Division of Anaesthetics, Pain Medicine, and Intensive Care, Department of Surgery and Cancer, Faculty of Medicine, Imperial College London, London, SW7 2AZ, United Kingdom.
Division of Anaesthetics, Pain Medicine, and Intensive Care, Department of Surgery and Cancer, Faculty of Medicine, Imperial College London, London, SW7 2AZ, United Kingdom.
EBioMedicine. 2022 Dec;86:104394. doi: 10.1016/j.ebiom.2022.104394. Epub 2022 Dec 2.
Over the last years, there have been advances in the use of data-driven techniques to improve the definition, early recognition, subtypes characterisation, prognostication and treatment personalisation of sepsis. Some of those involve the discovery or evaluation of biomarkers or digital signatures of sepsis or sepsis sub-phenotypes. It is hoped that their identification may improve timeliness and accuracy of diagnosis, suggest physiological pathways and therapeutic targets, inform targeted recruitment into clinical trials, and optimise clinical management. Given the complexities of the sepsis response, panels of biomarkers or models combining biomarkers and clinical data are necessary, as well as specific data analysis methods, which broadly fall under the scope of machine learning. This narrative review gives a brief overview of the main machine learning techniques (mainly in the realms of supervised and unsupervised methods) and published applications that have been used to create sepsis diagnostic tools and identify biomarkers.
在过去的几年中,数据驱动技术的应用在败血症的定义、早期识别、亚型特征、预后和治疗个体化方面取得了进展。其中一些涉及败血症或败血症亚表型的生物标志物或数字特征的发现或评估。人们希望它们的鉴定可以提高诊断的及时性和准确性,提示生理途径和治疗靶点,为临床试验的靶向招募提供信息,并优化临床管理。鉴于败血症反应的复杂性,需要使用生物标志物或结合生物标志物和临床数据的模型组合,以及特定的数据分析方法,这些方法广泛属于机器学习的范畴。本叙述性综述简要概述了主要的机器学习技术(主要在监督和无监督方法领域)和已发表的应用,这些技术和应用已被用于创建败血症诊断工具和识别生物标志物。