scholarly article | Q13442814 |
P50 | author | José Jiménez Luna | Q55441639 |
Gianni de Fabritiis | Q57113854 | ||
Laura Pérez-Benito | Q85523397 | ||
Gary Tresadern | Q39393268 | ||
P2093 | author name string | Rubben Torella | |
Gerard Martínez-Rosell | |||
Simone Sciabola | |||
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P275 | copyright license | Creative Commons Attribution 3.0 Unported | Q14947546 |
P6216 | copyright status | copyrighted | Q50423863 |
P433 | issue | 47 | |
P304 | page(s) | 10911-10918 | |
P577 | publication date | 2019-10-16 | |
P1433 | published in | Chemical Science | Q2962267 |
P1476 | title | DeltaDelta neural networks for lead optimization of small molecule potency | |
P478 | volume | 10 |
Q89676721 | libmolgrid: Graphics Processing Unit Accelerated Molecular Gridding for Deep Learning Applications | cites work | P2860 |
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