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Integrating large language models in biostatistical workflows for clinical and translational research.

Publication ,  Journal Article
Grambow, SC; Desai, M; Weinfurt, KP; Lindsell, CJ; Pencina, MJ; Rende, L; Pomann, G-M
Published in: J Clin Transl Sci
2025

INTRODUCTION: Biostatisticians increasingly use large language models (LLMs) to enhance efficiency, yet practical guidance on responsible integration is limited. This study explores current LLM usage, challenges, and training needs to support biostatisticians. METHODS: A cross-sectional survey was conducted across three biostatistics units at two academic medical centers. The survey assessed LLM usage across three key professional activities: communication and leadership, clinical and domain knowledge, and quantitative expertise. Responses were analyzed using descriptive statistics, while free-text responses underwent thematic analysis. RESULTS: Of 208 eligible biostatisticians (162 staff and 46 faculty), 69 (33.2%) responded. Among them, 44 (63.8%) reported using LLMs; of the 43 who answered the frequency question, 20 (46.5%) used them daily and 16 (37.2%) weekly. LLMs improved productivity in coding, writing, and literature review; however, 29 of 41 respondents (70.7%) reported significant errors, including incorrect code, statistical misinterpretations, and hallucinated functions. Key verification strategies included expertise, external validation, debugging, and manual inspection. Among 58 respondents providing training feedback, 44 (75.9%) requested case studies, 40 (69.0%) sought interactive tutorials, and 37 (63.8%) desired structured training. CONCLUSIONS: LLM usage is notable among respondents at two academic medical centers, though response patterns likely reflect early adopters. While LLMs enhance productivity, challenges like errors and reliability concerns highlight the need for verification strategies and systematic validation. The strong interest in training underscores the need for structured guidance. As an initial step, we propose eight core principles for responsible LLM integration, offering a preliminary framework for structured usage, validation, and ethical considerations.

Duke Scholars

Published In

J Clin Transl Sci

DOI

EISSN

2059-8661

Publication Date

2025

Volume

9

Issue

1

Start / End Page

e131

Location

England
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Grambow, S. C., Desai, M., Weinfurt, K. P., Lindsell, C. J., Pencina, M. J., Rende, L., & Pomann, G.-M. (2025). Integrating large language models in biostatistical workflows for clinical and translational research. J Clin Transl Sci, 9(1), e131. https://doi.org/10.1017/cts.2025.10064
Grambow, Steven C., Manisha Desai, Kevin P. Weinfurt, Christopher J. Lindsell, Michael J. Pencina, Lacey Rende, and Gina-Maria Pomann. “Integrating large language models in biostatistical workflows for clinical and translational research.J Clin Transl Sci 9, no. 1 (2025): e131. https://doi.org/10.1017/cts.2025.10064.
Grambow SC, Desai M, Weinfurt KP, Lindsell CJ, Pencina MJ, Rende L, et al. Integrating large language models in biostatistical workflows for clinical and translational research. J Clin Transl Sci. 2025;9(1):e131.
Grambow, Steven C., et al. “Integrating large language models in biostatistical workflows for clinical and translational research.J Clin Transl Sci, vol. 9, no. 1, 2025, p. e131. Pubmed, doi:10.1017/cts.2025.10064.
Grambow SC, Desai M, Weinfurt KP, Lindsell CJ, Pencina MJ, Rende L, Pomann G-M. Integrating large language models in biostatistical workflows for clinical and translational research. J Clin Transl Sci. 2025;9(1):e131.
Journal cover image

Published In

J Clin Transl Sci

DOI

EISSN

2059-8661

Publication Date

2025

Volume

9

Issue

1

Start / End Page

e131

Location

England