肠道微生物群是 COVID-19 严重程度的早期预测因子。

IF 3.7 2区 生物学 Q2 MICROBIOLOGY mSphere Pub Date : 2024-10-29 Epub Date: 2024-09-19 DOI:10.1128/msphere.00181-24
Marco Fabbrini, Federica D'Amico, Bernardina T F van der Gun, Monica Barone, Gabriele Conti, Sara Roggiani, Karin I Wold, María F Vincenti-Gonzalez, Gerolf C de Boer, Alida C M Veloo, Margriet van der Meer, Elda Righi, Elisa Gentilotti, Anna Górska, Fulvia Mazzaferri, Lorenza Lambertenghi, Massimo Mirandola, Maria Mongardi, Evelina Tacconelli, Silvia Turroni, Patrizia Brigidi, Adriana Tami
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引用次数: 0

摘要

一些研究报告了 COVID-19 期间人类肠道微生物群(GM)的变化。为了评估肠道微生物群作为 COVID-19 发病早期预测因子的潜在作用,我们分析了 315 名 COVID-19 患者的肠道微生物样本,这些患者的疾病严重程度各不相同。我们观察到,随着疾病严重程度的增加,微生物多样性和组成也发生了重大变化,如粪杆菌和反刍球菌等短链脂肪酸生产者减少,厌氧球菌和弯曲杆菌等致病菌增多。值得注意的是,我们开发了一种多类机器学习分类器,特别是卷积神经网络,它在根据发病时的转基因成分预测 COVID-19 严重程度方面达到了 81.5% 的准确率。这一成果凸显了它在感染第一周作为有价值的早期生物标志物的潜力。这些发现为了解基因改造和 COVID-19 之间错综复杂的关系提供了前景广阔的见解,为在大流行期间优化患者分流和简化医疗保健提供了潜在的工具。这项研究强调了肠道微生物群(GM)组成作为 COVID-19 严重程度早期生物标志物的潜力。通过分析 315 名患者的 GM 样本,观察到微生物多样性与疾病严重程度之间存在显著相关性。值得注意的是,该研究开发了一种卷积神经网络分类器,根据发病时的转基因组成预测疾病严重程度的准确率达到了 81.5%。这些研究结果表明,转基因分析可以加强早期分流过程,为大流行期间优化患者管理提供了一种新方法。
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The gut microbiota as an early predictor of COVID-19 severity.

Several studies reported alterations of the human gut microbiota (GM) during COVID-19. To evaluate the potential role of the GM as an early predictor of COVID-19 at disease onset, we analyzed gut microbial samples of 315 COVID-19 patients that differed in disease severity. We observed significant variations in microbial diversity and composition associated with increasing disease severity, as the reduction of short-chain fatty acid producers such as Faecalibacterium and Ruminococcus, and the growth of pathobionts as Anaerococcus and Campylobacter. Notably, we developed a multi-class machine-learning classifier, specifically a convolutional neural network, which achieved an 81.5% accuracy rate in predicting COVID-19 severity based on GM composition at disease onset. This achievement highlights its potential as a valuable early biomarker during the first week of infection. These findings offer promising insights into the intricate relationship between GM and COVID-19, providing a potential tool for optimizing patient triage and streamlining healthcare during the pandemic.IMPORTANCEEfficient patient triage for COVID-19 is vital to manage healthcare resources effectively. This study underscores the potential of gut microbiota (GM) composition as an early biomarker for COVID-19 severity. By analyzing GM samples from 315 patients, significant correlations between microbial diversity and disease severity were observed. Notably, a convolutional neural network classifier was developed, achieving an 81.5% accuracy in predicting disease severity based on GM composition at disease onset. These findings suggest that GM profiling could enhance early triage processes, offering a novel approach to optimizing patient management during the pandemic.

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来源期刊
mSphere
mSphere Immunology and Microbiology-Microbiology
CiteScore
8.50
自引率
2.10%
发文量
192
审稿时长
11 weeks
期刊介绍: mSphere™ is a multi-disciplinary open-access journal that will focus on rapid publication of fundamental contributions to our understanding of microbiology. Its scope will reflect the immense range of fields within the microbial sciences, creating new opportunities for researchers to share findings that are transforming our understanding of human health and disease, ecosystems, neuroscience, agriculture, energy production, climate change, evolution, biogeochemical cycling, and food and drug production. Submissions will be encouraged of all high-quality work that makes fundamental contributions to our understanding of microbiology. mSphere™ will provide streamlined decisions, while carrying on ASM''s tradition for rigorous peer review.
期刊最新文献
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