Estimating the true number of people with acute rheumatic fever and rheumatic heart disease from two data sources using capture-recapture methodology.

Joanne Thandrayen, Ingrid Stacey, Jane Oliver, Carl Francia, Judith M Katzenellenbogen, Rosemary Wyber
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Abstract

Objective In Australia, accurate case ascertainment of acute rheumatic fever (ARF) and rheumatic heart disease (RHD) diagnoses for disease surveillance and control purposes requires the use of multiple data sources, including RHD registers and hospitalisation records. Despite drawing on multiple data sources, the true burden of ARF/RHD is likely to be underestimated. Methods This study used capture-recapture methods to quantify the missing number of ARF/RHD cases in data from hospitals and jurisdictional RHD registers. Linked datasets comprised reported cases of ARF/RHD in register records and administrative hospital data. Results Capture-recapture analyses indicated the total number of new ARF/RHD cases in three Australian jurisdictions (Queensland, South Australia and Western Australia), among people aged 3-54years, was 3480 (95% CI=3366-3600) during 2011-2016. This included 894 (25.7%) individuals who were not listed in either the hospital or register datasets. Non-Indigenous, urban and older people with ARF/RHD were least likely to be identified in either the hospital or register data sources. Conclusions The 894 likely ARF/RHD cases our analyses detected that are not included in the routine surveillance datasets are concerning and quantify the magnitude and characteristics of under-notification to RHD registers in Australia, especially for groups that are not typically at high risk of ARF.

利用捕获-再捕获方法,从两个数据源中估算急性风湿热和风湿性心脏病患者的真实人数。
目的在澳大利亚,要准确确定用于疾病监测和控制的急性风湿热(ARF)和风湿性心脏病(RHD)诊断病例,需要使用多种数据源,包括风湿性心脏病登记册和住院记录。本研究采用捕获-再捕获方法,对医院数据和辖区风湿性心脏病登记册中缺失的急性风湿热/风湿性心脏病病例进行量化。结果捕获-再捕获分析表明,2011-2016年间,澳大利亚三个辖区(昆士兰州、南澳大利亚州和西澳大利亚州)3-54岁人群中新增的ARF/RHD病例总数为3480例(95% CI=3366-3600)。其中包括894人(25.7%)未列入医院或登记数据集。结论 我们的分析发现了894例可能患有ARF/RHD的病例,但这些病例未被纳入常规监测数据集,这令人担忧,同时也量化了澳大利亚RHD登记通知不足的程度和特征,尤其是对于通常不属于ARF高风险的人群。
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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