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Value of using artificial intelligence derived clusters by health and social care need in primary care: a qualitative interview study with patients living with multiple long-term conditions, carers and health care professionals

Value of using artificial intelligence derived clusters by health and social care need in primary care: a qualitative interview study with patients living with multiple long-term conditions, carers and health care professionals
Value of using artificial intelligence derived clusters by health and social care need in primary care: a qualitative interview study with patients living with multiple long-term conditions, carers and health care professionals
Background: people living with MLTCs attending primary care often have unmet social care needs (SCNs), which can be challenging to identify and address. Artificial intelligence (AI) derived clusters could help to identify patients at risk of SCNs. Evidence is needed on views about the use of AI-derived clusters, to inform acceptable and meaningful implementation within interventions.

Method: qualitative semi-structured interviews (online and telephone), including a description of AI-derived clusters and a tailored vignette, with 24 people living with MLTCs and 20 people involved in the care of MLTCs (carers and health care professionals). Interviews were analysed using Reflexive and Codebook Thematic Analysis.

Results: primary care was viewed as an appropriate place to have conversations about SCNs. However, participants felt health care professionals lack capacity to have these conversations and to identify support. AI was perceived as a tool that could potentially increase capacity but only when supplemented with effective, clinical conversations. Interventions harnessing AI should be brief, be easy to use and remain relevant over time, to ensure no additional burden on clinical capacity. Interventions must allow flexibility to be used by multidisciplinary teams within primary care, frame messages positively and facilitate conversations that remain patient centered.

Conclusion: our findings suggest that implementing AI-derived clusters to identify and support SCNs in primary care is perceived as valuable and can be used as a tool to inform and prioritse effective clinical conversations. But concerns must be addressed, including how AI-derived clusters can be used in a way that considers personal context.
2633-5565
Holt, Sian
b6977ce7-16bf-4dde-92f4-18abe85ad093
Simpson, Glenn
802b50d9-aa00-4cca-9eaf-238385f8481c
Santer, Miriam
3ce7e832-31eb-4d27-9876-3a1cd7f381dc
Everitt, Hazel
80b9452f-9632-45a8-b017-ceeeee6971ef
Farmer, Andrew
c384123c-1276-4d06-a2b5-d5419bd83b1d
Zhou, Kuangji
b70e7f07-cf44-4e07-aed5-07a57c9b44ba
Qian, Zhiling
d0923238-fb08-4586-9b08-e781469f89b7
Davies, Firoza
dfbad70e-7928-4b1c-a26d-9a10281b8833
Dambha-Miller, Hajira
58961db5-31aa-460e-9394-08590c4b7ba1
Morrison, Leanne
920a4eda-0f9d-4bd9-842d-6873b1afafef
Holt, Sian
b6977ce7-16bf-4dde-92f4-18abe85ad093
Simpson, Glenn
802b50d9-aa00-4cca-9eaf-238385f8481c
Santer, Miriam
3ce7e832-31eb-4d27-9876-3a1cd7f381dc
Everitt, Hazel
80b9452f-9632-45a8-b017-ceeeee6971ef
Farmer, Andrew
c384123c-1276-4d06-a2b5-d5419bd83b1d
Zhou, Kuangji
b70e7f07-cf44-4e07-aed5-07a57c9b44ba
Qian, Zhiling
d0923238-fb08-4586-9b08-e781469f89b7
Davies, Firoza
dfbad70e-7928-4b1c-a26d-9a10281b8833
Dambha-Miller, Hajira
58961db5-31aa-460e-9394-08590c4b7ba1
Morrison, Leanne
920a4eda-0f9d-4bd9-842d-6873b1afafef

Holt, Sian, Simpson, Glenn, Santer, Miriam, Everitt, Hazel, Farmer, Andrew, Zhou, Kuangji, Qian, Zhiling, Davies, Firoza, Dambha-Miller, Hajira and Morrison, Leanne (2025) Value of using artificial intelligence derived clusters by health and social care need in primary care: a qualitative interview study with patients living with multiple long-term conditions, carers and health care professionals. Journal of Multimorbidity and Comorbidity, 15. (doi:10.1177/26335565251353016).

Record type: Article

Abstract

Background: people living with MLTCs attending primary care often have unmet social care needs (SCNs), which can be challenging to identify and address. Artificial intelligence (AI) derived clusters could help to identify patients at risk of SCNs. Evidence is needed on views about the use of AI-derived clusters, to inform acceptable and meaningful implementation within interventions.

Method: qualitative semi-structured interviews (online and telephone), including a description of AI-derived clusters and a tailored vignette, with 24 people living with MLTCs and 20 people involved in the care of MLTCs (carers and health care professionals). Interviews were analysed using Reflexive and Codebook Thematic Analysis.

Results: primary care was viewed as an appropriate place to have conversations about SCNs. However, participants felt health care professionals lack capacity to have these conversations and to identify support. AI was perceived as a tool that could potentially increase capacity but only when supplemented with effective, clinical conversations. Interventions harnessing AI should be brief, be easy to use and remain relevant over time, to ensure no additional burden on clinical capacity. Interventions must allow flexibility to be used by multidisciplinary teams within primary care, frame messages positively and facilitate conversations that remain patient centered.

Conclusion: our findings suggest that implementing AI-derived clusters to identify and support SCNs in primary care is perceived as valuable and can be used as a tool to inform and prioritse effective clinical conversations. But concerns must be addressed, including how AI-derived clusters can be used in a way that considers personal context.

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Accepted/In Press date: 9 June 2025
e-pub ahead of print date: 24 June 2025

Identifiers

Local EPrints ID: 504101
URI: http://eprints.soton.ac.uk/id/eprint/504101
ISSN: 2633-5565
PURE UUID: e66f0354-19d6-4c7f-972a-9b1c10f2a058
ORCID for Sian Holt: ORCID iD orcid.org/0000-0001-5448-3499
ORCID for Glenn Simpson: ORCID iD orcid.org/0000-0002-1753-942X
ORCID for Miriam Santer: ORCID iD orcid.org/0000-0001-7264-5260
ORCID for Hazel Everitt: ORCID iD orcid.org/0000-0001-7362-8403
ORCID for Hajira Dambha-Miller: ORCID iD orcid.org/0000-0003-0175-443X
ORCID for Leanne Morrison: ORCID iD orcid.org/0000-0002-9961-551X

Catalogue record

Date deposited: 26 Aug 2025 16:40
Last modified: 27 Aug 2025 02:04

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Contributors

Author: Sian Holt ORCID iD
Author: Glenn Simpson ORCID iD
Author: Miriam Santer ORCID iD
Author: Hazel Everitt ORCID iD
Author: Andrew Farmer
Author: Kuangji Zhou
Author: Zhiling Qian
Author: Firoza Davies
Author: Leanne Morrison ORCID iD

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