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基于宏基因组下一代测序的肺炎下呼吸道病因学:一项回顾性研究。

Etiology of lower respiratory tract in pneumonia based on metagenomic next-generation sequencing: a retrospective study.

机构信息

Emergency Department, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

Emergency and Critical Care Center, Intensive Care Unit, Zhejiang Provincial People's Hospital (Affiliated People's Hospital), Hangzhou Medical College, Hangzhou, Zhejiang, China.

出版信息

Front Cell Infect Microbiol. 2024 Jan 9;13:1291980. doi: 10.3389/fcimb.2023.1291980. eCollection 2023.

Abstract

INTRODUCTION

Pneumonia are the leading cause of death worldwide, and antibiotic treatment remains fundamental. However, conventional sputum smears or cultures are still inefficient for obtaining pathogenic microorganisms.Metagenomic next-generation sequencing (mNGS) has shown great value in nucleic acid detection, however, the NGS results for lower respiratory tract microorganisms are still poorly studied.

METHODS

This study dealt with investigating the efficacy of mNGS in detecting pathogens in the lower respiratory tract of patients with pulmonary infections. A total of 112 patients admitted at the First Affiliated Hospital of Zhengzhou University between April 30, 2018, and June 30, 2020, were enrolled in this retrospective study. The bronchoalveolar lavage fluid (BALF) was obtained from lower respiratory tract from each patient. Routine methods (bacterial smear and culture) and mNGS were employed for the identification of pathogenic microorganisms in BALF.

RESULTS

The average patient age was 53.0 years, with 94.6% (106/112) obtaining pathogenic microorganism results. The total mNGS detection rate of pathogenic microorganisms significantly surpassed conventional methods (93.7% vs. 32.1%, P < 0.05). Notably, 75% of patients (84/112) were found to have bacteria by mNGS, but only 28.6% (32/112) were found to have bacteria by conventional approaches. The most commonly detected bacteria included (19.6%), (17.9%), (14.3%), (12.5%), (12.5%), and (11.6%). In 29.5% (33/112) of patients, fungi were identified using mNGS, including 23 cases of (20.5%), 18 of (16.1%), and 10 of (8.9%). However, only 7.1 % (8/112) of individuals were found to have fungi when conventional procedures were used. The mNGS detection rate of viruses was significantly higher than the conventional method rate (43.8% vs. 0.9%, P < 0.05). The most commonly detected viruses included Epstein-Barr virus (15.2%), cytomegalovirus (13.4%), circovirus (8.9%), human coronavirus (4.5%), and rhinovirus (4.5%). Only 29.4% (33/112) of patients were positive, whereas 5.4% (6/112) of patients were negative for both detection methods as shown by Kappa analysis, indicating poor consistency between the two methods (P = 0.340; Kappa analysis).

CONCLUSION

Significant benefits of mNGS have been shown in the detection of pathogenic microorganisms in patients with pulmonary infection. For those with suboptimal therapeutic responses, mNGS can provide an etiological basis, aiding in precise anti-infective treatment.

摘要

介绍

肺炎是全球范围内导致死亡的主要原因,抗生素治疗仍然是基础。然而,传统的痰涂片或培养仍然不能有效地获得致病微生物。宏基因组下一代测序(mNGS)在核酸检测方面显示出了巨大的价值,然而,对下呼吸道微生物的 NGS 结果研究仍不够充分。

方法

本研究旨在探讨 mNGS 在下呼吸道感染患者病原体检测中的作用。共纳入 2018 年 4 月 30 日至 2020 年 6 月 30 日在郑州大学第一附属医院住院的 112 例患者,采用回顾性研究方法。每位患者均从下呼吸道采集支气管肺泡灌洗液(BALF)。采用常规方法(细菌涂片和培养)和 mNGS 对 BALF 中的致病微生物进行鉴定。

结果

患者平均年龄为 53.0 岁,94.6%(106/112)获得了致病微生物结果。mNGS 对致病微生物的总检测率明显高于常规方法(93.7%比 32.1%,P<0.05)。值得注意的是,75%(84/112)的患者通过 mNGS 检测到细菌,但只有 28.6%(32/112)的患者通过常规方法检测到细菌。最常见的细菌包括 (19.6%)、 (17.9%)、 (14.3%)、 (12.5%)、 (12.5%)和 (11.6%)。通过 mNGS 鉴定出 29.5%(33/112)的患者有真菌,包括 23 例 (20.5%)、18 例 (16.1%)和 10 例 (8.9%)。然而,常规方法仅检测到 7.1%(8/112)的患者有真菌。mNGS 检测病毒的阳性率明显高于常规方法(43.8%比 0.9%,P<0.05)。最常见的病毒包括 Epstein-Barr 病毒(15.2%)、巨细胞病毒(13.4%)、圆环病毒(8.9%)、人冠状病毒(4.5%)和鼻病毒(4.5%)。仅 29.4%(33/112)的患者两种检测方法均阳性,5.4%(6/112)的患者两种检测方法均阴性,kappa 分析显示两种方法一致性差(P=0.340;kappa 分析)。

结论

mNGS 在检测肺部感染患者的致病微生物方面具有显著优势。对于治疗反应不佳的患者,mNGS 可以提供病因学依据,有助于进行精确的抗感染治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ee22/10803656/4e564e9effc2/fcimb-13-1291980-g001.jpg

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