Suppr超能文献

机器学习方法可识别出与住院、无法恢复活动和 COVID-19 症状持续时间延长相关的不同早期症状群表型。

A machine learning approach identifies distinct early-symptom cluster phenotypes which correlate with hospitalization, failure to return to activities, and prolonged COVID-19 symptoms.

机构信息

Infectious Disease Clinical Research Program, Department of Preventive Medicine and Biostatistics, Uniformed Services University of the Health Sciences, Bethesda, Maryland, United States of America.

Henry M. Jackson Foundation for the Advancement of Military Medicine, Inc., Bethesda, Maryland, United States of America.

出版信息

PLoS One. 2023 Feb 9;18(2):e0281272. doi: 10.1371/journal.pone.0281272. eCollection 2023.

Abstract

BACKGROUND

Accurate COVID-19 prognosis is a critical aspect of acute and long-term clinical management. We identified discrete clusters of early stage-symptoms which may delineate groups with distinct disease severity phenotypes, including risk of developing long-term symptoms and associated inflammatory profiles.

METHODS

1,273 SARS-CoV-2 positive U.S. Military Health System beneficiaries with quantitative symptom scores (FLU-PRO Plus) were included in this analysis. We employed machine-learning approaches to identify symptom clusters and compared risk of hospitalization, long-term symptoms, as well as peak CRP and IL-6 concentrations.

RESULTS

We identified three distinct clusters of participants based on their FLU-PRO Plus symptoms: cluster 1 ("Nasal cluster") is highly correlated with reporting runny/stuffy nose and sneezing, cluster 2 ("Sensory cluster") is highly correlated with loss of smell or taste, and cluster 3 ("Respiratory/Systemic cluster") is highly correlated with the respiratory (cough, trouble breathing, among others) and systemic (body aches, chills, among others) domain symptoms. Participants in the Respiratory/Systemic cluster were twice as likely as those in the Nasal cluster to have been hospitalized, and 1.5 times as likely to report that they had not returned-to-activities, which remained significant after controlling for confounding covariates (P < 0.01). Respiratory/Systemic and Sensory clusters were more likely to have symptoms at six-months post-symptom-onset (P = 0.03). We observed higher peak CRP and IL-6 in the Respiratory/Systemic cluster (P < 0.01).

CONCLUSIONS

We identified early symptom profiles potentially associated with hospitalization, return-to-activities, long-term symptoms, and inflammatory profiles. These findings may assist in patient prognosis, including prediction of long COVID risk.

摘要

背景

准确的 COVID-19 预后是急性和长期临床管理的关键方面。我们确定了早期症状的离散集群,这些集群可能划定具有不同疾病严重程度表型的群体,包括发展为长期症状和相关炎症特征的风险。

方法

本分析纳入了 1273 名美国军事医疗系统中具有定量症状评分(FLU-PRO Plus)的 SARS-CoV-2 阳性患者。我们采用机器学习方法来识别症状集群,并比较了住院、长期症状以及峰值 CRP 和 IL-6 浓度的风险。

结果

我们根据他们的 FLU-PRO Plus 症状确定了三个不同的参与者集群:集群 1(“鼻腔集群”)与报告流鼻涕/鼻塞和打喷嚏高度相关,集群 2(“感觉集群”)与嗅觉或味觉丧失高度相关,集群 3(“呼吸/全身集群”)与呼吸(咳嗽、呼吸困难等)和全身(身体疼痛、寒战等)症状高度相关。与鼻腔集群相比,呼吸/全身集群的参与者住院的可能性高两倍,并且报告活动未恢复的可能性高 1.5 倍,这在控制混杂因素后仍然显著(P < 0.01)。呼吸/全身和感觉集群在症状出现后六个月更有可能出现症状(P = 0.03)。我们观察到呼吸/全身集群中的峰值 CRP 和 IL-6 更高(P < 0.01)。

结论

我们确定了可能与住院、恢复活动、长期症状和炎症特征相关的早期症状特征。这些发现可能有助于患者预后,包括预测长 COVID 风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7294/9910657/fb8d9695581e/pone.0281272.g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验