Type: | Package |
Title: | Bayesian Decreasingly Informative Priors for Early Termination Phase II Trials |
Version: | 0.1.1 |
Date: | 2023-1-31 |
Maintainer: | Chen Wang <wangc10@vcu.edu> |
Description: | Provide early termination phase II trial designs with a decreasingly informative prior (DIP) or a regular Bayesian prior chosen by the user. The program can determine the minimum planned sample size necessary to achieve the user-specified admissible designs. The program can also perform power and expected sample size calculations for the tests in early termination Phase II trials. See Wang C and Sabo RT (2022) <doi:10.18203/2349-3259.ijct20221110>; Sabo RT (2014) <doi:10.1080/10543406.2014.888441>. |
License: | GPL-2 | GPL-3 [expanded from: GPL (≥ 2)] |
URL: | <https://github.com/chenw10/BayesDIP> |
Imports: | stats |
Encoding: | UTF-8 |
RoxygenNote: | 7.2.2 |
Language: | en-US |
NeedsCompilation: | no |
Packaged: | 2023-02-01 18:44:53 UTC; chen |
Author: | Chen Wang [cre, aut], Roy Sabo [aut] |
Repository: | CRAN |
Date/Publication: | 2023-02-02 16:20:05 UTC |
One sample Bernoulli model
Description
For a given planned sample size, the efficacy and futility boundaries, return the power, the type I error, the expected sample size and its standard deviation, the probability of reaching the efficacy and futility boundaries.
Usage
OneSampleBernoulli(
prior,
N = 100,
p0,
p1,
d = 0,
ps = 0.95,
pf = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 5000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters a and b, respectively. |
N |
The planned sample size. |
p0 |
The null response rate, which could be taken as the standard or historical rate. |
p1 |
The response rate of the new treatment. |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements
Examples
# with traditional Bayesian prior Beta(1,1)
OneSampleBernoulli(list(2,1,1), N = 100, p0 = 0.3, p1 = 0.5, d = 0.05,
ps = 0.98, pf = 0.05, alternative = "greater",
seed = 202210, sim = 10)
# with DIP
OneSampleBernoulli(list(1,0,0), N = 100, p0 = 0.3, p1 = 0.5, d = 0.05,
ps = 0.98, pf = 0.05, alternative = "greater",
seed = 202210, sim = 10)
One sample Bernoulli model - Trial Design
Description
Calculate the minimum planned sample size under an admissible design. The users decide the power and type-I-error, and pick the efficacy and futility boundaries. If there are no admissible design based on controlled type-I-error, then default to output the designs with the lowest type-I-error and at least the user-defined (e.g. 80%) power.
Usage
OneSampleBernoulli.Design(
prior,
nmin = 10,
nmax = 100,
p0,
p1,
d = 0,
ps,
pf,
power = 0.8,
t1error = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 1000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters a and b, respectively. |
nmin |
The start searching sample size |
nmax |
The stop searching sample size |
p0 |
The null response rate, which could be taken as the standard or historical rate. |
p1 |
The response rate of the new treatment. |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
power |
The power to achieve. |
t1error |
The controlled type-I-error. |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements.
Examples
# with traditional Bayesian prior Beta(1,1)
OneSampleBernoulli.Design(list(2,1,1), nmin = 10, nmax=100, p0 = 0.3, p1 = 0.5, d = 0,
ps = 0.98, pf = 0.02, power = 0.80, t1error=0.05, alternative = "greater",
seed = 202210, sim = 10)
# with DIP
OneSampleBernoulli.Design(list(1,0,0), nmin = 10, nmax=100, p0 = 0.3, p1 = 0.5, d = 0,
ps = 0.98, pf = 0.02, power = 0.80, t1error=0.05, alternative = "greater",
seed = 202210, sim = 10)
One sample Normal model with one-parameter unknown, given variance
Description
For a given planned sample size, the efficacy and futility boundaries, return the power, the type I error, the expected sample size and its standard deviation, the probability of reaching the efficacy and futility boundaries.
Usage
OneSampleNormal1(
prior,
N = 100,
mu0,
mu1,
var,
d = 0,
ps = 0.95,
pf = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 5000
)
Arguments
prior |
A list of length 2 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second elements of the list is the parameter n0. |
N |
The planned sample size. |
mu0 |
The null mean value, which could be taken as the standard or current mean. |
mu1 |
The mean value of the new treatment. |
var |
The variance |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements.
Examples
# with traditional Bayesian prior Beta(1,1)
OneSampleNormal1(list(2,6), N = 100, mu0 = 100, mu1 = 95, var=15, d = 0.05,
ps = 0.95, pf = 0.05, alternative = "less",
seed = 202210, sim = 10)
OneSampleNormal1(list(1,0), N = 100, mu0 = 100, mu1 = 95, var=15, d = 0.05,
ps = 0.95, pf = 0.05, alternative = "less",
seed = 202210, sim = 10)
One sample Normal model with one-parameter unknown, given variance
Description
#' Calculate the minimum planned sample size under an admissible design. The users decide the power and type-I-error, and pick the efficacy and futility boundaries. If there are no admissible design based on controlled type-I-error, then default to output the designs with the lowest type-I-error and at least the user-defined (e.g. 80%) power.
Usage
OneSampleNormal1.Design(
prior,
nmin = 10,
nmax = 100,
mu0,
mu1,
var,
d = 0,
ps,
pf,
power = 0.8,
t1error = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 1000
)
Arguments
prior |
A list of length 2 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second elements of the list is the parameter n0. |
nmin |
The start searching sample size |
nmax |
The stop searching sample size |
mu0 |
The null mean value, which could be taken as the standard or current mean. |
mu1 |
The mean value of the new treatment. |
var |
The variance |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
power |
The power to achieve. |
t1error |
The controlled type-I-error. |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements.
Examples
# with traditional Bayesian prior Beta(1,1)
OneSampleNormal1.Design(list(2,6), nmin = 10, nmax = 100, mu0 = 100, mu1 = 95, var=15, d = 0.05,
ps = 0.95, pf = 0.05, power = 0.8, t1error = 0.05, alternative = "less",
seed = 202210, sim = 10)
# with DIP
OneSampleNormal1.Design(list(1,0), nmin = 10, nmax = 100, mu0 = 100, mu1 = 95, var=15, d = 0.05,
ps = 0.95, pf = 0.05, power = 0.8, t1error = 0.05, alternative = "less",
seed = 202210, sim = 10)
One sample Normal model with two-parameter unknown - both mean and variance unknown
Description
For a given planned sample size, the efficacy and futility boundaries, return the power, the type I error, the expected sample size and its standard deviation, the probability of reaching the efficacy and futility boundaries.
Usage
OneSampleNormal2(
prior,
N = 100,
mu0,
mu1,
var0,
var,
d = 0,
ps = 0.95,
pf = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 5000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters k and v, respectively. |
N |
The planned sample size. |
mu0 |
The null mean value, which could be taken as the standard or current mean. |
mu1 |
The mean value of the new treatment. |
var0 |
The prior sample variance |
var |
The variance |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements.
Examples
# with traditional Bayesian prior Beta(1,1)
OneSampleNormal2(list(2,2,1), N = 100, mu0 = 100, mu1 = 95, var0=225, var=225, d = 0,
ps = 0.95, pf = 0.05, alternative = "less",
seed = 202210, sim = 10)
# with DIP
OneSampleNormal2(list(1,0,0), N = 100, mu0 = 100, mu1 = 95, var0=225, var=225, d = 0,
ps = 0.95, pf = 0.05, alternative = "less",
seed = 202210, sim = 10)
One sample Normal model with two-parameter unknown - both mean and variance unknown
Description
Calculate the minimum planned sample size under an admissible design. The users decide the power and type-I-error, and pick the efficacy and futility boundaries. If there are no admissible design based on controlled type-I-error, then default to output the designs with the lowest type-I-error and at least the user-defined (e.g. 80%) power.
Usage
OneSampleNormal2.Design(
prior,
nmin = 10,
nmax = 100,
mu0,
mu1,
var0,
var,
d = 0,
ps,
pf,
power = 0.8,
t1error = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 1000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters k and v, respectively. |
nmin |
The start searching sample size |
nmax |
The stop searching sample size |
mu0 |
The null mean value, which could be taken as the standard or current mean. |
mu1 |
The mean value of the new treatment. |
var0 |
The prior sample variance |
var |
The variance |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
power |
The power to achieve. |
t1error |
The controlled type-I-error. |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements.
Examples
# with traditional Bayesian prior Beta(1,1)
OneSampleNormal2.Design(list(2,2,1), nmin = 10, nmax = 100, mu0 = 100, mu1 = 95,
var0=225, var=225, d = 0, ps = 0.95, pf = 0.05,
power = 0.8, t1error = 0.05, alternative = "less",
seed = 202210, sim = 10)
# with DIP
OneSampleNormal2.Design(list(1,0,0), nmin = 10, nmax = 100, mu0 = 100, mu1 = 95,
var0=225, var=225, d = 0, ps = 0.95, pf = 0.05,
power = 0.8, t1error = 0.05, alternative = "less",
seed = 202210, sim = 10)
One sample Poisson model
Description
For a given planned sample size, the efficacy and futility boundaries, return the power, the type I error, the expected sample size and its standard deviation, the probability of reaching the efficacy and futility boundaries.
Usage
OneSamplePoisson(
prior,
N = 100,
m0,
m1,
d = 0,
ps = 0.95,
pf = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 5000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters a and b, respectively. |
N |
The planned sample size. |
m0 |
The null event rate, which could be taken as the standard or current event rate. |
m1 |
The event rate of the new treatment. |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements
Examples
# with traditional Bayesian prior Gamma(0.5,0.001)
OneSamplePoisson(list(2,0.5,0.001), N = 100, m0 = 0.5, m1 = 0.4, d = 0.05,
ps = 0.95, pf = 0.05, alternative = "less",
seed = 202210, sim = 10)
# with DIP
OneSamplePoisson(list(1,0,0), N = 100, m0 = 0.5, m1 = 0.4, d = 0.05,
ps = 0.95, pf = 0.05, alternative = "less",
seed = 202210, sim = 10)
One sample Poisson model - Trial Design
Description
Calculate the minimum planned sample size under an admissible design. The users decide the power and type-I-error, and pick the efficacy and futility boundaries. If there are no admissible design based on controlled type-I-error, then default to output the designs with the lowest type-I-error and at least the user-defined (e.g. 80%) power.
Usage
OneSamplePoisson.Design(
prior,
nmin = 10,
nmax = 100,
m0,
m1,
d = 0,
ps,
pf,
power = 0.8,
t1error = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 1000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters a and b, respectively. |
nmin |
The start searching sample size |
nmax |
The stop searching sample size |
m0 |
The null event rate, which could be taken as the standard or current event rate. |
m1 |
The event rate of the new treatment. |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
power |
The expected power to achieve. |
t1error |
The controlled type-I-error. |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements
Examples
# with traditional Bayesian prior Gamma(0.5,0.001)
OneSamplePoisson.Design(list(2,0.5,0.001), nmin = 10, nmax=100, m0 = 5, m1 = 4, d = 0,
ps = 0.95, pf = 0.05, power = 0.80, t1error=0.05, alternative = "less",
seed = 202210, sim = 10)
# with DIP
OneSamplePoisson.Design(list(1,0,0), nmin = 10, nmax=100, m0 = 5, m1 = 4, d = 0,
ps = 0.95, pf = 0.05, power = 0.80, t1error=0.05, alternative = "less",
seed = 202210, sim = 10)
Two sample Bernoulli model
Description
For a given planned sample size, the efficacy and futility boundaries, return the power, the type I error, the expected sample size and its standard deviation, the probability of reaching the efficacy and futility boundaries. Equal allocation between two treatment groups.
Usage
TwoSampleBernoulli(
prior,
N = 200,
p1,
p2,
d = 0,
ps = 0.95,
pf = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 5000
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters a and b, respectively. |
N |
The total planned sample size for two treatment groups. |
p1 |
The response rate of the new treatment. |
p2 |
The response rate of the compared treatment. |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements
Examples
# with traditional Bayesian prior Beta(1,1)
TwoSampleBernoulli(list(2,1,1), N = 200, p1 = 0.5, p2 = 0.3, d = 0,
ps = 0.90, pf = 0.05, alternative = "greater",
seed = 202210, sim = 5)
# with DIP
TwoSampleBernoulli(list(1,0,0), N = 200, p1 = 0.5, p2 = 0.3, d = 0,
ps = 0.90, pf = 0.05, alternative = "greater",
seed = 202210, sim = 5)
Two sample Bernoulli model - Trial Design
Description
Calculate the minimum planned sample size under an admissible design. The users decide the power and type-I-error, and pick the efficacy and futility boundaries. If there are no admissible design based on controlled type-I-error, then default to output the designs with the lowest type-I-error and at least the user-defined (e.g. 80%) power.
Usage
TwoSampleBernoulli.Design(
prior,
nmin = 10,
nmax = 200,
p1,
p2,
d = 0,
ps = 0.95,
pf = 0.05,
power = 0.8,
t1error = 0.05,
alternative = c("less", "greater"),
seed = 202209,
sim = 500
)
Arguments
prior |
A list of length 3 containing the distributional information of the prior. The first element is a number specifying the type of prior. Options are
The second and third elements of the list are the parameters a and b, respectively. |
nmin |
The start searching total sample size for two treatment groups. |
nmax |
The stop searching total sample size for two treatment groups. |
p1 |
The response rate of the new treatment. |
p2 |
The response rate of the compared treatment. |
d |
The target improvement (minimal clinically meaningful difference). |
ps |
The efficacy boundary (upper boundary). |
pf |
The futility boundary (lower boundary). |
power |
The power to achieve. |
t1error |
The controlled type-I-error. |
alternative |
less (lower values imply greater efficacy) or greater (larger values imply greater efficacy). |
seed |
The seed for simulations. |
sim |
The number of simulations. |
Value
A list of the arguments with method and computed elements
Examples
# with traditional Bayesian prior Beta(1,1)
TwoSampleBernoulli.Design(list(2,1,1), nmin = 100, nmax = 120, p1 = 0.5, p2 = 0.3, d = 0,
ps = 0.90, pf = 0.05, power = 0.8, t1error = 0.05, alternative = "greater",
seed = 202210, sim = 10)
# with DIP
TwoSampleBernoulli.Design(list(1,0,0), nmin = 100, nmax = 120, p1 = 0.5, p2 = 0.3, d = 0,
ps = 0.90, pf = 0.05, power = 0.8, t1error = 0.05, alternative = "greater",
seed = 202210, sim = 10)