Antimicrobial sensitivity pattern of children with cystic fibrosis in Bangladesh: a lesson from a specialized Sishu (Children) Hospital

Probir Kumar Sarkar,Nabila Akand, Sarabon Tahura,Md Kamruzzaman,Johora Akter, Khandakar Ashikur Zaman, Tanzila Farhana,Sathi Sultana Rima,Md Jahangir Alam, Md. Kamrul Hassan,Jannatul Fardous

Egyptian Pediatric Association Gazette(2022)

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摘要
Background Infection control in cystic fibrosis (CF) patients plays a crucial role in improving the survival of patients with CF. Antimicrobial sensitivity patterns in these patient groups in our country are currently lacking. Therefore, the purpose of the study was to evaluate the microbiological cultures and antimicrobial susceptibility pattern of pediatric CF patients. Method A total of 50 respiratory samples were prospectively collected from the period between February 2021 and October 2021. Sputum and oropharyngeal swabs were processed for culture and microbiological testing. Sample collection and evaluation were performed according to the Good Laboratory Practice guidelines (GLP). Informed written consent was ensured before participation. Statistical analysis was performed with SPSS v 26. Result The median age of the children was 30 months (6–120) months, with a male predominance (66% vs 34%). Single and two organisms were isolated in 72% ( n = 36) and 12% ( n = 6) of cases, respectively. During the study period, 36% of the patients harbored Pseudomonas aeruginosa , 18% harbored Klebsiella pneumoniae , and both Staphylococcus aureus and Escherichia coli were detected in 16% of cases. Levofloxacin was found to be the most active antibiotic agent with 100% susceptibility. In contrast, nearly all isolates were resistant to amoxicillin, erythromycin and rifampicin. Conclusion Levofloxacin is the most effective agent to treat CF patients. Active surveillance of the resistance pattern should always continue to be promoted.
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关键词
Cystic fibrosis,Neonate,Infants,Antibiotic resistance,Multidrug resistance,Susceptibility,Pseudomonas aeruginosa
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