Drug Discovery
Drug discovery is the task of applying machine learning techniques to the identification and development of new drug candidates. Its goal is to predict compound activity through computational models, optimize the drug design process, enhance the efficiency and success rate of discovering potential therapeutic drugs, thereby accelerating the drug development cycle, reducing R&D costs, and improving innovation capabilities and treatment standards in the healthcare sector.
QM9
PAMNet
Tox21
elEmBERT-V1
BACE
HIV dataset
GraphConv + dummy super node + focal loss
MUV
GraphConv + dummy super node
ToxCast
BBBP
ProtoW-L2
BindingDB
AttentionSiteDTI
clintox
BiLSTM
DAVIS-DTA
KIBA
SMT-DTA
LIT-PCBA(ALDH1)
LIT-PCBA(KAT2A)
EGT+TGT-At-DP
LIT-PCBA(MAPK1)
SIDER
Ensemble locally constant networks
LIT-PCBA(ESR1_ant)
BindingDB IC50
DeepDTA
PCBA
GraphConv + dummy super node
BACE (β-secretase enzyme)
BBBP (Blood-Brain Barrier Penetration)
DRD2
egfr-inh
Multi-input Neural network with Attention
ESOL (Estimated SOLubility)
FreeSolv (Free Solvation)
Lipophilicity (logd74)
PDBbind
Ensemble locally constant networks
QED
HierG2G
ToxCast (Toxicity Forecaster)
GLAM