Artificial intelligence in clinical workflow processes in vascular surgery and beyond

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2023-09-01 DOI:10.1053/j.semvascsurg.2023.07.002
Shernaz S. Dossabhoy , Vy T. Ho , Elsie G. Ross , Fatima Rodriguez , Shipra Arya
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Abstract

In the past decade, artificial intelligence (AI)-based applications have exploded in health care. In cardiovascular disease, and vascular surgery specifically, AI tools such as machine learning, natural language processing, and deep neural networks have been applied to automatically detect underdiagnosed diseases, such as peripheral artery disease, abdominal aortic aneurysms, and atherosclerotic cardiovascular disease. In addition to disease detection and risk stratification, AI has been used to identify guideline-concordant statin therapy use and reasons for nonuse, which has important implications for population-based cardiovascular disease health. Although many studies highlight the potential applications of AI, few address true clinical workflow implementation of available AI-based tools. Specific examples, such as determination of optimal statin treatment based on individual patient risk factors and enhancement of intraoperative fluoroscopy and ultrasound imaging, demonstrate the potential promise of AI integration into clinical workflow. Many challenges to AI implementation in health care remain, including data interoperability, model bias and generalizability, prospective evaluation, privacy and security, and regulation. Multidisciplinary and multi-institutional collaboration, as well as adopting a framework for integration, will be critical for the successful implementation of AI tools into clinical practice.

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人工智能在血管外科及其他临床工作流程中的应用
在过去的十年里,基于人工智能(AI)的应用在医疗保健领域出现了爆炸式增长。在心血管疾病,特别是血管手术方面,机器学习、自然语言处理和深度神经网络等人工智能工具已被应用于自动检测未被诊断的疾病,如外周动脉疾病、腹主动脉瘤和动脉粥样硬化性心血管疾病。除了疾病检测和风险分层外,人工智能还被用于确定符合指南的他汀类药物治疗的使用和不使用的原因,这对基于人群的心血管疾病健康具有重要意义。尽管许多研究强调了人工智能的潜在应用,但很少有研究涉及基于人工智能的工具的真正临床工作流程实施。具体的例子,如根据患者个体风险因素确定最佳的他汀类药物治疗,以及术中透视和超声成像的增强,都表明了人工智能融入临床工作流程的潜在前景。在卫生保健领域实施人工智能仍然面临许多挑战,包括数据互操作性、模型偏差和概括性、前瞻性评估、隐私和安全以及监管。多学科和多机构合作,以及采用整合框架,对于将人工智能工具成功应用于临床实践至关重要。
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CiteScore
7.20
自引率
4.30%
发文量
567
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