Enable Effective Drug Development with Improved Multiomics
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Multiomics: Avoid Getting Lost in Translation

Translational research and drug discovery meet at the intersection of novel multiomics technologies.

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Researchers rely on multiomics data to inform drug discovery and development. For translational research applications, scientists need advanced techniques, such as novel liquid chromatography-mass spectrometry (LC-MS) technologies, and software solutions that facilitate quality multiomic data collection and processing. Alternative fragmentation technologies such as Electron Activated Dissociation (EAD) and the SCIEX ZenoTOF 7600 system help researchers capture and translate multiomics data across specialties, including neurobiological proteomics and metabolomics. 

View these virtual seminars from SCIEX to learn how to enable effective drug development with improved multiomics data collection and processing. 

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