Artificial intelligence and the future of patient-centered outcomes.

IF 2.9 Q2 HEALTH CARE SCIENCES & SERVICES
Kevin P Weinfurt, Bryce B Reeve
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引用次数: 0

Abstract

Background: Terheyden et al. recently described a compelling vision for large language model-enabled patient-reported outcome measures (LLM-PROMs).

Main text: We support Terheyden et al.'s vision and offer complementary observations about the potential for generative artificial intelligence (GenAI) in assessing patient-centered outcomes. GenAI has the potential to improve the quality and efficiency of developing traditional PROMs and collecting patient experience data. Traditional PROMs rely on standardized questions and responses, which may introduce ambiguity about the health concept being assessed. Yet, interviewers who are trained in the meaning of the concepts can tailor questions to the respondent's experience and conversation style and have a back-and-forth clarification of meaning to ensure that both the interviewer's and respondent's meanings are aligned. The shortcoming of this approach is that it cannot be done at scale with human interviewers. However, trained GenAI interviewers could make such an assessment a reality for large samples of patients. The technology is already available to train GenAI interviewers in interview technique, the intent of each item, and a consistent approach toward coding the respondent's answer based on the conversation.

Conclusion: The health outcomes research field should actively inquire into what patient experience data can be collected via GenAI and rigorously evaluate the quality of the assessments obtained.

人工智能和以患者为中心的未来。
背景:Terheyden等人最近描述了一个令人信服的愿景,即支持大型语言模型的患者报告结果测量(LLM-PROMs)。我们支持Terheyden等人的愿景,并提供关于生成人工智能(GenAI)在评估以患者为中心的结果方面的潜力的补充观察。GenAI有潜力提高开发传统PROMs和收集患者经验数据的质量和效率。传统的PROMs依赖于标准化的问题和回答,这可能会对被评估的健康概念产生歧义。然而,接受过概念含义培训的采访者可以根据受访者的经验和谈话风格定制问题,并反复澄清含义,以确保采访者和受访者的含义一致。这种方法的缺点是它不能大规模地应用于人类采访者。然而,训练有素的GenAI采访者可以对大量患者样本进行这样的评估。该技术已经可以用于培训GenAI采访者的采访技巧,每个项目的意图,以及基于对话对被访者的答案进行编码的一致方法。结论:健康结局研究领域应积极探索GenAI可收集哪些患者体验数据,并严格评估评估结果的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Patient-Reported Outcomes
Journal of Patient-Reported Outcomes Health Professions-Health Information Management
CiteScore
3.80
自引率
7.40%
发文量
120
审稿时长
20 weeks
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