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Selected Issues in Oncology Trial Design . Grant Williams, M.D. DODP, CDER, FDA. Outline of Presentation. Challenges in oncology trial design Non-inferiority trials in oncology Time to Progression (TTP) The TTP question in a regulatory framework TTP-like endpoints Pros and Cons of TTP.
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Selected Issues in Oncology Trial Design Grant Williams, M.D. DODP, CDER, FDA
Outline of Presentation • Challenges in oncology trial design • Non-inferiority trials in oncology • Time to Progression (TTP) • The TTP question in a regulatory framework • TTP-like endpoints • Pros and Cons of TTP
Blinding Oncology Trials • Problems • Unmasking of blind by side-effects • Need to adjust doses • Opportunities: • Oral drugs with fewer side-effects
Use of Placebos in Oncology Trials • Problem: • Placebo-alone control usually not feasible in advanced cancer • Potential use of placebos • Settings: “prevention”, adjuvant, or early disease • Add-on designs (Drug A plus Drug B versus Drug A plus placebo) • May allow continuation of drug and placebo after failure of Drug A (e.g., bisphosphonates) • practical orPlacebo-alone treatment is uIn advanced settings it Often may not be practical and/or ethical for cancer patientuse a placebo-alone treatment arm
No Blind or Placebo, Consequences: • Limits choice of clinical-benefit endpoints • Limits trial designs: • Control must be an active drug • Superiority design (preferred) • requires new drug to be more effective • or use add-on design • Non-inferiority design • requires large trials • Quality of historical data on active control limits NI design • Result: It is difficult to approve drugs that are similar but less toxic
The Combination Drug Problem • Drug approvals, drug labels, and drug marketing focus on effects from individual drugs. • Many oncology regimens are combinations where the efficacy contribution of individual drugs may not be precisely defined.
Non-Equivalent Words • Superiority: • Determined with statistical confidence • Equivalence: • Has no statistical meaning • Non-inferiority • Definition: no worse by a specified margin • Proving non-inferiority does not necessarily prove efficacy (next slides) • Not statistically different: • has no meaning without details
Regulatory Goal of NI Trial • Demonstrate Drug B is effective • By referring to historical Drug A effect • By randomizing A versus B • By prospectively identifying a margin that includes an acceptable fraction of Drug A efficacy • By proving that Drug B is no worse than Drug A by that margin • By determining that the “constancy assumption” is valid
Critical Assumption of NI Trial • “Constancy assumption”: The historically observed drug effect of the active control drug also exists in the current NI trial and population Potential differences • Population • Supportive care • Additional available therapies • Study design (observation frequency, etc.) • Violating this assumption could lead to approval of “toxic placebo”
Sloppiness / Poor Quality Data • Sloppiness obscures differences • Superiority trial designs: obscures efficacy • For NI trials: could lead to false efficacy claim
Determining the Margin from Historical Cancer Drug Effects • Step 1: Estimate effect size and confidence intervals of active control drug • Needed (Ideally): • Multiple historical trials showing effect • Consistent large drug effect • Oncology reality: • Small historical drug effect in one or two trials • Leads to very small margin • Leads to very large NI studies • Drug combinations even more complicated
The Effectiveness Standard • 1962 amendments: “claimed effect” • Subsequent rulings: “Clinical meaning” • “Clinical meaning” in oncology • 1970s: minimal activity • 1985 : survival or effect on “QOL” (symptoms or function) • 1990s-2000s: use of some surrogates
Surrogates in Drug Approval • Surrogate endpoint definition*: • Substitute for a clinically meaningful endpoint that measures directly how a patient feels, functions or survives. • Changes are expected to reflect changes in a clinically meaningful endpoint. *Temple RJ, Clinical Measurement in Drug Evaluation. Nimmo and Tucker. John Wiley & Sons Ltd, 1995.
Established Surrogates Supporting Regular Approval • Blood pressure • Blood sugar • Blood cholesterol
Oncology Surrogates • AA surrogate: reasonably likely • “Validated” Surrogates • Few and far between • Surrogates for CB supporting regular approval • Judged by FDA and experts in the field to be reliable indicators of CB
The Ideal: Prentice’s Sufficient Conditions The surrogate endpoint must be correlated with the clinical outcome The surrogate endpoint must fully capture the net effect of treatment on the clinical outcome
Surrogate Endpoint Validation* • Meta-analyses of clinical trials data • Comprehensive understanding of: • The causal pathways of the disease process • The intervention’s intended and unintended mechanisms of action From Tom Fleming, Ph.D.
Is TTP a Clinical Benefit Measure? • Does TTP have clinical meaning? • Cancer growth leads to suffering and death • Delaying cancer growth is good
Is TTP a Clinical Benefit Measure? • The critical issues: • Can you measure TTP reliably? • How much progression delay is worth how much toxicity? • What is the relative meaning of a TTP benefit to other benefits such as survival?
Acceptance of Clinical Benefit Based on Tumor Effects (RR or TTP), Examples • Hormonal drugs for metastatic breast cancer • Primary endpoint: response rate (RR) • Secondary endpoints: TTP and Survival • Regulatory acceptance • long experience with tamoxifen • no proven survival benefit for drugs in this setting • low drug toxicity
TTP and Cytotoxic Drugs for First-line Treatment of Metastatic Breast Cancer (ODAC, 1999) • Determination: • Not for full approval • Yes for Accelerated Approval • Acceptable effect size not stated • Deliberations: • Possible survival benefit from chemotherapy? • Only small TTP benefits with current drugs • Poor correlation with survival? • Unreliable TTP measurements? • Reliability requires frequent measurement?
What is TTP? • Complex: Check the protocol,case report form, & statistical analysis plan! • Time from randomization to first evidence of progression. RECIST: • 20% increase in sum of marker lesions • New lesions • Unequivocal increase in non-marker lesions
Which Events Count?Time to Tumor Progression (TTP) • TTP event = progression • Measures tumor effects • Deaths are censored at last visit • Non-informative censoring assumption
Which Events Count?Progression Free Survival (PFS) • PFS events = progression + death • Better surrogate for CB? • Poor follow-up causes prolongation of progression time • Need careful follow-up • Need analysis rules for deaths after loss to follow-up?
Which Events Count?Time to Treatment Failure (TTF) • TTF events = death, progression, toxicity, etc. • Does not isolate efficacy • Not adequate as the primary regulatory endpoint • Drug must be safe and effective • Demonstrating less toxicity is not adequate
TTP: Advantages • Measured in all patients • Measures cytostatic activity • Oncologists usually change therapy at progression • Assessed before crossover • Requires smaller studies • Face validity?
TTP: Problems • Doesn’t always “correlate” with survival (vs. inadequate data to assess relationship?) • Indirect measure of patient benefit • Unclear meaning of small difference • Reliability in unblinded setting? • Unknown reliability of small TTP difference with usual trial monitoring • Expensive to measure, difficult to verify
The Relationship between TTP and Survival • Data are usually inadequate to assess • Many different cancer settings • Large survival benefits are rare • Cited “lack of correlation” usually invalid • Greater statistical power for TTP than survival • Studies cannot rule out survival effect • Significant TTP analysis and non-significant survival analysis would be expected • Crossover may obscure survival effect
Problem #2:TTP is Indirect measure of benefit TTP would be more persuasive benefit measure when: • When symptoms frequently occur at or soon after progression time • When TTP increment is large • When treatment toxicity is low • When benefit of available drugs is less
Incorporate symptoms into TTP: “time to symptomatic progression” • Represents full clinical benefit • Potential bias in symptom data • Symptom data needed beyond tumor progression time • Confounding effects of additional treatments
Determining Event Dates Survival Analysis Survival Event Date Randomization Visit 1 Visit 2 TTP Analysis TTP Event Date Randomization Visit 1 Visit 2 = Date of Death or actual tumor progression
Verifying TTP: Difficulties for Sponsors and for FDA • What if: • Not all lesions are followed? • Measurements occur at non-standard times? • Some measurements are missing from a visit? • How do you: • Assure equal screening for new lesions? • Evaluate bias from lack of blinding? • Verify progression of “evaluable disease?”
Endpoint for Future Research: Single Time Progression Analysis • Specify analysis point (e.g., 6 months) • Requires only two data collections: • Document baseline data • Document either: • Progression before time point • Stable disease at time point
Single Time Progression Analysis • Advantages: • Less data collection • Minimize time-related bias • Research questions: • Potential loss of statistical power • Uncertainty of predicting optimal ST • Potential for losing information in TTP curve • Different early effects • Benefit in curve plateau
TTP Issues for Consideration • TTP as a drug approval endpoint? • Factors determining acceptable settings? • Amount of evidence needed for TTP claim (# trials, p value, effect size)
TTP Issues for Consideration • Can we improve our approach? • Research on novel progression endpoints? • Research on validating TTP? • Standard approach to endpoint definition and censoring methods? • Blinding investigators and patients? • Blinded review? • Including symptoms in endpoint?