Modelling Prevention Policy Impacts on Local Authority-Funded Social Care Services in England: A System Dynamics Modelling Approach
Featured Application
Abstract
1. Introduction
2. Materials and Methods
2.1. Data Source and Population Segmentation
2.2. Flow Data Analysis
2.3. Model Structure
2.4. Targeted, Proactive Preventive Interventions
- Improved health at 65 (these are outcomes)
- b.
- Slowing progression through PNGs
- (i)
- Falls and related postural stability initiatives: Some key studies have demonstrated the effectiveness of targeted preventive interventions such as Hospital Elder Life Programme (HELP), environmental modifications (fall hazard reduction, assistive technology, home modifications, and education), physical exercise, and nutritional supplementation in reducing falls and physical frailty among older adults [27,28,29,30]. The reported effects include a 25–30% reduction in fall incidence and significant improvements in functional ability and balance.
- (ii)
- Comprehensive Geriatric Assessment (CGA): A multidimensional, multidisciplinary process performed by a team of professionals and designed to evaluate the medical, functional, social, and psychological capabilities and issues of older adults. It has been shown to reduce physical frailty in the community by 27% and unplanned hospital admissions by 17% [31,32]. In hospital settings, CGA reduced the risk of nursing home residency at 3–12 months post-discharge by 7–20% [33,34].
- 10% reduction PNG3→4
- 20% reduction PNG4→5, PNG5→9, PNG9→10
- 30% reduction PNG10→11
- c.
- Demand Management
- (i)
- Reablement Services: They significantly enhanced an individual’s ability to stay at home with support, resulting in a 10% increase in home support over a three-year period. Key studies demonstrated that hospital-based reablement and improved functional abilities can reduce the need for institutional care [35,36].
- (ii)
- Carer and Community Support: These initiatives have led to a 20% increase in net home care over three years, and studies have highlighted the role of assistive technology and multicomponent interventions in reducing caregiving demand and delaying institutionalisation, particularly for those with dementia [37,38].
- d.
- Productivity
2.5. Scenario Testing
2.6. Model Calibration
2.7. Model Validity
2.8. Sensitivity Analysis
3. Results
3.1. Flow Data Findings
3.2. PNGs Association with ASC Costs
3.3. Scenario Testing Outcomes
4. Discussion
Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| PNG | Average Age | Key Conditions | Medication Use | Mental Health/Behavioural Issues | Frailty/Functional Issues | Social Need Markers |
|---|---|---|---|---|---|---|
| 01 | No recorded healthcare utilisation (no claims or visits) | |||||
| 02 | Child (Excluded) | |||||
| 03 | Few or no chronic conditions | |||||
| 04 | 50 years | Hypertension w/o complications (24%) Lipid metabolism disorders (11%) Degenerative joint disease (12%) | Cardiovascular disease medication (35%) Psychiatric/Behavioural medication (21%) Gastrointestinal/Hepatic medication (23%) Infections Medication (22%) Typically taking 0–3 recent medications | Depression (15%) Anxiety (14%) | ||
| 05 | 66 years | Hypertension w/o complications (45%) Lipid metabolism disorders (21%) Cardiac arrhythmia (13%) Degenerative joint disease (28%) | Cardiovascular disease medication (67%) Endocrine/Metabolic Medication (29%) Psychiatric/Behavioural medication (30%) Infections medication (40%) Pain Medication (35%) Typically taking 2–6 recent medications | Depression (19%) Anxiety (15%) | Low back pain (13%) MSK signs and symptoms 11% | |
| 06 | Pregnancy (Excluded) | |||||
| 07 | Pregnancy (Excluded) | |||||
| 08 | 43 years | Cardio-vascular (67%) Psychosocial (66%) Musculo-skeletal (55.4%) Neurologic (43.8%) | Psychiatric/Behavioural medication (78%) Cardiovascular disease medication (76%) Gastrointestinal/Hepatic medication (53%) | Major depression (32%) Depression (28%) Anxiety (15%) Personality disorders (10%) | ||
| 09 | 60 years | Hypertension w/o complications (38%) Lipid metabolism disorders (18%) Cardiac arrhythmia (8.5%) Degenerative joint disease (23%) | Cardiovascular disease medication (60%) Endocrine/Metabolic Medication (39%) Psychiatric/Behavioural medication (35%) Gastrointestinal/Hepatic Medication (47%) Infections medication (36%) Pain Medication (34%) Typically taking 1–7 recent medications | Depression (17%) Anxiety (13%) Neurologic signs and symptoms (19%) | Low back pain (11%) MSK Signs and Symptoms | |
| 10 | 75 years | Hypertension w/o complications (60%) Lipid metabolism disorders (30%) Acute MI (16%) IHD (excluding acute MI) (28%) Stroke (26%) Degenerative joint disease (39%) | Cardiovascular disease medication (88%) Endocrine/Metabolic Medication (45%) Psychiatric/Behavioural medication (46%) Gastrointestinal/Hepatic Medication (73%) Infections medication (59%) Respiratory medication (41%) Pain Medication (54%) Typically taking 5–11 recent medications | Depression (24%) Anxiety (14%) Neurologic signs and symptoms (30%) | Low back pain (19%) MSK Signs and Symptoms (16%) Falls (4.4%) Dementia (6.4%) | Social connection (4.4%) |
| 11 | 83 years | Hypertension w/o complications (62%) Lipid metabolism disorders (28%) Cardiac arrhythmia (27%) Acute MI (16%) IHD (excluding acute MI) (28%) Stroke (26%) Degenerative joint disease (39%) Urinary Tract Infection (23%) Urinary symptoms (22%) | Cardiovascular disease medication (85%) Endocrine/Metabolic Medication (42%) Psychiatric/Behavioural medication (53%) Gastrointestinal/Hepatic Medication (78%) Infections medication (64%) Respiratory medication (34%) Pain Medication (69%) Typically taking 5–11 recent medications | Depression (21%) Anxiety (11%) Neurologic signs and symptoms (70%) | Falls (53%) Dementia (50%) Difficult walking (45%) Incontinence (41%) Absence of faecal control (22%) Loss of weight (15%) Sleep problems (15%) Debility and undue fatigue (55%) | Family and social problems (11%) Social connection (26%) |
| Scenario | Interventions | Type of Intervention |
|---|---|---|
| 1 | Do nothing | No intervention |
| 2 | Improved health | Pre-retirement NHS health checks at 65 |
| 3 | Slowing progression through PNGs | Falls and Postural Stability Initiatives |
| Comprehensive Geriatric Assessment (CGA) | ||
| 4 | Demand Management | Reablement services |
| Carer and Community Support | ||
| 5 | Productivity | Integrated Neighbourhood Teams-Neighbourhood rounds |
| 6 | Combined interventions | Combination of the aforementioned preventive interventions |
| Patient Need Group | Population 65 Plus | Proportion with Active Care Plan | Proportion of All Active Care Plans | Estimated Annual Yearly Cost Per Person for Whole Group (£) |
|---|---|---|---|---|
| 01 | 230,400 (72.2%) | 0.10% | 0% | 10 |
| 03 | 0.20% | 1% | 50 | |
| 04 | 0.40% | 4% | 100 | |
| 05 | 1.20% | 15% | 250 | |
| 08 | 3.60% | 5% | 1200 | |
| 09 | 88,700 (27.8%) | 3.40% | 23% | 950 |
| 10 | 5.70% | 21% | 1400 | |
| 11 | 26% | 32% | 9700 | |
| Total | 319,100 | 13,660 |
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Crouch, S.; Walton, G.; Chambers, M.; Badrinath, P.; Ramesh, A.; Vaughan, O.; Bhavsar, A.; Lacey, P.; Hooper, A.; George, A. Modelling Prevention Policy Impacts on Local Authority-Funded Social Care Services in England: A System Dynamics Modelling Approach. Appl. Sci. 2026, 16, 4436. https://doi.org/10.3390/app16094436
Crouch S, Walton G, Chambers M, Badrinath P, Ramesh A, Vaughan O, Bhavsar A, Lacey P, Hooper A, George A. Modelling Prevention Policy Impacts on Local Authority-Funded Social Care Services in England: A System Dynamics Modelling Approach. Applied Sciences. 2026; 16(9):4436. https://doi.org/10.3390/app16094436
Chicago/Turabian StyleCrouch, Sarah, Georgina Walton, Mark Chambers, Padmanabhan Badrinath, Asha Ramesh, Oliver Vaughan, Aaron Bhavsar, Peter Lacey, Amy Hooper, and Abraham George. 2026. "Modelling Prevention Policy Impacts on Local Authority-Funded Social Care Services in England: A System Dynamics Modelling Approach" Applied Sciences 16, no. 9: 4436. https://doi.org/10.3390/app16094436
APA StyleCrouch, S., Walton, G., Chambers, M., Badrinath, P., Ramesh, A., Vaughan, O., Bhavsar, A., Lacey, P., Hooper, A., & George, A. (2026). Modelling Prevention Policy Impacts on Local Authority-Funded Social Care Services in England: A System Dynamics Modelling Approach. Applied Sciences, 16(9), 4436. https://doi.org/10.3390/app16094436

