A survey of out patient department prescriptions of selected departments of a tertiary care hospital on treatment practices of infections

Sharan Shyam,Sanjay Jaiswal, Arun Jayabalan, S PS Shergill

Muller Journal of Medical Sciences and Research(2021)

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摘要
Introduction: India is the largest consumer of antibiotics in the world. Antimicrobial agents (AMA) are also the most misused and excessively prescribed therapeutic agents. Objectives: A survey of output patient department (OPD) prescription chits of a tertiary care government hospital was carried out to describe the current treatment practices in the management of infections. Subjects and Methods: Thousand and five hundred OPD prescriptions were analyzed for the prevalence of antimicrobials prescribed by each specialist OPD and the systemic infections which were treated by using these AMA. The data of antibiotic susceptibility tests for the year 2018 were obtained for the analysis on current treatment practices of hospital infections. Results: About 24.4% of all 1500 OPD prescriptions encountered from the seven departments of the hospital contained an antibacterial. The highest proportion of AMA was seen in the dental OPD (66.6%) followed by ENT and surgical OPD (36.8% and 36%, respectively) and the least AMA were prescribed in gynecology and obstetrical OPD (11%). Out of the 367 AMA prescriptions, 92 prescriptions had 2 or more antibacterials. About 54.7% of these AMA prescribed were generic oral drugs and only two prescription counts were of injectable AMA. 62% of the AMA prescriptions were for the duration of use between 5 and 10 days. 53.4% of the AMA prescription counts belonged to the ACCESS group of antibiotics, 44.1% to the WATCH group and 2.5% to the RESERVE group as classified by WHO. Conclusions: The present study emphasizes the need to re-formulate local guidelines of antimicrobial use in OPD patients based on hospital antibiotic susceptibility tests.
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关键词
antibacterials,antibiotic susceptibility tests,aware categories,output patient department prescriptions
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