학술논문

Examination of validity of identifying congenital heart disease from hospital discharge data without a gold standard: Using a data linkage approach.
Document Type
Article
Source
Paediatric & Perinatal Epidemiology. May2023, Vol. 37 Issue 4, p303-312. 10p.
Subject
*CONGENITAL heart disease
*HOSPITAL admission & discharge
*TEST validity
*OUTPATIENT medical care
*MEDICAL care
*PARTIAL discharges
Language
ISSN
0269-5022
Abstract
Background: Administrative health data has been used extensively to examine congenital heart disease (CHD). However, the accuracy and completeness of these data must be assessed. Objectives: To use data linkage of multiple administrative data sources to examine the validity of identifying CHD cases recorded in hospital discharge data. Methods: We identified all liveborn infants born 2013–2017 in New South Wales, Australia with a CHD diagnosis up to age one, recorded in hospital discharge data. Using record linkage to multiple data sources, the diagnosis of CHD was compared with five reference standards: (i) multiple hospital admissions containing CHD diagnosis; (ii) receiving a cardiac procedure; (iii) CHD diagnosis in the Register of Congenital Conditions; (iv) cardiac‐related outpatient health service recorded; and/or (v) cardiac‐related cause of death. Positive predictive values (PPV) comparing CHD diagnosis with the reference standards were estimated by CHD severity and for specific phenotypes. Results: Of 485,239 liveborn infants, there were 4043 infants with a CHD diagnosis identified in hospital discharge data (8.3 per 1000 live births). The PPV for any CHD identified in any of the five methods was 62.8% (95% confidence interval [CI] 60.9, 64.8), with PPV higher for severe CHD at 94.1% (95% CI 88.2, 100). Infant characteristics associated with higher PPVs included lower birthweight, presence of a syndrome or non‐cardiac congenital anomaly, born to mothers aged <20 years and residing in disadvantaged areas. Conclusion: Using data linkage of multiple datasets is a novel and cost‐effective method to examine the validity of CHD diagnoses recorded in one dataset. These results can be incorporated into bias analyses in future studies of CHD. [ABSTRACT FROM AUTHOR]