Analysis Issues in Assessing Efficacy in Randomized Clinical Trials

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Analysis Issues in Assessing Efficacy in Randomized Clinical Trials. “Intention to Treat” and Compliance. Elizabeth Garrett-Mayer Oncology Biostatistics April 26, 2004. Randomized Clinical Trials. Why are randomized trials the “gold-standard” for assessing treatment efficacy? - PowerPoint PPT Presentation

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Analysis Issues in Assessing Efficacy in Randomized Clinical

Trials“Intention to Treat”

and Compliance

Elizabeth Garrett-MayerOncology Biostatistics

April 26, 2004

Randomized Clinical Trials

• Why are randomized trials the “gold-standard” for assessing treatment efficacy?

• Randomization!

• Balances factors that might be related to treatment effects across groups

• Controls confounding.

• Avoids selection bias in forming groups.

General Problem

• Study subjects do not always adhere to protocol– Drop-out– Switch treatments– Take only a portion of assigned treatment

• How do we account for ‘compliance’?

• Most would say: “we don’t and we shouldn’t!”

Example: Coronary Drug Project

• Total mortality using clofibrate vs. placebo in men with history of myocardial infarction– Good adherers, clofibrate: 15% mortality– Poor adherers, clofibrate: 25% mortality– Good adherers, placebo: 15% mortality– Poor adherers, placebo: 28%

mortality

• Tried to ‘adjust’ but it didn’t help.

Intention to Treat (ITT)

• What is “intention to treat”?• Analyze the data based purely on the

randomization• Ignore the following:

– Cross-overs– Non-compliance/Drop-outs

• Sounds illogical, but, in principle, it isn’t.• Some encourage ‘supplementary

analyses’ which look at compliers only

Examples of Violation of ITT

• Compare only patients who actually received assigned treatment.

• Assign patients to comparison groups based on the treatment they received.

• Exclude patients with low adherence/compliance

What do we know about compliance?

• In general, compliance …..• Is not random

– Individuals who are not compliant might also have other ‘factors’ which are related to the outcome

• Is not dichotomous– Non-compliers can have varying levels of non-compliance– E.g. might only take ½ of prescribed medications, might only take

¼.• Can fluctuate over time

– Often, compliance is good early in study and then tapers off.– Sometimes, patients will take lots of meds close to office visit to

‘make-up’ for non-compliance.• Is hard to measure

– Reliability– Completeness– Inequality of follow-up across arms

So…..

• It is potentially “hazardous” to rely on analyses that allow for non-compliance

• ITT is unbiased: it measures ‘effect’ in global sense– If people are non-compliant on trial, they are likely to

be non-compliant in “real-life”– If people switch medications, or self-medicate on trial,

they are likely to do that in “real-life”

• And, compliance analyses are usually an afterthought:– Not part of the clinical trial protocol– Ad hoc analyses decided after the study is over.

Tempting…

• It is tempting to analyze by ‘treatment received’, BUT!– The groups are no longer comparable– Effectiveness of treatment should incorporate

compliance (outside trial people may be even LESS compliant)

But, ITT is not always ideal

• Supplementary analyses are often warranted

• They can provide additional information

• But, by and large, experts agree:

ANALYSIS BY “INTENTION TO TREAT” SHOULD REMAIN THE MAIN STATISTICAL

APPROACH FOR PRESENTING COMPARATIVE RESULTS FROM RANDOMIZED CLINICAL TRIALS.

Example

• Serum Cholesterol in elderly hypertension trial• Patients were randomized to either (A) diuretic,

(B) beta-blockers, or (C) placebo• 1 year post randomization:

– (A) vs. (C): +0.12 mmol/l change in serum cholesterol (p=0.001)

– (B) vs. (C): +0.08 mmol/l change in serum cholesterol (p=0.003)

• SURPRISING: Why would there be a lipid effect of beta-blockers?

Compliance issues

• 30% of beta-blocker group were also receiving diuretic by 1 year either instead of or in addition to beta-blocker.

• Alternative analysis: Consider 3 groups– Diuretic alone– Beta-blocker alone– Both

• Results:– Diuretic alone: +0.11 (p<0.001)– Beta-blocker alone: +0.03 (p=0.20)

How to interpret these results?

• ITT is not “wrong” analysis

• But, the additional analysis provides insight.

• Sometimes, however, it gets messy and hard to interpret.

Example: Febrile Seizures

• Use of phenobarbitol for the prevention of recurrence of febrile seizures in children.

• Question: it might help seizures, but does it hurt child’s cognition?

• Randomized double blind placebo controlled trial• Outcomes: Seizure recurrence, change in IQ• Some failed compliance• Some crossed-over• Depending on how adherence is defined,

different results and different inferences.

Strange results???

Strange results???

Sometimes ITT is not an option

• Two kinds of outcomes (generally):– Visit-related: quantitative lab measures, symptoms– Events: death, relapse, development of disease.

• Visit-related endpoints are harder for follow-up • Patients may drop out between the baseline and

follow-up visit.– Non-compliance with treatment is related to non-

compliance with follow-up.– Non-compliance is not independent of treatment

group.

Example: Incomplete Follow-Up

• MAAS: Multicentre Anti-Atheroma Study• Simvastin versus placebo• N = 381 patients with coronary artery disease

(CAD)• Outcomes: Mean change in 4 year mean and

minimum lumen diameter of preselected segments of coronary arteries

• Study planners realized four year follow-up would only be achieved by a subset of patients

Example: Incomplete Follow-Up

• How can we plan ahead for that?• Options:

– Increase sample size? – Use 4 year data on completers only?– Use LOCF (last observation carried forward)?

• Problems:– Sample size increase will still not help with the bias– Completers only analysis introduces bias– LOCF has validity issues: assumes that patients

observation at, for example, 2 years is the same as at 4 years.

Example: Incomplete Follow-Up

• Planners decided to use LOCF

• Preserved the ITT approach

• Introduced bias into the measurements

Another example: Differential Dropout

• Inhaled corticosteroids vs. placebo• 116 kids with asthma• Outcome measure is FEV (forced expiratory

volume)• More patients withdrew on placebo arm than on

corticosteroid arm (26 vs. 3).• Dropout due to exaccerbation of symptoms (so,

maybe treatment works!)• Difficult to interpret quantitative results• “Informative censoring”

Using Compliance Data

• Example: Obesity study• European multi-centre double-blind randomized

trial of dexfenfluramine (dF) versus placebo.• 1 year follow-up of 822 obese patients• Compliance data:

– Plasma concentrations of fenfluramine(F) and its metabolite norfenflurmaine (nF) taken at 6 and 12 months.

– Compliance “outcome” is nF+F.• Original study found significant effect of dF, but

wanted to address the issue of compliance

Using Compliance Data

So, now what?

• How can we use the compliance information in assessing efficacy?

• Think of a regression approach: Pocock et al.

Y F nF ei i i i i 0 1 2( ) p lacebo

How to understand the equation:Y F nF ei i i i 0 1 ( )

Y F nF ei i i i 0 1 3( )

dF:

Placebo :

0 20 40 60 80

-14

-12

-10

-8-6

-4

F+nF level

Me

an

% w

eig

ht c

ha

nge

DrugPlacebo

What does this tell us?

• It helps understand the mechanism

• Model makes certain assumptions– “Linear” change in weight loss– Placebo treated are “like” dF treated patients

• But, we can make useful inferences

• Missing data???

Other compliance approaches

• Pill counts– Pros

• Easy and non-invasive approach• Can ‘blind’ the patients

– Cons• Easy for patient to pretend (by getting rid of pills)• Compliance may vary • Patient may take many pills just prior to visit

• “Mems caps”: Medication Event Monitoring System

• Diaries: interesting mechanism that not only ‘records’, but also might change the behavior.

Pill Counts in Obesity Study

Broader Issue

• Confounding?

compliance

treatment

outcome

Compliance associatedwith treatment.

Compliance associatedwith outcome.

Treatment associated with outcome????

?

Why then perform ITT and ignore compliance?

• First, compliance is hard to measure• Second, we don’t want to make inferences where we

have to ‘condition’ on compliance.• Third, and most importantly, it is a mistake to adjust for

something that is related to treatment (e.g. compliance)! Recall “causal pathway” idea.

compliance

treatment

outcome

What if compliance is not related to treatment?

• No longer have confounding!

compliance

treatment

outcome

Notice directionality of arrows

compliance

treatment

outcome

compliance

treatment

outcome

?

Compliance is on causal pathwaybetween treatment and outcome.

Compliance is NOT on causalpathway.What could give rise to this figure?

If treatment can be self-selected, non-compliers might choose differenttreatment.

CONFOUNDING!

Broader Issue: Adjustment

• My favorite confounding example

• Observational study of the effects of coffee on lung cancer

coffee

cancer

smoking associatedwith coffee.

smoking associatedwith cancer.

But, coffee NOT associated with cancer.

smoking?

What if?

• What if coffee consumption was causally associated with smoking (i.e. coffee causes smoking?)

coffee

cancer

coffee causes smoking.

smoking causescancer.

Does coffee cause cancer?

smoking?

Adjustment

• Attempt to remove effect of differences in baseline composition of groups on the outcome of interest.

• Analytic procedure• Only for observational studies?

– No: randomized studies might have imbalance that can be adjusted

• How to adjust?– stratification or subgroup analyses– regression approaches (e.g. linear or logistic regression)

• Adjustment factors SHOULD be measured prior to treatment assignment

• Do not want to adjust for factors that are a result of protocol!