Medicine and HealthNature Communications
Large language models streamline automated machine learning for clinical studies
S. T. Arasteh, T. Han, et al.
This innovative study by Soroosh Tayebi Arasteh and colleagues explores the potential of ChatGPT Advanced Data Analysis (ADA) in bridging the gap between machine learning and clinical practice. With ADA autonomously creating ML models that match or exceed those developed by experts, this research offers exciting possibilities for enhancing clinical data analysis and democratizing ML in medicine.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Computer Science
The Goldilocks paradigm: comparing classical machine learning, large language models, and few-shot learning for drug discovery applications
S. H. Snyder, P. A. Vignaux, et al.
Linguistics and Languages
Applying large language models for automated essay scoring for non-native Japanese
W. Li and H. Liu
Computer Science
Towards provably efficient quantum algorithms for large-scale machine-learning models
J. Liu, M. Liu, et al.
Computer Science
PENTESTGPT: Evaluating and Harnessing Large Language Models for Automated Penetration Testing
G. Deng, Y. Liu, et al.

