印度医院网络中与卫生保健相关的血液和尿路感染:一项多中心、基于医院的前瞻性监测研究

Purva Mathur, Paul Malpiedi, Kamini Walia, Padmini Srikantiah, Sunil Gupta, Ayush Lohiya, Arunaloke Chakrabarti, Pallab Ray, Manisha Biswal, Neelam Taneja, Priscilla Rupali, Veeraraghavan Balaji, Camilla Rodrigues, Vijaya Lakshmi Nag, Vibhor Tak, Vimala Venkatesh, Chiranjay Mukhopadhyay, Vijayshri Deotale, Kanne Padmaja, Chand Wattal, Sanjay Bhattacharya, Tadepalli Karuna, Bijayini Behera, Sanjeev Singh, Reema Nath, Raja Ray, Sujata Baveja, Bashir A Fomda, Khumanthem Sulochana Devi, Padma Das, Neeta Khandelwal, Prachi Verma, Prithwis Bhattacharyya, Rajni Gaind, Lata Kapoor, Neil Gupta, Aditya Sharma, Daniel VanderEnde, Valan Siromany, Kayla Laserson, Randeep Guleria
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引用次数: 17

摘要

背景:在全球范围内,包括在低收入和中等收入国家(LMICs),卫生保健相关感染(HAIs)造成了显著的发病率和死亡率。实施标准化的国际卫生组织监测的医院网络可以提供有关国际卫生组织负担的宝贵数据,并确定和监测国际卫生组织预防方面的差距。许多中低收入国家的医院使用为资源较丰富的环境制定的HAI病例定义,这需要人力资源以及通常无法获得的实验室和成像检查。方法:在印度建立了一个由26家三级医院组成的网络,以实施HAI监测和预防活动。修改了现有的HAI病例定义,以促进跨医院的标准化、资源适宜的监测。医院确定了与医疗保健相关的血液感染和尿路感染(uti),并向网络报告临床和微生物数据以供分析。研究结果:2017年5月1日至2018年10月31日期间,26家网络医院报告了来自89个重症监护病房(icu)的2622例卫生保健相关血液感染和737例卫生保健相关尿路感染。中心静脉相关血流感染率在新生儿icu中最高(>20 / 1000中心静脉日)。导尿管相关尿路感染发生率在儿科icu中最高(每1000个导尿管天4.5个)。血流感染以克雷伯氏菌(24.8%)和念珠菌(29.4%)最为常见。碳青霉烯耐药在革兰氏阴性感染中很常见,发生在克雷伯氏菌引起的72%的血液感染和76%的尿路感染中,发生在不动杆菌引起的77%的血液感染和76%的尿路感染中,发生在假单胞菌引起的64%的血液感染和72%的尿路感染中。印度第一个标准化的卫生保健监测网络成功地在各医院一致地实施了适应当地情况和适合具体情况的协议,并能够确定大量卫生保健机构。网络数据显示三级医院的HAI和抗菌素耐药率很高,显示了实施多模式HAI预防和抗菌素耐药性控制战略的重要性。资助:美国疾病控制和预防中心与新德里全印度医学科学研究所的合作协议。翻译:关于摘要的印地语翻译,请参阅补充资料部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Health-care-associated bloodstream and urinary tract infections in a network of hospitals in India: a multicentre, hospital-based, prospective surveillance study.

Background: Health-care-associated infections (HAIs) cause significant morbidity and mortality globally, including in low-income and middle-income countries (LMICs). Networks of hospitals implementing standardised HAI surveillance can provide valuable data on HAI burden, and identify and monitor HAI prevention gaps. Hospitals in many LMICs use HAI case definitions developed for higher-resourced settings, which require human resources and laboratory and imaging tests that are often not available.

Methods: A network of 26 tertiary-level hospitals in India was created to implement HAI surveillance and prevention activities. Existing HAI case definitions were modified to facilitate standardised, resource-appropriate surveillance across hospitals. Hospitals identified health-care-associated bloodstream infections and urinary tract infections (UTIs) and reported clinical and microbiological data to the network for analysis.

Findings: 26 network hospitals reported 2622 health-care-associated bloodstream infections and 737 health-care-associated UTIs from 89 intensive care units (ICUs) between May 1, 2017, and Oct 31, 2018. Central line-associated bloodstream infection rates were highest in neonatal ICUs (>20 per 1000 central line days). Catheter-associated UTI rates were highest in paediatric medical ICUs (4·5 per 1000 urinary catheter days). Klebsiella spp (24·8%) were the most frequent organism in bloodstream infections and Candida spp (29·4%) in UTIs. Carbapenem resistance was common in Gram-negative infections, occurring in 72% of bloodstream infections and 76% of UTIs caused by Klebsiella spp, 77% of bloodstream infections and 76% of UTIs caused by Acinetobacter spp, and 64% of bloodstream infections and 72% of UTIs caused by Pseudomonas spp.

Interpretation: The first standardised HAI surveillance network in India has succeeded in implementing locally adapted and context-appropriate protocols consistently across hospitals and has been able to identify a large number of HAIs. Network data show high HAI and antimicrobial resistance rates in tertiary hospitals, showing the importance of implementing multimodal HAI prevention and antimicrobial resistance containment strategies.

Funding: US Centers for Disease Control and Prevention cooperative agreement with All India Institute of Medical Sciences, New Delhi.

Translation: For the Hindi translation of the abstract see Supplementary Materials section.

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