sbiosobol
Perform global sensitivity analysis by computing first- and total-order Sobol indices (requires Statistics and Machine Learning Toolbox)
Since R2020a
Syntax
Description
performs global sensitivity analysis [1] on a SimBiology model
sobolResults
= sbiosobol(modelObj
,params
,observables
)modelObj
by decomposing the variances of
observables
with respect to the sensitivity inputs
params
.
uses samples from sobolResults
= sbiosobol(modelObj
,scenarios
,observables
)scenarios
, a SimBiology.Scenarios
object, to perform the analysis.
uses additional options specified by one or more name-value pair arguments.sobolResults
= sbiosobol(modelObj
,params
,observables
,Name,Value
)
Examples
Perform Global Sensitivity Analysis by Computing First- and Total-Order Sobol Indices
Load the tumor growth model.
sbioloadproject tumor_growth_vpop_sa.sbproj
Get a variant with the estimated parameters and the dose to apply to the model.
v = getvariant(m1);
d = getdose(m1,'interval_dose');
Get the active configset and set the tumor weight as the response.
cs = getconfigset(m1);
cs.RuntimeOptions.StatesToLog = 'tumor_weight';
Simulate the model and plot the tumor growth profile.
sbioplot(sbiosimulate(m1,cs,v,d));
Perform global sensitivity analysis (GSA) on the model to find the model parameters that the tumor growth is sensitive to.
First, retrieve model parameters of interest that are involved in the pharmacodynamics of the tumor growth. Define the model response as the tumor weight.
modelParamNames = {'L0','L1','w0','k1','k2'}; outputName = 'tumor_weight';
Then perform GSA by computing the first- and total-order Sobol indices using sbiosobol
. Set 'ShowWaitBar'
to true
to show the simulation progress. By default, the function uses 1000 parameter samples to compute the Sobol indices [1].
rng('default');
sobolResults = sbiosobol(m1,modelParamNames,outputName,Variants=v,Doses=d,ShowWaitBar=true)
sobolResults = Sobol with properties: Time: [444x1 double] SobolIndices: [5x1 struct] Variance: [444x1 table] ParameterSamples: [1000x5 table] Observables: {'[Tumor Growth].tumor_weight'} SimulationInfo: [1x1 struct]
You can change the number of samples by specifying the 'NumberSamples'
name-value pair argument. The function requires a total of (number of input parameters + 2) * NumberSamples
model simulations.
Show the mean model response, the simulation results, and a shaded region covering 90% of the simulation results.
plotData(sobolResults,ShowMedian=true,ShowMean=false);
You can adjust the quantile region to a different percentage by specifying 'Alphas'
for the lower and upper quantiles of all model responses. For instance, an alpha value of 0.1 plots a shaded region between the 100 * alpha
and 100 * (1 - alpha)
quantiles of all simulated model responses.
plotData(sobolResults,Alphas=0.1,ShowMedian=true,ShowMean=false);
Plot the time course of the first- and total-order Sobol indices.
h = plot(sobolResults);
% Resize the figure.
h.Position(:) = [100 100 1280 800];
The first-order Sobol index of an input parameter gives the fraction of the overall response variance that can be attributed to variations in the input parameter alone. The total-order index gives the fraction of the overall response variance that can be attributed to any joint parameter variations that include variations of the input parameter.
From the Sobol indices plots, parameters L1
and w0
seem to be the most sensitive parameters to the tumor weight before the dose was applied at t = 7. But after the dose is applied, k1
and k2
become more sensitive parameters and contribute most to the after-dosing stage of the tumor weight. The total variance plot also shows a larger variance for the after-dose stage at t > 35 than for the before-dose stage of the tumor growth, indicating that k1
and k2
might be more important parameters to investigate further. The fraction of unexplained variance shows some variance at around t = 33, but the total variance plot shows little variance at t = 33, meaning the unexplained variance could be insignificant. The fraction of unexplained variance is calculated as 1 - (sum of all the first-order Sobol indices), and the total variance is calculated using var(response)
, where response
is the model response at every time point.
You can also display the magnitudes of the sensitivities in a bar plot. Darker colors mean that those values occur more often over the whole time course.
bar(sobolResults);
You can specify more samples to increase the accuracy of the Sobol indices, but the simulation can take longer to finish. Use addsamples
to add more samples. For example, if you specify 1500 samples, the function performs 1500 * (2 + number of input parameters)
simulations.
gsaMoreSamples = addsamples(gsaResults,1500)
The SimulationInfo property of the result object contains various information for computing the Sobol indices. For instance, the model simulation data (SimData) for each simulation using a set of parameter samples is stored in the SimData
field of the property. This field is an array of SimData
objects.
sobolResults.SimulationInfo.SimData
SimBiology SimData Array : 1000-by-7 Index: Name: ModelName: DataCount: 1 - Tumor Growth Model 1 2 - Tumor Growth Model 1 3 - Tumor Growth Model 1 ... 7000 - Tumor Growth Model 1
You can find out if any model simulation failed during the computation by checking the ValidSample
field of SimulationInfo
. In this example, the field shows no failed simulation runs.
all(sobolResults.SimulationInfo.ValidSample)
ans = 1x7 logical array
1 1 1 1 1 1 1
SimulationInfo.ValidSample
is a table of logical values. It has the same size as SimulationInfo.SimData
. If ValidSample
indicates that any simulations failed, you can get more information about those simulation runs and the samples used for those runs by extracting information from the corresponding column of SimulationInfo.SimDat
a. Suppose that the fourth column contains one or more failed simulation runs. Get the simulation data and sample values used for that simulation using getSimulationResults
.
[samplesUsed,sd,validruns] = getSimulationResults(sobolResults,4);
You can add custom expressions as observables and compute Sobol indices for the added observables. For example, you can compute the Sobol indices for the maximum tumor weight by defining a custom expression as follows.
% Suppress an information warning that is issued during simulation. warnSettings = warning('off', 'SimBiology:sbservices:SB_DIMANALYSISNOTDONE_MATLABFCN_UCON'); % Add the observable expression. sobolObs = addobservable(sobolResults,'Maximum tumor_weight','max(tumor_weight)','Units','gram');
Plot the computed simulation results showing the 90% quantile region.
h2 = plotData(sobolObs,ShowMedian=true,ShowMean=false); h2.Position(:) = [100 100 1280 800];
You can also remove the observable by specifying its name.
gsaNoObs = removeobservable(sobolObs,'Maximum tumor_weight');
Restore the warning settings.
warning(warnSettings);
Input Arguments
modelObj
— SimBiology model
SimBiology model object
SimBiology model, specified as a SimBiology model object
.
params
— Names of model parameters, species, or compartments
character vector | string | string vector | cell array of character vectors
Names of model parameters, species, or compartments, specified as a character vector, string, string vector, or cell array of character vectors.
Example: ["k1","k2"]
Data Types: char
| string
| cell
observables
— Model responses
character vector | string | string vector | cell array of character vectors
Model responses, specified as a character vector, string, string vector, or cell
array of character vectors. Specify the names of species, parameters, compartments, or
observables
.
Example: ["tumor_growth"]
Data Types: char
| string
| cell
scenarios
— Source for drawing samples
SimBiology.Scenarios
object
Source for drawing samples, specified as a SimBiology.Scenarios
object.
You must combine entries of the object elementwise.
Entries must be independent random variables. If there are multiple entries, they must be uncorrelated.
SamplingMethod
of any entry must not becopula
.
Name-Value Arguments
Specify optional pairs of arguments as
Name1=Value1,...,NameN=ValueN
, where Name
is
the argument name and Value
is the corresponding value.
Name-value arguments must appear after other arguments, but the order of the
pairs does not matter.
Before R2021a, use commas to separate each name and value, and enclose
Name
in quotes.
Example: sobolResults =
sbiosobol(modelObj,params,observables,'ShowWaitbar',true)
specifies to show a
simulation progress bar.
Bounds
— Parameter bounds
numeric matrix
Parameter bounds, specified as a numeric matrix with two columns. The first column contains
the lower bounds and the second column contains the upper
bounds. The number of rows must be equal to the number of
parameters in params
.
If a parameter has a nonzero value, the default bounds are ±10% of the value. If the
parameter value is zero, the default bounds are [0 1]
.
Example: [0.5 5]
Data Types: double
Doses
— Doses to use during simulations
ScheduleDose
object | RepeatDose
object | vector of dose objects
Doses to use during model simulations, specified as a ScheduleDose
or
RepeatDose
object or a vector of
dose objects.
Variants
— Variants to apply before simulations
variant object | vector of variant objects
Variants to apply before model simulations, specified as a variant object or vector of variant objects.
When you specify multiple variants with duplicate specifications for a property's value, the last occurrence for the property value in the array of variants is used during simulation.
NumberSamples
— Number of samples to compute Sobol indices
1000
(default) | positive integer
Number of samples to compute Sobol indices, specified as the comma-separated pair
consisting of 'NumberSamples'
and a positive integer. The function
requires (number of input
model simulations to compute the first- and total-order
Sobol indices.params
+ 2) *
NumberSamples
Data Types: double
Distributions
— Probability distributions
prob.UniformDistribution
(default) | prob.ProbabilityDistribution
object | vector of prob.ProbabilityDistribution
objects
Probability distributions used to draw samples, specified as a
prob.ProbabilityDistribution
object or vector of these objects.
Specify a scalar prob.ProbabilityDistribution
or vector of length
N, where N is the number of input parameters. You
can create distribution objects to sample from various distributions, such as uniform,
normal, or lognormal distributions, using makedist
(Statistics and Machine Learning Toolbox).
If you specify a scalar prob.ProbabilityDistribution
object, and there are multiple input parameters, sbiosobol
uses the same distribution object to draw samples for each parameter.
You cannot specify this argument together with Bounds.
You cannot specify this argument when a SimBiology.Scenarios
object is an input.
SamplingMethod
— Method to generate parameter samples
'Sobol'
(default) | character vector | string
Method to generate parameter samples, specified as a character vector or string. Valid options are:
'Sobol'
— Use the low-discrepancy Sobol sequence to generate samples.'Halton'
— Use the low-discrepancy Halton sequence to generate samples.'lhs'
— Use the low-discrepancy Latin hypercube samples.'random'
— Use uniformly distributed random samples.
Data Types: char
| string
SamplingOptions
— Options for sampling method
struct
Options for the sampling method, specified as a scalar struct. The options differ depending on
the sampling method: sobol
, halton
, or
lhs
.
For sobol
and halton
, specify each field name and value
of the structure according to each name-value argument of the sobolset
(Statistics and Machine Learning Toolbox) or haltonset
(Statistics and Machine Learning Toolbox) function. SimBiology uses the
default value of 1
for the Skip
argument for both
methods. For all other name-value arguments, the software uses the same default values of
sobolset
or haltonset
. For instance, set up a
structure for the Leap
and Skip
options with
nondefault values as
follows.
s1.Leap = 50; s1.Skip = 0;
For lhs
, there are three samplers that support different sampling options.
If you specify a covariance matrix, SimBiology uses
lhsnorm
(Statistics and Machine Learning Toolbox) for sampling.SamplingOptions
argument is not allowed.Otherwise, use the field name
UseLhsdesign
to select a sampler.If the value is
true
, SimBiology useslhsdesign
(Statistics and Machine Learning Toolbox). You can use the name-value arguments oflhsdesign
to specify the field names and values.If the value is
false
(default), SimBiology uses a nonconfigurable Latin hypercube sampler that is different fromlhsdesign
. This sampler does not require Statistics and Machine Learning Toolbox™.SamplingOptions
cannot contain any other options, exceptUseLhsdesign
.
For instance, set up a structure to use lhsdesign
with the Criterion
and Iterations
options.
s2.UseLhsdesign = true;
s2.Criterion = "correlation";
s2.Iterations = 10;
You cannot specify this argument when a SimBiology.Scenarios
object is an input.
StopTime
— Simulation stop time
nonnegative scalar
Simulation stop time, specified as a nonnegative scalar. If you specify neither
StopTime
nor OutputTimes
, the function uses
the stop time from the active configuration set of the model. You cannot specify both
StopTime
and OutputTimes
.
Data Types: double
OutputTimes
— Simulation output times
numeric vector
Simulation output times, specified as the comma-separated pair consisting of
'OutputTimes'
and a numeric vector. The function computes the
Sobol indices at these output time points. You cannot specify both
StopTime
and OutputTimes
. By default, the
function uses the output times of the first model simulation.
Example: [0 1 2 3.5 4 5 5.5]
Data Types: double
UseParallel
— Flag to run model simulations in parallel
false
(default) | true
Flag to run model simulations in parallel, specified as true
or
false
. When the value is true
and Parallel Computing Toolbox™ is available, the function runs simulations in parallel.
Data Types: logical
Accelerate
— Flag to turn on model acceleration
true
(default) | false
Flag to turn on model acceleration, specified as true
or
false
.
Data Types: logical
InterpolationMethod
— Method for interpolation of model simulations
"interp1q"
(default) | character vector | string
Method for interpolation of model responses to a common set of output times, specified as a character vector or string. The valid options follow.
Data Types: char
| string
ShowWaitbar
— Flag to show progress of model simulations
false
(default) | true
Flag to show the progress of model simulations by displaying a progress bar,
specified as the comma-separated pair consisting of 'ShowWaitbar'
and true
or false
. By default, no wait bar is
displayed.
Data Types: logical
Output Arguments
sobolResults
— Results containing Sobol indices
SimBiology.gsa.Sobol
object
Results containing the first- and total-order Sobol indices, returned as a SimBiology.gsa.Sobol
object. The object also contains the parameter sample
values and model simulation data used to compute the Sobol indices.
The results object can contain a significant amount of
simulation data (SimData). The size of the object exceeds (1 + number of observables) *
number of output time points * (2 + number of parameters) * number of samples * 8
bytes. For example, if you have one observable, 500 output time points, 8 parameters, and
100,000 samples, the object size is (1 + 1) * 500 * (2 + 8) * 100000 * 8
bytes = 8 GB. If you need to save such large objects, use this syntax:
save(fileName,variableName,'-v7.3');
More About
Saltelli Method to Compute Sobol Indices
sbiosobol
implements the Saltelli method [1] to compute Sobol
indices.
Consider a SimBiology model response Y expressed as a mathematical model , where Xi is a model parameter
and i = 1,…,k
.
The first-order Sobol index (Si) gives the fraction
of the overall response variance V(Y)
that can be
attributed to variations in Xi alone.
Si is defined as follows.
The total-order Sobol index (STi) gives the fraction
of the overall response variance V(Y)
that can be
attributed to any joint parameter variations that include variations of
Xi.
STi is defined as follows.
To compute individual values for Y corresponding to samples of parameters X1, X1, …, Xk, consider two independent sampling matrices A and B.
n is the sample size. Each row of the matrices A and B corresponds to one parameter sample set, which is a single realization of model parameter values.
Estimates for Si and
STi are obtained from model simulation
results using sample values from the matrices A, B,
and , which is a matrix where all columns are from A except
the ith column, which is from B for i = 1, 2,
…, params
.
The formulas to approximate the first- and total-order Sobol indices are as follows.
f(A)
, f(B)
, and are the model simulation results using the parameter sample values from
matrices A, B, and .
The matrix A corresponds to the ParameterSamples
property of the Sobol results object (resultsObj.ParameterSamples
). The matrix B corresponds to the SupportSamples
property (resultsObj.SimulationInfo.SupportSamples
).
The matrices are stored in the SimData
structure of the
SimulationInfo
property
(resultsObj.SimulationInfo.SimData
). The size of
SimulationInfo.SimData
is
NumberSamples-by-params +
2
, where NumberSamples is the number of samples and param is the number of input parameters. The number of columns is
2 + params
because the first column of
SimulationInfo.SimData
contains the model simulation results using
the sample matrix A. The second column contains simulation results using
SupportSamples
, which is another sample matrix
B. The rest of the columns contain simulation results using , , …, , …, . See getSimulationResults
to retrieve the model simulation results and samples
for a specified ith index () from the SimulationInfo.SimData
array.
References
[1] Saltelli, Andrea, Paola Annoni, Ivano Azzini, Francesca Campolongo, Marco Ratto, and Stefano Tarantola. “Variance Based Sensitivity Analysis of Model Output. Design and Estimator for the Total Sensitivity Index.” Computer Physics Communications 181, no. 2 (February 2010): 259–70. https://doi.org/10.1016/j.cpc.2009.09.018.
Version History
Introduced in R2020a
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