Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households

Background with rationale New insights into the wider demographic context of multimorbidity has been prioritised, notably among disadvantaged and ethnically-diverse populations with a high disease burden. We propose an innovative approach to quantify health burden and disease clustering at household...

Full description

Bibliographic Details
Main Authors: Gill Harper, Jane Lyons, Richard Fry, Ashley Akbari, Zaheer Ahmed, Ronan Lyons, Carol Dezateux, John Robson
Format: Article
Language:English
Published: Swansea University 2019-11-01
Series:International Journal of Population Data Science
Online Access:https://ijpds.org/article/view/1289
_version_ 1797428373043019776
author Gill Harper
Jane Lyons
Richard Fry
Ashley Akbari
Zaheer Ahmed
Ronan Lyons
Carol Dezateux
John Robson
author_facet Gill Harper
Jane Lyons
Richard Fry
Ashley Akbari
Zaheer Ahmed
Ronan Lyons
Carol Dezateux
John Robson
author_sort Gill Harper
collection DOAJ
description Background with rationale New insights into the wider demographic context of multimorbidity has been prioritised, notably among disadvantaged and ethnically-diverse populations with a high disease burden. We propose an innovative approach to quantify health burden and disease clustering at household level, to enable predictors of household multimorbidity to be investigated and understood. Main Aim To quantify multi-morbidity at the household level using general practitioner (GP) electronic health records (EHRs) in a geographically-defined ethnically-diverse inner city population. Methods We extracted clinical and patient address data from GP EHRs from four east London boroughs (Tower Hamlets, Newham, Waltham Forest and City & Hackney). We included currently registered patients aged ≥18 years as at July 2018, and excluded those with duplicate or complex registrations, new registrations in the previous 12 months, or registrations without historical clinical data or occurring prior to 1948, as well as inactive patients with no recorded EHR activity in varying years depending on age and gender. We defined multimorbidity using 16 long-term condition Read codesets defined in the Quality and Outcomes Framework. We grouped patients into households, defined as those sharing the same home address on their GP registration, represented by a pseudonymised Unique Property Reference Number. Results Provisional data are presented. We identified 737,920 patients (51% female) eligible for this study out of a total population of 1,171,483 currently registered patients. Of these, 23% aged <20, 69% aged 20-64, 8% aged >=65, 38% White ethnicity, 3% Mixed, 30% Asian, 14% Black, 5% Other and 12% Not Stated/Null. We identified 312,582 shared households among 737,920 patients. Analyses to derive household-level summary characteristics and relate these to multimorbidity burden are in progress and will be presented. Conclusion Household-level multi-morbidity can be quantified using clinical and patient address data in GP electronic health records.
first_indexed 2024-03-09T08:57:00Z
format Article
id doaj.art-403a282b120741c882706c0247a44239
institution Directory Open Access Journal
issn 2399-4908
language English
last_indexed 2024-03-09T08:57:00Z
publishDate 2019-11-01
publisher Swansea University
record_format Article
series International Journal of Population Data Science
spelling doaj.art-403a282b120741c882706c0247a442392023-12-02T12:46:35ZengSwansea UniversityInternational Journal of Population Data Science2399-49082019-11-014310.23889/ijpds.v4i3.1289Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of householdsGill Harper0Jane Lyons1Richard Fry2Ashley Akbari3Zaheer Ahmed4Ronan Lyons5Carol Dezateux6John Robson7Queen Mary University of LondonSwansea UniversitySwansea UniversitySwansea UniversityQueen Mary University of LondonSwansea UniversityQueen Mary University of LondonQueen Mary University of LondonBackground with rationale New insights into the wider demographic context of multimorbidity has been prioritised, notably among disadvantaged and ethnically-diverse populations with a high disease burden. We propose an innovative approach to quantify health burden and disease clustering at household level, to enable predictors of household multimorbidity to be investigated and understood. Main Aim To quantify multi-morbidity at the household level using general practitioner (GP) electronic health records (EHRs) in a geographically-defined ethnically-diverse inner city population. Methods We extracted clinical and patient address data from GP EHRs from four east London boroughs (Tower Hamlets, Newham, Waltham Forest and City & Hackney). We included currently registered patients aged ≥18 years as at July 2018, and excluded those with duplicate or complex registrations, new registrations in the previous 12 months, or registrations without historical clinical data or occurring prior to 1948, as well as inactive patients with no recorded EHR activity in varying years depending on age and gender. We defined multimorbidity using 16 long-term condition Read codesets defined in the Quality and Outcomes Framework. We grouped patients into households, defined as those sharing the same home address on their GP registration, represented by a pseudonymised Unique Property Reference Number. Results Provisional data are presented. We identified 737,920 patients (51% female) eligible for this study out of a total population of 1,171,483 currently registered patients. Of these, 23% aged <20, 69% aged 20-64, 8% aged >=65, 38% White ethnicity, 3% Mixed, 30% Asian, 14% Black, 5% Other and 12% Not Stated/Null. We identified 312,582 shared households among 737,920 patients. Analyses to derive household-level summary characteristics and relate these to multimorbidity burden are in progress and will be presented. Conclusion Household-level multi-morbidity can be quantified using clinical and patient address data in GP electronic health records.https://ijpds.org/article/view/1289
spellingShingle Gill Harper
Jane Lyons
Richard Fry
Ashley Akbari
Zaheer Ahmed
Ronan Lyons
Carol Dezateux
John Robson
Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households
International Journal of Population Data Science
title Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households
title_full Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households
title_fullStr Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households
title_full_unstemmed Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households
title_short Quantifying multi-morbidity in an ethnically-diverse inner city population: the health burden of households
title_sort quantifying multi morbidity in an ethnically diverse inner city population the health burden of households
url https://ijpds.org/article/view/1289
work_keys_str_mv AT gillharper quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT janelyons quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT richardfry quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT ashleyakbari quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT zaheerahmed quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT ronanlyons quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT caroldezateux quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds
AT johnrobson quantifyingmultimorbidityinanethnicallydiverseinnercitypopulationthehealthburdenofhouseholds