The potential and pitfalls of using a large language model such as ChatGPT, GPT-4, or LLaMA as a clinical assistant

Author:

Zhang Jingqing12ORCID,Sun Kai12,Jagadeesh Akshay1,Falakaflaki Parastoo1,Kayayan Elena1,Tao Guanyu1,Haghighat Ghahfarokhi Mahta1,Gupta Deepa1,Gupta Ashok1,Gupta Vibhor1,Guo Yike13

Affiliation:

1. Pangaea Data Limited , London, SE1 7LY, United Kingdom

2. Data Science Institute, Imperial College London , London, SW7 2AZ, United Kingdom

3. Hong Kong University of Science and Technology , Hong Kong, China

Abstract

Abstract Objectives This study aims to evaluate the utility of large language models (LLMs) in healthcare, focusing on their applications in enhancing patient care through improved diagnostic, decision-making processes, and as ancillary tools for healthcare professionals. Materials and Methods We evaluated ChatGPT, GPT-4, and LLaMA in identifying patients with specific diseases using gold-labeled Electronic Health Records (EHRs) from the MIMIC-III database, covering three prevalent diseases—Chronic Obstructive Pulmonary Disease (COPD), Chronic Kidney Disease (CKD)—along with the rare condition, Primary Biliary Cirrhosis (PBC), and the hard-to-diagnose condition Cancer Cachexia. Results In patient identification, GPT-4 had near similar or better performance compared to the corresponding disease-specific Machine Learning models (F1-score ≥ 85%) on COPD, CKD, and PBC. GPT-4 excelled in the PBC use case, achieving a 4.23% higher F1-score compared to disease-specific “Traditional Machine Learning” models. ChatGPT and LLaMA3 demonstrated lower performance than GPT-4 across all diseases and almost all metrics. Few-shot prompts also help ChatGPT, GPT-4, and LLaMA3 achieve higher precision and specificity but lower sensitivity and Negative Predictive Value. Discussion The study highlights the potential and limitations of LLMs in healthcare. Issues with errors, explanatory limitations and ethical concerns like data privacy and model transparency suggest that these models would be supplementary tools in clinical settings. Future studies should improve training datasets and model designs for LLMs to gain better utility in healthcare. Conclusion The study shows that LLMs have the potential to assist clinicians for tasks such as patient identification but false positives and false negatives must be mitigated before LLMs are adequate for real-world clinical assistance.

Funder

Pangaea Data Limited

Publisher

Oxford University Press (OUP)

Reference39 articles.

1. Language models are few-shot learners;Brown;Adv Neural Inf Process Syst,2020

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