Timezone: »
Retrosynthetic planning occupies a crucial position in synthetic chemistry and, accordingly, drug discovery, which aims to find synthetic pathways of a target molecule through a sequential decision-making process on a set of feasible reactions. While the majority of recent works focus on the prediction of feasible reactions at each step, there have been limited attempts toward improving the sequential decision-making policy. Existing strategies rely on either the expensive and high-variance value estimation by online rollout, or a settled value estimation neural network pre-trained with simulated pathways of limited diversity and no negative feedback. Besides, how to return multiple candidate pathways that are not only diverse but also desirable for chemists (e.g., affordable building block materials) remains an open challenge. To this end, we propose a Goal-dRiven Actor-critic retroSynthetic Planning (GRASP) framework, where we identify the policy that performs goal-driven retrosynthesis navigation toward a user-demand objective. Our experiments on the benchmark Pistachio dataset and a chemists-designed dataset demonstrate that the framework outperforms state-of-the-art approaches by up to 32.2% on search efficiency and 5.6% on quality. Remarkably, our user studies show that GRASP successfully plans pathways that accomplish the goal prescribed with a designated goal (building block materials).
Author Information
Yemin Yu
Ying Wei (City University of Hong Kong)
Kun Kuang (Zhejiang University, Tsinghua University)
Zhengxing Huang (Zhejiang University)
Huaxiu Yao (Stanford University)
Fei Wu
More from the Same Authors
-
2022 : Wild-Time: A Benchmark of in-the-Wild Distribution Shift over Time »
Caroline Choi · Huaxiu Yao · Yoonho Lee · Pang Wei Koh · Chelsea Finn -
2022 : Multi-Domain Long-Tailed Learning by Augmenting Disentangled Representations »
Huaxiu Yao · Xinyu Yang · Allan Zhou · Chelsea Finn -
2022 : Surgical Fine-Tuning Improves Adaptation to Distribution Shifts »
Yoonho Lee · Annie Chen · Fahim Tajwar · Ananya Kumar · Huaxiu Yao · Percy Liang · Chelsea Finn -
2022 : Relational Out-of-Distribution Generalization »
Xinyu Yang · Xinyi Pan · Shengchao Liu · Huaxiu Yao -
2022 : Recommendation for New Drugs with Limited Prescription Data »
Zhenbang Wu · Huaxiu Yao · Zhe Su · David Liebovitz · Lucas Glass · James Zou · Chelsea Finn · Jimeng Sun -
2022 : Surgical Fine-Tuning Improves Adaptation to Distribution Shifts »
Yoonho Lee · Annie Chen · Fahim Tajwar · Ananya Kumar · Huaxiu Yao · Percy Liang · Chelsea Finn -
2022 Spotlight: Adversarial Task Up-sampling for Meta-learning »
Yichen WU · Long-Kai Huang · Ying Wei -
2022 Spotlight: Lightning Talks 1B-3 »
Chaofei Wang · Qixun Wang · Jing Xu · Long-Kai Huang · Xi Weng · Fei Ye · Harsh Rangwani · shrinivas ramasubramanian · Yifei Wang · Qisen Yang · Xu Luo · Lei Huang · Adrian G. Bors · Ying Wei · Xinglin Pan · Sho Takemori · Hong Zhu · Rui Huang · Lei Zhao · Yisen Wang · Kato Takashi · Shiji Song · Yanan Li · Rao Anwer · Yuhei Umeda · Salman Khan · Gao Huang · Wenjie Pei · Fahad Shahbaz Khan · Venkatesh Babu R · Zenglin Xu -
2022 Spotlight: Improving Task-Specific Generalization in Few-Shot Learning via Adaptive Vicinal Risk Minimization »
Long-Kai Huang · Ying Wei -
2022 Workshop: NeurIPS 2022 Workshop on Meta-Learning »
Huaxiu Yao · Eleni Triantafillou · Fabio Ferreira · Joaquin Vanschoren · Qi Lei -
2022 Poster: Improving Task-Specific Generalization in Few-Shot Learning via Adaptive Vicinal Risk Minimization »
Long-Kai Huang · Ying Wei -
2022 Poster: Adversarial Task Up-sampling for Meta-learning »
Yichen WU · Long-Kai Huang · Ying Wei -
2022 Poster: Wild-Time: A Benchmark of in-the-Wild Distribution Shift over Time »
Huaxiu Yao · Caroline Choi · Bochuan Cao · Yoonho Lee · Pang Wei Koh · Chelsea Finn -
2022 Poster: C-Mixup: Improving Generalization in Regression »
Huaxiu Yao · Yiping Wang · Linjun Zhang · James Zou · Chelsea Finn -
2022 Poster: ConfounderGAN: Protecting Image Data Privacy with Causal Confounder »
Qi Tian · Kun Kuang · Kelu Jiang · Furui Liu · Zhihua Wang · Fei Wu -
2021 Workshop: 5th Workshop on Meta-Learning »
Erin Grant · Fábio Ferreira · Frank Hutter · Jonathan Richard Schwarz · Joaquin Vanschoren · Huaxiu Yao -
2021 Poster: Functionally Regionalized Knowledge Transfer for Low-resource Drug Discovery »
Huaxiu Yao · Ying Wei · Long-Kai Huang · Ding Xue · Junzhou Huang · Zhenhui (Jessie) Li -
2021 Poster: Meta-learning with an Adaptive Task Scheduler »
Huaxiu Yao · Yu Wang · Ying Wei · Peilin Zhao · Mehrdad Mahdavi · Defu Lian · Chelsea Finn -
2020 Poster: Self-Supervised Graph Transformer on Large-Scale Molecular Data »
Yu Rong · Yatao Bian · Tingyang Xu · Weiyang Xie · Ying Wei · Wenbing Huang · Junzhou Huang