Deciphering the microbial landscape of lower respiratory tract infections: insights from metagenomics and machine learning

Jiahuan Li, Anying Xiong, Junyi Wang, Xue Wu, Lingling Bai, Lei Zhang, Xiang He, Guoping Li
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Abstract

Lower respiratory tract infections represent prevalent ailments. Nonetheless, current comprehension of the microbial ecosystems within the lower respiratory tract remains incomplete and necessitates further comprehensive assessment. Leveraging the advancements in metagenomic next-generation sequencing (mNGS) technology alongside the emergence of machine learning, it is now viable to compare the attributes of lower respiratory tract microbial communities among patients across diverse age groups, diseases, and infection types.We collected bronchoalveolar lavage fluid samples from 138 patients diagnosed with lower respiratory tract infections and conducted mNGS to characterize the lung microbiota. Employing various machine learning algorithms, we investigated the correlation of key bacteria in patients with concurrent bronchiectasis and developed a predictive model for hospitalization duration based on these identified key bacteria.We observed variations in microbial communities across different age groups, diseases, and infection types. In the elderly group, Pseudomonas aeruginosa exhibited the highest relative abundance, followed by Corynebacterium striatum and Acinetobacter baumannii. Methylobacterium and Prevotella emerged as the dominant genera at the genus level in the younger group, while Mycobacterium tuberculosis and Haemophilus influenzae were prevalent species. Within the bronchiectasis group, dominant bacteria included Pseudomonas aeruginosa, Haemophilus influenzae, and Klebsiella pneumoniae. Significant differences in the presence of Pseudomonas phage JBD93 were noted between the bronchiectasis group and the control group. In the group with concomitant fungal infections, the most abundant genera were Acinetobacter and Pseudomonas, with Acinetobacter baumannii and Pseudomonas aeruginosa as the predominant species. Notable differences were observed in the presence of Human gammaherpesvirus 4, Human betaherpesvirus 5, Candida albicans, Aspergillus oryzae, and Aspergillus fumigatus between the group with concomitant fungal infections and the bacterial group. Machine learning algorithms were utilized to select bacteria and clinical indicators associated with hospitalization duration, confirming the excellent performance of bacteria in predicting hospitalization time.Our study provided a comprehensive description of the microbial characteristics among patients with lower respiratory tract infections, offering insights from various perspectives. Additionally, we investigated the advanced predictive capability of microbial community features in determining the hospitalization duration of these patients.
解密下呼吸道感染的微生物景观:元基因组学和机器学习的启示
下呼吸道感染是一种常见疾病。然而,目前对下呼吸道内微生物生态系统的了解仍不全面,需要进一步进行全面评估。利用元基因组下一代测序(mNGS)技术的进步和机器学习的出现,现在可以比较不同年龄组、疾病和感染类型患者的下呼吸道微生物群落属性。我们采用各种机器学习算法,研究了并发支气管扩张症患者中关键细菌的相关性,并根据这些确定的关键细菌建立了住院时间预测模型。在老年组中,铜绿假单胞菌的相对丰度最高,其次是纹状棒状杆菌和鲍曼不动杆菌。在年轻组中,甲基杆菌和普雷沃特菌是属一级的优势菌属,而结核分枝杆菌和流感嗜血杆菌则是流行菌种。在支气管扩张组中,主要细菌包括铜绿假单胞菌、流感嗜血杆菌和肺炎克雷伯菌。支气管扩张组与对照组在假单胞菌噬菌体 JBD93 的存在上存在显著差异。在伴有真菌感染的组中,最多的菌属是鲍曼不动杆菌和铜绿假单胞菌,其中鲍曼不动杆菌和铜绿假单胞菌是主要菌种。在伴有真菌感染的组别和细菌组别中,人类γ疱疹病毒 4、人类β疱疹病毒 5、白色念珠菌、米曲霉和烟曲霉的存在存在明显不同。我们的研究全面描述了下呼吸道感染患者的微生物特征,从不同角度提供了见解。此外,我们还研究了微生物群落特征在确定这些患者住院时间方面的高级预测能力。
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