使用人工智能引导超声心动图检测农村和偏远地区的心功能障碍和心脏瓣膜疾病:AGILE-Echo 试验的原理与设计。

IF 3.7 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS American heart journal Pub Date : 2024-08-10 DOI:10.1016/j.ahj.2024.08.004
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引用次数: 0

摘要

背景:经胸超声心动图(TTE)对心血管疾病(CVD)的诊断至关重要,包括但不限于心力衰竭(HF)和心脏瓣膜病(HVD)。然而,TTE 依赖于专家的采集,这意味着在农村地区的可及性可能有限,从而导致管理决策的延误和潜在的漏诊。人工智能引导(AI)-TTE 允许非专业人员采集图像,从而提供了一种解决方案。AI-TTE 对诊断时机和早期启动心脏保护的影响尚不明确:AGILE-Echo(使用人工智能引导超声心动图协助心脏病患者管理)是一项随机对照试验,在澳大利亚的 5 个农村和偏远地区进行。具有心血管疾病风险因素、不耐运动或担心心血管疾病的成年人被随机分配到 AI-TTE 或常规护理(UC)中。AI-TTE 参与者的心血管问题可能被排除、确定(导致 AI 指导下的干预)或未解决(导致常规 TTE)。UC 参与者接受常规管理,包括转诊接受标准 TTE。主要终点是 12 个月时的 HVD 或 HF 诊断综合结果。将根据年龄范围和性别进行分组分析。所有统计分析都将使用 R 语言进行:在首批 157 名参与者中,78 人被随机分配到 AI-TTE(中位年龄 68 [IQR 17]),79 人被随机分配到 UC(中位年龄 65 [IQR 17],P=0.034)。HVD是37名参与者(23.6%)的主要问题,而84.7%(n=133)的参与者出现运动不耐受。UC臂和AI-TTE臂的总体10年HF发病风险分别为13.4%和20.0%(P=0.089)。心房重塑、左心室重塑和瓣膜反流是最常见的发现。33名患者(42.3%)未发现异常:这项 AI-TTE 随机对照试验将为 AI-TTE 在识别症状前 HF 或 HVD 方面的作用提供概念性证明。此外,这还能促进 AI-TTE 在农村或偏远地区的使用,最终改善有心脏功能障碍风险、体征或症状的社区成人的健康和生活质量。
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Use of artificial intelligence‐guided echocardiography to detect cardiac dysfunction and heart valve disease in rural and remote areas: Rationale and design of the AGILE‐echo trial

Background

Transthoracic echocardiography (TTE) is essential in the diagnosis of cardiovascular diseases (CVD), including but not limited to heart failure (HF) and heart valve disease (HVD). However, its dependence on expert acquisition means that its accessibility in rural areas may be limited, leading to delayed management decisions and potential missed diagnoses. Artificial intelligence-guided (AI)-TTE offers a solution by permitting non-expert image acquisition. The impact of AI-TTE on the timing of diagnosis and early initiation of cardioprotection is undefined.

Methods

AGILE-Echo (use of Artificial intelligence-Guided echocardiography to assIst cardiovascuLar patient managEment) is a randomized-controlled trial conducted in 5 rural and remote areas around Australia. Adults with CV risk factors and exercise intolerance, or concerns regarding HVD are randomized into AI-TTE or usual care (UC). AI-TTE participants may have a cardiovascular problem excluded, identified (leading to AI-guided interventions) or unresolved (leading to conventional TTE). UC participants undergo usual management, including referral for standard TTE. The primary endpoint is a composite of HVD or HF diagnosis at 12-months. Subgroup analysis, stratified based on age range and sex, will be conducted. All statistical analyses will be conducted using R.

Results

Of the first 157 participants, 78 have been randomized into AI-TTE (median age 68 [IQR 17]) and 79 to UC (median age 65 [IQR 17], P = .034). HVD was the primary concern in 37 participants (23.6%) while 84.7% (n = 133) experienced exercise intolerance. The overall 10-year HF incidence risk was 13.4% and 20.0% (P = .089) for UC and AI-TTE arm respectively. Atrial remodeling, left ventricular remodeling and valvular regurgitation were the most common findings. Thirty-three patients (42.3%) showed no abnormalities.

Conclusions

This randomized-controlled trial of AI-TTE will provide proof-of-concept for the role of AI-TTE in identifying pre-symptomatic HF or HVD when access to TTE is limited. Additionally, this could promote the usage of AI-TTE in rural or remote areas, ultimately improving health and quality of life of community dwelling adults with risks, signs or symptoms of cardiac dysfunction.

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来源期刊
American heart journal
American heart journal 医学-心血管系统
CiteScore
8.20
自引率
2.10%
发文量
214
审稿时长
38 days
期刊介绍: The American Heart Journal will consider for publication suitable articles on topics pertaining to the broad discipline of cardiovascular disease. Our goal is to provide the reader primary investigation, scholarly review, and opinion concerning the practice of cardiovascular medicine. We especially encourage submission of 3 types of reports that are not frequently seen in cardiovascular journals: negative clinical studies, reports on study designs, and studies involving the organization of medical care. The Journal does not accept individual case reports or original articles involving bench laboratory or animal research.
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