Title: Cluster Randomised Trials
1Cluster Randomised Trials
2Background
- In most RCTs people are randomised as individuals
to treatment. Whilst this method is appropriate
for many interventions (e.g. drug trials), in
some types of intervention individuals cannot be
randomised. - An alternative approach is randomise groups of
individuals or clusters.
3History
- Cluster trials originated from educational
research. Intact classes or schools were
randomised to an intervention or no intervention. - Sadly educational researchers have all but
abandoned RCTs in favour of qualitative research.
4Rationale For Cluster Randomisation
- Some interventions have to be delivered at a
group level. - Guidelines for clinicians
- Interventions to reduce infectious diseases
- Practical considerations
- Potential for treatment contamination
5Clusters
- A cluster can take many forms
- GP practice or patients belonging to an
individual practitioner - Hospital ward
- A period of time (week day month)
- Geographical area (village town postal
district).
6Cluster allocation
- Because the unit of allocation is the cluster and
the sample size of clusters tends to be small
care needs to be taken with cluster allocation. - With typically only 10 or so clusters simple
randomisation is likely to lead to chance
imbalance.
7Cluster allocation
- Need to use some form of stratification.
- Pairing is often used match clusters on an
important co-variate and randomly allocate a
member of each pair to the intervention. - Stratification using blocking or the use of
minimisation is an alternative.
8Problems with Cluster Randomisation
- Possible Selection Bias
- Inadequate uptake of intervention by either group
reduces study power - Sample size needs to be increased (typically
between 50 to 100), which will often increase
the cost and complexity of a trial.
9Selection Bias - A Reminder
- This is where individuals who are using a
treatment have some difference, unrelated to the
treatment, that affects outcome. - For example, women using HRT take more exercise,
are slimmer, have higher social class compared
with those who do not - may explain
cardiovascular benefit.
10Randomisation
- Randomisation, or similar procedure, will balance
known and unknown co-variates or confounders
across the groups and therefore selection bias
should not occur. - Thus, in an HRT trial women in treatment and
placebo groups will have the same weight,
exercise levels etc.
11Selection Bias in Randomised Trials
- This should not occur in an individually
randomised trial unless the randomisation has
been subverted. - However, in cluster trials it is possible for
selection bias to occur after successful cluster
randomisation. - This defeats the objective of randomisation.
12Selection Bias in Cluster Trials
- Given enough clusters bias should not occur in
cluster trials as randomisation will deal with
this. - HOWEVER, the clusters are balanced at the
individual level ONLY if all eligible people, or
a random sample, within the cluster are included
in the trial.
13Recruitment into cluster trials
- A key issue is individual participant recruitment
into cluster trials. - There are a number of ways where biased
participant recruitment can occur, which can lead
to baseline imbalances in important prognostic
factors.
14Participant flow in cluster trial sources of bias
15Identification Problems
- For example, in a cluster trial of backpain equal
number of patients with same severity of back
pain will be present in both clusters. The
problem lies in how to identify such patients to
include them in the interventions. Unless one is
very careful different numbers and types of
patient can be selected.
16UK BEAM Trial
- The UKBEAM pilot study used a cluster design.
Eligible patients were identified by GPs for
trial inclusion. - GP practices were randomised to usual care or
extra training. - The primary care team were trained to deliver
active management of backpain.
17UK BEAM Selection bias
- The pilot showed that practices allocated to
active management were more adept at
identifying patients with low back pain and
including them in the trial. - Patients had different characteristics in one arm
than the other.
18UK BEAM participant recruitment
P 0.025 P 0.001 P 0.03
19UKBEAM pilot study.
20UK BEAM
- Because of the selection bias in the cluster
design that element of the trial was abandoned
and the trial reverted to completely individual
allocation.
21Cluster Trials Rule 1
- All eligible patients or a random sample ideally
MUST be identified BEFORE clusters are
randomised. - Alternatively systems must be put into place to
PREVENT selective recruitment.
22Trial Consent Problems
- Even when it is possible to identify all eligible
members of a cluster some may not consent to take
part in the trial. If there is differential
consent, in particular, this can lead to
selection bias again.
23Hip Protector Trial
At this point trial is balanced for all
co-variates
Kannus. N Eng J Med 20003431506.
24First Rule
- Kannus trial DID identify all eligible patients
at baseline, thus, fulfilling first rule of
cluster randomisation.
25Hip Protector Trial
Selection Bias
26Fracture risk Important Co-variates
- Most important risk factors for hip fracture are
(in order of importance) - Being Female
- Age
- Body Weight
27Important Co-variates Balanced at baseline?
28Results of Trial.
- Hip fractures were reduced by 60 (95 CI 0.2 to
0.8) - HOWEVER, arm fractures were also reduced by 30
(0.3 to 1.5). - Suggesting that some or all of the hip fracture
effect could have been due to selection bias.
29Hip Protector Trial
30Cluster Trials Rule 2
- As in individually randomised trials imperative
to use intention to treat analysis.
31Inadequate uptake of intervention
- Because a robust cluster trial consent to
randomisation is not given only consent to
treatment this results in a proportion of
eligible participants declining the intervention
BUT have to stay in the trial for intention to
treat analysis and this reduces study power. - This also leads to DILUTION BIAS.
32Accident prevention
- In a cluster trial of accident prevention among
young children 25 of parents in the experimental
arm did not receive the intervention. Clearly
this will reduce the power of that trial AND
dilute any likely treatment effect.
Kendrick et al. BMJ 1999318980.
33Cluster Trials Rule 3
- Increase sample size to compensate for less than
100 uptake of intervention. - Or alternatively and in conjunction identify and
consent before randomisation and then only use
those participants who have expressed a
willingness to take part in the trial.
34Review of Cluster Trials
- Because of the BEAM problem we decided to
undertake a methodological review of cluster
trials. - We identified all cluster trials published in the
BMJ, Lancet, NEJM since 1997.
Puffer et al. BMJ 2003327785.
35Results
- We identified 36 relevant trials. ONLY 13 had
identified participants prior to randomisation. - Of the 23 not identifying participants a priori 7
showed evidence of differential recruitment or
consent. - Other biases included differential of inclusion
criteria or attrition. - In total 14 (39) showed evidence of bias.
36Underestimate of problem
- Only in 5 papers did authors alert reader to
possible problem. - Subsequently one of the trials that looked OK
was published elsewhere where recruitment bias
was admitted to have occurred. - Cluster trials are DIFFICULT to undertake
robustly. - Is there an ALTERNATIVE?
37Cluster Sample Size
- Usual sample size estimaes assume independence of
observations. When people are members of the
same cluster (e.g., classroom, GP surgery) they
are more related than we would expect to be at
random. - This is the intra-cluster correlation
co-efficient.
38ICC
- The ICC needs to incorporated into the sample
size calculations. The formula is as follows
Design effect 1 (m 1) X ICC. Design effect
is the size the sample needs to be inflated by.
M is the number of people in the cluster.
39Sample size example.
- Lets assume for an individually randomised trial
we need 128 people to detect 0.5 of an effect
size with 80 power (2p 0.05). Now assume we
have 24 groups with 7 members. The ICC is 0.05,
which is quite high. - 1 (7 1) x 0.05 1.3, we need to increase the
sample size by 30. Therefore, we will need 166
participants.
40What happens if cluster gets bigger?
- If our cluster size is twice as big (14), things
begin to get really interesting. - 1(14-1)x0.05 1.65.
- What about 30? (1(30-1)x 0.05 2.45 (I.e, 314
participants).
41What makes the ICC large?
- If the treatment is applied to health care
provider (e.g., guidelines will increase ICCs for
patients). - If cluster relates to outcome variable (e.g.,
smoking cessation and schools) - If members of cluster are expected to influence
each other (e.g., households).
42Reviews of Cluster Trials
Authors Source Years Clustering allowed for in sample size Clustering allowed for in analysis
Donner et al. (1990) 16 non-therapeutic intervention trials 1979 1989 lt20 lt50
Simpson et al. (1995) 21 trials from American Journal of Public Health and Preventive Medicine 1990 1993 19 57
Isaakidis and Ioannidis (2003) 51 trials in Sub-Saharan Africa 1973 2001 (half post 1995) 20 37
Puffer et al. (2003) 36 trials in British Medical Journal, Lancet, and New England Journal of Medicine 1997 2002 56 92
Eldridge et al. (Clinical Trials 2004) 152 trials in primary health care 1997 - 2000 20 59
43Sample Size Problems
Cluster Trials Demand Larger Sample Sizes
44Summary of sample size
- The KEY thing is the size of the cluster. It is
nearly always best to get lots of small clusters
than a few large ones (e.g, a trial with small
hospital wards, GP practices, classrooms will,
ceteris paribus, be better than large clusters). - BUT if the ICC is tiny may not affect the sample
too much.
45Analysis
- Many cluster randomised health care trials have
been INCOMPETENTLY analysed. Most analyses use
t-tests, chi-squared tests, which assumes
independence of observations, which are violated
in a cluster trial. - This leads to spurious p values and narrow CIs.
- Various methods exist, e.g., multilevel models,
comparing means of clusters, which will produce
correct estimates.
46Cluster Trials Should I do one?
- If possible avoid like the plague. BUT although
they are difficult to do, properly, they WILL
give more robust answers than other methods,
(e.g., observational data), when done properly. - Is it possible to avoid doing them and do an
individually randomised trial?
47Contamination
- An important justification for their use is
SUPPOSED contamination between participants
allocated to the intervention with people
allocated to the control.
48Spurious Contamination?
- Trial proposal to cluster randomise practices for
a breast feeding study new mothers might talk
to each other! - Trial for reducing cardiac risk factors patients
again might talk to each other. - Trial for removing allergens from homes of
asthmatic children.
49Contamination
- Contamination occurs when some of the control
patients receive the novel intervention. - It is a problem because it reduces the effect
size, which increases the risk of a Type II error
(concluding there is no effect when there
actually is).
50Patient level contamination
- In a trial of counselling adults to reduce their
risk of cardiovascular disease general practices
were randomised to avoid contamination of control
participants by intervention patients.
Steptoe. BMJ 1999319943.
51Accepting Contamination
- We should accept some contamination and deal with
it through individual randomisation and by
boosting the sample size rather than going for
cluster randomisation
Torgerson BMJ 2001322355.
52Counselling Trial
- Steptoe et al, wanted to detect a 9 reduction in
smoking prevalence with a health promotion
intervention. They needed 2000 participants
(rather than 1282) because of clustering. - If they had randomised 2000 individuals this
would have been able to detect a 7 reduction
allowing for a 20 CONTAMINATION.
Steptoe. BMJ 1999319943.
53Comparison of Sample Sizes
NB Assuming an ICC of 0.02.
54Misplaced contamination
- The ONLY study, Im aware of to date, to directly
compare an individually randomised study with a
cluster design, showed no evidence of
contamination. - In an RCT of nurse led cardiovascular risk factor
screening some intervention clusters had
participants allocated to no treatment. NO
contamination was observed.
55Cluster Trials
- Can cluster trials give different results?
- All things being equal this shouldnt happen
(except for a more imprecise estimate). BUT
because of the greater potential for selection
bias cluster trials MAY give the wrong answer.
56An example.
- There are 14 RCTs of hip protectors for the
prevention of hip fracture. - Nine RCTs are individually randomised trials,
whilst 5 are cluster trials (e.g., hospital ward,
nursing home). - Cluster trials, without exception show a benefit
of hip protectors.
57Hip Protector Trials
Individual RCTS Cluster RCTs
1.19 (0.8 to 1.7) 0.34
0.94 (0.5 to 1.7) 0.53
0.93 (0.5 to 1.7) 0.44
1.17 (0.4 to 3.0) 0.34
0.39 (0.1 to 1.4) 0.11
0.20 (0.0 to 1.6) All Cluster trials, bar , significant, No individual trial was significant
1.49 (0.3 to 7.1) All Cluster trials, bar , significant, No individual trial was significant
3.03 (0.6 to 14.8) All Cluster trials, bar , significant, No individual trial was significant
58Hip Protector Trials Cluster vs Individually
Randomised.
59Age differences between good cluster and poor
cluster trials.
Data from Puffer et al.
60Guidelines
- Royal College of Physician guidelines for
fracture prevention grade hip protectors as grade
A evidence based on flawed, cluster trial,
evidence.
61Cluster Trials- What Should We Do?
- Identify ALL eligible people if possible BEFORE
randomisation - ALWAYS use Intention To Treat analysis
- INCREASE sample size not only for cluster effects
but also because of treatment refusal
62Cluster designs
63Cluster designs
64Cluster designs
65Summary
- Cluster Trials are currently very trendy
- Whilst in principle they are a robust. design in
practice fraught with difficulty. - If possible avoid and opt for individual
randomisation - If cluster trial is necessary follow rules to
avoid bias.