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Biostatistics in Cancer Clinical Trials

  Presented at the “Recent Trends in Bio-Medical Biostatistics”,
         Gujarat University, Ahmedabad on 24.02.2007




                Dr. Bhaswat S. Chakraborty
           VP, R&D, Cadila Pharmaceuticals Ltd.
Contents
    Research and Regulations of Cancer Trials
    Pivotal Cancer Trials (Phase III)
     Efficacy end points
           Merits and demerits
       Optimum Study Designs
           Superiority
           Non-Inferiority and other designs
       Sample Size Considerations
           Scientific questions
           Basics of sample size calculation
    Statistical Plan for a Cancer RCT
    Statistical Analysis of Cancer Data
    Tumor Data Analysis – an Example
    Conclusion
Worldwide Cancer Statistics (All Types)




From Parkin, D. M. et al.
CA Cancer J Clin 2005;55:74-108.
From Parkin, D. M. et al.
CA Cancer J Clin 2005;55:74-108.
Population
Based
Cancer
Registries in
India
(PBCR)
Cancer Research Today
 Research is conducted mainly on
       New Drugs
       New Combinations
       Radiotherapy
       Surgery
 In the West, research is usually done by large co-operative groups, in
    addition to those mentioned for India

 In India
       Large Pharmaceuticals
       Co-operative Groups, e.g., ICON (Indian Co-operative Oncology Network)
       Regional Cancer Centres & Govt. sponsored studies
       Academia
What does FDA Look for?
 FDA approves a drug application based on
    Substantial evidence of efficacy & safety from
     “adequate and well-controlled investigations”
    A valid comparison to a control
    Quantitative assessment of the drug‟s effect
       (21 CFR 314.126.)



 The design of cancer trials intended to support
  drug approval is very important
Study Design: Approaches
 Randomised Controlled Trials (RCT) most preferred
  approach
    Demonstrating superiority of the new therapy

 Other approaches
    Single arm studies (e.g., Phase II)
      e.g., when many complete responses were observed or
         when toxicity was minimal or modest
    Equivalence Trials
    No Treatment or Placebo Control Studies
    Isolating Drug Effect in Combinations
    Studies for Radio- and Chemotherapy Protectants
Randomized Clinical Trials
   Gold standard in Phase III

   Single centre CT
       Primary and secondary indications
       Safety profile in patients
       Pharmacological / toxicological characteristics

   Multi-centre CT
       Confirmation of the above
       Effect size
       Site, care and demographic differences
       Epidemiological determination
       Complexity
       Far superior to meta-analyzed determination of effect
Non-Inferiority Trials
 New drug not less effective by a predefined
  amount, the noninferiority (NI) margin
   NI margin cannot be larger than the effect of the
    control drug in the new study
   If the new drug is inferior by more than the NI
    margin, it would have no effect at all
   NI margin is some fraction of (e.g., 50 percent) of
    the control drug effect
Placebo Control Equality Trials
 No anticancer drug treatment in the control arm is
  unethical
 Sometimes acceptable
    E.g., in early stage cancer when standard practice is to give
     no treatment
    Add-on design (also for adjuvants)
      all patients receive standard treatment plus either no
        additional treatment or the experimental drug
    Placebos preferred to no-treatment controls because they
     permit blinding
    Unless very low toxicity, blinding may not be feasible
     because of a relatively high rate of recognizable toxicities
Drug or Therapy Combinations
 Use the add-on design
   Standard + Placebo
   Standard + Drug X

 Effects seen in early phases of development
   Establish the contribution of a drug to a standard
    regimen
   Particularly if the combination is more effective
    than any of the individual components
What to Measure?
 Time to event end points
   Survival
   Disease free survival
   Progress (of disease) free survival
 Objective response rates
   Complete
   Partial
   Stable disease
   Progressive disease
 Symptom end points
 Palliation
 QoL
Cancer Trials – End Points
Endpoint       Evidence           Assessment        Some Advantages        Some Disadvantages
Survival       Clinical benefit     RCT needed         Direct measure of      Requires larger and
                                     Blinding not   benefit                longer studies
                                  essential            Easily                  Potentially affected by
                                                    measured               crossover therapy
                                                       Precisely               Does not capture
                                                    measured               symptom benefit
                                                                               Includes noncancer
                                                                           deaths
Disease-Free   Surrogate for          RCT needed        Considered to          Not a validated
Survival       accelerated            Blinding      be clinical benefit    survival surrogate in most
(DFS)          approval or        preferred         by some                settings
               regular                                  Needs fewer            Subject to assessment
               approval*                            patients and           bias
                                                    shorter studies            Various definitions
                                                    than survival          exist
Cancer Trials – End Points
Endpoint     Evidence        Assessment         Some Advantages       Some Disadvantages
Objective    Surrogate for      Single-arm or      Can be assessed       Not a direct measure of
Response     accelerated     randomized         in single-arm         benefit
Rate (ORR)   approval or     studies can be     studies                  Usually reflects drug
             regular         used                                     activity in a minority of
             approval*          Blinding                              patients
                             preferred in                                Data are moderately
                             comparative                              complex compared to
                             studies                                  survival
Complete     Surrogate for      Single-arm or      Durable CRs           Few drugs produce high
Response     accelerated     randomized         represent obvious     rates of CR
(CR)         approval or     studies can be     benefit in some          Data are moderately
             regular         used               settings (see text)   complex compared to
             approval*          Blinding           Can be assessed    survival
                             preferred in       in single-arm
                             comparative        studies
                             studies
Design Concepts
       Difference in Clinical Efficacy (Є)
                                                                             Non-Inferiority
                                                 Superiority

                                             +

                                             0
                                                                             Equivalence
                                             -

                                                 Inferiority

                                                                             Non-Superiority


   Equality                                        = Meaningful Difference
Phase III Cancer Trials
   New Drug (or Regimen) is
   Compared with a Standard
                       90
                       80                          New
                       70                          Standard
                       60
                       50
                       40
                       30
                       20
                       10
                       0
 Superiority Trials        Survival   DFS   QoL
Phase III Cancer Trials
40
35                              New
30                              Standard

25
20
15
10
 5
 0
     Survival     DFS    QoL




                 Non-Inferiority or Equivalence Trials
Understanding Basics
 μ0 and μA
        Means under Null & Alternate Hypotheses
 σ02 and σA2
        Variances under Null & Alternate Hypotheses (may be the same)
 N0 and NA
        Sample Sizes in two groups (may be the same)
 H0: Null Hypothesis
        μ0 – μA = 0
 HA: Alternate Hypothesis
        μ0 – μA = δ
 Type I Error (α): False +ve
        Probability of rejecting a true H0
 Type II Error (β): False –ve
        Probability of rejecting a true HA
 Power (1-β): True +ve
        Probability of accepting a true HA
Basics of Sample Size Calculation

 Answer the scientific questions for the Trial size
 Understand the distribution and variability of the data
 Construct correct Null and Alternate hypotheses
 From the hypotheses derive formula for sample size
 Also make sure that this size trial has adequate power
  to establish a true alternate
Five Key Questions
1. What is the main purpose of the trial?
2. What is the principal measure of patient outcome?
3. How will the data be analysed to detect a treatment
   difference?
4. What type of results does one anticipate with standard
   treatment?
5. How small a treatment difference is it important to detect
   and with what degree of certainty?

 Answers to all of the five questions above enable us to
  calculate the sample size and analyze the data with most
  appropriate test of hypothesis.

                     Pocock SJ: Clinical Trials: A Practical Approach Chichester: Wiley; 1983
Start
    Planning                        Reliable or historical
                                      data available?              No

                      Yes                                          Use conventional
                                                                  methods for analysis


        Use bootstrap simulation for
               sample size
                                                                  Normally distributed
                                                               continuous data? Summary
                                                Yes
                                                                 measure: mean & mean
            μT – μC                                                    difference
∆normal =                        Use parametric methods of
               σ                 analysis, two sample ‘t’ or
                                           ANOVA
   Effect Size
                                                                            No


                               2 [Z1-α/2 + Z1-β/2]2
                                                               Use non-parametric methods
                   Nnormal =
                                       ∆2normal                of analysis, Mann-Whitney U
                                                               or Proportional Odds Model
                            Sample Size
Understanding Sample Size Determination
                       H0: μ0 – μA = 0                 HA: μ0 – μA = δ
                                          Critical Value




    S.Error =σ(√2/N)                                                     S.Error =σ(√2/N)


                                                      Power = 1-β
                                               β

        α/2                                                    α/2

                                   0                       δ
                                                                               X0–XA
                                    0+Z1-α/2σ√(2/N)   δ–Z1-βσ√(2/N)
From the Previous Graph, We have


 0+Z1-α/2σ√(2/N)        =    δ–Z1-βσ√(2/N)

 Upon simplification,

                2 [Z1-α/2 + Z1-β/2]2
   Nnormal =
                            ∆2normal
Sample Size: 2-Sample, Parallel
 Superiority/Non-Inferiority Trial




                  (z+zβ)2 (p1 (1– p1) + p2(1 – p2))
N in each arm =
                                     (Є – )2
Power: 2-Sample, Parallel Superiority/Non-
Inferiority Trial
Sample and Power for Simulated Tumor
Data
                                    Expected Relative Risk
 1

0.8

0.6                                                          86

0.4                                                          64
                                                             50
0.2
                                                             110
 0
      0.3   0.4   0.5         0.6      0.7       0.8
                   Relative risk
Statistical Plan
   Primary outcome considerations
   Study Design
   Sample size calculation
   Randomization
   Statistical consideration in Inclusion/Exclusion criteria
    (Homogeneity within centre and strata)
   Accrual of patients
   Cleaning of data
   Interim Analysis
       Go/No go criteria
       α Considerations
   Final analysis
   Final conclusions
Accrual of Patients
   Study of the statistical trends in accrual patterns
       Seasonal
       Planned approaches
       Reasons for drop outs and loss to follow up
       Motivational factors

   Monitoring of recruitment progress and strategies
       Frequency
       Parameters
       Duration

   Understanding natural history and non-cancer, non-intervention deaths

   Changes in accrual after Interim Analysis
Randomisation
 Generation of randomisation scheme according to
    Centre
    Block
    Strata
      Patient
      Investigational Product to be given
      Measures of ensuring non-bias
 Allocations
 What should go on the labels
    Primary, secondary, tertiary packaging
Blinding

 Often difficult in oncology trials
    Test and control are of different characteristics
      Different routes of administration
      Different schedules

 New low toxicity oral treatments are relatively easy to
  blind
 In other cases the end-point evaluating investigator
  must be different from the one administering the drugs
Data Capture
 Manual or Electronic
 CRF is the main source of raw data capture
 Data must be quality assured
   Integrity, accountability, traceability
 Data must be validated
 All production and/or quality system software, purchased or
  developed in-house
   Should document
         Intended use, and information against which testing results and other
          evidence can be compared
         To show that the software is validated for its intended use
Data Cleaning & Locking
 Data are cleaned based on a good plan for interim or final analysis
   E.g.,
           Hundred percent data are made quality checked and assured
           Eligibility criteria for data selection
           Correction and editing
           Double data entry or other methods of data integrity

 Data will be locked after cleaning the data and resolving all the
  queries
   SOP for data locking
   No change after locking

 Only locked data are used as input into data analysis program
Interim Analysis of Data
              0.05
             0.045
              0.04
             0.035
              0.03
             0.025
 Nominal p
              0.02
             0.015
              0.01
             0.005
                0
                     1   2   3   4
                         Looks
Interim Analysis of Data
                                                       2      Look
                                                                 3s                                      Lo
How many times

                             NominalPvue 0.3 0.5



                                                                       NominalPvue 0.3 0.5
can you look into
the data?
                                                           o p o c o c k
                                                           o o b + fle
                                                           o fle + h a r + o b
                      0. 0.1



                                                                0. 0.1
                                                   1              2                          1       2       3

                                                       L o o k                                       L o o k


                                                       4      Look
                                                                 5s                                      Lo
                             NominalPvue 0.3 0.5



                                                                       NominalPvue 0.3 0.5
Type 1 error at kth
test is NOT the
same as the
nominal p value
                      0. 0.1



for the kth test                                   1   2    3

                                                       L o o k
                                                                0. 0.1
                                                                  4                          1   2   3   4

                                                                                                     L o o k
                                                                                                             5
Considerations for IA
   Stopping rules for significant efficacy
   Stopping rules for futility
   Measures taken to minimize bias
   A procedure/method for preparation of data for analysis
   Data has to be centrally pooled, cleaned and locked
   Data analysis - blinded or unblinded?
   To whom the interim results will be submitted?
     DSMB
     Expert Steering Group
   What is the scope of recommendations from IA results?
   Safety? Efficacy? Both? Futility? Sample size readjustment
    for borderline results?
Final Analysis and Conclusion
   Clinically meaningful margins must be well defined in Control trials
    prospectively
       Superiority and non-inferiority margins must not be confused
   Two or one-sidedness of α should also be prospectively defined
   Power must be adequate
   Variance must be analysed using the right model
   Strategy for dealing with multiple end points must be prespecified
       Too many end points ot tests will increase the false positive (α) error
   Sometimes (e.g., in equality trials) statistically significant results may not
    be medically significant
   Data censoring or skewed data
       E.g., time to event data
Intent-to-Treat Principle
 All randomized patients
 Exclusions on prespecified baseline criteria permissible
   also known as Modified Intent-to-Treat
 Confusion regarding intent-to-treat population: define and agree
  upon in advance based upon desired indication
 Advantages:
   Comparison protected by randomization
         Guards against bias when dropping out is realted to outcome
   Can be interpreted as comparison of two strategies
   Failure to take drug is informative
   Refects the way treatments will perform in population
 Concerns:
   “Difference detecting ability”
Per Protocol Analyses

 Focuses on the outcome data
 Addresses what happens to patients who remain on
  therapy
 Typically excludes patients with missing or
  problematic data
 Statistical concerns:
    Selection bias
    Bias difficult to assess
Intent to Treat & Per Protocol Analyses

 Both types of analyses are important for approval

 Results should be logically consistent

 Design protocol and monitor trial to minimize
   exclusions
 Substantial missing data and poor drug compliance
  weaken trial‟s ability to demonstrate efficacy
Missing Data

 Protocol should specify preferred method for
  dealing with missing primary endpoint
   ITT
      e.g., treat missing as failures
      e.g., assign outcome based on blinded case-by-case
       review
   Per Protocol
      e.g., exclusion of patients with missing endpoint
Data Safety and Monitoring Board (DSMB)
 All trials may not need a DSMB
 DSMB Membership
    Medical Oncologist, Biostatistician and Ethicist

 Statistical expertise is a key constituent of a DSMB
 Three Critical Issues
    Risk to participants
    Practicality of periodic review of a trial
    Scientific validity of the trial
time        death       group       futime        number       reduction in size
               0           0           1             0            1            1
               1           0           1             1            1            3
               4           0           1             4            2            1
               7           0           1             7            1            1

Simulated Tumor Data: An Example
              10
               6
              14
                           0
                           1
                           0
                                       1
                                       1
                                       1
                                                    10
                                                    10
                                                    14
                                                                  5
                                                                  4
                                                                  1
                                                                               1
                                                                               1
                                                                               1
              18           0           1            18            1            1
               5           1           1            18            1            3
              12           1           1            18            1            1
              23           0           1            23            3            3
              10           1           1            23            1            3
               3           1           1            23            1            1
               3           1           1            23            3            1
               7           1           1            24            2            3
               3           1           1            25            1            1
              26           0           1            26            1            2
               1           1           1            26            8            1
               2           1           1            26            1            4
              25           1           1            28            1            2
              29           0           1            29            1            4
              29           0           1            29            1            2
              29           0           1            29            4            1
              28           1           1            30            1            6
               2           1           1            30            1            5
               3           1           1            30            2            1
              12           1           1            31            1            3
              32           0           1            32            1            2
              34           0           1            34            2            1
              36           0           1            36            2            1
              29           1           1            36            3            1
              37           0           1            37            1            2
               9           1           1            40            4            1
              16           1           1            40            5            1
              41           0           1            41            1            2
               3           1           1            43            1            1
               6           1           1            43            2            6
               3           1           1            44            2            1
               9           1           1            45            1            1
              18           1           1            48            1            1
              49           0           1            49            1            3
time         death       group       futime         number       reduction in size
                1           0           2              1            1            3
              210           0           2            210            1           10
              180           1           2            180            8            8

Simulated Tumor Data: An Example
              180
               10
               13
                            0
                            0
                            0
                                        2
                                        2
                                        2
                                                     180
                                                      10
                                                      13
                                                                    1
                                                                    1
                                                                    1
                                                                                 6
                                                                                 1
                                                                                 1
              221           1           2            365            2            7
                1           1           2             17            5            3
               18           0           2             18            5            1
              142           1           2            365            1            5
                2           1           2             19            5            1
               76           1           2             21            1            4
               22           0           2             22            1            1
               25           0           2             25            1           10
               25           0           2             25            1            5
               25           0           2             25            1            1
                6           1           2             26            1            1
                6           1           2             27            1            6
                2           1           2             29            2            6
                2           1           2             36            8            8
               38           0           2             38            1            1
               22           1           2             39            1           11
                4           1           2             39            6            5
               24           1           2             40            3            1
               41           0           2             41            3            2
               41           0           2             41            1            1
                1           1           2             43            1            1
               44           0           2             44            1            1
                2           1           2             44            6            1
               45           0           2             45            1            2
                2           1           2             46            1            4
               46           0           2             46            1            4
               49           0           2             49            3            3
               50           0           2             50            1            1
               87           1           2            100            4            6
               54           0           2             54            3            4
               38           1           2             54            2            1
               59           0           2             59            1            3
Control Group

Simulated Tumor Data: An Example
                       70
Survival Time (Days)



                       60
                       50
                       40
                       30
                       20
                       10
                        0
                            1   4   7   10 13 16 19 22 25 28 31 34 37 40 43 46
                                                                        Patient No
                                                                                             Experimental Group

                                                                      250
                                               Survival Time (days)




                                                                      200

                                                                      150

                                                                      100

                                                                      50

                                                                       0
                                                                            1   3   5   7   9 11 13 15 17 19 21 23 25 27 29 31 33 35 37
                                                                                                       Patient No
Descriptive Statistics
                   ± Standard deviation

        120


        100


        80
 time




        60            Variable: time
                   grouped by: group
        40                                                           95%
                                       N               Mean        Conf. (±)     Std.Error     Std.Dev.
        20
               1                       48           15.77083333   4.241619672   2.108375644   14.60725495
         0     2                       38           47.73684211   19.66266124   9.704135603    59.8203094
                           1                                  2
          Entire sample                86           29.89534884   9.420677178   4.738064537   43.93900293
                                            group
Log-rank Test (Cox-Mantel)

                                                                       Events        Events

Kaplan Meier                                                          observed      expected

                                                                 1       29        21.09256306
                                                                 2       18        25.90743694


                                                                                   Degrees of
              1.2                                                    Chi-square     Freedom          P

               1                                                     6.369814034       1         0.011607777

              0.8
Probability




                                                                        Censored
              0.6                                                       1
                                                                        2
              0.4

              0.2

               0
                    0   50   100           150   200       250
                                   tim e
Cox Regression
                                                                      at Mean


                                           1.2

                                             1

                                           0.8

                             Probability   0.6

                                           0.4

                                           0.2

                                             0
                                                 0     50      100           150       200      250
                                                                     tim e


                  95%                                                               Hazard =
Coefficient     Conf. (±)                  Std.Error            P                  Exp(Coef.)

-0.823394288   0.667410889   0.340517244                    0.015603315            0.438939237
Conclusion of Tumor Data
 Kaplan Meier
   Two survival patterns are different with a median of 12 and 70 days
     for the Control and Experimental Groups
 Log-Rank Test
   The p-value of 0.0116 indicates significantly higher survival
     experience of the experimental group
 Cox Regression
   Hazard of death for the Experimental group is estimated to be about
     44% that of the Control group
   The log hazard coefficient is – 0.8234 (hence, e-0.8234=0.4389,
     which gives us the estimated unadjusted Experimental hazard
     ratio). It means that the expected log hazard for the Experimental
     group is .8234 lower than it is for the Control group
   Difference in survival time in Experimental & Control groups is
     highly significant (p=0.0156)
Conclusions
 Clinical testing of new Oncology products is very sophisticated
  and complex
 A Statistician‟s role in Cancer trials is invaluable
 Statistical considerations must be thoroughly given attention and
  built in while planning the study design and calculating the
  sample size
 Cancer clinical data is very complex (censored, skewed, often
  fraught with missing data point), therefore, proper
  hypothesization and statistical treatment of data are required
 Prospective RCTs are usually the preferred approach for
  evaluation of new therapies
Conclusions
   Survival as primary end point is preferred by regulatory agencies
   Randomisation and blinding offer a robust way to remove bias in end-point
    estimations
   Data must be accurately captured without any bias and analysed by
    prospectively described methods
   Interim analysis should carefully plan „ spending’ function
   Final analysis should be done carefully, independently and meaningfully
    (medical as well as scientific)
   Choose clinically relevant delta
   Design, conduct, and monitor trials to minimize missing data and poor compliance
    to drug
   Analysis
       Both intent-to-treat and per protocol analyses should be conducted
       Sensitivity analyses
   There are many oustanding statistical issues in Cancer trials that need no be
    discussed and solved
Acknowledgements
   Dr. Nikunj Patel
   Dr. Sumit Goyal
   Dr. Manish Harsh
   Dr. Nilesh Patel
   Ms. Darshini Shah



                 Thank You Very Much

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Biostatistics in cancer RCTs

  • 1. Biostatistics in Cancer Clinical Trials Presented at the “Recent Trends in Bio-Medical Biostatistics”, Gujarat University, Ahmedabad on 24.02.2007 Dr. Bhaswat S. Chakraborty VP, R&D, Cadila Pharmaceuticals Ltd.
  • 2. Contents  Research and Regulations of Cancer Trials  Pivotal Cancer Trials (Phase III)  Efficacy end points  Merits and demerits  Optimum Study Designs  Superiority  Non-Inferiority and other designs  Sample Size Considerations  Scientific questions  Basics of sample size calculation  Statistical Plan for a Cancer RCT  Statistical Analysis of Cancer Data  Tumor Data Analysis – an Example  Conclusion
  • 3. Worldwide Cancer Statistics (All Types) From Parkin, D. M. et al. CA Cancer J Clin 2005;55:74-108.
  • 4. From Parkin, D. M. et al. CA Cancer J Clin 2005;55:74-108.
  • 6.
  • 7. Cancer Research Today  Research is conducted mainly on  New Drugs  New Combinations  Radiotherapy  Surgery  In the West, research is usually done by large co-operative groups, in addition to those mentioned for India  In India  Large Pharmaceuticals  Co-operative Groups, e.g., ICON (Indian Co-operative Oncology Network)  Regional Cancer Centres & Govt. sponsored studies  Academia
  • 8. What does FDA Look for?  FDA approves a drug application based on  Substantial evidence of efficacy & safety from “adequate and well-controlled investigations”  A valid comparison to a control  Quantitative assessment of the drug‟s effect  (21 CFR 314.126.)  The design of cancer trials intended to support drug approval is very important
  • 9. Study Design: Approaches  Randomised Controlled Trials (RCT) most preferred approach  Demonstrating superiority of the new therapy  Other approaches  Single arm studies (e.g., Phase II)  e.g., when many complete responses were observed or when toxicity was minimal or modest  Equivalence Trials  No Treatment or Placebo Control Studies  Isolating Drug Effect in Combinations  Studies for Radio- and Chemotherapy Protectants
  • 10. Randomized Clinical Trials  Gold standard in Phase III  Single centre CT  Primary and secondary indications  Safety profile in patients  Pharmacological / toxicological characteristics  Multi-centre CT  Confirmation of the above  Effect size  Site, care and demographic differences  Epidemiological determination  Complexity  Far superior to meta-analyzed determination of effect
  • 11. Non-Inferiority Trials  New drug not less effective by a predefined amount, the noninferiority (NI) margin  NI margin cannot be larger than the effect of the control drug in the new study  If the new drug is inferior by more than the NI margin, it would have no effect at all  NI margin is some fraction of (e.g., 50 percent) of the control drug effect
  • 12. Placebo Control Equality Trials  No anticancer drug treatment in the control arm is unethical  Sometimes acceptable  E.g., in early stage cancer when standard practice is to give no treatment  Add-on design (also for adjuvants)  all patients receive standard treatment plus either no additional treatment or the experimental drug  Placebos preferred to no-treatment controls because they permit blinding  Unless very low toxicity, blinding may not be feasible because of a relatively high rate of recognizable toxicities
  • 13. Drug or Therapy Combinations  Use the add-on design  Standard + Placebo  Standard + Drug X  Effects seen in early phases of development  Establish the contribution of a drug to a standard regimen  Particularly if the combination is more effective than any of the individual components
  • 14. What to Measure?  Time to event end points  Survival  Disease free survival  Progress (of disease) free survival  Objective response rates  Complete  Partial  Stable disease  Progressive disease  Symptom end points  Palliation  QoL
  • 15. Cancer Trials – End Points Endpoint Evidence Assessment Some Advantages Some Disadvantages Survival Clinical benefit RCT needed Direct measure of Requires larger and Blinding not benefit longer studies essential Easily Potentially affected by measured crossover therapy Precisely Does not capture measured symptom benefit Includes noncancer deaths Disease-Free Surrogate for RCT needed Considered to Not a validated Survival accelerated Blinding be clinical benefit survival surrogate in most (DFS) approval or preferred by some settings regular Needs fewer Subject to assessment approval* patients and bias shorter studies Various definitions than survival exist
  • 16. Cancer Trials – End Points Endpoint Evidence Assessment Some Advantages Some Disadvantages Objective Surrogate for Single-arm or Can be assessed Not a direct measure of Response accelerated randomized in single-arm benefit Rate (ORR) approval or studies can be studies Usually reflects drug regular used activity in a minority of approval* Blinding patients preferred in Data are moderately comparative complex compared to studies survival Complete Surrogate for Single-arm or Durable CRs Few drugs produce high Response accelerated randomized represent obvious rates of CR (CR) approval or studies can be benefit in some Data are moderately regular used settings (see text) complex compared to approval* Blinding Can be assessed survival preferred in in single-arm comparative studies studies
  • 17. Design Concepts Difference in Clinical Efficacy (Є) Non-Inferiority Superiority + 0 Equivalence - Inferiority Non-Superiority Equality = Meaningful Difference
  • 18. Phase III Cancer Trials New Drug (or Regimen) is Compared with a Standard 90 80 New 70 Standard 60 50 40 30 20 10 0  Superiority Trials Survival DFS QoL
  • 19. Phase III Cancer Trials 40 35 New 30 Standard 25 20 15 10 5 0 Survival DFS QoL  Non-Inferiority or Equivalence Trials
  • 20. Understanding Basics  μ0 and μA  Means under Null & Alternate Hypotheses  σ02 and σA2  Variances under Null & Alternate Hypotheses (may be the same)  N0 and NA  Sample Sizes in two groups (may be the same)  H0: Null Hypothesis  μ0 – μA = 0  HA: Alternate Hypothesis  μ0 – μA = δ  Type I Error (α): False +ve  Probability of rejecting a true H0  Type II Error (β): False –ve  Probability of rejecting a true HA  Power (1-β): True +ve  Probability of accepting a true HA
  • 21. Basics of Sample Size Calculation  Answer the scientific questions for the Trial size  Understand the distribution and variability of the data  Construct correct Null and Alternate hypotheses  From the hypotheses derive formula for sample size  Also make sure that this size trial has adequate power to establish a true alternate
  • 22. Five Key Questions 1. What is the main purpose of the trial? 2. What is the principal measure of patient outcome? 3. How will the data be analysed to detect a treatment difference? 4. What type of results does one anticipate with standard treatment? 5. How small a treatment difference is it important to detect and with what degree of certainty?  Answers to all of the five questions above enable us to calculate the sample size and analyze the data with most appropriate test of hypothesis. Pocock SJ: Clinical Trials: A Practical Approach Chichester: Wiley; 1983
  • 23. Start Planning Reliable or historical data available? No Yes Use conventional methods for analysis Use bootstrap simulation for sample size Normally distributed continuous data? Summary Yes measure: mean & mean μT – μC difference ∆normal = Use parametric methods of σ analysis, two sample ‘t’ or ANOVA Effect Size No 2 [Z1-α/2 + Z1-β/2]2 Use non-parametric methods Nnormal = ∆2normal of analysis, Mann-Whitney U or Proportional Odds Model Sample Size
  • 24. Understanding Sample Size Determination H0: μ0 – μA = 0 HA: μ0 – μA = δ Critical Value S.Error =σ(√2/N) S.Error =σ(√2/N) Power = 1-β β α/2 α/2 0 δ X0–XA 0+Z1-α/2σ√(2/N) δ–Z1-βσ√(2/N)
  • 25. From the Previous Graph, We have 0+Z1-α/2σ√(2/N) = δ–Z1-βσ√(2/N) Upon simplification, 2 [Z1-α/2 + Z1-β/2]2 Nnormal = ∆2normal
  • 26. Sample Size: 2-Sample, Parallel Superiority/Non-Inferiority Trial (z+zβ)2 (p1 (1– p1) + p2(1 – p2)) N in each arm = (Є – )2
  • 27. Power: 2-Sample, Parallel Superiority/Non- Inferiority Trial
  • 28. Sample and Power for Simulated Tumor Data Expected Relative Risk 1 0.8 0.6 86 0.4 64 50 0.2 110 0 0.3 0.4 0.5 0.6 0.7 0.8 Relative risk
  • 29. Statistical Plan  Primary outcome considerations  Study Design  Sample size calculation  Randomization  Statistical consideration in Inclusion/Exclusion criteria (Homogeneity within centre and strata)  Accrual of patients  Cleaning of data  Interim Analysis  Go/No go criteria  α Considerations  Final analysis  Final conclusions
  • 30. Accrual of Patients  Study of the statistical trends in accrual patterns  Seasonal  Planned approaches  Reasons for drop outs and loss to follow up  Motivational factors  Monitoring of recruitment progress and strategies  Frequency  Parameters  Duration  Understanding natural history and non-cancer, non-intervention deaths  Changes in accrual after Interim Analysis
  • 31. Randomisation  Generation of randomisation scheme according to  Centre  Block  Strata  Patient  Investigational Product to be given  Measures of ensuring non-bias  Allocations  What should go on the labels  Primary, secondary, tertiary packaging
  • 32. Blinding  Often difficult in oncology trials  Test and control are of different characteristics  Different routes of administration  Different schedules  New low toxicity oral treatments are relatively easy to blind  In other cases the end-point evaluating investigator must be different from the one administering the drugs
  • 33. Data Capture  Manual or Electronic  CRF is the main source of raw data capture  Data must be quality assured  Integrity, accountability, traceability  Data must be validated  All production and/or quality system software, purchased or developed in-house  Should document  Intended use, and information against which testing results and other evidence can be compared  To show that the software is validated for its intended use
  • 34. Data Cleaning & Locking  Data are cleaned based on a good plan for interim or final analysis  E.g.,  Hundred percent data are made quality checked and assured  Eligibility criteria for data selection  Correction and editing  Double data entry or other methods of data integrity  Data will be locked after cleaning the data and resolving all the queries  SOP for data locking  No change after locking  Only locked data are used as input into data analysis program
  • 35. Interim Analysis of Data 0.05 0.045 0.04 0.035 0.03 0.025 Nominal p 0.02 0.015 0.01 0.005 0 1 2 3 4 Looks
  • 36. Interim Analysis of Data 2 Look 3s Lo How many times NominalPvue 0.3 0.5 NominalPvue 0.3 0.5 can you look into the data? o p o c o c k o o b + fle o fle + h a r + o b 0. 0.1 0. 0.1 1 2 1 2 3 L o o k L o o k 4 Look 5s Lo NominalPvue 0.3 0.5 NominalPvue 0.3 0.5 Type 1 error at kth test is NOT the same as the nominal p value 0. 0.1 for the kth test 1 2 3 L o o k 0. 0.1 4 1 2 3 4 L o o k 5
  • 37. Considerations for IA  Stopping rules for significant efficacy  Stopping rules for futility  Measures taken to minimize bias  A procedure/method for preparation of data for analysis  Data has to be centrally pooled, cleaned and locked  Data analysis - blinded or unblinded?  To whom the interim results will be submitted?  DSMB  Expert Steering Group  What is the scope of recommendations from IA results?  Safety? Efficacy? Both? Futility? Sample size readjustment for borderline results?
  • 38. Final Analysis and Conclusion  Clinically meaningful margins must be well defined in Control trials prospectively  Superiority and non-inferiority margins must not be confused  Two or one-sidedness of α should also be prospectively defined  Power must be adequate  Variance must be analysed using the right model  Strategy for dealing with multiple end points must be prespecified  Too many end points ot tests will increase the false positive (α) error  Sometimes (e.g., in equality trials) statistically significant results may not be medically significant  Data censoring or skewed data  E.g., time to event data
  • 39. Intent-to-Treat Principle  All randomized patients  Exclusions on prespecified baseline criteria permissible  also known as Modified Intent-to-Treat  Confusion regarding intent-to-treat population: define and agree upon in advance based upon desired indication  Advantages:  Comparison protected by randomization  Guards against bias when dropping out is realted to outcome  Can be interpreted as comparison of two strategies  Failure to take drug is informative  Refects the way treatments will perform in population  Concerns:  “Difference detecting ability”
  • 40. Per Protocol Analyses  Focuses on the outcome data  Addresses what happens to patients who remain on therapy  Typically excludes patients with missing or problematic data  Statistical concerns:  Selection bias  Bias difficult to assess
  • 41. Intent to Treat & Per Protocol Analyses  Both types of analyses are important for approval  Results should be logically consistent  Design protocol and monitor trial to minimize exclusions  Substantial missing data and poor drug compliance weaken trial‟s ability to demonstrate efficacy
  • 42. Missing Data  Protocol should specify preferred method for dealing with missing primary endpoint  ITT  e.g., treat missing as failures  e.g., assign outcome based on blinded case-by-case review  Per Protocol  e.g., exclusion of patients with missing endpoint
  • 43. Data Safety and Monitoring Board (DSMB)  All trials may not need a DSMB  DSMB Membership  Medical Oncologist, Biostatistician and Ethicist  Statistical expertise is a key constituent of a DSMB  Three Critical Issues  Risk to participants  Practicality of periodic review of a trial  Scientific validity of the trial
  • 44. time death group futime number reduction in size 0 0 1 0 1 1 1 0 1 1 1 3 4 0 1 4 2 1 7 0 1 7 1 1 Simulated Tumor Data: An Example 10 6 14 0 1 0 1 1 1 10 10 14 5 4 1 1 1 1 18 0 1 18 1 1 5 1 1 18 1 3 12 1 1 18 1 1 23 0 1 23 3 3 10 1 1 23 1 3 3 1 1 23 1 1 3 1 1 23 3 1 7 1 1 24 2 3 3 1 1 25 1 1 26 0 1 26 1 2 1 1 1 26 8 1 2 1 1 26 1 4 25 1 1 28 1 2 29 0 1 29 1 4 29 0 1 29 1 2 29 0 1 29 4 1 28 1 1 30 1 6 2 1 1 30 1 5 3 1 1 30 2 1 12 1 1 31 1 3 32 0 1 32 1 2 34 0 1 34 2 1 36 0 1 36 2 1 29 1 1 36 3 1 37 0 1 37 1 2 9 1 1 40 4 1 16 1 1 40 5 1 41 0 1 41 1 2 3 1 1 43 1 1 6 1 1 43 2 6 3 1 1 44 2 1 9 1 1 45 1 1 18 1 1 48 1 1 49 0 1 49 1 3
  • 45. time death group futime number reduction in size 1 0 2 1 1 3 210 0 2 210 1 10 180 1 2 180 8 8 Simulated Tumor Data: An Example 180 10 13 0 0 0 2 2 2 180 10 13 1 1 1 6 1 1 221 1 2 365 2 7 1 1 2 17 5 3 18 0 2 18 5 1 142 1 2 365 1 5 2 1 2 19 5 1 76 1 2 21 1 4 22 0 2 22 1 1 25 0 2 25 1 10 25 0 2 25 1 5 25 0 2 25 1 1 6 1 2 26 1 1 6 1 2 27 1 6 2 1 2 29 2 6 2 1 2 36 8 8 38 0 2 38 1 1 22 1 2 39 1 11 4 1 2 39 6 5 24 1 2 40 3 1 41 0 2 41 3 2 41 0 2 41 1 1 1 1 2 43 1 1 44 0 2 44 1 1 2 1 2 44 6 1 45 0 2 45 1 2 2 1 2 46 1 4 46 0 2 46 1 4 49 0 2 49 3 3 50 0 2 50 1 1 87 1 2 100 4 6 54 0 2 54 3 4 38 1 2 54 2 1 59 0 2 59 1 3
  • 46. Control Group Simulated Tumor Data: An Example 70 Survival Time (Days) 60 50 40 30 20 10 0 1 4 7 10 13 16 19 22 25 28 31 34 37 40 43 46 Patient No Experimental Group 250 Survival Time (days) 200 150 100 50 0 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31 33 35 37 Patient No
  • 47. Descriptive Statistics ± Standard deviation 120 100 80 time 60 Variable: time grouped by: group 40 95% N Mean Conf. (±) Std.Error Std.Dev. 20 1 48 15.77083333 4.241619672 2.108375644 14.60725495 0 2 38 47.73684211 19.66266124 9.704135603 59.8203094 1 2 Entire sample 86 29.89534884 9.420677178 4.738064537 43.93900293 group
  • 48. Log-rank Test (Cox-Mantel) Events Events Kaplan Meier observed expected 1 29 21.09256306 2 18 25.90743694 Degrees of 1.2 Chi-square Freedom P 1 6.369814034 1 0.011607777 0.8 Probability Censored 0.6 1 2 0.4 0.2 0 0 50 100 150 200 250 tim e
  • 49. Cox Regression at Mean 1.2 1 0.8 Probability 0.6 0.4 0.2 0 0 50 100 150 200 250 tim e 95% Hazard = Coefficient Conf. (±) Std.Error P Exp(Coef.) -0.823394288 0.667410889 0.340517244 0.015603315 0.438939237
  • 50. Conclusion of Tumor Data  Kaplan Meier  Two survival patterns are different with a median of 12 and 70 days for the Control and Experimental Groups  Log-Rank Test  The p-value of 0.0116 indicates significantly higher survival experience of the experimental group  Cox Regression  Hazard of death for the Experimental group is estimated to be about 44% that of the Control group  The log hazard coefficient is – 0.8234 (hence, e-0.8234=0.4389, which gives us the estimated unadjusted Experimental hazard ratio). It means that the expected log hazard for the Experimental group is .8234 lower than it is for the Control group  Difference in survival time in Experimental & Control groups is highly significant (p=0.0156)
  • 51. Conclusions  Clinical testing of new Oncology products is very sophisticated and complex  A Statistician‟s role in Cancer trials is invaluable  Statistical considerations must be thoroughly given attention and built in while planning the study design and calculating the sample size  Cancer clinical data is very complex (censored, skewed, often fraught with missing data point), therefore, proper hypothesization and statistical treatment of data are required  Prospective RCTs are usually the preferred approach for evaluation of new therapies
  • 52. Conclusions  Survival as primary end point is preferred by regulatory agencies  Randomisation and blinding offer a robust way to remove bias in end-point estimations  Data must be accurately captured without any bias and analysed by prospectively described methods  Interim analysis should carefully plan „ spending’ function  Final analysis should be done carefully, independently and meaningfully (medical as well as scientific)  Choose clinically relevant delta  Design, conduct, and monitor trials to minimize missing data and poor compliance to drug  Analysis  Both intent-to-treat and per protocol analyses should be conducted  Sensitivity analyses  There are many oustanding statistical issues in Cancer trials that need no be discussed and solved
  • 53. Acknowledgements  Dr. Nikunj Patel  Dr. Sumit Goyal  Dr. Manish Harsh  Dr. Nilesh Patel  Ms. Darshini Shah Thank You Very Much