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医院内微生物组的变异性受可达性和临床活动的驱动。

Intra-hospital microbiome variability is driven by accessibility and clinical activities.

作者信息

Chibwe Kaseba, Sundararaju Sathyavathi, Zhang Lin, Tsui Clement, Tang Patrick, Ling Fangqiong

机构信息

Department of Energy, Environmental and Chemical Engineering, Washington University in St. Louis, St. Louis, Missouri, USA.

Department of Pathology, Sidra Medicine, Doha, Qatar.

出版信息

Microbiol Spectr. 2024 Aug 6;12(8):e0029624. doi: 10.1128/spectrum.00296-24. Epub 2024 Jun 28.

Abstract

UNLABELLED

The hospital environmental microbiome, which can affect patients' and healthcare workers' health, is highly variable and the drivers of this variability are not well understood. In this study, we collected 37 surface samples from the neonatal intensive care unit (NICU) in an inpatient hospital before and after the operation began. Additionally, healthcare workers collected 160 surface samples from five additional areas of the hospital. All samples were analyzed using 16S rRNA gene amplicon sequencing, and the samples collected by healthcare workers were cultured. The NICU samples exhibited similar alpha and beta diversities before and after opening, which indicated that the microbiome there was stable over time. Conversely, the diversities of samples taken after opening varied widely by area. Principal coordinate analysis (PCoA) showed the samples clustered into two distinct groups: high alpha diversity [the pediatric intensive care unit (PICU), pathology lab, and microbiology lab] and low alpha diversity [the NICU, pediatric surgery ward, and infection prevention and control (IPAC) office]. Least absolute shrinkage and selection operator (LASSO) classification models identified 156 informative amplicon sequence variants (ASVs) for predicting the sample's area of origin. The testing accuracy ranged from 86.37% to 100%, which outperformed linear and radial support vector machine (SVM) and random forest models. ASVs of genera that contain emerging pathogens were identified in these models. Culture experiments had identified viable species among the samples, including potential antibiotic-resistant bacteria. Though area type differences were not noted in the culture data, the prevalences and relative abundances of genera detected positively correlated with 16S sequencing data. This study brings to light the microbial community temporal and spatial variation within the hospital and the importance of pathogenic and commensal bacteria to understanding dispersal patterns for infection control.

IMPORTANCE

We sampled surface samples from a newly built inpatient hospital in multiple areas, including areas accessed by only healthcare workers. Our analysis of the neonatal intensive care unit (NICU) showed that the microbiome was stable before and after the operation began, possibly due to access restrictions. Of the high-touch samples taken after opening, areas with high diversity had more potential external seeds (long-term patients and clinical samples), and areas with low diversity and had fewer (short-term or newborn patients). Classification models performed at high accuracy and identified biomarkers that could be used for more targeted surveillance and infection control. Though culturing data yielded viability and antibiotic-resistance information, it disproportionately detected the presence of genera relative to 16S data. This difference reinforces the utility of 16S sequencing in profiling hospital microbiomes. By examining the microbiome over time and in multiple areas, we identified potential drivers of the microbial variation within a hospital.

摘要

未加标注

医院环境微生物群会影响患者和医护人员的健康,其变化很大,且这种变化的驱动因素尚未得到很好的理解。在本研究中,我们在一家住院医院的新生儿重症监护病房(NICU)手术开始前后收集了37个表面样本。此外,医护人员还从医院的另外五个区域收集了160个表面样本。所有样本均使用16S rRNA基因扩增子测序进行分析,医护人员收集的样本进行了培养。NICU样本在开放前后表现出相似的α和β多样性,这表明那里的微生物群随时间推移是稳定的。相反,开放后采集的样本多样性因区域而异。主坐标分析(PCoA)显示样本聚为两个不同的组:高α多样性组[儿科重症监护病房(PICU)、病理实验室和微生物实验室]和低α多样性组[NICU、小儿外科病房和感染预防与控制(IPAC)办公室]。最小绝对收缩和选择算子(LASSO)分类模型识别出156个信息性扩增子序列变体(ASV),用于预测样本的来源区域。测试准确率在86.37%至100%之间,优于线性和径向支持向量机(SVM)以及随机森林模型。在这些模型中识别出了包含新兴病原体的属的ASV。培养实验在样本中鉴定出了活的物种,包括潜在的耐抗生素细菌。尽管在培养数据中未注意到区域类型差异,但检测到的属的患病率和相对丰度与16S测序数据呈正相关。本研究揭示了医院内微生物群落的时空变化以及致病和共生细菌对于理解感染控制传播模式的重要性。

重要性

我们在一家新建的住院医院的多个区域采集了表面样本,包括只有医护人员能进入的区域。我们对新生儿重症监护病房(NICU)的分析表明,手术开始前后微生物群是稳定的,这可能是由于出入限制。在开放后采集的高接触样本中,多样性高的区域有更多潜在的外部来源(长期患者和临床样本),而多样性低的区域则较少(短期或新生儿患者)。分类模型的准确率很高,并识别出了可用于更有针对性监测和感染控制的生物标志物。尽管培养数据提供了生存能力和抗生素抗性信息,但相对于16S数据,它对属的存在检测存在偏差。这种差异强化了16S测序在分析医院微生物群方面的实用性。通过在不同时间和多个区域检查微生物群,我们确定了医院内微生物变化的潜在驱动因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5007/11302010/bce0828fe732/spectrum.00296-24.f001.jpg

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