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Atika M. O. Swar

Atika M. O. Swar

Ahfad University for Women
Sudan

Title: Surveillance Findings of Surgical Site Infections among Pediatric Surgeries at a Specialized Teaching Hospital, Sudan 2016

Biography

Biography: Atika M. O. Swar

Abstract

Surveillance for SSI is an important element of IPC programs. This research aimed at studying SSI among pediatric surgeries by active direct surveillance using NNIS for prediction.

 

A nested case control study conducted following establishing surveillance at the department of pediatric surgery. Case definition and tools were modified from the CDC - SSI surveillance guidelines. Patients were followed throughout admission period and post discharge for one month using phone calls and follow up visits. The incidence rates of SSI were measured and the associated factors were investigated.

During the 3 month period of the study, 191 surgical patients were admitted and (83%) have undergone surgeries and accordingly, the cumulative incidence rate was (16.4%). Among the components of NNIS risk index, contaminated surgical wounds and the ASA classification were significantly associated with the highest rate of infection with (P value of 0.01- 0.006) respectively. Cumulatively, the NNIS risk index was also associated with SSI and it was a good tool for prediction of SSI (P value: 0.02). Major surgical operations constituted the highest rates of infections and it was found that patients who stayed for 3-5 days post operatively were at higher risk of developing SSI. Using logistic regression for multivariate analysis, the test was highly significant and indicated that only sex and duration of post operative stay were having a great effect on developing SSI.

SSI rate was high and active direct surveillance with post discharge follow up was a feasible tool for estimating the burden and investigating the associated risk factors. The NNIS risk index was useful for prediction of SSI. It is important to integrate admission follow up with post discharge follow up SSI surveillance

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