Intended for healthcare professionals

Analysis

Harnessing predictive prevention to shift elderly care from hospital to community in England

BMJ 2025; 389 doi: https://doi.org/10.1136/bmj-2024-082873 (Published 29 April 2025) Cite this as: BMJ 2025;389:e082873
  1. Sheena Asthana, director1,
  2. Kieran Green, researcher1,
  3. John Downey, lecturer1,
  4. Martha Lee, researcher2,
  5. Rachael Fox, project manager3
  1. 1Centre of Health Technology, Peninsula Medical School, University of Plymouth, Plymouth, UK
  2. 2NHS Devon Integrated Care Board, Exeter, UK
  3. 3Plymouth Community Homes, Plymouth, UK
  1. Correspondence to: S Asthana sasthana{at}plymouth.ac.uk

Sheena Asthanaand colleagues consider how to realise the potential of digital health technologies to help older people maintain wellbeing and independence and reduce hospital demand

The NHS faces a crisis of increasing demand, staff shortages, and limited resources, while an ageing population places mounting pressure on acute services.1 Many experts agree that moving from a reactive “diagnose and treat” model to a more proactive “predict and prevent” model is essential.2 Predictive prevention, which applies artificial intelligence (AI) to remotely monitored data from sensors and wearables to anticipate and address early signs of decline, could shift the balance of care from hospital to community for older adults. However, these innovations carry ethical and practical risks, such as algorithmic bias, data privacy breaches, and the potential to undermine the human dimension of healthcare.

The UK government has committed to move from an analogue to a digital NHS, shift more care from hospitals to communities, and be much bolder in moving from sickness to prevention.3 Achieving this ambition will require the NHS to unlock the potential of digital health technologies to support proactive, anticipatory care. Applying this technology successfully at scale will require innovative evaluation approaches to ensure that technology meets the needs of users and their carers as well as work to overcome barriers such as interoperability challenges and workforce concerns.

Potential of predictive prevention

Applying AI to remotely collected data from sensors and wearables can enable individuals and healthcare providers to identify and take early action on signs of physical and cognitive deterioration.45 Applications include the use of unobtrusive smart plugs, motion sensors, and door sensors to detect atypical behaviour or difficulties in conducting activities of daily living67; and wearables, sensors, or vision based systems that measure real time human motion89 and physiological conditions. …

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