ChatMol: interactive molecular discovery with natural language

Author:

Zeng Zheni1ORCID,Yin Bangchen1ORCID,Wang Shipeng2,Liu Jiarui2,Yang Cheng3,Yao Haishen2,Sun Xingzhi2,Sun Maosong1,Xie Guotong2,Liu Zhiyuan1

Affiliation:

1. Department of Computer Science and Technology, Tsinghua University , Beijing 100084, China

2. PingAn Technology, Beijing 100027, China

3. School of Computer Science, Beijing University of Posts and Telecommunications , Beijing 100876, China

Abstract

Abstract Motivation Natural language is poised to become a key medium for human–machine interactions in the era of large language models. In the field of biochemistry, tasks such as property prediction and molecule mining are critically important yet technically challenging. Bridging molecular expressions in natural language and chemical language can significantly enhance the interpretability and ease of these tasks. Moreover, it can integrate chemical knowledge from various sources, leading to a deeper understanding of molecules. Results Recognizing these advantages, we introduce the concept of conversational molecular design, a novel task that utilizes natural language to describe and edit target molecules. To better accomplish this task, we develop ChatMol, a knowledgeable and versatile generative pretrained model. This model is enhanced by incorporating experimental property information, molecular spatial knowledge, and the associations between natural and chemical languages. Several typical solutions including large language models (e.g. ChatGPT) are evaluated, proving the challenge of conversational molecular design and the effectiveness of our knowledge enhancement approach. Case observations and analysis offer insights and directions for further exploration of natural-language interaction in molecular discovery. Availability and implementation Codes and data are provided in https://github.com/Ellenzzn/ChatMol/tree/main.

Publisher

Oxford University Press (OUP)

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