scholarly article | Q13442814 |
P356 | DOI | 10.1002/ANIE.201506101 |
P698 | PubMed publication ID | 27062365 |
P50 | author | Tomasz Klucznik | Q100395513 |
Michał Startek | Q39061334 | ||
Karol Molga | Q85656319 | ||
Bartosz Andrzej Grzybowski | Q89414324 | ||
Sara Szymkuć | Q99710563 | ||
P2093 | author name string | Piotr Dittwald | |
Ewa P Gajewska | |||
Michał Bajczyk | |||
P2860 | cites work | Estimation of synthetic accessibility score of drug-like molecules based on molecular complexity and fragment contributions | Q27702095 |
SMILES, a chemical language and information system. 1. Introduction to methodology and encoding rules | Q28090714 | ||
General methods for the construction of complex molecules | Q56657673 | ||
Juvabione and its analogues.: IV. Isolation, identification, and occurrence of juvabione, juvabiol, and epijuvabiol from the whole wood of Abies lasiocarpa | Q64385626 | ||
New constituents from stems of Goniothalamus amuyon | Q79835785 | ||
P433 | issue | 20 | |
P407 | language of work or name | English | Q1860 |
P304 | page(s) | 5904-5937 | |
P577 | publication date | 2016-04-08 | |
P1433 | published in | Angewandte Chemie International Edition | Q62023953 |
P1476 | title | Computer-Assisted Synthetic Planning: The End of the Beginning. | |
P478 | volume | 55 |
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