Is artificial intelligence prepared for the 24-h shifts in the ICU?

IF 3.7 3区 医学 Q1 ANESTHESIOLOGY Anaesthesia Critical Care & Pain Medicine Pub Date : 2024-10-03 DOI:10.1016/j.accpm.2024.101431
Filipe André Gonzalez , Cristina Santonocito , Tomás Lamas , Pedro Costa , Susana M. Vieira , Hugo Alexandre Ferreira , Filippo Sanfilippo
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Abstract

Integrating machine learning (ML) into intensive care units (ICUs) can significantly enhance patient care and operational efficiency. ML algorithms can analyze vast amounts of data from electronic health records, physiological monitoring systems, and other medical devices, providing real-time insights and predictive analytics to assist clinicians in decision-making. ML has shown promising results in predictive modeling for patient outcomes, early detection of sepsis, optimizing ventilator settings, and resource allocation. For instance, predictive algorithms have demonstrated high accuracy in forecasting patient deterioration, enabling timely interventions and reducing mortality rates. Despite these advancements, challenges such as data heterogeneity, integration with existing clinical workflows, and the need for transparency and interpretability of ML models persist. The deployment of ML in ICUs also raises ethical and legal considerations regarding patient privacy and the potential for algorithmic biases.
For clinicians interested in the early embracing of AI-driven changes in clinical practice, in this review, we discuss the challenges of integrating AI and ML tools in the ICU environment in several steps and issues: (1) Main categories of ML algorithms; (2) From data enabling to ML development; (3) Decision-support systems that will allow patient stratification, accelerating the foresight of adequate individual care; (4) Improving patient outcomes and healthcare efficiency, with positive society and research implications; (5) Risks and barriers to AI-ML application to the healthcare system, including transparency, privacy, and ethical concerns.
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人工智能为重症监护室的 24 小时轮班做好准备了吗?
将机器学习(ML)集成到重症监护病房(ICU)中,可以大大提高患者护理和运行效率。ML 算法可以分析来自电子健康记录、生理监测系统和其他医疗设备的大量数据,提供实时见解和预测分析,协助临床医生做出决策。在患者预后、败血症早期检测、呼吸机设置优化和资源分配的预测建模方面,ML 已显示出良好的效果。例如,预测算法在预测患者病情恶化、及时干预和降低死亡率方面表现出很高的准确性。尽管取得了这些进步,但数据异质性、与现有临床工作流程的整合以及对 ML 模型透明度和可解释性的需求等挑战依然存在。在重症监护室部署 ML 还会引发有关患者隐私和算法偏差可能性的伦理和法律问题。对于有兴趣在临床实践中尽早接受人工智能驱动变革的临床医生,我们将在本综述中分几个步骤和问题讨论在 ICU 环境中整合人工智能和 ML 工具所面临的挑战:1.人工智能算法的主要类别;2.从数据赋能到人工智能开发;3.可对患者进行分层的决策支持系统,加速预见适当的个体护理;4.改善患者预后和医疗效率,对社会和研究产生积极影响;5.人工智能-人工智能应用于医疗系统的风险和障碍,包括透明度、隐私和伦理问题。
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来源期刊
CiteScore
6.70
自引率
5.50%
发文量
150
审稿时长
18 days
期刊介绍: Anaesthesia, Critical Care & Pain Medicine (formerly Annales Françaises d''Anesthésie et de Réanimation) publishes in English the highest quality original material, both scientific and clinical, on all aspects of anaesthesia, critical care & pain medicine.
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