化学
图灵
图灵试验
考试(生物学)
图灵机
通用图灵机
计算机科学
计算生物学
描述号
作者
Jacob T. Bush,Peter Pogány,Stephen D. Pickett,Mike Barker,Andrew Baxter,Sebastien Andre Campos,Anthony W. J. Cooper,David Jonathan Hirst,Graham George Adam Inglis,Alan Nadin,Vipulkumar Kantibhai Patel,Darren L Poole,John Pritchard,Yoshiaki Washio,Gemma V. White,Darren V. S. Green
标识
DOI:10.1021/acs.jmedchem.0c01148
摘要
Machine learning approaches promise to accelerate and improve success rates in medicinal chemistry programs by more effectively leveraging available data to guide a molecular design. A key step of an automated computational design algorithm is molecule generation, where the machine is required to design high-quality, drug-like molecules within the appropriate chemical space. Many algorithms have been proposed for molecular generation; however, a challenge is how to assess the validity of the resulting molecules. Here, we report three Turing-inspired tests designed to evaluate the performance of molecular generators. Profound differences were observed between the performance of molecule generators in these tests, highlighting the importance of selection of the appropriate design algorithms for specific circumstances. One molecule generator, based on match molecular pairs, performed excellently against all tests and thus provides a valuable component for machine-driven medicinal chemistry design workflows.
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