基于人工智能的普通人群和重症监护人群心房颤动表型推导。

IF 9.7 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL EBioMedicine Pub Date : 2024-09-01 Epub Date: 2024-08-16 DOI:10.1016/j.ebiom.2024.105280
Ryan A A Bellfield, Ivan Olier, Robyn Lotto, Ian Jones, Ellen A Dawson, Guowei Li, Anil M Tuladhar, Gregory Y H Lip, Sandra Ortega-Martorell
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引用次数: 0

摘要

背景:心房颤动(房颤)是全球最常见的心律失常,与较高的死亡和发病风险有关。为预测心房颤动和心房颤动相关并发症,通常采用临床风险评分,但由于心房颤动患者固有的复杂性和异质性,其预测准确性普遍有限。通过将心房颤动的不同表现归类为一致且可控的临床表型,有助于制定有针对性的预防和治疗策略。在本研究中,我们提出了一种基于人工智能(AI)的方法,用于推导普通人群和重症监护人群中房颤的有意义的临床表型:方法:我们的方法采用概率机器学习方法--生成地形图来识别具有相似特征的患者微簇。然后,利用沃德最小方差法在潜在空间中识别宏观簇区域(临床表型)。我们将其应用于两个大型队列数据库(UK-Biobank 和 MIMIC-IV),分别代表普通人群和重症监护人群:研究结果:所提出的方法显示了其推导出有意义的房颤临床表型的能力。由于其概率论基础,它可以提高患者分层的稳健性。该方法还能将复杂的高维数据可视化,从而加深人们对得出的表型及其关键特征的理解。利用我们的方法,我们识别并描述了不同患者群体中房颤的临床表型:我们的方法不受噪音影响,能发现隐藏的模式和亚群,并能阐明更具体的患者特征,有助于对患者进行更稳健的分层,这有助于针对每种表型量身定制预防和治疗方案。它还可应用于其他数据集,以推导出对临床有意义的其他病症的表型:本研究由DECIPHER项目(LJMU QR-PSF)和欧盟项目TARGET(10113624)资助。
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AI-based derivation of atrial fibrillation phenotypes in the general and critical care populations.

Background: Atrial fibrillation (AF) is the most common heart arrhythmia worldwide and is linked to a higher risk of mortality and morbidity. To predict AF and AF-related complications, clinical risk scores are commonly employed, but their predictive accuracy is generally limited, given the inherent complexity and heterogeneity of patients with AF. By classifying different presentations of AF into coherent and manageable clinical phenotypes, the development of tailored prevention and treatment strategies can be facilitated. In this study, we propose an artificial intelligence (AI)-based methodology to derive meaningful clinical phenotypes of AF in the general and critical care populations.

Methods: Our approach employs generative topographic mapping, a probabilistic machine learning method, to identify micro-clusters of patients with similar characteristics. It then identifies macro-cluster regions (clinical phenotypes) in the latent space using Ward's minimum variance method. We applied it to two large cohort databases (UK-Biobank and MIMIC-IV) representing general and critical care populations.

Findings: The proposed methodology showed its ability to derive meaningful clinical phenotypes of AF. Because of its probabilistic foundations, it can enhance the robustness of patient stratification. It also produced interpretable visualisation of complex high-dimensional data, enhancing understanding of the derived phenotypes and their key characteristics. Using our methodology, we identified and characterised clinical phenotypes of AF across diverse patient populations.

Interpretation: Our methodology is robust to noise, can uncover hidden patterns and subgroups, and can elucidate more specific patient profiles, contributing to more robust patient stratification, which could facilitate the tailoring of prevention and treatment programs specific to each phenotype. It can also be applied to other datasets to derive clinically meaningful phenotypes of other conditions.

Funding: This study was funded by the DECIPHER project (LJMU QR-PSF) and the EU project TARGET (10113624).

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来源期刊
EBioMedicine
EBioMedicine Biochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
17.70
自引率
0.90%
发文量
579
审稿时长
5 weeks
期刊介绍: eBioMedicine is a comprehensive biomedical research journal that covers a wide range of studies that are relevant to human health. Our focus is on original research that explores the fundamental factors influencing human health and disease, including the discovery of new therapeutic targets and treatments, the identification of biomarkers and diagnostic tools, and the investigation and modification of disease pathways and mechanisms. We welcome studies from any biomedical discipline that contribute to our understanding of disease and aim to improve human health.
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