Zisis Georgios, Carrington Melinda J, Oldenburg Brian, Whitmore Kristyn, Lay Maria, Huynh Quan, Neil Christopher, Ball Jocasta, Marwick Thomas H
Baker Heart and Diabetes Institute, 75 Commercial Road, Melbourne, VIC3004, Australia.
Baker Department of Cardiometabolic Health, University of Melbourne, Melbourne, VIC, Australia.
Eur Heart J Digit Health. 2021 Nov 13;2(4):649-657. doi: 10.1093/ehjdh/ztab085. eCollection 2021 Dec.
Effective and efficient education and patient engagement are fundamental to improve health outcomes in heart failure (HF). The use of artificial intelligence (AI) to enable more effective delivery of education is becoming more widespread for a range of chronic conditions. We sought to determine whether an avatar-based HF-app could improve outcomes by enhancing HF knowledge and improving patient quality of life and self-care behaviour.
In a randomized controlled trial of patients admitted for acute decompensated HF (ADHF), patients at high risk (≥33%) for 30-day hospital readmission and/or death were randomized to usual care or training with the HF-app. From August 2019 up until December 2020, 200 patients admitted to the hospital for ADHF were enrolled in the Risk-HF study. Of the 72 at high-risk, 36 (25 men; median age 81.5 years; 9.5 years of education; 15 in NYHA Class III at discharge) were randomized into the intervention arm and were offered education involving an HF-app. Whilst 26 (72%) could not use the HF-app, younger patients [odds ratio (OR) 0.89, 95% confidence interval (CI) 0.82-0.97; 0.01] and those with a higher education level (OR 1.58, 95% CI 1.09-2.28; 0.03) were more likely to enrol. Of those enrolled, only 2 of 10 patients engaged and completed ≥70% of the program, and 6 of the remaining 8 who did not engage were readmitted.
Although AI-based education is promising in chronic conditions, our study provides a note of caution about the barriers to enrolment in critically ill, post-acute, and elderly patients.
有效且高效的教育以及患者参与对于改善心力衰竭(HF)的健康结局至关重要。利用人工智能(AI)实现更有效的教育在一系列慢性病中越来越普遍。我们试图确定基于虚拟化身的HF应用程序是否可以通过增强HF知识、改善患者生活质量和自我护理行为来改善结局。
在一项针对急性失代偿性HF(ADHF)住院患者的随机对照试验中,30天再入院和/或死亡风险高(≥33%)的患者被随机分配接受常规护理或使用HF应用程序进行培训。从2019年8月到2020年12月,200名因ADHF住院的患者被纳入Risk-HF研究。在72名高危患者中,36名(25名男性;中位年龄81.5岁;受教育9.5年;出院时15名处于纽约心脏协会III级)被随机分配到干预组,并接受涉及HF应用程序的教育。虽然26名(72%)患者无法使用HF应用程序,但年轻患者[优势比(OR)0.89,95%置信区间(CI)0.82-0.97;P=0.01]和教育水平较高的患者(OR 1.58,95%CI 1.09-2.28;P=0.03)更有可能参与。在参与的患者中,10名患者中只有2名参与并完成了≥70%的项目,其余8名未参与的患者中有6名再次入院。
虽然基于AI的教育在慢性病中前景广阔,但我们的研究对重症、急性后期和老年患者参与的障碍提出了警示。