Title: Selected Issues in Oncology Trial Design
1Selected Issues in Oncology Trial Design
- Grant Williams, M.D.
- DODP, CDER, FDA
2Outline 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
3Blinding Oncology Trials
- Problems
- Unmasking of blind by side-effects
- Need to adjust doses
- Opportunities
- Oral drugs with fewer side-effects
4Use 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
5No 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 -
6The 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.
7Non-inferiority
8 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
9Regulatory 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
10Critical 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
11Sloppiness / Poor Quality Data
- Sloppiness obscures differences
- Superiority trial designs obscures efficacy
- For NI trials could lead to false efficacy claim
12Determining 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
13The 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
14Surrogates 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.
15Established Surrogates Supporting Regular Approval
- Blood pressure
- Blood sugar
- Blood cholesterol
16Oncology 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
17The Ideal Prentices 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
18Surrogate Endpoint Validation
- Meta-analyses of clinical trials data
- Comprehensive understanding of
- The causal pathways of the disease process
- The interventions intended and unintended
mechanisms of action
From Tom Fleming, Ph.D.
19Is TTP a Clinical Benefit Measure?
- Does TTP have clinical meaning?
- Cancer growth leads to suffering and death
- Delaying cancer growth is good
20Is 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?
21Acceptance 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
22TTP 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?
23What 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
24Which Events Count?Time to Tumor Progression
(TTP)
- TTP event progression
- Measures tumor effects
- Deaths are censored at last visit
- Non-informative censoring assumption
25Which 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?
26Which 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
27TTP Advantages
- Measured in all patients
- Measures cytostatic activity
- Oncologists usually change therapy at progression
- Assessed before crossover
- Requires smaller studies
- Face validity?
28TTP Problems
- Doesnt 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
29The 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
30Survival versus TTP
31Problem 2TTP 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
32Incorporate 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
33Determining Event Dates
Survival Analysis
Survival Event Date
Visit 1
Visit 2
Randomization
TTP Analysis
TTP Event Date
Visit 1
Visit 2
Randomization
Date of Death or actual tumor progression
34Verifying 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?
35Endpoint 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
36Single 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
37TTP 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)
38TTP 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?