Corporation | 186002789 | These can be used for sample injection or long term storage |
96 well plate heat sealer | Waters Corporation | 186002786 | |
LC-MS grade methanol | Fluka | 34966 | |
LC-MS grade acetonitrile | Fluka | 34967 | |
LC-MS grade aater | Fluka | 39253 | |
LC-MS grade formic acid | Fluka | 56302 | |
Multichannel electronic pipettor | VWR | 89000-674 | |
Pipett tips | Eclipse (purchased through Light Labs) | B-5061/B-4061 | |
Chilled centrifuge - Allegra X-12R | Beckman Coulter | N/A - contact Beckman Coulter | |
Acquity Ultra performance Liquid Chromatography (UPLC) System | Waters Corporation | N/A - contact Waters Corporation | |
UPLC C8 column (gradient option a) | Waters Corporation | 186002876 | |
UplC T3 column (gradient option b) | Waters Corporation | 186003536 | |
Xevo G2 Q-TOF Mass spectrometer | Waters Corporation | N/A - contact Waters Corporation |
References
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