授权患者和护理人员使用人工智能和计算机视觉进行伤口监测:非随机,单组可行性研究。

Q2 Medicine
Rose Raizman, José Luis Ramírez-GarciaLuna, Tanmoy Newaz, Sheila C Wang, Gregory K Berry, Ling Yuan Kong, Heba Tallah Mohammed, Robert D J Fraser
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引用次数: 0

摘要

背景:慢性伤口影响全球1%-2%的人口,并对患者和护理人员的健康和生活质量构成重大挑战。人工智能(AI)和计算机视觉(CV)技术的进步为加强伤口护理提供了新的机会,特别是通过远程监测和患者参与。利用人工智能促进伤口跟踪的数字伤口护理解决方案(DWCS)被重新设计为面向患者的移动应用程序,使患者和护理人员能够积极参与伤口监测和管理。目的:本研究旨在评估患者连接应用程序(Swift Medical Inc .)的可行性、可用性和初步临床结果,使患者和护理人员能够远程捕获并与医疗保健提供者共享伤口数据。方法:2020年5月至2021年2月在加拿大的2个门诊诊所进行可行性研究。总共招募并培训了28名慢性伤口患者使用“患者连接”应用程序进行伤口成像,并确保与护理团队共享数据。使用集成在应用程序中的人工智能模型分析伤口图像和数据。临床医生审查数据,以便在随访或远程治疗期间为治疗决策提供信息。关键指标包括应用程序使用频率、患者参与度和伤口愈合率。结果:参与者平均每个伤口拍摄13张伤口图像,平均每8天提交一次图像。研究队列包括糖尿病溃疡、静脉溃疡、压伤和术后伤口患者。在所有患者中,伤口愈合表面积的中位数封闭达到80%(范围15-100),证明了该应用程序的临床潜力。在可行性测试期间,患者和临床医生的反馈支持对应用程序的可用性、数据安全功能以及增强远程监控的能力的深入了解,这些都需要在进一步的定性研究中进行探索。结论:患者连接应用程序有效地吸引患者和护理人员参与慢性伤口护理,具有可行性和良好的临床效果。通过人工智能技术实现安全的远程伤口监测,该应用程序有可能提高患者的依从性,提高护理可及性,并优化临床工作流程。未来的研究应侧重于评估其可扩展性、成本效益和在不同卫生保健环境中更广泛的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering Patients and Caregivers to Use Artificial Intelligence and Computer Vision for Wound Monitoring: Nonrandomized, Single-Arm Feasibility Study.

Background: Chronic wounds affect 1%-2% of the global population, and pose significant health and quality-of-life challenges for patients and caregivers. Advances in artificial intelligence (AI) and computer vision (CV) technologies present new opportunities for enhancing wound care, particularly through remote monitoring and patient engagement. A digital wound care solution (DWCS) that facilitates wound tracking using AI was redesigned as a patient-facing mobile app to empower patients and caregivers to actively participate in wound monitoring and management.

Objective: This study aims to evaluate the feasibility, usability, and preliminary clinical outcomes of the Patient Connect app (Swift Medical Inc) in enabling patients and caregivers to remotely capture and share wound data with health care providers.

Methods: A feasibility study was conducted at 2 outpatient clinics in Canada between May 2020 and February 2021. A total of 28 patients with chronic wounds were recruited and trained to use the Patient Connect app for wound imaging and secure data sharing with their care teams. Wound images and data were analyzed using AI models integrated into the app. Clinicians reviewed the data to inform treatment decisions during follow-up visits or remotely. Key metrics included app usage frequency, patient engagement, and wound closure rates.

Results: Participants captured a median of 13 wound images per wound, with images submitted every 8 days on average. The study cohort included patients with diabetic ulcers, venous ulcers, pressure injuries, and postsurgical wounds. A median wound closure surface area closure of 80% (range 15-100) was achieved across all patients, demonstrating the app's clinical potential. Feedback from patients and clinicians highlighted during the feasibility testing support insight into the app's usability, data security features, and ability to enhance remote monitoring that need to be explored in further qualitative research.

Conclusions: The Patient Connect app effectively engaged patients and caregivers in chronic wound care, demonstrating feasibility and promising clinical outcomes. By enabling secure, remote wound monitoring through AI technology, the app has the potential to improve patient adherence, enhance care accessibility, and optimize clinical workflows. Future studies should focus on evaluating its scalability, cost-effectiveness, and broader applicability in diverse health care settings.

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来源期刊
Journal of Participatory Medicine
Journal of Participatory Medicine Medicine-Medicine (miscellaneous)
CiteScore
3.20
自引率
0.00%
发文量
8
审稿时长
12 weeks
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