Yang Ting-Ting, Zheng Hong-Xia, Cao Sha, Jing Mei-Ling, Hu Ju, Zuo Yan, Chen Qing-Yong, Zhang Jian-Jun
Department of Cardiology, West China Hospital, Sichuan University, Chengdu, China.
Department of Gynecology and Obstetrics Nursing, West China Second University Hospital, Sichuan University, Chengdu, China.
J Med Internet Res. 2025 Apr 30;27:e68762. doi: 10.2196/68762.
Myocardial infarction (MI) remains a leading cause of morbidity and mortality worldwide. Although postsurgical cardiac interventions have improved survival rates, effective management during recovery remains challenging. Traditional informational support systems often provide generic guidance that does not account for individualized medical histories or psychosocial factors. Recently, artificial intelligence (AI)-based large language models (LLM) tools have emerged as promising interventions to deliver personalized health information to post-MI patients.
We aim to explore the user experiences and perceptions of an AI-based LLM tool (iflyhealth) with integrated personal health record functionality in post-MI care, assess how patients and their family members engaged with the tool during recovery, identify the perceived benefits and challenges of using the technology, and to understand the factors promoting or hindering continued use.
A purposive sample of 20 participants (12 users and 8 nonusers) who underwent MI surgery within the previous 6 months was recruited between July and August 2024. Data were collected through semistructured, face-to-face interviews conducted in a private setting, using an interview guide to address participants' first impressions, usage patterns, and reasons for adoption or nonadoption of the iflyhealth app. The interviews were audio-recorded, transcribed verbatim, and analyzed using Colaizzi method.
Four key themes revealed included: (1) participants' experiences varied based on digital literacy, prior exposure to health technologies, and individual recovery needs; (2) users appreciated the app's enhanced accessibility to professional health information, personalized advice tailored to their clinical conditions, and the tool's responsiveness to health status changes; (3) challenges such as difficulties with digital literacy, usability concerns, and data privacy issues were significant barriers; and (4) nonusers and those who discontinued use primarily cited complexity of the interface and perceived limited relevance of the advice as major deterrents.
iflyhealth, an LLM AI app with a built-in personal health record functionality, shows significant potential in assisting post-MI patients. The main benefits reported by iflyhealth users include improved access to personalized health information and an enhanced ability to respond to changing health conditions. However, challenges such as digital literacy, usability, and privacy and security concerns persist. Overcoming the barriers may further enhance the use of the iflyhealth app, which can play an important role in patient-centered, personalized post-MI management.
心肌梗死(MI)仍是全球发病和死亡的主要原因。尽管术后心脏干预提高了生存率,但恢复期间的有效管理仍然具有挑战性。传统的信息支持系统通常提供一般性指导,未考虑个体病史或心理社会因素。最近,基于人工智能(AI)的大语言模型(LLM)工具已成为向心肌梗死后患者提供个性化健康信息的有前景的干预措施。
我们旨在探讨基于AI的具有集成个人健康记录功能的LLM工具(讯飞健康)在心肌梗死后护理中的用户体验和看法,评估患者及其家庭成员在恢复过程中如何使用该工具,确定使用该技术的感知益处和挑战,并了解促进或阻碍持续使用的因素。
2024年7月至8月招募了一个有目的的样本,包括20名在过去6个月内接受心肌梗死手术的参与者(12名使用者和8名非使用者)。通过在私人环境中进行的半结构化面对面访谈收集数据,使用访谈指南探讨参与者的第一印象、使用模式以及采用或不采用讯飞健康应用程序的原因。访谈进行录音,逐字转录,并使用科莱齐方法进行分析。
揭示的四个关键主题包括:(1)参与者的体验因数字素养、先前对健康技术的接触以及个人恢复需求而异;(2)使用者赞赏该应用程序能更便捷地获取专业健康信息、根据其临床状况提供个性化建议以及该工具对健康状况变化的响应能力;(3)数字素养困难、可用性问题和数据隐私问题等挑战是重大障碍;(4)非使用者和停止使用的人主要指出界面复杂以及认为建议相关性有限是主要阻碍因素。
讯飞健康是一款具有内置个人健康记录功能的LLM AI应用程序,在协助心肌梗死后患者方面显示出巨大潜力。讯飞健康使用者报告的主要益处包括更易于获取个性化健康信息以及增强应对不断变化的健康状况的能力。然而,数字素养、可用性以及隐私和安全问题等挑战仍然存在。克服这些障碍可能会进一步提高讯飞健康应用程序的使用率,该应用程序在以患者为中心的个性化心肌梗死后管理中可以发挥重要作用。