Predicting Healthcare-associated Infections: are Point of Prevalence Surveys data useful?

Q2 Medicine
Marco Golfera, Fabrizio Toscano, Gabriele Cevenini, Maria F DE Marco, Barbara R Porchia, Andrea Serafini, Emma Ceriale, Daniele Lenzi, Gabriele Messina
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引用次数: 1

Abstract

Introduction: Since 2012, the European Centre for Disease Prevention and Control (ECDC) promotes a point prevalence survey (PPS) of HAIs in European acute care hospitals. Through a retrospective analysis of 2012, 2015 and 2017 PPS of HAIs performed in a tertiary academic hospital in Italy, we developed a model to predict the risk of HAI.

Methods: Following ECDC protocol we surveyed 1382 patients across three years. Bivariate logistic regression analyses were conducted to assess the relationship between HAI and several variables. Those statistically significant were included in a stepwise multiple regression model. The goodness of fit of the latter model was assessed with the Hosmer-Lemeshow test, ultimately constructing a probability curve to estimate the risk of developing HAIs.

Results: Three variables resulted statistically significant in the stepwise logistic regression model: length of stay (OR 1.03; 95% CI: 1.02-1.05), devices breaking the skin (i.e. peripheral or central vascular catheter, OR 4.38; 95% CI: 1.52-12.63), urinary catheter (OR 4.71; 95% CI: 2.78-7.98).

Conclusion: PPSs are a convenient and reliable source of data to develop HAIs prediction models. The differences found between our results and previously published studies suggest the need of developing hospital-specific databases and predictive models for HAIs.

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预测医疗保健相关感染:流行点调查数据有用吗?
导言:自2012年以来,欧洲疾病预防和控制中心(ECDC)在欧洲急症护理医院推广了HAIs的点患病率调查(PPS)。通过对意大利某三级学术医院2012年、2015年和2017年进行HAI的PPS进行回顾性分析,我们建立了预测HAI风险的模型。方法:遵循ECDC方案,我们在三年内调查了1382例患者。采用双变量logistic回归分析评估HAI与多个变量之间的关系。有统计学意义者纳入逐步多元回归模型。采用Hosmer-Lemeshow检验对后一模型的拟合优度进行评估,最终构建概率曲线来估计发生HAIs的风险。结果:三个变量在逐步logistic回归模型中有统计学意义:住院时间(OR 1.03;95% CI: 1.02-1.05),器械破皮(即外周或中央血管导管,or 4.38;95% CI: 1.52-12.63)、导尿管(OR 4.71;95% ci: 2.78-7.98)。结论:pps为建立HAIs预测模型提供了方便、可靠的数据来源。我们的研究结果与先前发表的研究之间的差异表明,需要开发针对医院的数据库和HAIs预测模型。
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来源期刊
Journal of Preventive Medicine and Hygiene
Journal of Preventive Medicine and Hygiene Medicine-Public Health, Environmental and Occupational Health
CiteScore
3.30
自引率
0.00%
发文量
50
期刊介绍: The journal is published on a four-monthly basis and covers the field of epidemiology and community health. The journal publishes original papers and proceedings of Symposia and/or Conferences which should be submitted in English. Papers are accepted on their originality and general interest. Ethical considerations will be taken into account.
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