scholarly article | Q13442814 |
P8978 | DBLP publication ID | journals/jcisd/Bruneau01 |
P356 | DOI | 10.1021/CI010363Y |
P698 | PubMed publication ID | 11749587 |
P2093 | author name string | Bruneau P | |
P2860 | cites work | SMILES, a chemical language and information system. 1. Introduction to methodology and encoding rules | Q28090714 |
P433 | issue | 6 | |
P304 | page(s) | 1605-1616 | |
P577 | publication date | 2001-11-01 | |
P1433 | published in | Journal of Chemical Information and Computer Sciences | Q104614957 |
P1476 | title | Search for predictive generic model of aqueous solubility using Bayesian neural nets. | |
P478 | volume | 41 |
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