Piloting an event-based surveillance model in private hospitals for early detection of disease clusters, Kerala, India.

IF 2.7 4区 医学 Q3 IMMUNOLOGY
Raman Swathy Vaman, Sunil Solomon, Francisco Averhoff, Alan L Landay, Jeromie Wesley Vivian Thangaraj, Rizwan Suliankatchi Abdulkader, Flory Joseph, Gavin Cloherty, Manoj V Murhekar
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Abstract

Background & objectives Event-based surveillance (EBS) is a critical component of early warning systems for detecting and responding to infectious disease outbreaks. While EBS is widely used in public health settings, its integration into private healthcare facilities remains limited. This study undertook to pilot an EBS in private hospitals in Kasaragod, Kerala and to assess its added value in early detection of disease clusters. Methods Clinical nurses abstracted the data on hospitalisation dates, places of residence, and presenting illnesses from case records of patients with acute febrile illness (AFI) admitted in six private hospitals. A software algorithm analysed the data to identify spatiotemporal clustering of case-patients or deaths (signals), for syndromes of interest [acute febrile illness with rash (AFIR), acute encephalitis syndrome (AES), acute febrile illness with haemorrhage (AFIH) and severe acute respiratory illness (SARI)]. The District Surveillance Unit (DSU) verified these signals, flagged verified signals as events, and conducted a risk assessment to determine if the events were outbreaks. Results From May to December 2023, data from 3294 (73%) of 4512 AFI patients were analysed using the EBS algorithm. Of the 88 signals identified, 67 (76%) were due to SARI, 9 (10.3%) were due to AES, and 9 (9%) were due to AFIR. Ten signals were verified as events, of which nine were classified as outbreaks (dengue-1, H1N1-3, H3N2-1, H1N1 and H3N2 - 1, H1N1 and SARS-COV2 - 1, no pathogen detected- 2). Five outbreaks were not detected by the existing indicator-based surveillance (IBS). Interpretation & conclusions EBS pilot in private health facilities complemented the IBS system by early detecting outbreaks. This EBS model has the potential for implementation in other districts, especially in districts at higher risk of zoonotic spillover.

在印度喀拉拉邦的私立医院试行基于事件的监测模式,以早期发现疾病聚集性。
背景与目的基于事件的监测(EBS)是发现和应对传染病暴发的早期预警系统的重要组成部分。虽然EBS在公共卫生环境中广泛使用,但它与私人卫生保健设施的整合仍然有限。本研究在喀拉拉邦卡萨拉古德的私立医院进行了EBS试点,并评估其在早期发现疾病聚集性方面的附加价值。方法临床护士从6家私立医院收治的急性发热性疾病(AFI)患者病历中提取住院日期、居住地点、疾病表现等资料。软件算法分析数据,以确定病例或死亡(信号)的时空聚类,用于感兴趣的综合征[急性发热性疾病伴皮疹(AFIR),急性脑炎综合征(AES),急性发热性疾病伴出血(AFIH)和严重急性呼吸道疾病(SARI)]。地区监测股核实了这些信号,将核实的信号标记为事件,并进行了风险评估,以确定这些事件是否为疫情。结果2023年5 - 12月,采用EBS算法对4512例AFI患者中的3294例(73%)进行数据分析。在确定的88个信号中,67个(76%)由SARI引起,9个(10.3%)由AES引起,9个(9%)由AFIR引起。10个信号被确认为事件,其中9个被归类为暴发(登革热-1、H1N1-3、H3N2-1、H1N1和H3N2-1、H1N1和SARS-COV2 -1,未发现病原体- 2)。5个暴发未被现有的基于指标的监测(IBS)发现。解释与结论:在私营卫生机构开展的EBS试点通过早期发现疫情补充了肠易激综合征系统。这种EBS模式有可能在其他地区实施,特别是在人畜共患疾病蔓延风险较高的地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.80
自引率
2.40%
发文量
191
审稿时长
3-8 weeks
期刊介绍: The Indian Journal of Medical Research (IJMR) [ISSN 0971-5916] is one of the oldest medical Journals not only in India, but probably in Asia, as it started in the year 1913. The Journal was started as a quarterly (4 issues/year) in 1913 and made bimonthly (6 issues/year) in 1958. It became monthly (12 issues/year) in the year 1964.
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