Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset

<h4>Background</h4> <p>Realist approaches seek to answer questions such as ‘how?’, ‘why?’, ‘for whom?’, ‘in what circumstances?’ and ‘to what extent?’ interventions ‘work’ using context-mechanism-outcome (CMO) configurations. Quantitative methods are not well-established in realis...

Full description

Bibliographic Details
Main Authors: Ford, J, Jones, A, Wong, G, Clark, A, Porter, T, Steel, N
Format: Journal article
Published: BioMed Central 2018
_version_ 1797104094086692864
author Ford, J
Jones, A
Wong, G
Clark, A
Porter, T
Steel, N
author_facet Ford, J
Jones, A
Wong, G
Clark, A
Porter, T
Steel, N
author_sort Ford, J
collection OXFORD
description <h4>Background</h4> <p>Realist approaches seek to answer questions such as ‘how?’, ‘why?’, ‘for whom?’, ‘in what circumstances?’ and ‘to what extent?’ interventions ‘work’ using context-mechanism-outcome (CMO) configurations. Quantitative methods are not well-established in realist approaches, but structural equation modelling (SEM) may be useful to explore CMO configurations. Our aim was to assess the feasibility and appropriateness of SEM to explore CMO configurations and, if appropriate, make recommendations based on our access to primary care research. Our specific objectives were to map variables from two large population datasets to CMO configurations from our realist review looking at access to primary care, generate latent variables where needed, and use SEM to quantitatively test the CMO configurations.</p> <h4>Methods</h4> <p>linked dataset was created by merging individual patient data from the English Longitudinal Study of Ageing and practice data from the GP Patient Survey. Patients registered in rural practices and who were in the highest deprivation tertile were included. Three latent variables were defined using confirmatory factor analysis. SEM was used to explore the nine full CMOs. All models were estimated using robust maximum likelihoods and accounted for clustering at practice level. Ordinal variables were treated as continuous to ensure convergence.</p> <h4>Results</h4> <p>We successfully explored our CMO configurations, but analysis was limited because of data availability. Two hundred seventy-six participants were included. We found a statistically significant direct (context to outcome) or indirect effect (context to outcome via mechanism) for two of nine CMOs. The strongest association was between ‘ease of getting through to the surgery’ and ‘being able to get an appointment’ with an indirect mediated effect through convenience (proportion of the indirect effect of the total was 21%). Healthcare experience was not directly associated with getting an appointment, but there was a statistically significant indirect effect through convenience (53% mediated effect). Model fit indices showed adequate fit.</p> <h4>Conclusions</h4> <p>SEM allowed quantification of CMO configurations and could complement other qualitative and quantitative techniques in realist evaluations to support inferences about strengths of relationships. Future research exploring CMO configurations with SEM should aim to collect, preferably continuous, primary data.</p>
first_indexed 2024-03-07T06:28:57Z
format Journal article
id oxford-uuid:f54a7245-ef37-4924-8188-818db997fa43
institution University of Oxford
last_indexed 2024-03-07T06:28:57Z
publishDate 2018
publisher BioMed Central
record_format dspace
spelling oxford-uuid:f54a7245-ef37-4924-8188-818db997fa432022-03-27T12:26:18ZAccess to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked datasetJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:f54a7245-ef37-4924-8188-818db997fa43Symplectic Elements at OxfordBioMed Central2018Ford, JJones, AWong, GClark, APorter, TSteel, N <h4>Background</h4> <p>Realist approaches seek to answer questions such as ‘how?’, ‘why?’, ‘for whom?’, ‘in what circumstances?’ and ‘to what extent?’ interventions ‘work’ using context-mechanism-outcome (CMO) configurations. Quantitative methods are not well-established in realist approaches, but structural equation modelling (SEM) may be useful to explore CMO configurations. Our aim was to assess the feasibility and appropriateness of SEM to explore CMO configurations and, if appropriate, make recommendations based on our access to primary care research. Our specific objectives were to map variables from two large population datasets to CMO configurations from our realist review looking at access to primary care, generate latent variables where needed, and use SEM to quantitatively test the CMO configurations.</p> <h4>Methods</h4> <p>linked dataset was created by merging individual patient data from the English Longitudinal Study of Ageing and practice data from the GP Patient Survey. Patients registered in rural practices and who were in the highest deprivation tertile were included. Three latent variables were defined using confirmatory factor analysis. SEM was used to explore the nine full CMOs. All models were estimated using robust maximum likelihoods and accounted for clustering at practice level. Ordinal variables were treated as continuous to ensure convergence.</p> <h4>Results</h4> <p>We successfully explored our CMO configurations, but analysis was limited because of data availability. Two hundred seventy-six participants were included. We found a statistically significant direct (context to outcome) or indirect effect (context to outcome via mechanism) for two of nine CMOs. The strongest association was between ‘ease of getting through to the surgery’ and ‘being able to get an appointment’ with an indirect mediated effect through convenience (proportion of the indirect effect of the total was 21%). Healthcare experience was not directly associated with getting an appointment, but there was a statistically significant indirect effect through convenience (53% mediated effect). Model fit indices showed adequate fit.</p> <h4>Conclusions</h4> <p>SEM allowed quantification of CMO configurations and could complement other qualitative and quantitative techniques in realist evaluations to support inferences about strengths of relationships. Future research exploring CMO configurations with SEM should aim to collect, preferably continuous, primary data.</p>
spellingShingle Ford, J
Jones, A
Wong, G
Clark, A
Porter, T
Steel, N
Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset
title Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset
title_full Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset
title_fullStr Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset
title_full_unstemmed Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset
title_short Access to primary care for socio-economically disadvantaged older people in rural areas: exploring realist theory using structural equation modelling in a linked dataset
title_sort access to primary care for socio economically disadvantaged older people in rural areas exploring realist theory using structural equation modelling in a linked dataset
work_keys_str_mv AT fordj accesstoprimarycareforsocioeconomicallydisadvantagedolderpeopleinruralareasexploringrealisttheoryusingstructuralequationmodellinginalinkeddataset
AT jonesa accesstoprimarycareforsocioeconomicallydisadvantagedolderpeopleinruralareasexploringrealisttheoryusingstructuralequationmodellinginalinkeddataset
AT wongg accesstoprimarycareforsocioeconomicallydisadvantagedolderpeopleinruralareasexploringrealisttheoryusingstructuralequationmodellinginalinkeddataset
AT clarka accesstoprimarycareforsocioeconomicallydisadvantagedolderpeopleinruralareasexploringrealisttheoryusingstructuralequationmodellinginalinkeddataset
AT portert accesstoprimarycareforsocioeconomicallydisadvantagedolderpeopleinruralareasexploringrealisttheoryusingstructuralequationmodellinginalinkeddataset
AT steeln accesstoprimarycareforsocioeconomicallydisadvantagedolderpeopleinruralareasexploringrealisttheoryusingstructuralequationmodellinginalinkeddataset