CLSep 21, 2023

Foundation Metrics for Evaluating Effectiveness of Healthcare Conversations Powered by Generative AI

arXiv:2309.12444v3160 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

This work addresses the critical need for standardized evaluation in healthcare AI to ensure safety and effectiveness for patients and providers, though it is incremental as it builds on existing LLM metrics by tailoring them to a specific domain.

The paper tackles the lack of suitable evaluation metrics for generative AI-powered healthcare chatbots by proposing a comprehensive set of metrics focused on language processing, clinical task impact, and user interaction effectiveness, addressing gaps in existing metrics that overlook medical concepts and user-centered aspects like trust and empathy.

Generative Artificial Intelligence is set to revolutionize healthcare delivery by transforming traditional patient care into a more personalized, efficient, and proactive process. Chatbots, serving as interactive conversational models, will probably drive this patient-centered transformation in healthcare. Through the provision of various services, including diagnosis, personalized lifestyle recommendations, and mental health support, the objective is to substantially augment patient health outcomes, all the while mitigating the workload burden on healthcare providers. The life-critical nature of healthcare applications necessitates establishing a unified and comprehensive set of evaluation metrics for conversational models. Existing evaluation metrics proposed for various generic large language models (LLMs) demonstrate a lack of comprehension regarding medical and health concepts and their significance in promoting patients' well-being. Moreover, these metrics neglect pivotal user-centered aspects, including trust-building, ethics, personalization, empathy, user comprehension, and emotional support. The purpose of this paper is to explore state-of-the-art LLM-based evaluation metrics that are specifically applicable to the assessment of interactive conversational models in healthcare. Subsequently, we present an comprehensive set of evaluation metrics designed to thoroughly assess the performance of healthcare chatbots from an end-user perspective. These metrics encompass an evaluation of language processing abilities, impact on real-world clinical tasks, and effectiveness in user-interactive conversations. Finally, we engage in a discussion concerning the challenges associated with defining and implementing these metrics, with particular emphasis on confounding factors such as the target audience, evaluation methods, and prompt techniques involved in the evaluation process.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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