Cono Ariti: matched control studies

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© Nuffield Trust 22 June 2015

Matched Control Studies:

Methods and case studies

Cono Ariti

cono.ariti@nuffieldtrust.org.uk

© Nuffield Trust

Predictive risk

modelling

Resource

allocation

Descriptive

studies Evaluations

Integrated

care

pilots

nuffield trust

Nuffield Trust Research team – data linkage projects

Risk

sharing

for CCGs

nuffield trust Combined

predictive

model

nuffield trust

Person

based

resource

allocation

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Social

care at

end of life

nuffield trust

Cancer

and social

care

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Predicting

social

care

costs

nuffield trust

Virtual

Wards

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WSD

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British Red

Cross

nuffield trust

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Need for evaluation

Need to know what works

• In a practical setting – “real world evaluation”

• Clarify the debate

• Likely impacts – unbiased results

• Link to qualitative work

Refine programs

• Obtain feedback and learnings – the pain of implementation

• Explore sub-groups – where did it work? Where could it work?

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Issues with evaluations

Randomised control trials

• “Gold standard”

• May not be feasible or ethical

• Inclusion and exclusion rules can limit generalisation

• Are still subject to poor implementation – can induce bias

• Potentially expensive!

Observational studies

• Typically no “natural” experiment exists

• Often no comparable control group to provide a fair assessment

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Matched Control Studies -

Methods

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Matched Control Studies

The basic idea

• Match controls to those treated based on measured characteristics in existing datasets

• The control group and treated group should look similar “on balance”

• Mimics the idea of an RCT

• Based on propensity score theory (Rubin & Rosenbaum, 1983) and earlier work on matching (Cochran, 1965)

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Matched Control Studies

Matching

• Prognostic risk score

• Demographics – age, gender, deprivation, ethnicity

• Prior acute care service use – admissions, OP and A&E attendances

• Prior diagnoses, targeted chronic conditions

Balance

• In this case all matching variables

• Additional variables such as length of stay, additional diagnoses and longer service use history

• Assures comparability between the groups

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Matching Algorithm

Algorithm

• Exact match not possible

• Computer intensive “genetic algorithm”

• Uses a weighted Mahalanobis “distance” to determine closest match

• Automatically assesses balance and moves to an improved solution

Assessing Balance

• On overall group similarity

• Compares means and distribution of variables in the two groups

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Analysis of matched control studies

• Standard statistical methods to estimate the difference in the two groups

• Regression models, difference in difference analysis

• By including matching variables in the statistical adjustment remaining imbalances can be reduced – “doubly robust”

• Methods exist for sensitivity analysis – impact of unobserved variables

• Some controversy around accommodating the matching in analysis

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Case Study 1: Telehealth

Programme

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Case Study 1: Telehealth program

Intervention:

• Remote monitoring for patients with long term conditions

Nuffield commissioned to evaluate impact:

• Primary: Reduction in emergency hospital admissions?

• Secondary: Reductions in Emergency attendances, outpatient attendances, mortality

Methods:

• Retrospective matched control study – use of already existing administrative data

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Description: Telehealth program

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Matched control studies – broad aim

>30,000 individuals – resident in local area June

2010 to March 2013, did not receive telehealth

and were eligible for matching

(local controls)

Aim to find 716 individuals who match

almost exactly on a broad range of

characteristics

Use this group as study control group

716 individuals – enrolled June 2010 to March 2013

& received Telehealth intervention & eligible for

matching

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Datasets available

Telehealth Nuffield trust

N = 716

• person details

• dates of service

• type of service

Identifiers:

Names, DOB,

Addresses, etc

• dates & place

of death for all

people in

England,

• associated

hospital (HES)

records

Identifiers:

Nuffield Trust

specific HESID

Administrative data ONS deaths Hospital inpatient, outpatient, AE

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Telehealth Data Linkage Service Nuffield Trust

New Identifier New Identifier New Identifier

(NHS no) (NHS no)

Names Names

Address Address

DOB DOB

HESID HESID

Telehealth person identifiers (File A)

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Final datasets available for analysis

Nuffield trust

Identifiers:

HESID on all

ONS deaths Hospital inpatient, outpatient, AE Telehealth data - desensitised

Use all this

info to carry

out matched

control

analysis

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Control group – how well matched?

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Control group – how well matched?

Telehealth Controls

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Control group – how well matched?

Telehealth Controls

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Key Result 1: Risk of admissions or death

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Key Result 2: Changes in admissions or attendances

(six months pre and post intervention)

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Results

• Telehealth patients tended to be admitted for an emergency admission earlier than control patients

• There was no difference in mortality between the telehealth and control groups

• There were no statistically significant reductions in hospital admissions when comparing the period six months before and after the telehealth intervention

• In summary the Telehealth program did not have a significant impact on acute care outcomes

• Sensitivity analysis showed little evidence of an important unobserved variable

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Matched Control Studies:

Summary

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Matched Controls: Summary

Benefits

• Makes full use existing data, with relative ease

• Techniques applicable to many different types of services and datasets

• Decisions on what seems to work (and what may not) based on more robust analyses leading to better informed decisions

Caveats

• If important unobserved variables exist results may be biased

• The routine data sources must contain the relevant data

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Implementing locally – key enablers

Do you have … Can you …

• Access to data that contains

the outcomes relevant to your

evaluation?

• Access to data containing

relevant matching

characteristics?

• Do you have consent to

access/link the data?

• Analysis tools to apply

statistical methods to the data?

• Skilled analysts to analyse the

data?

• Link multiple sources of data?

• Handle large amounts of data

(millions of observations)?

• Identify recipients of the

intervention?

• Transform and augment that data

with bespoke variables?

• Apply sophisticated matching

algorithms routinely to this data?

• Analyse the data with a variety of

statistical methods and interpret

the results appropriately?

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