Simulating scientists: New tool for AI-powered scientific discovery

Publicly released:
Australia; VIC; QLD

Published in Nature Machine Intelligence, an Australian team led by Monash University researchers has developed a generative AI tool that mimics scientists to support and speed up the process of scientific discoveries.

Media release

From: Monash University

Named LLM4SD (Large Language Model 4 Scientific Discovery), the new AI system is an interactive Large Language Model (LLM) tool which can carry out basic steps of scientific research i.e. retrieve useful information from literature and develop hypotheses from data analysis. The tool is freely available and open source.

When asked, the system is also able to provide insights to explain its results, a feature that is not available for many current scientific validation tools.

LLM4SD was tested with 58 separate research tasks relating to molecular properties across four different scientific domains: physiology, physical chemistry, biophysics and quantum mechanics.

Lead co-author of the research, PhD candidate Yizhen Zheng, is from the Department of Data Science and AI at Monash University’s Faculty of Information Technology.

“Just like ChatGPT writes essays or solves math problems, our LLM4SD tool reads decades of scientific literature and analyses lab data to predict how molecules behave—answering questions like, ‘Can this drug cross the brain’s protective barrier?’ or ‘Will this compound dissolve in water?’,” Mr Zheng said.

“Apart from outperforming current validation tools that operate like a ’black box’, this system can explain its analysis process, predictions and results using simple rules, which can help scientists trust and act on its insights.”

The LLM4SD tool outperformed state-of-the-art scientific tools that are currently used to carry out these tasks; for example, it boosted accuracy by up to 48 per cent in predicting quantum properties critical for materials design.

The study’s lead co-authors include PhD candidate Huan Yee Koh who is jointly at Monash University’s Department of Data Science and AI and the Monash Institute of Pharmaceutical Sciences, and PhD candidate Jiaxin Ju from the School of Information and Communication Technology at Griffith University.

"Rather than replacing traditional machine learning models, LLM4SD enhances them by synthesizing knowledge and generating interpretable explanations," Ms Ju said.

"This approach ensures that AI-driven predictions remain reliable, and accessible to researchers across different scientific disciplines," Mr Koh added.

Data scientist, AI expert and co-author of the research, Professor Geoff Webb from Monash’s Faculty of Information Technology, said that LLMs can accurately mimic the key scientific discovery skills of synthesising knowledge from the literature and developing hypotheses by interpreting data.

“We are already fully immersed in the age of generative AI and we need to start harnessing this as much as possible to advance science, while ensuring we are developing it ethically,” Professor Webb said.

“This tool has the potential to make the drug discovery process easier, faster and more accurate and become a supercharged research support for scientists in every field all across the world.”

Research co-author Professor Shirui Pan is a data mining and machine learning expert and an ARC Future Fellow with the School of Information and Communication Technology at Griffith University.

“A model like LLM4SD can rapidly synthesize decades of prior knowledge and then turn around to spot new patterns in the data that might not be widely reported,” Professor Pan said.

“We see this as a key development in speeding up research and development processes and beyond."

The research was a collaboration between AI and drug discovery researchers at Monash University’s Faculty of Information Technology, Monash Institute of Pharmaceutical Sciences and Griffith University.

The project was supported by an Australian Research Council (ARC) grant, a National Health and Medical Research Council of Australia Ideas grant and an ARC Future Fellowship.

Co-authors of the research, PhD candidate Yizhen Zheng and Professor Geoff Webb from Monash’s Department of Data Science and Artificial Intelligence at the Faculty of Information Technology, are available for interviews.

To read the full research paper, please click here.

Journal/
conference:
Nature Machine Intelligence
Research:Paper
Organisation/s: Monash University, Griffith University
Funder: H.Y.K.’s scholarship is supported by the Australian Government Research Training Programme (RTP) Scholarship and Monash University as a cocontribution to Australian Research Council grant no. ARC DP210100072. L.T.M.’s, G.I.W.’s and A.T.N.N.’s research into AI applications for drug discovery is supported by a National Health and Medical Research Council (NHMRC) of Australia Ideas grant (grant no. APP2013629). L.T.M.’s research is also supported by the National Heart Foundation of Australia (grant no. 101857). L.T.M.’s and A.T.N.N.’s research is also funded by the NHMRC of Australia and the Department of Health and Aged Care through the Medical Research Future Fund (MRFF) Stem Cell Therapies Mission (grant no. MRF2015957). Computational resources were generously provided by the Nectar Research Cloud, a collaborative Australian research platform supported by the NCRIS-funded Australian Research Data Commons (ARDC) and the MASSIVE HPC facility. We also gratefully acknowledge the support of the Griffith University eResearch Service & Specialized Platforms Team and the use of the High-Performance Computing Cluster ‘Gowonda’. S.P. is supported by ARC Future Fellowship (grant no. FT210100097) and ARC grant no. DP240101547.
Media Contact/s
Contact details are only visible to registered journalists.