TWIN-GPT : Digital Twins for Clinical Trials via Large Language Model

Author:

Wang Yue1ORCID,Fu Tianfan2ORCID,Xu Yinlong3ORCID,Ma Zihan4ORCID,Xu Hongxia5ORCID,Du Bang6ORCID,Lu Yingzhou7ORCID,Gao Honghao8ORCID,Wu Jian9ORCID,Chen Jintai10ORCID

Affiliation:

1. State Key Laboratory of Transvascular Implantation Devices of The Second Affiliated Hospital and Liangzhu Laboratory, Zhejiang University School of Medicine, China

2. Rensselaer Polytechnic Institute, USA

3. College of Computer Science & Technology Zhejiang University, China

4. School of Public Health, Zhejiang University School of Medicine, China

5. Innovation Institute for Artificial Intelligence in Medicine, Zhejiang University, China

6. Institute of Wenzhou, Zhejiang University, China

7. School of Medicine, Stanford University, USA

8. School of Computer Engineering and Science, Shanghai University, China

9. School of Public Health, Zhejiang University, China

10. Computer Science Department, University of Illinois Urbana-Champaign, USA

Abstract

Clinical trials are indispensable for medical research and the development of new treatments. However, clinical trials often involve thousands of participants and can span several years to complete, with a high probability of failure during the process. Recently, there has been a burgeoning interest in virtual clinical trials, which simulate real-world scenarios and hold the potential to significantly enhance patient safety, expedite development, reduce costs, and contribute to the broader scientific knowledge in healthcare. Existing research often focuses on leveraging electronic health records (EHRs) to support clinical trial outcome prediction. Yet, trained with limited clinical trial outcome data, existing approaches frequently struggle to perform accurate predictions. Some research has attempted to generate EHRs to augment model development but has fallen short in personalizing the generation for individual patient profiles. Recently, the emergence of large language models has illuminated new possibilities, as their embedded comprehensive clinical knowledge has proven beneficial in addressing medical issues. In this paper, we propose a large language model-based digital twin creation approach, called TWIN-GPT . TWIN-GPT can establish cross-dataset associations of medical information given limited data, generating unique personalized digital twins for different patients, thereby preserving individual patient characteristics. Comprehensive experiments show that using digital twins created by TWIN-GPT can boost the clinical trial outcome prediction, exceeding various previous prediction approaches. Besides, we also demonstrate that TWIN-GPT can generate high-fidelity trial data that closely approximates specific patients, aiding in more accurate result predictions in data-scarce situations. Moreover, our study provides practical evidence for the application of digital twins in healthcare, highlighting its potential significance.

Publisher

Association for Computing Machinery (ACM)

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