Computing and Global Security Directorates, Lawrence Livermore National Laboratory, Livermore, CA, USA.
Physical and Life Sciences Directorate, Lawrence Livermore National Laboratory, Livermore, CA, USA.
Sci Rep. 2022 Aug 15;12(1):13816. doi: 10.1038/s41598-022-16170-x.
Battlefield injury management requires specialized care, and wound infection is a frequent complication. Challenges related to characterizing relevant pathogens further complicates treatment. Applying metagenomics to wounds offers a comprehensive path toward assessing microbial genomic fingerprints and could indicate prognostic variables for future decision support tools. Wound specimens from combat-injured U.S. service members, obtained during surgical debridements before delayed wound closure, were subjected to whole metagenome analysis and targeted enrichment of antimicrobial resistance genes. Results did not indicate a singular, common microbial metagenomic profile for wound failure, instead reflecting a complex microenvironment with varying bioburden diversity across outcomes. Genus-level Pseudomonas detection was associated with wound failure at all surgeries. A logistic regression model was fit to the presence and absence of antimicrobial resistance classes to assess associations with nosocomial pathogens. A. baumannii detection was associated with detection of genomic signatures for resistance to trimethoprim, aminoglycosides, bacitracin, and polymyxin. Machine learning classifiers were applied to identify wound and microbial variables associated with outcome. Feature importance rankings averaged across models indicated the variables with the largest effects on predicting wound outcome, including an increase in P. putida sequence reads. These results describe the microbial genomic determinants in combat wound bioburden and demonstrate metagenomic investigation as a comprehensive tool for providing information toward aiding treatment of combat-related injuries.
战场损伤管理需要专业护理,伤口感染是常见的并发症。与特征相关病原体相关的挑战进一步使治疗复杂化。将宏基因组学应用于伤口提供了一种全面评估微生物基因组指纹的方法,并可能为未来的决策支持工具指示预后变量。在延迟伤口闭合前的手术清创过程中,从美国现役军人的战场损伤伤口中获得了伤口标本,对其进行了全宏基因组分析和抗生素耐药基因的靶向富集。结果并未表明伤口失败存在单一的、常见的微生物宏基因组特征,而是反映了一个复杂的微环境,不同结局的生物负荷多样性不同。在所有手术中,假单胞菌属的检测与伤口失败相关。拟合了存在和不存在抗生素耐药类别的逻辑回归模型,以评估与医院获得性病原体的关联。鲍曼不动杆菌的检测与检测到对甲氧苄啶、氨基糖苷类、杆菌肽和多粘菌素的耐药基因组特征相关。应用机器学习分类器来识别与结果相关的伤口和微生物变量。跨模型平均的特征重要性排名表明,对预测伤口结果影响最大的变量包括 P. putida 序列读数的增加。这些结果描述了战场伤口生物负荷中的微生物基因组决定因素,并证明宏基因组学研究是提供信息以帮助治疗与战斗相关损伤的综合工具。