CLHCSep 23, 2024

PALLM: Evaluating and Enhancing PALLiative Care Conversations with Large Language Models

arXiv:2409.15188v26 citationsh-index: 21Has Code
Originality Incremental advance
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This research addresses the challenge of scalable and cost-effective evaluation of patient-provider communication in palliative care, offering a novel approach that could enhance clinical interactions, though it is incremental in applying existing LLM methods to a specific domain.

This study tackled the problem of evaluating palliative care communication quality by using large language models (LLMs) to assess simulated clinical conversations, finding that LLMs demonstrated superior performance in providing actionable feedback with reasoning and showing feasibility for practical applications.

Effective patient-provider communication is crucial in clinical care, directly impacting patient outcomes and quality of life. Traditional evaluation methods, such as human ratings, patient feedback, and provider self-assessments, are often limited by high costs and scalability issues. Although existing natural language processing (NLP) techniques show promise, they struggle with the nuances of clinical communication and require sensitive clinical data for training, reducing their effectiveness in real-world applications. Emerging large language models (LLMs) offer a new approach to assessing complex communication metrics, with the potential to advance the field through integration into passive sensing and just-in-time intervention systems. This study explores LLMs as evaluators of palliative care communication quality, leveraging their linguistic, in-context learning, and reasoning capabilities. Specifically, using simulated scripts crafted and labeled by healthcare professionals, we test proprietary models (e.g., GPT-4) and fine-tune open-source LLMs (e.g., LLaMA2) with a synthetic dataset generated by GPT-4 to evaluate clinical conversations, to identify key metrics such as `understanding' and `empathy'. Our findings demonstrated LLMs' superior performance in evaluating clinical communication, providing actionable feedback with reasoning, and demonstrating the feasibility and practical viability of developing in-house LLMs. This research highlights LLMs' potential to enhance patient-provider interactions and lays the groundwork for downstream steps in developing LLM-empowered clinical health systems.

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