Large language models streamline automated machine learning for clinical studies.
Soroosh Tayebi ArastehTianyu HanMahshad LotfiniaChristiane KuhlJakob Nikolas KatherDaniel TruhnSven NebelungPublished in: Nature communications (2024)
A knowledge gap persists between machine learning (ML) developers (e.g., data scientists) and practitioners (e.g., clinicians), hampering the full utilization of ML for clinical data analysis. We investigated the potential of the ChatGPT Advanced Data Analysis (ADA), an extension of GPT-4, to bridge this gap and perform ML analyses efficiently. Real-world clinical datasets and study details from large trials across various medical specialties were presented to ChatGPT ADA without specific guidance. ChatGPT ADA autonomously developed state-of-the-art ML models based on the original study's training data to predict clinical outcomes such as cancer development, cancer progression, disease complications, or biomarkers such as pathogenic gene sequences. Following the re-implementation and optimization of the published models, the head-to-head comparison of the ChatGPT ADA-crafted ML models and their respective manually crafted counterparts revealed no significant differences in traditional performance metrics (p ≥ 0.072). Strikingly, the ChatGPT ADA-crafted ML models often outperformed their counterparts. In conclusion, ChatGPT ADA offers a promising avenue to democratize ML in medicine by simplifying complex data analyses, yet should enhance, not replace, specialized training and resources, to promote broader applications in medical research and practice.
Keyphrases
- data analysis
- machine learning
- healthcare
- primary care
- big data
- papillary thyroid
- electronic health record
- palliative care
- randomized controlled trial
- quality improvement
- squamous cell
- deep learning
- squamous cell carcinoma
- gene expression
- single cell
- risk assessment
- rna seq
- single molecule
- human health
- atomic force microscopy
- meta analyses
- genome wide identification