Abstract
Computer-aided synthesis planning (CASP) has been helping chemists to synthesize novel molecules
at an accelerated pace. The recent integration of deep learning with CASP has opened up new avenues
for digitizing and exploring the vastly unknown chemical space, and has led to high expectations for
fully automated synthesis plannings using machine-discovered novel reactions in the "future". Despite
many progresses in the past few years, most deep-learning methods only focus on improving few aspects
of CASP (e.g., top-k accuracy). In this work, we target specifically the efficiency of reaction space
exploration and its impact on CASP. We propose NeuralTPL, a template-oriented generative approach,
that performs impressively across a range of evaluation metrics including chemical validity, diversity, and
novelty for various tasks in CASP. In addition, our Transformer-based model bears the potential to learn
the core reaction transformation as it can efficiently explore the reaction space. We then perform several
experiments and conduct a thorough analysis regarding the three metrics and demonstrate its chemical
value for improving the existing deep-learning-driven CASP algorithms.
Supplementary materials
Title
Supplementary Information
Description
The Supplementary Information of NeuralTPL.
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