Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions...

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Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier Choices Implementation Team

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APHO Prevalence Modelling Commissioned by Dept of Health Prevalence estimates for PCTs and LAs –CHD –Hypertension –Stroke –COPD –CKD (EMPHO) PBS Diabetes model (YHPHO)

Transcript of Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions...

Page 1: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Prevalence Modelling – an APHO perspective

Hannah Walford Eastern Region PHO

With contributions fromJulian Flowers, ERPHO

Michael Soljak, Informing Healthier Choices Implementation Team

Page 2: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Why Model Disease Prevalence?

Disease and risk factor prevalence models can be used for:•assessing completeness of disease registers in primary care

•assessing completeness of case finding

•comparing outcomes e.g. admission rates after adjustment for variation in expected prevalence

•comparing service provision with population need

•planning and commissioning services, including projecting future levels of demand

•undertaking health equity audits

Page 3: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

APHO Prevalence Modelling

• Commissioned by Dept of Health• Prevalence estimates for PCTs and

LAs– CHD– Hypertension– Stroke– COPD– CKD (EMPHO)

• PBS Diabetes model (YHPHO)

Page 4: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

COPD, CHD, stroke, hypertension

• Multinomial logistic regression models using pooled Health Survey for England data

• Developed by Dept of Primary Care and Social Medicine, Imperial College

• Applied to real populations by ERPHO

Page 5: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Health Survey for England

• Direct measures: BP measures, FEV1, cotinine, BMI etc.

• Patient reported measures: doctor diagnosed disease, smoking, etc.

• Age-sex specific prevalence estimates • Geography down to old SHA• Used to build logistic models for

predictors of disease

Page 6: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Model application

Population by age-sex-

ethnicity(ONS)

Smoking status

(modelled estimates)

Deprivation(IMD2004)

Relative Risks

Prevalence estimates

Rurality(COPD model)

Page 7: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Smoking status• Require proportion of smokers, ex-smokers and non-

smokers

• Model-based estimates of lifestyle behaviours only gives prevalence of smokers

• Combine with national smoking and ex-smoking prevalence by age and sex (HSE)

• Assume same ex-smoking prevalence everywhere

• Assume same distribution of smoking status across ethnic groups

Page 8: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

CHD Results

Lowest prevalence:WandsworthLambethOxfordWokinghamCambridge

Highest prevalence:West SomersetEasingtonTendringHartlepoolSandwell

Page 9: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

CHD Results

Page 10: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

CHD Results

Page 11: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Stroke results

Page 12: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Hypertension results

Page 13: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Predicting the future

• Modelled risk combined with population projections to generate projected prevalence

• Assumes constant risk for ageing population

• Cannot use model for scenario modelling e.g. How does prevalence change if smoking prevalence decreases?

Page 14: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Chronic Obstructive Pulmonary Disease

Model QOF

Page 15: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

How to use modelled estimates

• As an indication of likely disease prevalence• The estimates are only as good as the input

data• Smaller areas have greater uncertainty• May be inaccurate for areas with special

characteristics not captured by input data (e.g. ethnic population with very low/high smoking prevalence)

• Be careful with denominators, especially when comparing to QOF

Page 16: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Next Steps

• Practice level modelling• Collaboration with NHS Comparators• Mental Health modelling

– Psychosis– Neurosis and Personality Disorder– Drug or alcohol dependence

Page 17: Prevalence Modelling – an APHO perspective Hannah Walford Eastern Region PHO With contributions from Julian Flowers, ERPHO Michael Soljak, Informing Healthier.

Links

• All results and technical documentation are available through the APHO website http://www.apho.org.uk/resource/view.aspx?RID=48308