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Investigating LLMs in Clinical Triage: Promising Capabilities, Persistent Intersectional Biases

22 April 2025
Joseph Lee
Tianqi Shang
Jae Young Baik
D. Duong-Tran
Shu Yang
Lingyao Li
Li Shen
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Abstract

Large Language Models (LLMs) have shown promise in clinical decision support, yet their application to triage remains underexplored. We systematically investigate the capabilities of LLMs in emergency department triage through two key dimensions: (1) robustness to distribution shifts and missing data, and (2) counterfactual analysis of intersectional biases across sex and race. We assess multiple LLM-based approaches, ranging from continued pre-training to in-context learning, as well as machine learning approaches. Our results indicate that LLMs exhibit superior robustness, and we investigate the key factors contributing to the promising LLM-based approaches. Furthermore, in this setting, we identify gaps in LLM preferences that emerge in particular intersections of sex and race. LLMs generally exhibit sex-based differences, but they are most pronounced in certain racial groups. These findings suggest that LLMs encode demographic preferences that may emerge in specific clinical contexts or particular combinations of characteristics.

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@article{lee2025_2504.16273,
  title={ Investigating LLMs in Clinical Triage: Promising Capabilities, Persistent Intersectional Biases },
  author={ Joseph Lee and Tianqi Shang and Jae Young Baik and Duy Duong-Tran and Shu Yang and Lingyao Li and Li Shen },
  journal={arXiv preprint arXiv:2504.16273},
  year={ 2025 }
}
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