Documentdetail
ID kaart

oai:pubmedcentral.nih.gov:1105...

Onderwerp
Research
Auteur
Kahsay, Tsgabu Gebrehiwot, Gebrecherkos Teame Gebreyohannes, Gebreselema Tilahun, Mulugeta Gessese, Ataklti Kahsay, Amlisha
Langue
en
Editor

BioMed Central

Categorie

BMC Microbiology

Jaar

2024

vermelding datum

11-06-2024

Trefwoorden
tigray utis-causing prevalence patterns identified isolates hiv utis agar resistant bacterial patients using hospital
Metriek

Beschrijving

BACKGROUND: Urinary tract infections, a prevalent global infectious disease, are clinical issues not well studied in HIV-positive individuals.

UTIs have become a global drug resistance issue, but the prevalence and antibiotic susceptibility patterns of UTI-causing bacteria among HIV patients in Tigray, Ethiopia, are poorly understood.

This study aims to identify the prevalence of UTI-causing bacteria, their antibiotic susceptibility patterns, and associated risk factors in HIV patients attending ART clinics at Mekelle General Hospital and Ayder Comprehensive Specialized Hospital in Tigray, Northern Ethiopia.

METHOD: Clean-catch midstream urine samples (10–15 mL) were collected from HIV patients who are attending ART clinics at Mekelle General Hospital and Ayder Comprehensive Specialized Hospital.

Samples were analyzed based on standard microbiological protocols using cysteine-lactose electrolyte deficient (CLED) agar.

Pure colonies of bacterial isolates were obtained by sub-culturing into Mac-Conkey, Manitol Salt agar and blood agar plates.

The bacterial isolates were then identified using macroscopic, microscopic, biochemical, and Gram staining methods.

Gram-negative bacteria were identified using biochemical tests like triple sugar iron agar, Simon’s citrate agar, lysine iron agar, urea, motility test, and indol test, whereas Gram-positive isolates were identified using catalase and coagulase tests.

The Kirby-Bauer disk diffusion technique was used to analyze the antimicrobial susceptibility pattern of bacterial isolates.

Data was analyzed using SPSS version 25.0.

RESULTS: Among the 224 patients, 28 (12.5%) of them had been infected by UTIs-causing bacteria.

E. coli was the dominant bacterium (16 (57%)) followed by K. pneumoniae (4 (14%)), and S. aureus (3 (11%)).

Of the total bacterial isolates, 22 (78.6%) of them developed multi-drug resistance.

All Gram-positive (100%) and 75% of Gram-negative bacterial isolates were found to be resistant to two or more drugs.

Patients with a history of UTIs, and with CD(4) count < 200 cells/ mm(3), were more likely to have significant bacteriuria.

Compared to male patients, female patients were more affected by the UTIs-causing bacteria.

More than 93% of the UTIs-causing bacterial isolates were susceptible to nitrofurantoin, ceftriaxone, ciprofloxacin, and gentamycin; whereas they are highly resistant to ampicillin (96%), cotrimoxazole (82%) and tetracycline (71%).

CONCLUSIONS: Most of the bacterial isolates were highly resistant to ampicillin, cotrimoxazole, and tetracycline.

Female patients were more affected by the UTIs causing bacteria.

The highest prevalence (12.5%) of UTIs in HIV patients needs special attention for better management and monitoring.

Previous UTI history and immune suppression are predictors of UTIs, highlighting the need for intervention measures involving molecular studies to identify resistant bacteria genes and promote patient immune reconstitution.

SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s12866-024-03297-2.

Kahsay, Tsgabu,Gebrehiwot, Gebrecherkos Teame,Gebreyohannes, Gebreselema,Tilahun, Mulugeta,Gessese, Ataklti,Kahsay, Amlisha, 2024, Antimicrobial susceptibility patterns of urinary tract infections causing bacterial isolates and associated risk factors among HIV patients in Tigray, Northern Ethiopia, BioMed Central

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