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Design of Type 1 Diabetes TrialNet Protocols Mark Espeland
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Page 1: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Design of Type 1 Diabetes TrialNet Protocols

Mark Espeland

Page 2: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

How long should the treatment and follow-up period in trials be?

Issues related to variance sources and latent structure

• Measured C-peptide as an indicator of current levels/status of C-peptide secretion

• Current levels/status of C-peptide secretion as an indicator of usual levels/status of C-peptide secretion

• Usual levels/status of C-peptide secretion as a measure of B-cell function

Page 3: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Timeframe Issues

• DCCT confirms that treatments may have long-lasting but slowly detectable influences– Impact of intensive therapy on atherosclerosis

• Validation of surrogates requires long follow-up times – Relating change in surrogates with

subsequent incidence of “hard” endpoints

Page 4: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Can larger numbers of treatments be compared simultaneously with aggressive curtailment for futility?

• Yes, if there is appropriate standardization with respect to protocols and inclusion– Play-the-winner strategies for allocation of

resources (e.g. participants and follow-up)– Requires accelerated measurement protocols

and intermediated outcomes– Costs – if timeframes of effects vary, this may

disenfranchise some interventions

Page 5: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

More Timeframe Issues

• Use of historical controls– Network provides opportunities

• Standardization• Homogeneity

– Potential for imbalances may have difficult issues

• Mismeasured covariates• Timescales

Page 6: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Yanez, et al. Statist Med 1998;17:2597-2606

• Use of baseline as a covariate in change models, if imbalances exist, may introduce considerable bias in relationships with change may be attributable to measurement error

• Example: change in atherosclerosis in Cardiovascular Health Study

Page 7: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Thiebaut ACM, Benichou J. Statist Med 2004;23:3803-3820.

• If imbalances exist, use of different timescales (e.g. age-based, time from randomization, time from diagnosis) may provide very different portrayals of relationships

• Example: predictors of breast cancer

Page 8: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Can short term trials be grafted onto long term trials – roll phase 2

patients into phase 3 studies?

• Not unless formal probabilistic control is defined

• Phase 2 participants certainly can be followed to gain additional useful information

Page 9: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Should trials be powered for large effect sizes or for more moderate

effect sizes with monitoring guidelines that could terminate early for an unexpected large

effect?

Page 10: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Effect Size

• Issue of clinical utility

• Moderate effect sizes are reasonable

• Trials powered only to detect large results may have intolerable Type II error

Page 11: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Should trials be powered to rule out adverse effects?

• No– Phase 2 and Phase 4 contributions– Multiple comparisons

• “Safety” indices may be a useful endpoint and/or guide to termination (e.g. WHI)

Page 12: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Regulatory Standards

“Regulatory standards should be based on the properties of the distribution of … (“responses”). At present, is only based on the expectation of this distribution … “

Longford N. Statist Med 1999;18:1467-74

Page 13: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Observed Outcomes

Harm Benefit

Page 14: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Homogenous Response

Harm Benefit

“True” Responses

Measurement Error

Page 15: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

No Measurement Error

Harm Benefit

Measurement Error

“True” Reponses

Page 16: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Mixture Distribution: Response and Error

Harm Benefit

Measurement Error

True Responses

Page 17: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

“Clinical” Criteria for Surrogacy

Boissel J-P, Collet J-P, Moleur P, Haugh M. Surrogate endpoints: a basis for a rational approach. Eur J Clin Pharm 1992; 43: 235-244.

Page 18: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Boissel Criteria for Surrogacy

Efficiency The surrogate marker should be relatively easy to evaluate, preferably by non-invasive means, and more readily available than the gold standard. The time course of the surrogate should precede that of the endpoints so that disease and/or disease progression may be established more quickly via the surrogate. In this manner, clinical trials based on surrogates should require fewer resources, less participant burden, and a shorter time frame.

Page 19: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Boissel Criteria for Surrogacy

Linkage The quantitative and qualitative relationship between the surrogate marker and the clinical endpoint should be established based on epidemiological and clinical studies. The nature of this relationship may be understood in terms of its pathophysiology or in terms of an expression of joint risk.

Page 20: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Boissel Criteria for Surrogacy

Congruency The surrogate should produce parallel estimates of risk and benefit as endpoints. Individuals with and without disease should exhibit differences in surrogate marker measurements. In intervention studies, anticipated clinical benefits should be deducible from the observed changes in the surrogate marker.

Page 21: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

What happens when statisticians define surrogacy?

Page 22: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Rule Out the Obvious

• “Perfect” surrogates do not exist– Let S denote surrogate outcome– Let T denote “true” outcome

• If S and T always provide the same answer (given linear models and normal distributions), it implies Corr(S,T) = + 1.00

Alonso A, et al. Biometrics 2004;60:724-8.

Page 23: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Develop Equations

• Let Z denote the intervention

• Let f( ) denote a “distribution”– Implicit range– Potential covariates– Undefined functional form

Page 24: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Prentice Criteria For Surrogates

• P1: f(T|Z) ne f(T): intervention affects the distribution of T

• P2: f(S|Z) ne f(S): intervention affects the distribution of S

• P3: f(T|S) ne f(S): so surrogate affects the distribution of T

• P4: f(T|S,Z) = f(T|S) so that conditional on S, T is independent of Z

Prentice R. Statist Med 1989;8:431-440.

Berger VW. Statist Med 2004;23:1571-8.

Page 25: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

“Themes” of Prentice Definition: Abstraction

• A surrogate may or may not be as efficient, cost effective, or burdensome as the true outcome.– Problem is objective and mathematical

Page 26: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

“Themes” of Prentice Definition: Localization

• Functions “f()” require definition– Surrogacy may be limited in scope,

timeframe, model, and cohort– Covariates may be required

• Definition is dependent and specific to intervention– No such thing as a “universal” surrogate

Page 27: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

“Themes” of Prentice Definition: Dependent on Effect of

Intervention

• P1: f(T|Z) ne f(Z)– Only applies when the intervention has an

effect– In an randomized trial, any baseline

characteristic is a “surrogate” if the intervention has no effect

Page 28: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

“Themes” of Prentice Definition: Impossible to “Validate”

• Difficult to confirm null: conditional independence

• Impossible to anticipate intervention effect

• Impossible to generalize localization

Page 29: Design of Type 1 Diabetes TrialNet Protocols Mark Espeland.

Impact of Prentice Definition

• No “non-trivial” surrogates exist• No precise validation possible• Methods developed to estimate proportion

of “true” effect expressed by surrogate– Unsatisfactory

• However, paradigm can be used to argue for surrogacy– Espeland, et al. Carotid IMT in statin trials (in

press)