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USAN Watch: August 2013

The USANs for August 2013 have recently been published.


USAN Research Code InChIKey (Parent)Drug ClassTherapeutic classTarget
apatorsen
OGX-427
n/atherapeuticoligonucleotideHSP-27
brincidofovirCMX-001
therapeuticsynthetic small molecule prodrugCMV DNA polymerase
censavudineBMS-986001
therapeuticnatural product derived small molecule prodrugHIV RT
daratumumab
HuMax-CD38, 3003-005

n/atherapeuticmonoclonal antibodyCD38
diclofenacDCOPUUMXTXDBNB-UHFFFAOYSA-Ntherapeuticsynthetic small moleculeCOX
duvelisib
IPI-145; INK-1197 

therapeuticsynthetic small moleculePI3K-delta, PI3K-gamma
elbasvir
therapeuticsynthetic small moleculeHCV-NS5A
grapiprant
RQ-7, RQ-00000007, MR10A7, AAT-007, CJ-023, 423

therapeuticsynthetic small moleculeEP4
samatasvir
IDX-18719, IDX-719

therapeuticsynthetic small moleculeHCV-NS5A
sotagliflozin
LP-802034, LX-4211 

therapeuticsynthetic small moleculeSGLT1, SGLT2
taladegib
LY-2940680 
SZBGQDXLNMELTB-UHFFFAOYSA-Ntherapeuticsynthetic small moleculeSMO-1
veledimexINXN-1001
therapeuticsynthetic small molecule
Adenoviral Vector Ad-RTS-IL-12

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