Agarwal Karvi, Agrawal Saurabh, Begum Naila, Jindal Sonal
Department of Microbiology, Lala Lajpat Rai Memorial Medical College (LLRMMC), Meerut, IND.
Department of Surgery, Lala Lajpat Rai Memorial Medical College (LLRMMC), Meerut, IND.
Cureus. 2023 Jul 6;15(7):e41484. doi: 10.7759/cureus.41484. eCollection 2023 Jul.
Introduction Non-fermenting Gram-negative bacilli (NFGNB) are emerging superbugs of bloodstream infections (BSI), causing increased mortality in hospitalized patients. NFGNB are challenging to identify using conventional identification techniques. Hence, automation is beneficial for accurate and fast diagnosis; it also facilitates rapid treatment and recovery of patients. This study aims to isolate/identify NFGNB from BSI and determine its antimicrobial susceptibility pattern. Material and methods This study was conducted in the Department of Microbiology, LLRMMC, Meerut, for a period of six months (June to November 2022). The samples were processed using automated blood culture (BD BACTEC) and an identification/sensitivity testing system (BD Phoenix). Results Out of 1340 blood cultures, 347 (25.7%) were flagged positive for microbial growth. A total of 103 (7.6%) NFGNB were isolated, showing their strong association with BSI. The NFGNB isolates were 23 (22.3%), 19 (18.4%), spp. 19 (18.4%), 17 (16.5%), 5 (4.8%), sp. 4 (3.8%), 3 (2.9%), 3 (2.9%), 2 (1.9%), 2 (1.9%), 2 (1.9%), 2 (1.9%), 1 (0.9%), and 1 (0.9%). Conclusions Automation helps in the prompt reporting of NFGNB and their antibiogram pattern by microbiology laboratories, facilitating the early and accurate management of patients with BSI.
引言 非发酵革兰氏阴性杆菌(NFGNB)是血流感染(BSI)中正在出现的超级细菌,导致住院患者死亡率增加。使用传统鉴定技术鉴定NFGNB具有挑战性。因此,自动化有助于准确快速诊断;它还促进患者的快速治疗和康复。本研究旨在从BSI中分离/鉴定NFGNB并确定其抗菌药敏模式。材料与方法 本研究在密鲁特LLRMMC微生物学系进行,为期六个月(2022年6月至11月)。样本使用自动化血培养(BD BACTEC)和鉴定/药敏测试系统(BD Phoenix)进行处理。结果 在1340份血培养中,347份(25.7%)微生物生长标记为阳性。共分离出103份(7.6%)NFGNB,显示它们与BSI有很强的关联。NFGNB分离株分别为嗜麦芽窄食单胞菌23株(22.3%)、鲍曼不动杆菌19株(18.4%)、洋葱伯克霍尔德菌19株(18.4%)、铜绿假单胞菌17株(16.5%)、嗜水气单胞菌5株(4.8%)、恶臭假单胞菌4株(3.8%)、产吲哚金黄杆菌3株(2.9%)、溶血不动杆菌3株(2.9%)、洛菲不动杆菌2株(1.9%)、食酸丛毛单胞菌2株(1.9%)、栖稻假单胞菌2株(1.9%)、嗜糖假单胞菌2株(1.9%)、施氏假单胞菌1株(0.9%)和嗜麦芽寡养单胞菌1株(0.9%)。结论 自动化有助于微生物实验室快速报告NFGNB及其抗菌谱模式,促进BSI患者的早期准确管理。