Combination dose finding studies in oncology: an industry - - PowerPoint PPT Presentation

combination dose finding studies in oncology an industry
SMART_READER_LITE
LIVE PREVIEW

Combination dose finding studies in oncology: an industry - - PowerPoint PPT Presentation

Combination dose finding studies in oncology: an industry perspective Jian Zhu, Ling Wang Symposium on Dose Selection for Cancer Treatment Drugs Stanford, May 12 th 2017 Outline Overview Practical considerations in selecting good


slide-1
SLIDE 1

Symposium on Dose Selection for Cancer Treatment Drugs Stanford, May 12th 2017 Jian Zhu, Ling Wang

Combination dose finding studies in oncology: an industry perspective

slide-2
SLIDE 2

Outline

  • Overview
  • Practical considerations in selecting good designs
  • Summary

1 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-3
SLIDE 3

Background

  • Exponentially increasing number of combination dose escalation

studies

  • While researchers hope to find synergistic efficacy through

combinations of drugs, it is more difficult to find the MTD

  • MTD is often not a single dose pair but a range of dose pairs
  • New challenges require better designs

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 2

slide-4
SLIDE 4

Challenges and Design Requirements for Oncology Phase I Combination Studies

Phase I Study Challenges Design Requirements Untested drug in resistant patients Escalating dose cohorts with small numbers of patients (e.g. 3-6) Primary objective: find MTD(s) Accurately estimate MTD High toxicity potential: safety first especially for synergistic toxicity Robustly avoid toxic doses (overdosing) Most responses occur at 80% - 120%

  • f MTD

Avoid subtherapeutic doses while controlling overdosing Find best dose for dose expansion Enroll more patients at acceptable (<=MTD), active doses (flexible cohort sizes) Complete trial in a timely fashion Use available information efficiently

3 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-5
SLIDE 5

Designs

  • Two main types of designs

– Algorithmic, fixed, data-only rules – Model-based: statistical design accounting for uncertainly of DLT rates

4

Algorithmic Model based

Applicability Easy More complex due to statistical component Flexibility Not very flexible

  • fixed cohort size
  • fixed doses

Flexible: allows for

  • different cohort sizes
  • intermediate doses

Extendibility Difficult Easy: 2 or more treatment arms, combinations Inference for DLT rates Observed DLT rates only Full inference, uncertainty assessed for true DLT rates Statistical requirements None Reasonable model, good statistics

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-6
SLIDE 6

Overview of combination dose finding methods

  • Rule based methods: 3+3+3 (Braun et al. 2011)
  • Model based methods:

– Sequential CRM(Yuan and Yin 2008) – gCRM (Braun et al. 2013) – Bayesian logistic regression model (Thall and Lee 2003, Neuenschwander et al. 2015)

  • Other methods:

– Independent beta probabilities escalation (PIPE) (Mandera and Sweeting 2015) – Curve-free Bayesian method (Lee et al 2017)

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 5

slide-7
SLIDE 7

‘3+3+3’ Fast Escalation Rule

  • Fast escalation rule

– Can increase the probability of finding the correct MTD – Often not recommended in practice

6 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-8
SLIDE 8

‘ 3+3+3 ’ Design Slow Escalation

  • Slow escalation rule
  • limit the ability to assign

patients to higher dose combinations

  • need a large sample size

7 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-9
SLIDE 9

BLRM for Combination Dose-finding

Parameterization with an explicit interaction term (Neuenschwander et al. 2015)

  • Real no interaction model:
  • Interaction model:
  • Marginal single-agent models:
  • interaction term could be more complicated, eg. adding covariates
  • Priors for single agent models:
  • Priors for interaction parameter :
  • normal / log-normal / incorporate relevant information

8 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-10
SLIDE 10

9

Collect DLT data Prior of parameters Posterior of parameters BLRM-combo Plugged in model Toxicity intervals

Meet Stopping Rules?

Yes No Stop the trial Continue with next cohort Recommendation for next cohort

BLRM-combo Design Implementation

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-11
SLIDE 11

BLRM-combo Implementation Demo

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 10

slide-12
SLIDE 12

BLRM-combo Protocol Development

  • Incorporating Prior Information

– Preclinical toxicity data – Previous clinical trials – Literature data on similar compounds

  • Design Specification

– Pre-define provisional dose escalation rules – Minimum cohort-size – Pre-define DLT criteria and appropriate toxicity intervals – Pre-define evaluable patients for DLT assessment

  • Stopping rules for declaring the MTD
  • Statistician test-runs the design

– Decisions under simple scenarios – Operation characteristics (simulation testing)

  • Clinicians review design performance

11 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-13
SLIDE 13

Practical Considerations for BLRM-combo

  • Design should take advantage of all relevant information

available

– Anticipated MTD from preclinical data – Previous single agent dose finding trials – Previous combination dose finding trials in other regions – Previous data of the same agents with different schedules – Prior, especially the prior for interaction can affect the direction of escalation

  • Definition of toxicity levels: under-dosing, target toxicity, and
  • verdosing (e.g. 0.16-0.33 defined as the target toxicity)
  • EWOC threshold (Posterior Probability of being overdosing)

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 12

slide-14
SLIDE 14

Practical Considerations for BLRM-combo (cont’d)

  • Escalation rules (other than EWOC)

– Diagonal escalation? – Dose skipping? – Escalation cap?

  • Stopping rules

– Need sufficient number of patients to declare MTD while avoiding oscillation

  • Parallel cohorts

– Can do parallel searches when multiple eligible dose pairs have very close posterior probabilities of hitting the target toxicity

  • Flexible cohort sizes

– More patients closer to MTD? – Enrich patients with certain characteristics – Operational flexibility for enrollment

  • Intermediate doses

– Formulation, schedule

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 13

slide-15
SLIDE 15

BLRM-combo Escalation Rules Demo

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 14

slide-16
SLIDE 16

Decision for dose escalation often not by BLRM alone

  • MTD is the primary interest of dosing finding algorithms , may not be

sufficient

  • Severity or the nature of the DLT, level of AE can override the model

recommendation

  • Other available information such as clinical experience, PK/PD or

efficacy data should be considered together to make the final decision

– Apart from the dose pairs deemed overly toxic by the model, there is much room for escalation

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 15

slide-17
SLIDE 17

Evaluation of designs for a trial through simulations

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 16

  • Designs to be considered
  • Design assumptions
  • Consider various DLT scenarios
  • Fair comparison:

– BLRM performance may be sensitive to whether the true DLT rates are

  • n or close to the boundaries of the toxicity levels

– For other methods with target toxicity, performance is also often sensitive when the true DLT rates are close to the target toxicity

slide-18
SLIDE 18

Evaluation criteria

  • Accuracy of identifying the MTDs
  • Average proportions of patients assigned to under-dosing, target-

dosing, and overdoing per study

  • Average sample size (Maximum sample size) per study
  • Average number of DLTs per study

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 17

slide-19
SLIDE 19

One example requiring conservativeness

  • Suppose clinicians have concerns with the potentially high

synergistic toxicity of the combination

  • Rule based methods such as 3+3+3 (conservative method) are often

considered

– Slow escalation

  • BLRM-combo with conservative escalation rules may have desirable

properties in terms of both safety and accuracy

– No diagonal escalation – No dose-skipping – Assuming synergistic interaction prior – Lower EWOC threshold – Allows re-escalation

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 18

slide-20
SLIDE 20

Other factors in selecting a design

  • Depending on whether number of doses for one drug is small and/or

fixed

– Small and fixed: 3+3+3 – Small: single BLRM incorporating one drug as covariates – General: BLRM-combo

  • MTD on the ‘border’ or diagonal
  • Utility function based decisions

19 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-21
SLIDE 21

Considerations for other designs

  • Models considering ordinal data: no DLT, low toxicity, DLT

– Need to carefully define the severity

  • Joint modeling of toxicity and efficacy

– Efficacy measurements usually take longer time, which can affect timeline – Change in population in later phases – Surrogate endpoint

  • Joint modeling of PK and DLT data

– PK data may have large variability and usually take longer time

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 20

slide-22
SLIDE 22

Summary

  • One-design-fits-all is very unlikely
  • A good design should be flexible to incorporate various practical

considerations

  • Performance evaluation should also take all aspects into

consideration

– Statistical performance – Ethical considerations – Timeline – Operational considerations – Simplicity

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 21

slide-23
SLIDE 23

Reference

  • Bailey, Neuenschwander, Laird, Branson (2009). A Bayesian case study in oncology phase I

combination dose-finding using logistic regression with covariates. Journal of Biopharmaceutical Statistics, 19:369-484

  • Neuenschwander, Branson, Gsponer (2008). Critical aspects of the Bayesian approach to phase I

cancer trials. Statistics In Medicine, 27:2420-2439

  • Mathew, Thall, Jones, Perez, Bucana, Troncoso, Kim, Fidler, and Logothetis (2004). Platelet-

derived Growth Factor Receptor Inhibitor Imatinib Mesylate and Docetaxel: A Modular Phase I Trial in Androgen-Independent Prostate Cancer Journal of Clinical Oncology, 16, 3323-3329.

  • Neuenschwander, Branson, Gsponer (2008) Critical aspects of the Bayesian approach to Phase I

cancer trials. Statistics in Medicine, 27:2420-2439.

  • Thall, Lee (2003) Practical model-based dose-finding in phase I clinical trials: methods based on
  • toxicity. Int J Gynecol Cancer 13: 251-261
  • Sweeting, Michael J., and Adrian P. Mander. "Escalation strategies for combination therapy Phase

I trials." Pharmaceutical statistics 11.3 (2012): 258-266.

  • Braun, Thomas M., and Todd A. Alonzo. "Beyond the 3+ 3 method: expanded algorithms for dose-

escalation in Phase I oncology trials of two agents." Clinical Trials 8.3 (2011): 247-259.

  • Bailey, Stuart, et al. "A Bayesian case study in oncology phase I combination dose-finding using

logistic regression with covariates." Journal of biopharmaceutical statistics 19.3 (2009): 469- 484.

  • Yuan, Y. and Yin, G. (2008), Sequential continual reassessment method for two-dimensional dose
  • finding. Statist. Med., 27: 5664–5678. doi:10.1002/sim.3372
  • Lee BL, Fan S, Lu Y. (2017) A curve-free Bayesian decision-theoretic design for two-agent phase I
  • trials. Journal of Biopharmaceutical Statistics, 27(1):34-43. PMID: 26882373.

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017 22

slide-24
SLIDE 24

Thank you !

slide-25
SLIDE 25

Backup slides

24 |Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-26
SLIDE 26

3+3+3 Fast Escalation Rule

  • Fast escalation rule

25

New cohort at a new dose combination: enroll 3 patients DLT = 0/3 Go to next higher dose combination along the diagonal DLT >= 2/3 Split the trial into two parallel searches

  • eg. ( k, k )

Begin the search at ( k, k-1 ), escalate doses of Agent 1 Begin the search at ( k-1, k ), escalate doses of Agent 2 DLT = 1/3 Enroll 3 additional pts at the same dose combination DLT >= 3/6 Split the trial into two parallel searches DLT = 2/6 Enroll 3 additional pts at the same dose combination DLT >= 3/9 Split the trial into two parallel searches or declare it as MTD if both attains the highest level DLT <= 2/9 Go to next higher dose combination along the diagonal DLT <= 1/6 Go to next higher dose combination along the diagonal

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-27
SLIDE 27

3+3+3 Fast Escalation Rule

  • Parallel Searches

26

Begin the search at ( k*, k-1 ), escalate doses

  • f Agent 1

DLT = 0/3 Go to next higher dose combination ( k*+1, k-1 ) DLT >= 2/3 Declare ( k*-1, k-1) as one recommendation of the MTD

DLT = 1/3 Enroll 3 additional pts at the same dose combination ( k*, k-1)

DLT >= 3/6 Declare ( k*-1, k-1) as

  • ne recommendation
  • f the MTD

DLT = 2/6 Enroll 3 additional pts at the same dose combination ( k*, k-1 )

DLT >= 3/9 Declare ( k*-1, k-1) as one recommendation of the MTD DLT <= 2/9 Go to next higher dose combination ( k*+1, k-1 )

DLT <= 1/6 Go to next higher dose combination ( k*+1, k-1 )

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017

slide-28
SLIDE 28

Bayesian Logistic Regression Model: a combination

  • f clinical and statistical expertise

27

Historical Data (prior info) Trial Data 0/3,0/3,1/3,… Model based dose-DLT relationship DLT rates p1,p2,…,pMTD (uncertainty) Clinical, PK, PD Expertise Final Dose Escalation Decision Dose Recommendations

|Symposium on Dose Selection for Cancer Treatment Drugs | May 12, 2017