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Stratification of hospitalized COVID-19 patients into clinical severity progression groups by immuno-phenotyping and machine learning.基于免疫表型和机器学习对住院 COVID-19 患者进行临床严重程度进展分组。
Nat Commun. 2022 Feb 17;13(1):915. doi: 10.1038/s41467-022-28621-0.
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Deep phenotyping of Alzheimer's disease leveraging electronic medical records identifies sex-specific clinical associations.利用电子病历对阿尔茨海默病进行深度表型分析,确定了性别特异性的临床关联。
Nat Commun. 2022 Feb 3;13(1):675. doi: 10.1038/s41467-022-28273-0.
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The efficacy and effectiveness of the COVID-19 vaccines in reducing infection, severity, hospitalization, and mortality: a systematic review.COVID-19 疫苗在减少感染、严重程度、住院和死亡方面的功效和效果:系统评价。
Hum Vaccin Immunother. 2022 Dec 31;18(1):2027160. doi: 10.1080/21645515.2022.2027160. Epub 2022 Feb 3.
5
Covid-19 Vaccine Effectiveness in New York State.纽约州的新冠疫苗有效性。
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6
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10
Phe2vec: Automated disease phenotyping based on unsupervised embeddings from electronic health records.Phe2vec:基于电子健康记录的无监督嵌入进行自动疾病表型分析。
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纽约三种主要病毒变异株住院 COVID-19 患者的纵向动态临床表型。

Longitudinal dynamic clinical phenotypes of in-hospital COVID-19 patients across three dominant virus variants in New York.

机构信息

Institute of Health Systems Science, Feinstein Institutes for Medical Research, Northwell Health, Manhasset, NY 11030; Institute of Bioelectronic Medicine, Feinstein Institutes for Medical Research, Northwell Health, Manhasset, NY 11030; Donald and Barbara Zucker School of Medicine at Hofstra/Northwell, Northwell Health, Hempstead, NY 11549.

Institute of Health Systems Science, Feinstein Institutes for Medical Research, Northwell Health, Manhasset, NY 11030; Institute of Bioelectronic Medicine, Feinstein Institutes for Medical Research, Northwell Health, Manhasset, NY 11030.

出版信息

Int J Med Inform. 2024 Jan;181:105286. doi: 10.1016/j.ijmedinf.2023.105286. Epub 2023 Nov 8.

DOI:10.1016/j.ijmedinf.2023.105286
PMID:37956643
原文链接:
https://pmc.ncbi.nlm.nih.gov/articles/PMC10843635/
Abstract

BACKGROUND

COVID-19 is a challenging disease to characterize given its wide-ranging heterogeneous symptomatology. Several studies have attempted to extract clinical phenotypes but often relied on data from small patient cohorts, usually limited to only one viral variant and utilizing a static snapshot of patient data.

OBJECTIVE

This study aimed to identify clinical phenotypes of hospitalized COVID-19 patients and investigate their longitudinal dynamics throughout the pandemic, with the goal to relate these phenotypes to clinical outcomes and treatment strategies.

METHODS

We utilized routinely collected demographic and clinical data throughout the hospitalization of 38,077 patients admitted between 3/2020 to 5/2022, in 12 New York hospitals. Uniform Manifold Approximation and Projection and agglomerative hierarchical clustering were used to derive the clusters, followed by exploratory data analysis to compare the prevalence of comorbidities and treatments per cluster.

RESULTS

4 distinct clinical phenotypes remained robust in multi-site validation and were associated with different mortality rates. The temporal progression of these phenotypes throughout the COVID-19 pandemic demonstrated increased variability across the waves of the three dominant viral variants (alpha, delta, omicron). Longitudinal analysis evaluating changes in clinical phenotypes of each patient throughout the course of a 4-week hospital stay exemplified the dynamic nature of the disease progression. Factors such as sex, race/ethnicity and specific treatment modalities revealed significant and clinically relevant differences between the observed phenotypes.

CONCLUSIONS

Our proposed methodology has the potential of enabling clinicians and policy makers to draw evidence-based conclusions for guiding treatment modalities in a dynamic fashion.

摘要

背景

由于 COVID-19 症状广泛且异质,因此很难对其进行特征描述。许多研究试图提取临床表型,但通常依赖于来自小患者队列的数据,这些数据通常仅局限于一种病毒变体,并利用患者数据的静态快照。

目的

本研究旨在确定住院 COVID-19 患者的临床表型,并研究其在整个大流行期间的纵向动态变化,目标是将这些表型与临床结局和治疗策略联系起来。

方法

我们在 12 家纽约医院中,利用在 2020 年 3 月至 2022 年 5 月期间住院的 38077 名患者的常规收集的人口统计学和临床数据。使用统一流形逼近和投影以及凝聚层次聚类来推导聚类,然后进行探索性数据分析以比较每个聚类中合并症和治疗方法的患病率。

结果

在多地点验证中,4 种不同的临床表型仍然稳健,与不同的死亡率相关。这些表型在 COVID-19 大流行期间的时间进程表明,在三种主要病毒变体(阿尔法、德尔塔、奥密克戎)的波次中,其变异性增加。对每个患者在 4 周住院期间的临床表型变化进行的纵向分析说明了疾病进展的动态性质。性别、种族/民族和特定治疗方式等因素揭示了观察到的表型之间存在显著且具有临床意义的差异。

结论

我们提出的方法有可能使临床医生和决策者能够以动态的方式得出循证结论,以指导治疗方式。