Title: Statistical Aspects of Disease Progression Modeling
1Statistical Aspects of Disease Progression
Modeling
- Jonathan L. French, ScD
- Clinical Pharmacology Statistics, Pharmacometrics
- Pfizer Global Research Development
2MODELEURS SANS FRONTIERES
MODELERS WITHOUT BORDERS
3Outline
- Introduction
- Statistical issues in disease progression
modeling - Methods for handling missing data
- Issues to consider when pooling studies
- Disease progression model for FEV1
- Summary
4Introduction
- Disease progression models are longitudinal
models that describe the progression of disease
over time - Typically we postulate the form of an individual
response over time - start with the normal disease progression
(e.g., without treatment or with placebo) - Add the effects of treatment/intervention
- Many examples in the literature
- Holford et al (2006) review
- Chan Holford (2001) review
- Holford and Peace (1992) tacrine/Alzheimers
- Mould et al. (2002) topotecan/solid tumors
5General statistical model for disease progression
- Disease progression models are constructed as
hierarchical models - Level 1 describes individual disease progression
- Level 2 describes the inter-individual
variability in disease progression
6Statistical issues
- Many of the statistical aspects of DP modeling
are the same as those with pop PK and PK/PD
modeling - Distributional assumptions about residuals
- Distributional assumptions about inter-individual
random effects - Focus on two that are of particular concern in
disease progression modeling - Missing data
- Pooling multiple studies
- A third area thats important is starting out
with well-defined and documented objectives ?
analysis plan
7Missing data concepts
- Imagine there is a drop-out process time to
discontinuation (T) - Conceptually, statisticians categorize the
drop-out process into three groups (Little and
Rubin, 1987) - Drop-out processes that dont depend on observed
or unobserved outcomes - called Missing Completely at Random (MCAR)
- E.g., relocation randomized to continue or not
- Drop-out processes that depend only on observed
data - called Missing at Random (MAR)
- E.g., observed lack of effectiveness over time
- Drop-out processes that depend on unobserved data
- called Missing Not at Random (MNAR) (aka
informative dropout) - E.g., d/c due to (unmeasured) change in disease
progress
8Missing data what to do?
- Ad-hoc methods
- For example,
- Analyze only the subjects with complete data
- Simple imputation (e.g., LOCF, mean imputation)
- Generally dont provide valid estimates when data
are not MCAR - Multiple imputation
- Imputes multiple values for the missing data
- Fit model multiple times and summarize the fits
- Provides valid estimates when data are MCAR or
MAR (assuming you have the right model) - Likelihood-based estimation
- Estimate model based on observed data
- Standard approaches to fitting mixed effects
models fall here - Provides valid estimates when data are MCAR or
MAR (assuming you have the right model)
9Missing data the good, bad and ugly
- The good
- MI and Likelihood-based estimation are fairly
robust to the drop-out process (MCAR or MAR) - Can identify MCAR vs. MAR/MNAR (e.g., Carpenter
et al. 2002) - The bad
- No way to definitively distinguish between MAR or
MNAR! - The ugly
- May be important to conduct sensitivity analyses
to understand the impact of modeling the drop-out
process - Selection models (e.g., Diggle and Kenward, 1994)
- Pattern-mixture models (e.g., Little 1993, 1994)
- Selection models applied to disease progression
modeling see Hu and Sale (2003)
10Informative Missingness
- Not all definitions of informative missingness
are the same - DK
- HS
- This has implications for estimation and
description - Need to simulate to get correct marginal
distribution of outcome - In any case, both selection models and
pattern-mixture models depend on un-testable
assumptions (e.g., Kenward 1998)
11Pooling studies
- The studies typically have
- different patient populations
- different study designs with respect to
- Duration of study
- Timing of observations
- Sensitivity of assay
- Differences with respect to when studies are
conducted - Changes in standard of care over time?
- Should consider the implications when building
disease progression models
12Pooling studies (2)
- Typically we attempt to adjust for many of these
effects by including covariates in the model - Need to make some assumptions about the
relationship between study populations (e.g.,
treatment of metastatic disease vs. adjunct
treatment) - Assumptions can be explicit or implicit
- Covariate adjustment can frequently account for
differences in patient population - May need to consider study-specific effects if
covariates cant be found - Covariates and structural model changes may be
able to account for differences in assay
sensitivity and/or changes in standard of care
over time - If substantial differences remain or assumptions
arent tenable, may need to reassess the
pool-ability of studies
13Disease Progression Model for FEV1
- Exubera (INH) is insulin powder for oral
inhalation with a specially designed pulmonary
inhaler - The extensive development program
- confirmed the effectiveness of inhaled insulin
and - assessed the unique consequences of pulmonary
delivery - The impact of INH on lung function over time is
an important aspect of its safety profile - One measure of lung function is FEV1 (forced
expiratory volume in one second) FEV1 is a
robust measure of airway function
14Background
- Previous analyses of lung function data across
the Exubera development program showed that
there are small decreases in FEV1 associated with
INH treatment - In particular, FEV1 declines associated with INH
occurred within the first two weeks of treatment
and were - small,
- non-progressive after 2 weeks, and
- reversible upon discontinuation of INH treatment
15Objectives of FEV1 analysis
- Modeling was used to provide an integrated
analysis of the pooled data - Objectives of modeling
- Is there an acceleration of decline in pulmonary
function? - Is the decline in pulmonary function reversible
after (prolonged) use of inhaled insulin?
16Patient Population Study design
- Patient population
- 3766 adult subjects with Type 1 or Type 2
diabetes - Duration of time-on-study ranged from 1 week to
7 years - Pooled across 17 phase 2/3 studies which differed
with respect to - patient population for example,
- Type 1 vs. Type 2 diabetes
- Healthy, asthma and COPD patients
- Study design for example,
- Controlled (parent) and uncontrolled (extension)
studies - Dense and sparse PFT assessments
- Discontinuation phase vs. no d/c phase
- Standard/concomitant treatment
- Standardized vs. non-standardized PFT protocol
17Exposure measure
- Exposure was measured as a dichotomous variable
at each time point in the study - exposed to INH,
- not exposed to INH
- When subjects were not exposed to INH, they were
receiving the standard of care (COMP) - Five potential treatment patterns
18Disease Progression Model for FEV1
19Results of modeling
20Effects of INH occur early and are small,
non-progressive and reversible
21Model Evaluation Population predicted values vs
Time by Group
22Posterior predictive checks
- Quantile-quantile plots of simulated vs.
observed values suggest the model provides a
reasonably good fit.
23Results (2)
- Factors that affected baseline FEV1 were
consistent with those reported in the literature - Height, age, sex, smoking status, asthma/COPD,
BMIgt30 - Enhanced understanding of natural longitudinal
changes in lung function in diabetic patients - Older patients decline more rapidly
- After adjusting for other covariates, diabetes
type was not an important covariate - Enhanced understanding of the impact of Exubera
- Estimates of rates of onset and recovery
- Estimate of magnitude of symptomatic effect
24Pooling studies in FEV1 analysis
- Pooling multiple studies with
- differing patient populations (e.g., Type 1 vs.
Type 2 diabetes) - differing study designs (e.g., sparse vs. dense
PFT assessments standardized vs.
Non-standardized PFT assessments) - Controlled (parent) and uncontrolled (extension)
studies - Discontinuation data on a subset of subjects (but
we have some) - We attempted to adjust for differences in patient
population and study design by including
covariates in the model - Final FEV1 model included covariates for age,
height, sex, smoking status, etc. - Also included different residual error variances
for protocols with standardized and
non-standardized PFTs
25Example of pooling in FEV1 analysis
- Impact of adding covariates and changing
structural model should be considered
Separate residual variance terms leads to more
weight given to studies with smaller variance.
.
26Missing data in FEV1 analysis
- Discontinuation rates ranged between 0 and 18
in any treatment group across the controlled
studies - Pooling many studies of different durations
- view data after any discontinuation (including
end-of-study) as missing - In the analysis of FEV1 data, we likely have a
mixture of missing data processes
27Missing data (2)
- Studies were planned to be of different
durations, - Long-term data for subjects who stopped at the
end of their (parent) study may be MCAR - Subjects choose whether or not to enter extension
study - Possible that subjects with poor FEV1 decide not
to continue - Since weve observed their FEV1 to that point,
the long-term data would be MAR - Drop-outs prior to the planned end of a (parent)
study may be informative (MNAR) - Possible that subjects with a steep drop in lung
function may drop out early without a
corresponding PFT
28Analysis Plan for FEV1
- Defined the objectives of modeling
- Is there an acceleration of decline in pulmonary
function? - Is the decline in pulmonary function reversible
after (prolonged) use of inhaled insulin? - Communicate with the project team about
objectives, assumptions, and uses of the model - Discussed statistical issues we knew that we
would face - Defined the summary statistics to use for model
evaluation
29Analysis Plans are they worth it?
- Advantages
- Can be an effective tool for communicating the
planned analysis - Among project teams (PK, Clinicians,
Statisticians) - Between researchers and regulators
- Defines the scope of the analysis
- Opportunity to make assumptions and uses of the
model explicit - Highlights which aspects to use for model
evaluation - Gets you part-way to your final report/paper
- Disadvantages
- Takes time to prepare
- Analyst may feel locked-in to a specific model
30Summary
- Missing data can often be a problem when building
disease progression models. Important to - Recognize the potential pitfalls
- Recognize the alternative approaches to handling
missing data - Consider sensitivity analyses
- Pooling studies can always be done, but should be
done with care and understanding about
implications - Recommend writing some sort of analysis plan
prior to starting analysis - good communication tool and helps solidify
objectives
31Acknowledgements
- Exubera project team
- Benefited from many conversations with Diane
Mould, Marc Gastonguay, Ken Kowalski, and Tom
Tensfeldt
32References
- Carpenter J, Pocock, S, and Lamm CJ (2002).
Coping with missing data in clinical trials a
model-based approach applied to asthma trials.
Statistics in Medicine. 21 1043-1066. - Chan PLS and Holford NHG (2001). Drug treatment
effects on disease progression. Annu. Rev.
Pharmacol. Toxicol. 41 625-659. - Diggle PJ and Kenward MG (1994). Informative
drop-out in longitudinal data analysis (with
discussion). Applied Statistics, 43 49-93. - Holford NHG, Mould DR, and Peck C (2006). Disease
Progression Models in Principles of Climical
Pharmacology 2nd ed. A. Atkinson. New York
Academic Press. - Holford NHG and Peace KE (1992). Methodologic
aspects of a population pharmacodynamic model for
cognitive effects in Alzheimer patients treated
with tacrine. Proc. Natl. Acad Sci. 89
11466-11470. - Hu C and Sale ME (2003). A Joint Model for
nonlinear Longitudinal Data with Informative
Dropout. J. Pharmakokinet Pharmacodyn., 30
83-103. - Kenward, MG (1998). Selection models for repeated
measurements with nonrandom dropout an
illustration of sensitivity. Statistics in
Medicine. 17 2723-2732. - Little RJA. (1993). Pattern-mixture models for
multivariate incomplete data. J. Amer. Stat.
Assoc, 88 125-134. - Little RJA (1994). A class of pattern-mixture
models for normal incomplete data. Biometrika,
81 471-483. - Little RJA and Rubin DB (1987) Statistical
Analysis with Missing Data. New York John Wiley
Sons. - Mould DR, Holford NHG, Schellens JHM, Beijnen JH,
Hutson PR, Rosing H, ten Bokkel Huinink WW,
Rowinsky EK, Schiller JH, Russo M, and Ross G
(2002). Population pharmacokinetic and adverse
event analysis of topotecan in patients with
solid tumors. Clin Pharm Ther. 71 334-348
33Backup slides
34Effects on FEV1 are small and non-progressive
Adjusted mean treatment group differences and 95
CI for FEV1 change from baseline (3- and 6-month
controlled PFT Phase 2/3 studies)
Mean Change from baseline FEV1 (? SD) by
time Type 2 subjects in Controlled PFT Phase 2/3
studies
Exubera Inhaled Insulin (INH) Advisory
Committee Briefing Document
35Effects on FEV1 are small, non-progressive
Mean Change from baseline FEV1 (? SD) by time
Type 2 subjects in Controlled PFT Phase 2/3
studies
Exubera Inhaled Insulin (INH) Advisory
Committee Briefing Document
36 and reversible upon discontinuation
Mean Change from Baseline and Standard Deviation
in FEV1 (L) by Time in Patients with Type 1 DM
Onset and Withdrawal
Exubera Inhaled Insulin (INH) Advisory
Committee Briefing Document
37Results of modeling
- Is the rate of decline in FEV1 accelerated? ? No
- Natural progression in FEV1 is a loss of 57.3
mL/year (95 CI -60.6 mL/year, -49.3 mL/year) - The effect of INH on slope is to slow the
progression by 1.26 mL/year (95 CI 1.2 mL/year
faster, 2.9 mL/year slower) - Is the effect reversible? ? Yes
- Time to recovery of 90 of the maximum offset is
21 days (95 CI 8 days, 503 days) - Maximum offset was estimated to be a reduction in
FEV1 of 68.1 mL (95 CI -88 mL, -59mL) - Time to onset of 90 of the maximum offset is 51
days (95 CI 15 days, 390 days)
38Demographics
39Missing data in FEV1 analysis
40Predicted mean trends
Predicted typical trend Reversibility after 2
year dosing
50 year old, male, non-smokers, no ULD, BMIlt30,
HT170 cm
50 year old, female, non-smokers, no ULD, BMIlt30,
HT170 cm
Start INH
Stop INH