利用元基因组新一代测序技术探索重症 COVID-19 的病原体诊断和预后因素:一项回顾性研究。

IF 2 4区 医学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Weizhong Zeng, Yanchao Liang, Xiaoyuan He, Fangwei Chen, Jiali Xiong, Zhenhua Wen, Liang Tang, Xun Chen, Juan Zhang
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引用次数: 0

摘要

背景:本研究旨在利用元基因组下一代测序技术(mNGS)确定病原体和预测重症 COVID-19 结果的因素:本研究旨在利用元基因组下一代测序(mNGS)技术,确定可预测重症COVID-19结局的病原体和因素:我们回顾性分析了我院在2022年12月至2023年3月期间收治的56例重症COVID-19患者的数据。我们分析了通过 mNGS 和传统微生物学检测发现的病原体类型和菌株,并收集了患者的一般信息:mNGS 的检出率为 90.48%,显著高于常规检测的 71.43%(P=0.026)。两种方法共检测出 196 株菌株,mNGS 的检测率为 70.92%,明显高于常规检测的 49.49%(P=0.000)。根据临床结果,56 名患者被分为存活组(33 例)和死亡组(23 例)。与死亡组相比,生存组的年龄、mNGS 检测到的病原体数量、传统检测到的病原体数量、APACHE-II 评分、SOFA 评分、高敏肌钙蛋白、肌酸激酶-MB 亚型和乳酸脱氢酶均明显低于死亡组(PConclusions:使用 mNGS 技术可显著提高 COVID-19 重症病例的病原体检测率,并具有预测临床结果的可靠能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the pathogen diagnosis and prognostic factors of severe COVID-19 using metagenomic next-generation sequencing: A retrospective study.

Background: This study aimed to identify pathogens and factors that predict the outcome of severe COVID-19 by utilizing metagenomic next-generation sequencing (mNGS) technology.

Methods: We retrospectively analyzed data from 56 severe COVID-19 patients admitted to our hospital between December 2022 and March 2023. We analyzed the pathogen types and strains detected through mNGS and conventional microbiological testing and collected general patient information.

Results: In this study, 42 pathogens were detected using mNGS and conventional microbiological testing. mNGS had a significantly higher detection rate of 90.48% compared to 71.43% for conventional testing (P=0.026). A total of 196 strains were detected using both methods, with a significantly higher detection rate of 70.92% for mNGS compared to 49.49% for conventional testing (P=0.000). The 56 patients were divided into a survival group (33 cases) and a death group (23 cases) based on clinical outcomes. The survival group had significantly lower age, number of pathogens detected by mNGS, number of pathogens detected by conventional testing, APACHE-II score, SOFA score, high-sensitivity troponin, creatine kinase-MB subtype, and lactate dehydrogenase compared to the death group (P<0.05). Multivariate logistic regression analysis showed that these factors were risk factors for mortality in severe COVID-19 patients (P<0.05). In contrast, ROC curve analysis revealed that these factors had diagnostic values for mortality, with AUC values ranging from 0.657 to 0.963. The combined diagnosis of these indicators had an AUC of 0.924.

Conclusions: The use of mNGS technology can significantly enhance the detection of pathogens in severe cases of COVID-19 and also has a solid ability to predict clinical outcomes.

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来源期刊
Journal of Medical Biochemistry
Journal of Medical Biochemistry BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
3.00
自引率
12.00%
发文量
60
审稿时长
>12 weeks
期刊介绍: The JOURNAL OF MEDICAL BIOCHEMISTRY (J MED BIOCHEM) is the official journal of the Society of Medical Biochemists of Serbia with international peer-review. Papers are independently reviewed by at least two reviewers selected by the Editors as Blind Peer Reviews. The Journal of Medical Biochemistry is published quarterly. The Journal publishes original scientific and specialized articles on all aspects of clinical and medical biochemistry, molecular medicine, clinical hematology and coagulation, clinical immunology and autoimmunity, clinical microbiology, virology, clinical genomics and molecular biology, genetic epidemiology, drug measurement, evaluation of diagnostic markers, new reagents and laboratory equipment, reference materials and methods, reference values, laboratory organization, automation, quality control, clinical metrology, all related scientific disciplines where chemistry, biochemistry, molecular biology and immunochemistry deal with the study of normal and pathologic processes in human beings.
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