DeltaDelta neural networks for lead optimization of small molecule potency

scientific article published on 16 October 2019

DeltaDelta neural networks for lead optimization of small molecule potency is …
instance of (P31):
scholarly articleQ13442814

External links are
P356DOI10.1039/C9SC04606B
P932PMC publication ID7066671
P698PubMed publication ID32190246

P50authorJosé Jiménez LunaQ55441639
Gianni de FabritiisQ57113854
Laura Pérez-BenitoQ85523397
Gary TresadernQ39393268
P2093author name stringRubben Torella
Gerard Martínez-Rosell
Simone Sciabola
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P275copyright licenseCreative Commons Attribution 3.0 UnportedQ14947546
P6216copyright statuscopyrightedQ50423863
P433issue47
P304page(s)10911-10918
P577publication date2019-10-16
P1433published inChemical ScienceQ2962267
P1476titleDeltaDelta neural networks for lead optimization of small molecule potency
P478volume10

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Q89676721libmolgrid: Graphics Processing Unit Accelerated Molecular Gridding for Deep Learning Applicationscites workP2860

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