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机器学习在床旁超声检查中的应用及全系统人工智能实施的临床障碍(COMPASS-AI调查)

Clinical obstacles to machine-learning POCUS adoption and system-wide AI implementation (The COMPASS-AI survey).

作者信息

Wong Adrian, Roslan Nurul Liana, McDonald Rory, Noor Julina, Hutchings Sam, D'Costa Pradeep, Via Gabriele, Corradi Francesco

机构信息

Consultant Critical Care and Anaesthesia, King's College Hospital, London, UK.

Academic Department of Anaesthesia and Critical Care, Royal Centre for Defence Medicine, Birmingham, UK.

出版信息

Ultrasound J. 2025 Jul 3;17(1):32. doi: 10.1186/s13089-025-00436-2.

Abstract

BACKGROUND

Point-of-care ultrasound (POCUS) has become indispensable in various medical specialties. The integration of artificial intelligence (AI) and machine learning (ML) holds significant promise to enhance POCUS capabilities further. However, a comprehensive understanding of healthcare professionals' perspectives on this integration is lacking.

OBJECTIVE

This study aimed to investigate the global perceptions, familiarity, and adoption of AI in POCUS among healthcare professionals.

METHODS

An international, web-based survey was conducted among healthcare professionals involved in POCUS. The survey instrument included sections on demographics, familiarity with AI, perceived utility, barriers (technological, training, trust, workflow, legal/ethical), and overall perceptions regarding AI-assisted POCUS. The data was analysed by descriptive statistics, frequency distributions, and group comparisons (using chi-square/Fisher's exact test and t-test/Mann-Whitney U test).

RESULTS

This study surveyed 1154 healthcare professionals on perceived barriers to implementing AI in point-of-care ultrasound. Despite general enthusiasm, with 81.1% of respondents expressing agreement or strong agreement, significant barriers were identified. The most frequently cited single greatest barriers were Training & Education (27.1%) and Clinical Validation & Evidence (17.5%). Analysis also revealed that perceptions of specific barriers vary significantly based on demographic factors, including region of practice, medical specialty, and years of healthcare experience.

CONCLUSION

This novel global survey provides critical insights into the perceptions and adoption of AI in POCUS. Findings highlight considerable enthusiasm alongside crucial challenges, primarily concerning training, validation, guidelines, and support. Addressing these barriers is essential for the responsible and effective implementation of AI in POCUS.

摘要

背景

床旁超声(POCUS)在各个医学专科中已变得不可或缺。人工智能(AI)和机器学习(ML)的整合有望进一步提升POCUS的能力。然而,目前缺乏对医疗保健专业人员对这种整合的看法的全面了解。

目的

本研究旨在调查医疗保健专业人员对POCUS中AI的全球认知、熟悉程度和采用情况。

方法

对参与POCUS的医疗保健专业人员进行了一项基于网络的国际调查。调查问卷包括人口统计学、对AI的熟悉程度、感知效用、障碍(技术、培训、信任、工作流程、法律/伦理)以及对AI辅助POCUS的总体看法等部分。数据通过描述性统计、频率分布和组间比较(使用卡方检验/费舍尔精确检验以及t检验/曼-惠特尼U检验)进行分析。

结果

本研究就床旁超声实施AI的感知障碍对1154名医疗保健专业人员进行了调查。尽管总体上热情较高,81.1%的受访者表示同意或强烈同意,但仍发现了重大障碍。最常被提及的单一最大障碍是培训与教育(27.1%)和临床验证与证据(17.5%)。分析还表明,对特定障碍的看法因人口统计学因素(包括执业地区、医学专科和医疗保健经验年限)而有显著差异。

结论

这项新颖的全球调查为POCUS中AI的认知和采用提供了关键见解。研究结果凸显了相当高的热情以及关键挑战,主要涉及培训、验证、指南和支持。解决这些障碍对于在POCUS中负责任且有效地实施AI至关重要。

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