SAMprior for Binary Endpoints

Peng Yang and Ying Yuan

2023-09-27

Introduction

The self-adapting mixture prior (SAMprior) package is designed to enhance the effectiveness and practicality of clinical trials by leveraging historical information or real-world data [1]. The package incorporate historical data into a new trial using an informative prior constructed based on historical data while mixing a non-informative prior to enhance the robustness of information borrowing. It utilizes a data-driven way to determine a self-adapting mixture weight that dynamically favors the informative (non-informative) prior component when there is little (substantial) evidence of prior-data conflict. Operating characteristics are evaluated and compared to the robust Meta-Analytic-Predictive (rMAP) prior [2], which assigns a fixed weight of 0.5.

Consider a randomized clinical trial to compare a treatment with a control in patients with ankylosing spondylitis. The primary efficacy endpoint is binary, indicating whether a patient achieves 20% improvement at week six according to the Assessment of SpondyloArthritis International Society criteria [3]. Nine historical data available to the control were used to construct the MAP prior:

study n r
Baeten (2013) 6 1
Deodhar (2016) 122 35
Deodhar (2019) 104 31
Erdes (2019) 23 10
Huang (2019) 153 56
Kivitz (2018) 117 55
Pavelka (2017) 76 28
Sieper (2017) 74 21
Van der Heijde (2018) 87 35

SAM Prior Derivation

SAM prior is constructed by mixing an informative prior \(\pi_1(\theta)\), constructed based on historical data, with a non-informative prior \(\pi_0(\theta)\) using the mixture weight \(w\) determined by SAM_weight function to achieve the degree of prior-data conflict [1]. The following sections describe how to construct SAM prior in details.

Informative Prior Construction based on Historical Data

To construct informative priors based on the aforementioned nine historical data, we apply gMAP function from RBesT to perform meta-analysis. This informative prior results in a representative form from a large MCMC samples, and it can be converted to a parametric representation with the automixfit function using expectation-maximization (EM) algorithm [4]. This informative prior is also called MAP prior.

# load R packages
library(ggplot2)
theme_set(theme_bw()) # sets up plotting theme
set.seed(22)
map_ASAS20 <- gMAP(cbind(r, n-r) ~ 1 | study,
                   family = binomial,
                   data = ASAS20, 
                   tau.dist = "HalfNormal", 
                   tau.prior = 1,
                   beta.prior = 2)
## Assuming default prior location   for beta: 0
## Warning: Bulk Effective Samples Size (ESS) is too low, indicating posterior means and medians may be unreliable.
## Running the chains for more iterations may help. See
## https://mc-stan.org/misc/warnings.html#bulk-ess
## Warning: Tail Effective Samples Size (ESS) is too low, indicating posterior variances and tail quantiles may be unreliable.
## Running the chains for more iterations may help. See
## https://mc-stan.org/misc/warnings.html#tail-ess
## Final MCMC sample equivalent to less than 1000 independent draws.
## Please consider increasing the MCMC simulation size.
map_automix <- automixfit(map_ASAS20)
map_automix
## EM for Beta Mixture Model
## Log-Likelihood = 629.3091
## 
## Univariate beta mixture
## Mixture Components:
##   comp1     comp2    
## w  0.530831  0.469169
## a 50.769450  9.059985
## b 89.281035 15.747092
plot(map_automix)$mix

The resulting MAP prior is approximated by a mixture of conjugate priors, given by \(\pi_1(\theta) = 0.63 Beta(42.5, 77.2) + 0.37 Beta(7.2, 12.4)\), with \(\hat{\theta}_h \approx 0.36\).

SAM Weight Determination

Let \(\theta\) and \(\theta_h\) denote the treatment effects associated with the current arm data \(D\) and historical \(D_h\), respectively. Let \(\delta\) denote the clinically significant difference such that is \(|\theta_h - \theta| \ge \delta\), then \(\theta_h\) is regarded as clinically distinct from \(\theta\), and it is therefore inappropriate to borrow any information from \(D_h\). Consider two hypotheses:

\[ H_0: \theta = \theta_h, ~~ H_1: \theta = \theta_h + \delta ~ \text{or} ~ \theta = \theta_h - \delta. \] \(H_0\) represents that \(D_h\) and \(D\) are consistent (i.e., no prior-data conflict) and thus information borrowing is desirable, whereas \(H_1\) represents that the treatment effect of \(D\) differs from \(D_h\) to such a degree that no information should be borrowed.

The SAM prior uses the likelihood ratio test (LRT) statistics \(R\) to quantify the degree of prior-data conflict and determine the extent of information borrowing. \[ R = \frac{P(D | H_0, \theta_h)}{P(D | H_1, \theta_h)} = \frac{P(D | \theta = \theta_h)}{\max \{ P(D | \theta = \theta_h + \delta), P(D | \theta = \theta_h - \delta) \}} , \] where \(P(D | \cdot)\) denotes the likelihood function. An alternative Bayesian choice is the posterior probability ratio (PPR): \[ R = \frac{P(D | H_0, \theta_h)}{P(D | H_1, \theta_h)} = \frac{P(H_0)}{P(H_1)} \times BF , \] where \(P(H_0)\) and \(P(H_1)\) is the prior probabilities of \(H_0\) and \(H_1\) being true. \(BF\) is the Bayes Factor that in this case is the same as LRT.

The SAM prior, denoted as \(\pi_{sam}(\theta)\), is then defined as a mixture of an informative prior \(\pi_1(\theta)\), constructed based on \(D_h\), with a non-informative prior \(\pi_0(\theta)\): \[\pi_{sam}(\theta) = w \pi_1(\theta) + (1 - w) \pi_0(\theta)\] where the mixture weight \(w\) is calculated as: \[w = \frac{R}{1 + R}.\] As the level of prior-data conflict increases, the likelihood ratio \(R\) decreases, resulting in a decrease in the weight \(w\) assigned to the informative prior and a decrease in information borrowing. As a result, \(\pi_{sam}(\theta)\) is data-driven and has the ability to self-adapt the information borrowing based on the degree of prior-data conflict.

To calculate mixture weight \(w\) of the SAM prior, we assume the sample size enrolled in the control arm is \(n = 35\), with \(r = 10\) responses, then we can apply function SAM_weight in SAMprior as follows:

n <- 35; r = 10 
wSAM <- SAM_weight(if.prior = map_automix, 
                   delta = 0.2,
                   n = n, r = r)
cat('SAM weight: ', wSAM)
## SAM weight:  0.7588881

The default method to calculate \(w\) is using LRT, which is fully data-driven. However, if investigators want to incorporate prior information on prior-data conflict to determine the mixture weight \(w\), this can be achieved by using PPR method as follows:

wSAM <- SAM_weight(if.prior = map_automix, 
                   delta = 0.2,
                   method.w = 'PPR',
                   prior.odds = 3/7,
                   n = n, r = r)
cat('SAM weight: ', wSAM)
## SAM weight:  0.5742702

The prior.odds indicates the prior probability of \(H_0\) over the prior probability of \(H_1\). In this case (e.g., prior.odds = 3/7), the prior information favors the presence prior-data conflict and it results in a decreased mixture weight.

When historical information is congruent with the current control arm, SAM weight reaches to the highest peak. As the level of prior-data conflict increases, SAM weight decreases. This demonstrates that SAM prior is data-driven and self-adapting, favoring the informative (non-informative) prior component when there is little (substantial) evidence of prior-data conflict.

## Warning: `qplot()` was deprecated in ggplot2 3.4.0.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.

SAM Prior Construction

To construct the SAM prior, we mix the derived informative prior \(\pi_1(\theta)\) with a vague prior \(\pi_0(\theta)\) using pre-determined mixture weight by SAM_prior function in SAMprior as follows:

SAM.prior <- SAM_prior(if.prior = map_automix, 
                       nf.prior = mixbeta(nf.prior = c(1,1,1)),
                       weight = wSAM)
SAM.prior
## Univariate beta mixture
## Mixture Components:
##   comp1      comp2      nf.prior  
## w  0.3048404  0.2694298  0.4257298
## a 50.7694503  9.0599849  1.0000000
## b 89.2810355 15.7470916  1.0000000

where the non-informative prior \(\pi_0(\theta)\) follows a uniform distribution.

Operating Characteristics

In this section, we aim to investigate the operating characteristics of the SAM prior, constructed based on the historical data in the context of ankylosing spondylitis trial, via simulation. The incorporation of historical information is expected to be beneficial in reducing the required sample size for the current arms. To achieve this, we assume a 1:2 ratio between the control and treatment arms.

We compare the operating characteristics of the SAM prior and rMAP prior with pre-specified fixed weight under various scenarios. Specifically, we will evaluate the relative bias and relative mean squared error (MSE) of these methods. The relative bias and relative MSE are defined as the differences between the bias/MSE of a given method and the bias/MSE obtained when using a non-informative prior.

Additionally, we investigate the type I error and power of the methods under different degrees of prior-data conflicts. The decision regarding whether a treatment is superior or inferior to a standard control will be based on the condition: \[\Pr(\theta_t - \theta > 0) > 0.95.\]

In SAMprior, the operating characteristics can be considered in following steps:

  1. Specify priors: This step involves constructing informative prior based on historical data and non-informative prior.

  2. Specify the decision criterion: The decision2S function is used to initialize the decision criterion. This criterion determines whether a treatment is considered superior or inferior to a standard control.

  3. Specify design parameters for the get_OC function: This step involves defining the design parameters for evaluating the operating characteristics. These parameters include the clinically significant difference (CSD) used in SAM prior calculation, the method used to determine the mixture weight for the SAM prior, the sample sizes for the control and treatment arms, the number of trials used for simulation, the choice of weight for the robust MAP prior used as a benchmark, and the vector of response rates for both the control and treatment arms.

Type I Error

To compute the type I error, we consider four scenarios, with the first and last two scenarios representing minimal and substantial prior-data conflicts, respectively. In general, the results show that both methods effectively control the type I error.

set.seed(123)
TypeI <- get_OC(if.prior = map_automix,       ## MAP prior from historical data
                nf.prior = mixbeta(c(1,1,1)), ## Non-informative prior for treatment arm
                delta    = 0.2,               ## CSD for SAM prior
                ## Method to determine the mixture weight for the SAM prior
                method.w = 'LRT',             
                n        = 35, n.t = 70,      ## Sample size for control and treatment arms
                ## Decisions
                decision = decision2S(0.95, 0, lower.tail=FALSE), 
                ntrial   = 1000,              ## Number of trials simulated
                if.MAP   = TRUE,              ## Output robust MAP prior for comparison
                weight   = 0.5,               ## Weight for robust MAP prior
                ## Response rates for control and treatment arms
                theta    = c(0.36, 0.36, 0.11, 0.55),
                theta.t  = c(0.34, 0.33, 0.11, 0.55)
                  )
kable(TypeI)
scenarios Bias_SAM Bias_rMAP RMSE_SAM RMSE_rMAP wSAM res_SAM res_rMAP res_NP
1 -0.0040642 -0.0040324 -0.0026221 -0.0034043 0.7245092 0.020 0.015 0.026
2 -0.0052884 -0.0050513 -0.0028415 -0.0035849 0.7117479 0.018 0.012 0.026
3 0.0017143 0.0172913 0.0004427 0.0023177 0.0245039 0.031 0.026 0.031
4 -0.0132404 -0.0356093 0.0021340 0.0025261 0.1875810 0.098 0.107 0.046

Power

For power evaluation, we also consider four scenarios, with the first and last two scenarios representing minimal and substantial prior-data conflicts, respectively. In general, it is observed that the SAM prior achieves better power compared to rMAP, particularly when there is strong evidence of prior-data conflicts.

set.seed(123)
Power <- get_OC(if.prior = map_automix,       ## MAP prior from historical data
                nf.prior = mixbeta(c(1,1,1)), ## Non-informative prior for treatment arm
                delta    = 0.2,               ## CSD for SAM prior
                n        = 35, n.t = 70,      ## Sample size for control and treatment arms
                ## Decisions
                decision = decision2S(0.95, 0, lower.tail=FALSE), 
                ntrial   = 1000,              ## Number of trials simulated
                if.MAP   = TRUE,           ## Output robust MAP prior for comparison
                weight   = 0.5,               ## Weight for robust MAP prior
                ## Response rates for control and treatment arms
                theta    = c(0.37, 0.34, 0.16, 0.11),
                theta.t  = c(0.57, 0.54, 0.36, 0.31)
                  )
kable(Power)
scenarios Bias_SAM Bias_rMAP RMSE_SAM RMSE_rMAP wSAM res_SAM res_rMAP res_NP
1 -0.0067439 -0.0064999 -0.0026717 -0.0033999 0.7181020 0.799 0.771 0.622
2 0.0029869 0.0042857 -0.0023390 -0.0028376 0.7379218 0.780 0.750 0.626
3 0.0074003 0.0278075 0.0014730 0.0030087 0.1098638 0.665 0.524 0.708
4 0.0020211 0.0181728 0.0005283 0.0026173 0.0286888 0.748 0.587 0.766

Decision Making

Finally, we present an example of how to make a final decision on whether the treatment is superior or inferior to a standard control once the trial has been completed and data has been collected. This step can be accomplished using the postmix function from RBesT, as shown below:

## Sample size and number of responses for treatment arm
n_t <- 70; x_t <- 22 

## first obtain posterior distributions...
post_SAM <- postmix(priormix = SAM.prior,         ## SAM Prior
                    r = r,   n = n)
post_trt <- postmix(priormix = mixbeta(c(1,1,1)), ## Non-informative prior
                    r = x_t, n = n_t)

## Define the decision function
decision = decision2S(0.95, 0, lower.tail=FALSE)

## Decision-making
decision(post_trt, post_SAM)
## [1] 0

References

[1] Yang P. et al., Biometrics, 2023; 00, 1–12. https://doi.org/10.1111/biom.13927
[2] Schmidli H. et al., Biometrics 2014; 70(4):1023-1032.
[3] Baeten D. et al., The Lancet, 2013; (382), 9906, p 1705.
[4] Neuenschwander B. et al., Clin Trials. 2010; 7(1):5-18.

R Session Info

sessionInfo()
## R version 4.2.1 (2022-06-23)
## Platform: x86_64-apple-darwin17.0 (64-bit)
## Running under: macOS Big Sur ... 10.16
## 
## Matrix products: default
## BLAS:   /Library/Frameworks/R.framework/Versions/4.2/Resources/lib/libRblas.0.dylib
## LAPACK: /Library/Frameworks/R.framework/Versions/4.2/Resources/lib/libRlapack.dylib
## 
## locale:
## [1] C/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8
## 
## attached base packages:
## [1] stats     graphics  grDevices utils     datasets  methods   base     
## 
## other attached packages:
## [1] knitr_1.43       SAMprior_1.1.1   ggplot2_3.4.3    Metrics_0.1.4   
## [5] checkmate_2.2.0  assertthat_0.2.1 RBesT_1.7-2     
## 
## loaded via a namespace (and not attached):
##  [1] Rcpp_1.0.11          mvtnorm_1.2-3        prettyunits_1.1.1   
##  [4] ps_1.7.5             digest_0.6.33        utf8_1.2.3          
##  [7] plyr_1.8.8           R6_2.5.1             backports_1.4.1     
## [10] stats4_4.2.1         evaluate_0.21        highr_0.10          
## [13] pillar_1.9.0         rlang_1.1.1          rstudioapi_0.15.0   
## [16] callr_3.7.3          jquerylib_0.1.4      rmarkdown_2.24      
## [19] labeling_0.4.3       stringr_1.5.0        loo_2.6.0           
## [22] munsell_0.5.0        compiler_4.2.1       xfun_0.40           
## [25] rstan_2.21.8         pkgconfig_2.0.3      pkgbuild_1.4.2      
## [28] rstantools_2.3.1.1   htmltools_0.5.6      tidyselect_1.2.0    
## [31] tibble_3.2.1         tensorA_0.36.2       gridExtra_2.3       
## [34] codetools_0.2-19     matrixStats_1.0.0    fansi_1.0.4         
## [37] crayon_1.5.2         dplyr_1.1.3          withr_2.5.0         
## [40] grid_4.2.1           distributional_0.3.2 jsonlite_1.8.7      
## [43] gtable_0.3.4         lifecycle_1.0.3      DBI_1.1.3           
## [46] magrittr_2.0.3       posterior_1.4.1      StanHeaders_2.26.27 
## [49] scales_1.2.1         RcppParallel_5.1.7   stringi_1.7.12      
## [52] cli_3.6.1            cachem_1.0.8         reshape2_1.4.4      
## [55] farver_2.1.1         bslib_0.5.1          generics_0.1.3      
## [58] vctrs_0.6.3          Formula_1.2-5        tools_4.2.1         
## [61] glue_1.6.2           processx_3.8.2       abind_1.4-5         
## [64] parallel_4.2.1       fastmap_1.1.1        yaml_2.3.7          
## [67] inline_0.3.19        colorspace_2.1-0     bayesplot_1.10.0    
## [70] sass_0.4.7