AI for the hemodynamic assessment of critically ill and surgical patients: focus on clinical applications.

IF 5.7 1区 医学 Q1 CRITICAL CARE MEDICINE
Frederic Michard, Marijn P Mulder, Filipe Gonzalez, Filippo Sanfilippo
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引用次数: 0

Abstract

Several artificial intelligence (AI)-driven tools have emerged for the hemodynamic evaluation of critically ill and surgical patients. This article provides an overview of current developments and potential clinical applications of machine learning (ML) for blood pressure measurements, hypotension prediction, hemodynamic profiling, and echocardiography. ML algorithms have shown promise in enabling continuous, non-invasive blood pressure monitoring by analyzing pulse oximetry waveforms, though these methods require periodic calibration with traditional oscillometric brachial cuffs. Additionally, a variety of ML models have been trained to forecast impending hypotension. However, clinical research indicates that these algorithms often primarily rely on mean arterial pressure, leading to questions about their added predictive value. The issue of false-positive alerts is also significant and can result in unwarranted clinical interventions. In terms of hemodynamic profiling, ML algorithms have been proposed to automatically classify patients into specific hemodynamic endotypes. However, current evidence suggests these models tend to replicate conventional hemodynamic profiles found in medical textbooks or depicted on advanced hemodynamic monitors. This raises questions about their practical clinical utility, especially given occasional discrepancies that could impact treatment decisions. Point-of-care ultrasound (POCUS) has gained traction for evaluating cardiac function in patients experiencing circulatory shock. ML algorithms now embedded in some POCUS systems can assist by recognizing ultrasound images, guiding users for optimal imaging, automating and reducing the variability of key echocardiographic measurements. These capabilities are especially beneficial for novice operators, potentially enhancing accuracy and confidence in clinical decision-making. In conclusion, while several AI-based technologies show promise for refining hemodynamic assessment in both critically ill and surgical patients, their clinical value varies. Comprehensive validation studies and real-world testing are essential to identify which innovations will genuinely contribute to improving the quality of care.

人工智能在危重症和外科患者血流动力学评估中的应用:重点关注临床应用。
一些人工智能(AI)驱动的工具已经出现,用于危重病人和外科病人的血流动力学评估。本文概述了机器学习(ML)在血压测量、低血压预测、血流动力学分析和超声心动图方面的最新发展和潜在临床应用。ML算法已经显示出通过分析脉搏血氧测量波形来实现连续、无创血压监测的前景,尽管这些方法需要使用传统的振荡臂袖带进行定期校准。此外,各种ML模型已被用于预测即将发生的低血压。然而,临床研究表明,这些算法通常主要依赖于平均动脉压,这导致了对其附加预测价值的质疑。假阳性警报的问题也很重要,可能导致无根据的临床干预。在血流动力学分析方面,ML算法已被提出自动将患者分类为特定的血流动力学内型。然而,目前的证据表明,这些模型倾向于复制医学教科书中发现的传统血液动力学剖面或先进的血液动力学监测仪。这就提出了关于它们的实际临床效用的问题,特别是考虑到偶尔的差异可能会影响治疗决策。即时超声(POCUS)在评估循环休克患者的心功能方面获得了广泛的应用。ML算法现在嵌入在一些POCUS系统中,可以通过识别超声图像,指导用户进行最佳成像,自动化和减少关键超声心动图测量的可变性来辅助。这些功能对新手操作人员尤其有益,有可能提高临床决策的准确性和信心。总之,尽管一些基于人工智能的技术有望改善危重病人和外科病人的血液动力学评估,但它们的临床价值各不相同。全面的验证研究和实际测试对于确定哪些创新将真正有助于提高护理质量至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of Intensive Care
Annals of Intensive Care CRITICAL CARE MEDICINE-
CiteScore
14.20
自引率
3.70%
发文量
107
审稿时长
13 weeks
期刊介绍: Annals of Intensive Care is an online peer-reviewed journal that publishes high-quality review articles and original research papers in the field of intensive care medicine. It targets critical care providers including attending physicians, fellows, residents, nurses, and physiotherapists, who aim to enhance their knowledge and provide optimal care for their patients. The journal's articles are included in various prestigious databases such as CAS, Current contents, DOAJ, Embase, Journal Citation Reports/Science Edition, OCLC, PubMed, PubMed Central, Science Citation Index Expanded, SCOPUS, and Summon by Serial Solutions.
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