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Cancer Trials in India
Posited Challenges and Required Skills



     Dr. Bhaswat S Chakraborty
  Sr. VP, R&D, Cadila Pharmaceuticals
                 Ltd.
Contents
•   Global Cancer Clinical Trials
•   General challenges in design, conduct, analysis and interpretation of cancer
    CTs
•   Cancer CTs currently being conducted in India
•   Challenges specific to India
     – Funding of trials in India
     – “Learn by hearing and doing” culture
          • Lack of training in good documentation and reporting
     –   Perceptions about clinical trials in India
     –   Uneven expertise
     –   Following international templates
     –   Lack of databases that would facilitate
          • Centre capacities and strength, recruitment rate and historical data
     – Lack of recognition
     – Evolving regulatory framework
•   Some solutions
Global Cancer Trials
Cancer Trials (Phases I–IV)
• Highly complex trials involving cytotoxic drugs, moribund patients,
  time dependent and censored variables
• Require prolonged observation of each patient
• Expensive, long term and resource intensive trials
• Heterogeneous patients at various stages of the disease
• Prognostic factors of non-metastasized and metastasized diseases are
  different
• Adverse reactions are usually serious and frequently include death
• Ethical concerns are numerous and very serious
• Trial management is difficult and patient recruitment extremely
  challenging
• Number of stopped trials (by DSMB or FDA) is very high
• Data analysis and interpretation are very difficult by any standard
• more………
Sample Size at Different Rates of Death

   5000

   4020
                                                                6    24
   3040
                                                                8    48
   2060
                                                                10   60   m1
   1080                                                         12   72
    100                                                         16
          0.8   0.9   1.0   1.1   1.2   1.3   1.4   1.5   1.6
                             Relative risk

Alpha=0.5; Power =0.9; Accrual = 6 months; Follow up = 24 months

m1 is the median survival time on control arm
Accrual Time and Sample Size

  3000

  2440
                                                                     6
  1880
                                                                     7
  1320
                                                                     8    A
   760                                                               10
   200                                                               12
      0.80   0.85   0.90   0.95   1.00   1.05   1.10   1.15   1.20
                              Relative risk

  Accrual Time has very Little Effect on Sample Size!!

Alpha=0.5; Power =0.9; Accrual = 6 months; Follow up = 24 months
Follow Up Time and Sample Size

3000

2440
                                                                    6    24
1880                                                                8    48
1320                                                                10   72

  760                                                               12   120
                                                                    16
  200                                                                    F
     0.80   0.85   0.90   0.95   1.00   1.05   1.10   1.15   1.20
                             Relative risk


Alpha=0.5; Power =0.9; Accrual = 6 months; median control survival
time=10 months
Ratio of Number of Patients in Control
           vs Test and N
   3000

   2440
                                                           0.5       1.4
   1880
                                                           0.6       1.8
   1320
                                                           0.8       2     m
    760                                                    1         5
    200                                                    1.2
       0.80 0.85 0.90 0.95 1.00 1.05 1.10 1.15 1.20
                        Relative risk

Alpha=0.5; Power =0.9; Accrual = 6 months; Follow up = 24 months


 m is the ratio of number of patients in control arm to experimental arm
Loss of Power if N for Control arm
           is Very Low
3000
                                                                   0.5
2440                                                               0.6
1880                                                               0.7

1320                                                               0.8
                                                                         m
                                                                   1
760
                                                                   2
200
       0.1   0.2   0.3   0.4   0.5   0.6   0.7   0.8   0.9   1.0
                                                                   3
                                Power                              0.2
Power vs Detectable Alternative
               for Small Trials
    1

  0.8
                                                              10
  0.6                                                         12

  0.4                                                         16
                                                                   m1
                                                              24
  0.2
                                                              36
    0
                                                              48
        0    10      20       30        40    50     60
                     Detectable alternative




Alpha=0.5; Median Control Survival Time = 10 months; Accrual = 6
months; Follow up = 24 months; small sample size, e.g. 50-100
Sample Size vs Detectable Alternative
              for Small Trials
  200

  170
                                                              10
  140                                                         12

  110                                                         16
                                                                   m1
                                                              24
   80
                                                              36
   50
                                                              48
        0     10      20       30        40    50    60
                      Detectable alternative



Alpha=0.5; Median Control Survival Time = 10 months; Accrual = 6
months; Follow up = 24 months; small sample size, e.g. 50-100
Power vs Detectable Alternative
               for Large Trials
    1

  0.8
                                                                10
  0.6                                                           12

  0.4                                                           16
                                                                       m1
                                                                24
  0.2
                                                                36
    0
                                                                48
        0     10      20       30        40    50      60
                      Detectable alternative



Alpha=0.5; Median Control Survival Time = 10 months; Accrual = 6 months;
Follow up = 24 months; Large sample size, e.g. N≥1000
Bad or Wrong Methods of Analysis
•   Comparison of life tables at one point in time ignoring their structure
    elsewhere (except very rapid processes)
•   If a few patients are at risk for more than a certain time but do not die, this
    should not be taken as evidence of cure. Look at all the data of all the
    patients
•   Median survival times are not very reliable unless the death rate around
    that median is very high
•   A simple count of number of death in each group is inefficient as it ignores
    the rate of death
•   The best estimate of the probability of survival for a certain time (say 5
    years), is given by the life table value at that time. Other simplistic
    calculations may be misleading
•   Randomized controls are always better than historical controls
Bad or Wrong Methods of Analysis contd.
•   Estimation of survival is best done from randomization time. If it is done
    from the time of 1st treatment it can be misleading (as initiating time for two
    treatments can be different)
•   Superficial comparison of the slopes of survival graphs as it biases the
    proportion surviving at each given time
•   Declaring ITT is better than per protocol analysis or the reverse
      – Check all the data carefully especially the P values associated with
        either type of analysis
•   When you get an overall non-significant treatment effect, do not insist that
    a sub-stratum can still benefit from the treatment even if that stratum
    analysis is significant
•   Realistically not checking the actual number of survivors on the last day of
    the study (follow up)
•   Be sure of your reason to use and report one-sided vs. two-sided t-tests
Total 256
Total 48 Trials
Total 155
Total 30
Funding of Trials in India - Projection




Source: IndiPharm projections based on information from The Boston Consulting Group and Business
Communications Co.
Funding of Indian Trials - Observations
•   Majority of (part of) international trials in India are well funded
•   Indian Govt. sponsored trials are also well funded
•   This has contributed to
     –   Infrastucture of hospital and clinic-based research centres
     –    GCP training
     –   Institution of formal IRBs
     –   Better CRF filling and record keeping
•   Some international and most national sponsors are still aggressive
    “bargain-hunters”
•   Perception of different qualities of trail design and data generation for
    national and international Regulatory agencies
•   Despite Sch. Y, non-harmonization in standards will be a huge burden for
    future
Research Culture:
            Traditional vs Participative
• Traditional
   –   Auditory instructions are followed better than written instructions
   –   Strong reflection abilities (than theorising and experimenting)
   –   Doing while learning, service oriented
   –   Record keeping and documentation are not always good
   –   Participation, discussion and questions are not encouraged highly
   –   Teachers and trainers are considered authorities
• Participative
   –   Open, friendly and novelty oriented
   –   Consensus oriented
   –   Theorising , hypothesising and experimentation encouraged
   –   Documentation is highly encouraged
   –   Trainers/teachers are friends and helpers
Perceptions about
Clinical Trials in India
Regulatory Framework
• Evolving, much better than what was 5 years ago
• The DCGI approval process
   – Type A clinical trials (protocol approved by developed regulatory
     authority e.g., U.S., Canada, U.K., Switzerland, Germany, Australia,
     Japan, and South Africa); 4-6 weeks
   – Type B trails are the rest; 8-12 weeks
• IRB approval and import licenses can be had in parallel with
  DCGI review
• However, DCGI is still understaffed and domain specialists
  are very few
• DCGI still has unique standards and precedence (e.g.,
  acceptance of single arm CT as key evidence of S&E) which
  need to be harmonized with international standards
Other Challenges Specific Indian
            Oncology Researchers
• Training in design concepts and nuances
• International design templates but Local conditions
   –   Late reporting stage
   –   Unpredictable and uncharacterized social influences
   –   Informed consent may not be “free-willing”
   –   High levels of consent withdrawal
   –   Lack of Databases to estimate population baselines,
       population effect size and variability for the standard
       (control)
Challenges Specific Indian Oncology
                Researchers
•   Unpredictable recruitment rate
     – Rural patients
     – Poor and uninformed patients
     – Inadequate counseling
•   Varying expertise
     –   Competence
     –   Training
     –   Institutional support
     –   Lack of or improper understanding of responsibility and liability
     –   Inadequate DMCs
• Lack of recognition
     – As leading trialists
     – Low impact Indian journals in the pertinent areas
     – Many inconveniences of regional centres and publicly funded institutions
Solutions
• Understanding and accepting the gaps
• Participation in international co-operative trials
• Extensive training
    –   Research methods
    –   Trial design
    –   Ethics
    –   Documentation skills
    –   Validation skills
    –   DMC
    –   Data analysis and interpretation
• Investigator and Site Development
    – Not only sponsored by Pharma companies but also organised and
      invested by Govt.
    – Structured programs in universities and institutes
Solutions…
• Curriculum development
• People and domain networking
• Publications
   – In high impact journals
   – Strategizing improvement of Indian journals
• Conferences and other common forum
   – Like this one
• Govt.-academia-industry ventures and (noble) incentivization
• Encouraging creativity and higher education
• ……………
Thank You Very Much

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Cancer trials in India

  • 1. Cancer Trials in India Posited Challenges and Required Skills Dr. Bhaswat S Chakraborty Sr. VP, R&D, Cadila Pharmaceuticals Ltd.
  • 2. Contents • Global Cancer Clinical Trials • General challenges in design, conduct, analysis and interpretation of cancer CTs • Cancer CTs currently being conducted in India • Challenges specific to India – Funding of trials in India – “Learn by hearing and doing” culture • Lack of training in good documentation and reporting – Perceptions about clinical trials in India – Uneven expertise – Following international templates – Lack of databases that would facilitate • Centre capacities and strength, recruitment rate and historical data – Lack of recognition – Evolving regulatory framework • Some solutions
  • 4. Cancer Trials (Phases I–IV) • Highly complex trials involving cytotoxic drugs, moribund patients, time dependent and censored variables • Require prolonged observation of each patient • Expensive, long term and resource intensive trials • Heterogeneous patients at various stages of the disease • Prognostic factors of non-metastasized and metastasized diseases are different • Adverse reactions are usually serious and frequently include death • Ethical concerns are numerous and very serious • Trial management is difficult and patient recruitment extremely challenging • Number of stopped trials (by DSMB or FDA) is very high • Data analysis and interpretation are very difficult by any standard • more………
  • 5. Sample Size at Different Rates of Death 5000 4020 6 24 3040 8 48 2060 10 60 m1 1080 12 72 100 16 0.8 0.9 1.0 1.1 1.2 1.3 1.4 1.5 1.6 Relative risk Alpha=0.5; Power =0.9; Accrual = 6 months; Follow up = 24 months m1 is the median survival time on control arm
  • 6. Accrual Time and Sample Size 3000 2440 6 1880 7 1320 8 A 760 10 200 12 0.80 0.85 0.90 0.95 1.00 1.05 1.10 1.15 1.20 Relative risk Accrual Time has very Little Effect on Sample Size!! Alpha=0.5; Power =0.9; Accrual = 6 months; Follow up = 24 months
  • 7. Follow Up Time and Sample Size 3000 2440 6 24 1880 8 48 1320 10 72 760 12 120 16 200 F 0.80 0.85 0.90 0.95 1.00 1.05 1.10 1.15 1.20 Relative risk Alpha=0.5; Power =0.9; Accrual = 6 months; median control survival time=10 months
  • 8. Ratio of Number of Patients in Control vs Test and N 3000 2440 0.5 1.4 1880 0.6 1.8 1320 0.8 2 m 760 1 5 200 1.2 0.80 0.85 0.90 0.95 1.00 1.05 1.10 1.15 1.20 Relative risk Alpha=0.5; Power =0.9; Accrual = 6 months; Follow up = 24 months m is the ratio of number of patients in control arm to experimental arm
  • 9. Loss of Power if N for Control arm is Very Low 3000 0.5 2440 0.6 1880 0.7 1320 0.8 m 1 760 2 200 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1.0 3 Power 0.2
  • 10. Power vs Detectable Alternative for Small Trials 1 0.8 10 0.6 12 0.4 16 m1 24 0.2 36 0 48 0 10 20 30 40 50 60 Detectable alternative Alpha=0.5; Median Control Survival Time = 10 months; Accrual = 6 months; Follow up = 24 months; small sample size, e.g. 50-100
  • 11. Sample Size vs Detectable Alternative for Small Trials 200 170 10 140 12 110 16 m1 24 80 36 50 48 0 10 20 30 40 50 60 Detectable alternative Alpha=0.5; Median Control Survival Time = 10 months; Accrual = 6 months; Follow up = 24 months; small sample size, e.g. 50-100
  • 12. Power vs Detectable Alternative for Large Trials 1 0.8 10 0.6 12 0.4 16 m1 24 0.2 36 0 48 0 10 20 30 40 50 60 Detectable alternative Alpha=0.5; Median Control Survival Time = 10 months; Accrual = 6 months; Follow up = 24 months; Large sample size, e.g. N≥1000
  • 13. Bad or Wrong Methods of Analysis • Comparison of life tables at one point in time ignoring their structure elsewhere (except very rapid processes) • If a few patients are at risk for more than a certain time but do not die, this should not be taken as evidence of cure. Look at all the data of all the patients • Median survival times are not very reliable unless the death rate around that median is very high • A simple count of number of death in each group is inefficient as it ignores the rate of death • The best estimate of the probability of survival for a certain time (say 5 years), is given by the life table value at that time. Other simplistic calculations may be misleading • Randomized controls are always better than historical controls
  • 14. Bad or Wrong Methods of Analysis contd. • Estimation of survival is best done from randomization time. If it is done from the time of 1st treatment it can be misleading (as initiating time for two treatments can be different) • Superficial comparison of the slopes of survival graphs as it biases the proportion surviving at each given time • Declaring ITT is better than per protocol analysis or the reverse – Check all the data carefully especially the P values associated with either type of analysis • When you get an overall non-significant treatment effect, do not insist that a sub-stratum can still benefit from the treatment even if that stratum analysis is significant • Realistically not checking the actual number of survivors on the last day of the study (follow up) • Be sure of your reason to use and report one-sided vs. two-sided t-tests
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  • 23. Funding of Trials in India - Projection Source: IndiPharm projections based on information from The Boston Consulting Group and Business Communications Co.
  • 24. Funding of Indian Trials - Observations • Majority of (part of) international trials in India are well funded • Indian Govt. sponsored trials are also well funded • This has contributed to – Infrastucture of hospital and clinic-based research centres – GCP training – Institution of formal IRBs – Better CRF filling and record keeping • Some international and most national sponsors are still aggressive “bargain-hunters” • Perception of different qualities of trail design and data generation for national and international Regulatory agencies • Despite Sch. Y, non-harmonization in standards will be a huge burden for future
  • 25. Research Culture: Traditional vs Participative • Traditional – Auditory instructions are followed better than written instructions – Strong reflection abilities (than theorising and experimenting) – Doing while learning, service oriented – Record keeping and documentation are not always good – Participation, discussion and questions are not encouraged highly – Teachers and trainers are considered authorities • Participative – Open, friendly and novelty oriented – Consensus oriented – Theorising , hypothesising and experimentation encouraged – Documentation is highly encouraged – Trainers/teachers are friends and helpers
  • 27. Regulatory Framework • Evolving, much better than what was 5 years ago • The DCGI approval process – Type A clinical trials (protocol approved by developed regulatory authority e.g., U.S., Canada, U.K., Switzerland, Germany, Australia, Japan, and South Africa); 4-6 weeks – Type B trails are the rest; 8-12 weeks • IRB approval and import licenses can be had in parallel with DCGI review • However, DCGI is still understaffed and domain specialists are very few • DCGI still has unique standards and precedence (e.g., acceptance of single arm CT as key evidence of S&E) which need to be harmonized with international standards
  • 28. Other Challenges Specific Indian Oncology Researchers • Training in design concepts and nuances • International design templates but Local conditions – Late reporting stage – Unpredictable and uncharacterized social influences – Informed consent may not be “free-willing” – High levels of consent withdrawal – Lack of Databases to estimate population baselines, population effect size and variability for the standard (control)
  • 29. Challenges Specific Indian Oncology Researchers • Unpredictable recruitment rate – Rural patients – Poor and uninformed patients – Inadequate counseling • Varying expertise – Competence – Training – Institutional support – Lack of or improper understanding of responsibility and liability – Inadequate DMCs • Lack of recognition – As leading trialists – Low impact Indian journals in the pertinent areas – Many inconveniences of regional centres and publicly funded institutions
  • 30. Solutions • Understanding and accepting the gaps • Participation in international co-operative trials • Extensive training – Research methods – Trial design – Ethics – Documentation skills – Validation skills – DMC – Data analysis and interpretation • Investigator and Site Development – Not only sponsored by Pharma companies but also organised and invested by Govt. – Structured programs in universities and institutes
  • 31. Solutions… • Curriculum development • People and domain networking • Publications – In high impact journals – Strategizing improvement of Indian journals • Conferences and other common forum – Like this one • Govt.-academia-industry ventures and (noble) incentivization • Encouraging creativity and higher education • ……………