Synthetically accessible de novo design using reaction vectors: Application to PARP1 inhibitors**

Author:

Ghiandoni Gian Marco1ORCID,Flanagan Stuart R.2,Bodkin Michael J.2,Nizi Maria Giulia3,Galera‐Prat Albert4,Brai Annalaura5,Chen Beining6,Wallace James E. A.2ORCID,Hristozov Dimitar2,Webster James1,Manfroni Giuseppe3,Lehtiö Lari4,Tabarrini Oriana3,Gillet Valerie J.1ORCID

Affiliation:

1. Information School University of Sheffield Regent Court, 211 Portobello Sheffield S1 4DP UK

2. Evotec (U.K.) Ltd 114 Innovation Drive, Milton Park Abingdon OX14 4RZ UK

3. Department of Pharmaceutical Sciences University of Perugia 06123 Perugia Italy

4. Faculty of Biochemistry and Molecular Medicine & Biocenter Oulu University of Oulu Oulu FI-90014 Finland

5. Department of Biotechnology, Chemistry and Pharmacy University of Siena I-53100 Siena Italy

6. Department of Chemistry University of Sheffield Dainton Building, Brook Hill Sheffield S3 7HF UK

Abstract

AbstractDe novo design has been a hotly pursued topic for many years. Most recent developments have involved the use of deep learning methods for generative molecular design. Despite increasing levels of algorithmic sophistication, the design of molecules that are synthetically accessible remains a major challenge. Reaction‐based de novo design takes a conceptually simpler approach and aims to address synthesisability directly by mimicking synthetic chemistry and driving structural transformations by known reactions that are applied in a stepwise manner. However, the use of a small number of hand‐coded transformations restricts the chemical space that can be accessed and there are few examples in the literature where molecules and their synthetic routes have been designed and executed successfully. Here we describe the application of reaction‐based de novo design to the design of synthetically accessible and biologically active compounds as proof‐of‐concept of our reaction vector‐based software. Reaction vectors are derived automatically from known reactions and allow access to a wide region of synthetically accessible chemical space. The design was aimed at producing molecules that are active against PARP1 and which have improved brain penetration properties compared to existing PARP1 inhibitors. We synthesised a selection of the designed molecules according to the provided synthetic routes and tested them experimentally. The results demonstrate that reaction vectors can be applied to the design of novel molecules of biological relevance that are also synthetically accessible.

Publisher

Wiley

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Machine learning-aided generative molecular design;Nature Machine Intelligence;2024-06-18

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