Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources

Introduction Acute Rheumatic Fever (ARF) and Rheumatic Heart Disease (RHD) remain a major public health concern in Australia. Government action requires reliable burden estimates, however data from single or unlinked sources are only partial and likely to be skewed, exacerbated by systemic problems...

Full description

Bibliographic Details
Main Authors: Rebecca Seth, Daniela Bond-Smith, Judith Katzenellenbogan
Format: Article
Language:English
Published: Swansea University 2020-12-01
Series:International Journal of Population Data Science
Online Access:https://ijpds.org/article/view/1632
id doaj-7004dc957dc64cde9767e646dd9c3326
record_format Article
spelling doaj-7004dc957dc64cde9767e646dd9c33262021-02-10T16:41:47ZengSwansea UniversityInternational Journal of Population Data Science2399-49082020-12-015510.23889/ijpds.v5i5.1632Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data SourcesRebecca Seth0Daniela Bond-Smith1Judith Katzenellenbogan2The University of Western AustraliaThe University of Western AustraliaThe University of Western Australia Introduction Acute Rheumatic Fever (ARF) and Rheumatic Heart Disease (RHD) remain a major public health concern in Australia. Government action requires reliable burden estimates, however data from single or unlinked sources are only partial and likely to be skewed, exacerbated by systemic problems with ICD-10 codes for RHD. Linked data provide an opportunity to address these shortcomings. Objectives and Approach Objectives: to develop a methodology using harmonised linked data across five Australian jurisdictions to determine the burden of ARF and RHD <55 years, in particular robust case definitions for calculating incidence and prevalence. For identifying RHD in hospital-only patients, validated case and non-cases from non-hospital sources were used with linked inpatient hospital admissions to develop a RHD prediction model. Additional data sources (register and surgery databases) were used to identify cases for reporting RHD prevalence. A unique ARF episode was defined as an ARF record >90 days from the previous one across both register and hospital data. For first-ever episodes we applied a lookback to mid-2001 for both ARF and RHD. For Western Australia, we evaluated the effect of look-back period on prevalence pooling. Results For total ARF incidence over 3 years (2015-2017), there was 1425 episodes compared to 1027 episodes for first-ever ARF. There was an annual average of 5241 cases of RHD identified using our new methods (0-54yrs) – substantially higher than 2634 and 4255 RHD cases reported by Global Burden of Disease Study and Australian Institute of Welfare estimates respectively for 2017. Increased lookback had no effect on first-ever ARF but increased RHD prevalence >25 years. Conclusion / Implications By using multiple sources and cross-jurisdictional data we were able to provide contemporary and robust estimates for the burden of ARF and RHD in Australia. The prediction algorithm we developed can also be used in other countries, where only hospital data is available, to quantify RHD burden. https://ijpds.org/article/view/1632
collection DOAJ
language English
format Article
sources DOAJ
author Rebecca Seth
Daniela Bond-Smith
Judith Katzenellenbogan
spellingShingle Rebecca Seth
Daniela Bond-Smith
Judith Katzenellenbogan
Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources
International Journal of Population Data Science
author_facet Rebecca Seth
Daniela Bond-Smith
Judith Katzenellenbogan
author_sort Rebecca Seth
title Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources
title_short Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources
title_full Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources
title_fullStr Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources
title_full_unstemmed Pioneering Methods Developed to Investigate the Burden of Acute Rheumatic Fever and Rheumatic Heart Disease Using Multiple Linked Data Sources
title_sort pioneering methods developed to investigate the burden of acute rheumatic fever and rheumatic heart disease using multiple linked data sources
publisher Swansea University
series International Journal of Population Data Science
issn 2399-4908
publishDate 2020-12-01
description Introduction Acute Rheumatic Fever (ARF) and Rheumatic Heart Disease (RHD) remain a major public health concern in Australia. Government action requires reliable burden estimates, however data from single or unlinked sources are only partial and likely to be skewed, exacerbated by systemic problems with ICD-10 codes for RHD. Linked data provide an opportunity to address these shortcomings. Objectives and Approach Objectives: to develop a methodology using harmonised linked data across five Australian jurisdictions to determine the burden of ARF and RHD <55 years, in particular robust case definitions for calculating incidence and prevalence. For identifying RHD in hospital-only patients, validated case and non-cases from non-hospital sources were used with linked inpatient hospital admissions to develop a RHD prediction model. Additional data sources (register and surgery databases) were used to identify cases for reporting RHD prevalence. A unique ARF episode was defined as an ARF record >90 days from the previous one across both register and hospital data. For first-ever episodes we applied a lookback to mid-2001 for both ARF and RHD. For Western Australia, we evaluated the effect of look-back period on prevalence pooling. Results For total ARF incidence over 3 years (2015-2017), there was 1425 episodes compared to 1027 episodes for first-ever ARF. There was an annual average of 5241 cases of RHD identified using our new methods (0-54yrs) – substantially higher than 2634 and 4255 RHD cases reported by Global Burden of Disease Study and Australian Institute of Welfare estimates respectively for 2017. Increased lookback had no effect on first-ever ARF but increased RHD prevalence >25 years. Conclusion / Implications By using multiple sources and cross-jurisdictional data we were able to provide contemporary and robust estimates for the burden of ARF and RHD in Australia. The prediction algorithm we developed can also be used in other countries, where only hospital data is available, to quantify RHD burden.
url https://ijpds.org/article/view/1632
work_keys_str_mv AT rebeccaseth pioneeringmethodsdevelopedtoinvestigatetheburdenofacuterheumaticfeverandrheumaticheartdiseaseusingmultiplelinkeddatasources
AT danielabondsmith pioneeringmethodsdevelopedtoinvestigatetheburdenofacuterheumaticfeverandrheumaticheartdiseaseusingmultiplelinkeddatasources
AT judithkatzenellenbogan pioneeringmethodsdevelopedtoinvestigatetheburdenofacuterheumaticfeverandrheumaticheartdiseaseusingmultiplelinkeddatasources
_version_ 1724275232676511744