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护士主导的基于家庭的心脏功能障碍超声检测:CUMIN试点研究结果

Nurse-led home-based detection of cardiac dysfunction by ultrasound: results of the CUMIN pilot study.

作者信息

Tromp Jasper, Sarra Chenik, Nidhal Bouchahda, Mejdi Ben Messaoud, Zouari Fourat, Hummel Yoran, Mzoughi Khadija, Kraiem Sondes, Fehri Wafa, Gamra Habib, Lam Carolyn S P, Mebazaa Alexandre, Addad Faouzi

机构信息

Saw Swee Hock School of Public Health, National University of Singapore & The National University Health System, 12 Science Drive 2, #10-01, Singapore 117549, Singapore.

Duke-NUS Medical School, 8 College Rd, Singapore 169857, Singapore.

出版信息

Eur Heart J Digit Health. 2023 Dec 12;5(2):163-169. doi: 10.1093/ehjdh/ztad079. eCollection 2024 Mar.

Abstract

AIMS

Access to echocardiography is a significant barrier to heart failure (HF) care in many low- and middle-income countries. In this study, we hypothesized that an artificial intelligence (AI)-enhanced point-of-care ultrasound (POCUS) device could enable the detection of cardiac dysfunction by nurses in Tunisia.

METHODS AND RESULTS

This CUMIN study was a prospective feasibility pilot assessing the diagnostic accuracy of home-based AI-POCUS for HF conducted by novice nurses compared with conventional clinic-based transthoracic echocardiography (TTE). Seven nurses underwent a one-day training program in AI-POCUS. A total of 94 patients without a previous HF diagnosis received home-based AI-POCUS, POC N-terminal pro-B-type natriuretic peptide (NT-proBNP) testing, and clinic-based TTE. The primary outcome was the sensitivity of AI-POCUS in detecting a left ventricular ejection fraction (LVEF) <50% or left atrial volume index (LAVI) >34 mL/m, using clinic-based TTE as the reference. Out of seven nurses, five achieved a minimum standard to participate in the study. Out of the 94 patients (60% women, median age 67), 16 (17%) had an LVEF < 50% or LAVI > 34 mL/m. AI-POCUS provided an interpretable LVEF in 75 (80%) patients and LAVI in 64 (68%). The only significant predictor of an interpretable LVEF or LAVI proportion was the nurse operator. The sensitivity for the primary outcome was 92% [95% confidence interval (CI): 62-99] for AI-POCUS compared with 87% (95% CI: 60-98) for NT-proBNP > 125 pg/mL, with AI-POCUS having a significantly higher area under the curve ( = 0.040).

CONCLUSION

The study demonstrated the feasibility of novice nurse-led home-based detection of cardiac dysfunction using AI-POCUS in HF patients, which could alleviate the burden on under-resourced healthcare systems.

摘要

目的

在许多低收入和中等收入国家,获得超声心动图检查是心力衰竭(HF)护理的一个重大障碍。在本研究中,我们假设人工智能(AI)增强的即时超声(POCUS)设备能够使突尼斯的护士检测出心脏功能障碍。

方法和结果

这项CUMIN研究是一项前瞻性可行性试点研究,评估由新手护士进行的基于家庭的AI-POCUS对HF的诊断准确性,并与传统的基于诊所的经胸超声心动图(TTE)进行比较。七名护士参加了为期一天的AI-POCUS培训课程。共有94例既往无HF诊断的患者接受了基于家庭的AI-POCUS检查、即时N末端B型利钠肽原(NT-proBNP)检测以及基于诊所的TTE检查。主要结局是以基于诊所的TTE为参考,AI-POCUS检测左心室射血分数(LVEF)<50%或左心房容积指数(LAVI)>34 mL/m²的敏感性。在七名护士中,五名达到了参与研究的最低标准。在94例患者(60%为女性,中位年龄67岁)中,16例(17%)的LVEF<50%或LAVI>34 mL/m²。AI-POCUS为75例(80%)患者提供了可解释的LVEF,为64例(68%)患者提供了LAVI。可解释的LVEF或LAVI比例的唯一显著预测因素是护士操作人员。与NT-proBNP>125 pg/mL时的敏感性87%(95%置信区间[CI]:60-98)相比,AI-POCUS对主要结局的敏感性为92%(95%CI:62-99),AI-POCUS的曲线下面积显著更高(P = 0.040)。

结论

该研究证明了由新手护士主导使用AI-POCUS对HF患者进行基于家庭的心脏功能障碍检测的可行性,这可以减轻资源不足的医疗系统的负担。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cb90/10944680/a1c4df2e2a7a/ztad079_ga1.jpg

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