4.8 Article

Beyond generative models: superfast traversal, optimization, novelty, exploration and discovery (STONED) algorithm for molecules using SELFIES

期刊

CHEMICAL SCIENCE
卷 12, 期 20, 页码 7079-7090

出版社

ROYAL SOC CHEMISTRY
DOI: 10.1039/d1sc00231g

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资金

  1. Swiss National Science Foundation (SNSF) [191127]
  2. Austrian Science Fund (FWF) through the Erwin Schrodinger fellowship [J4309]
  3. Natural Sciences and Engineering Research Council of Canada (NSERC)
  4. Natural Resources Canada
  5. Canada 150 Research Chairs program
  6. Compute Canada
  7. Compute Ontario

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The study introduces a new algorithm called STONED, which achieves performance comparable to deep generative models in the chemical space through interpolation and exploration without the need for large amounts of data and training time.
Inverse design allows the generation of molecules with desirable physical quantities using property optimization. Deep generative models have recently been applied to tackle inverse design, as they possess the ability to optimize molecular properties directly through structure modification using gradients. While the ability to carry out direct property optimizations is promising, the use of generative deep learning models to solve practical problems requires large amounts of data and is very time-consuming. In this work, we propose STONED - a simple and efficient algorithm to perform interpolation and exploration in the chemical space, comparable to deep generative models. STONED bypasses the need for large amounts of data and training times by using string modifications in the SELFIES molecular representation. First, we achieve non-trivial performance on typical benchmarks for generative models without any training. Additionally, we demonstrate applications in high-throughput virtual screening for the design of drugs, photovoltaics, and the construction of chemical paths, allowing for both property and structure-based interpolation in the chemical space. Overall, we anticipate our results to be a stepping stone for developing more sophisticated inverse design models and benchmarking tools, ultimately helping generative models achieve wider adoption.

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