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Selecting a study population from a larger source population, based
on the research question, is a common procedure, for example in an
observational study with data from a population register. Subjects who
fulfill all the selection criteria are included in the study population,
and subjects who do not fulfill at least one selection criterion are
excluded from the study population. These selections might introduce a
systematic error when estimating a causal effect, commonly referred to
as selection bias. Selection bias can also arise if the selections are
involuntary, for example, if there are dropouts or other missing values
for some individuals in the study. In an applied study, it is often of
interest to assess the magnitude of potential biases using a sensitivity
analysis, such as bounding the bias. Different bounds, the SV (Smith and
VanderWeele), AF (assumption-free), GAF (generalized assumption-free),
and CAF (counterfactual assumption-free), for the causal estimand under
selection bias can be calculated in this R package
SelectionBias
. The content is:
zika_learner
: a simulated dataset of zika virus and
microcephaly inspired both by data and a previous example (Araújo et al. 2018; Smith and VanderWeele
2019).sensitivityparametersM()
: a function that calculates
the sensitivity parameters for the SV and GAF bounds for an assumed
model following the M-structure in Figure 1.SVbound()
: a function that calculates the SV bound for
the relative risk or risk difference in either the total or
subpopulation for sensitivity parameters given by the user, or
calculated from sensitivityparametersM()
.AFbound()
: a function that calculates the AF lower and
upper bounds for the relative risk or risk difference in either the
total or subpopulation for a dataset or probabilities from the
data.GAFbound()
: a function that calculates the GAF lower
and upper bounds for the relative risk or risk difference in either the
total or subpopulation for a dataset or probabilities from the data and
sensitivity parameters either given by the user, or calculated from
sensitivityparametersM()
.CAFbound()
: a function that calculates the CAF lower
and upper bounds for the relative risk or risk difference in either the
total or subpopulation for a dataset or probabilities from the data and
sensitivity parameters.SVboundsharp()
: a function that evaluates if the SV
bound for the subpopulation is sharp, inconclusive or not sharp.For the formulas of the bounds as well as the theory behind them, we refer to the original papers (Smith and VanderWeele 2019; Zetterstrom and Waernbaum 2022, 2023; Zetterstrom 2024).
To illustrate the bounds, a simulated dataset,
zika_learner
, is constructed. It is inspired by a numerical
zika example used in Smith and VanderWeele
(2019) together with a case-control study that investigates the
effect of zika virus on microcephaly (Araújo et
al. 2018). The variables included are:
The relationships between the variables are illustrated in Figure 2 and Table 1. The prevalences of the variables, and strengths of dependencies between them, are chosen to mimic real data and the assumed values for the sensitivity parameters in Smith and VanderWeele (2019). The simulated data mimics a cohort with 5000 observations, even though the original study is a case-control study. For more details of the variables and the models, see Zetterstrom and Waernbaum (2023).
The causal dependencies are generated by the logit models described in Table 3.
Model | Coefficients (\(\theta\))/Proportions | Function argument |
---|---|---|
\(P(V=1)\) | \(0.85\) | Vval |
\(P(U=1)\) | \(0.50\) | Uval |
\(P(T=1|V)=g(V'\theta_T)\) | \((-6.20,1.75)\) | Tcoef |
\(P(Y=1|T,U)=g[(T,U)'\theta_{Y}]\) | \((-5.20,5.00,-1.00)\) | Ycoef |
\(P(S_1=1|T,U)=g[(V,U,T)'\theta_{S1}]\) | \((1.20,0.00,2.00,-4.00)\) | Scoef |
\(P(S_2=1|T,U)=g[(V,U,T)'\theta_{S1}]\) | \((2.20,0.50,-2.75,0.00)\) | Scoef |
The data was generated in R
, version 4.2.0, using the
package arm
, version 1.13-1, with the following code:
# Seed.
set.seed(158118)
# Number of observations.
nObs = 5000
# The unmeasured variable, living area (V).
urban = rbinom(nObs, 1, 0.85)
# The treatment variable, zika.
zika_prob = arm::invlogit(-6.2 + 1.75 * urban)
zika = rbinom(nObs, 1, zika_prob)
# The unmeasured variable, SES (U).
SES = rbinom(nObs, 1, 0.5)
# The outcome variable, microcephaly.
mic_ceph_prob = arm::invlogit(-5.2 + 5 * zika - 1 * SES)
mic_ceph = rbinom(nObs, 1, mic_ceph_prob)
# The first selection variable, birth.
birth_prob = arm::invlogit(1.2 - 4 * zika + 2 * SES)
birth = rbinom(nObs, 1, birth_prob)
# The second selection variable, hospital.
hospital_prob = arm::invlogit(2.2 + 0.5 * urban - 2.75 * SES)
hospital = rbinom(nObs, 1, hospital_prob)
# The selection indicator.
sel_ind = birth * hospital
The resulting proportions of the zika_learner
data, for
the total dataset, the subset with \(S_1=1\) and the subset with \(S_1=S_2=1\) are seen in Tables 2-4.
Not zika infected (N=4939) |
Zika infected (N=61) |
Overall (N=5000) |
|
---|---|---|---|
Microcephaly | |||
Mean | 0.003 | 0.361 | 0.008 |
Living area | |||
Mean | 0.849 | 0.951 | 0.850 |
SES | |||
Mean | 0.499 | 0.426 | 0.498 |
Not zika infected (N=4268) |
Zika infected (N=11) |
Overall (N=4279) |
|
---|---|---|---|
Microcephaly | |||
Mean | 0.003 | 0.273 | 0.004 |
Living area | |||
Mean | 0.845 | 1.000 | 0.846 |
SES | |||
Mean | 0.556 | 0.818 | 0.557 |
Not zika infected (N=2869) |
Zika infected (N=7) |
Overall (N=2876) |
|
---|---|---|---|
Microcephaly | |||
Mean | 0.004 | 0.286 | 0.005 |
Living area | |||
Mean | 0.858 | 1.000 | 0.858 |
SES | |||
Mean | 0.382 | 0.714 | 0.382 |
The dataset and data generating process (DGP) can be used to test the
functions in SelectionBias
.
sensitivityparametersM()
The sensitivity parameters for the SV and GAF bounds are calculated for the generalized M-structure, illustrated in Figure 1. The sensitivity parameters are only calculated for an assumed model structure, since they depend on the unobserved variable, U. However, the observed probabilities of the outcome, \(P(Y=1|T=t,I_S=1)\), \(t=0,1\), are inputs as they are used to check if the causal estimand for the assumed DGP is greater or smaller than the observational estimand since the SV bound only is defined when the causal estimand is smaller than the observational estimand. If not, the treatment variable must be recoded. This is not an issue for the GAF bound since both a lower and upper bound is available. The code and the output are:
# SV bound
sensitivityparametersM(whichEst = "RR_tot",
whichBound = "SV",
Vval = matrix(c(1, 0, 0.85, 0.15), ncol = 2),
Uval = matrix(c(1, 0, 0.5, 0.5), ncol = 2),
Tcoef = c(-6.2, 1.75),
Ycoef = c(-5.2, 5.0, -1.0),
Scoef = matrix(c(1.2, 2.2, 0.0, 0.5,
2.0, -2.75, -4.0, 0.0),
ncol = 4),
Mmodel = "L",
pY1_T1_S1 = 0.286,
pY1_T0_S1 = 0.004)
#> [,1] [,2]
#> [1,] "BF_1" 1.3895
#> [2,] "BF_0" 1.3208
#> [3,] "RR_UY|T=1" 2.7089
#> [4,] "RR_UY|T=0" 1.9448
#> [5,] "RR_SU|T=1" 1.7998
#> [6,] "RR_SU|T=0" 1.9998
#> [7,] "Reverse treatment" TRUE
# GAF bound
sensitivityparametersM(whichEst = "RR_tot",
whichBound = "GAF",
Vval = matrix(c(1, 0, 0.85, 0.15), ncol = 2),
Uval = matrix(c(1, 0, 0.5, 0.5), ncol = 2),
Tcoef = c(-6.2, 1.75),
Ycoef = c(-5.2, 5.0, -1.0),
Scoef = matrix(c(1.2, 2.2, 0.0, 0.5,
2.0, -2.75, -4.0, 0.0),
ncol = 4),
Mmodel = "L",
pY1_T1_S1 = 0.286,
pY1_T0_S1 = 0.004)
#> [,1] [,2]
#> [1,] "m_T" 0.002
#> [2,] "M_T" 0.4502
The first argument is whichEst
, where the user inputs
the causal estimand of interest. It must be one of the four
"RR_tot"
, "RD_tot"
, "RR_sub"
or
"RD_sub"
. The second argument is whichBound
,
where the user inputs the bound they want to use, either
"SV"
or "GAF"
. Third, the argument
Vval
takes the matrix for V as input. The first
column contains the values that V can take, and the second
column contains the corresponding probabilities. In this example,
V is binary, so the first two elements in the matrix are 1 and
0. However, any discrete V can be used. An approximation of a
continuous V can be used, if it is discretized. The fourth
argument is Uval
, which takes the matrix for U as
input. The matrix U has a similar structure as V. The
fifth argument is Tcoef
, containing the coefficients used
in the model for T. The first entry in Tcoef
is
the intercept of the model, and the second the slope for V. The
sixth argument is Ycoef
, containing the coefficient vector
for the outcome model, where the first entry is the intercept, the
second the slope coefficient for T and third is the slope
coefficient for U. The seventh argument is Scoef
.
Scoef
is the coefficient matrix for the selection
variables. The number of rows is equal to the number of selection
variables, and the number of columns is equal to four. The columns
represent the intercept, and slope coefficients for V,
U and T, respectively. A summary of the code notation
is seen in the last column of Table 3. The eighth argument is
Mmodel
, which indicates whether the models in the
M-structure are probit (Mmodel = "P"
) or logit
(Mmodel = "L"
). The ninth and tenth arguments are
pY1_T1_S1
and pY1_T0_S1
. They are the observed
probabilities \(P(Y=1|T=1,I_S=1)\) and
\(P(Y=1|T=0,I_S=1)\). The output is the
sensitivity parameters for the chosen bound and, for the SV bound, an
indicator stating if the bias is negative and the coding for the
treatment has been reversed.
In the zika example, the estimand of interest is the relative risk in
the total population, whichEst = "RR_tot"
, the DGP is found
in Table 1, logistic models are used in the DGP and the probabilities
are found in Table 4. For the SV bound, the output is \(RR_{UY|T=1}=2.71\), \(RR_{UY|T=0}=1.94\), \(RR_{SU|T=1}=1.80\), and \(RR_{SU|T=0}=2.00\), which gives \(BF_1=1.39\) and \(BF_0=1.32\), and the treatment coding is
reversed. For the GAF bound, the output is \(M_T=0.4502\) and \(m_T=0.002\).
SVbound()
The SV bound can be calculated using the function
SVbound()
. The first argument is whichEst
,
indicating the causal estimand of interest ("RR_tot"
,
"RD_tot"
, "RR_sub"
or "RD_sub"
).
The second and third arguments are the observed conditional
probabilities \(P(Y=1|T=1,I_S=1)\) and
\(P(Y=1|T=0,I_S=1)\), which are needed
to calculate bounds for the causal estimands and not the selection bias
itself. The subsequent arguments are the sensitivity parameters provided
by the user. The default value for all sensitivity parameters are
NULL
, and the user must then specify numeric values on the
sensitivity parameters that are necessary for the bound for the chosen
estimand. The sensitivity parameters can either be calculated using the
function sensitivityparametersM()
, or found elsewhere. For
sensitivity parameters found elsewhere, SVbound()
is not
restricted to the generalized M-structure. However, the necessary
assumptions for the SV bound must still be fulfilled (Smith and VanderWeele 2019). The output is the
SV bound. The code and output are:
SVbound(whichEst = "RR_tot",
pY1_T1_S1 = 0.004,
pY1_T0_S1 = 0.286,
RR_UY_T1 = 2.71,
RR_UY_T0 = 1.94,
RR_SU_T1 = 1.80,
RR_SU_T0 = 2.00)
#> [,1] [,2]
#> [1,] "SV bound" 0.01
As before in the zika example, the causal estimand is the relative
risk in the total population, whichEst = "RR_tot"
. The
sensitivity parameters are \(RR_{UY|T=1}=2.71\), \(RR_{UY|T=0}=1.94\), \(RR_{SU|T=1}=1.80\), and \(RR_{SU|T=0}=2.00\), calculated above in
sensitivityparametersM()
, which gives an SV bound equal to
0.01. If the causal estimand is underestimated, the recoding of the
treatment must be done manually.
SVboundsharp()
The sharpness of an SV bound can be evaluated using
SVboundsharp()
(Zetterstrom and
Waernbaum 2023). However, it is only bounds for the relative risk
in the subpopulation that can be sharp. The first argument,
BF_U
, is the value of \(BF_U\) which can be calculated using
sensitivityparametersM
. The second argument,
pY1_T0_S1
, is the probability \(P(Y=1|T=0,I_S=1)\). The output is a string
stating whether the SV bound is sharp or inconclusive. The code and
output are:
We are actually interested in bounds for the relative risk in the
total population in the zika example but to demonstrate the function we
check if the bound for the relative risk in the subpopulation is sharp.
Thus, \(BF_U=1.56\) and \(P(Y=1|T=0,I_S=1)=0.27\) (calculated from
sensitivityparametersM()
and the
zika_learner
). Note that if the causal estimand is
underestimated, the recoding of the treatment has to be done manually.
In this setting, the SV bound is sharp. As before, the bias is negative,
and we have reversed the coding of the treatment.
AFbound()
The AF bound is calculated using the function AFbound()
.
The first argument is the causal estimand of interest
("RR_tot"
, "RD_tot"
, "RR_sub"
or
"RD_sub"
). The second argument is outcome
,
where the user inputs either the observed numeric vector with the
outcome variable or a vector with the conditional outcome probabilities,
\(P(Y=1|T=1,I_S=1)\) and \(P(Y=1|T=0,I_S=1)\). The third argument is
treatment
, where the user inputs either the observed
numeric vector with the treatment variable or a vector with the
conditional treatment probabilities, \(P(T=1|I_S=1)\) and \(P(T=0|I_S=1)\). The fourth argument is
selection
where the user can either input the observed
selection vector or the selection probability. Its default value is
NULL
since it is only required when the causal estimands in
the total population are of interest. If the subpopulation is of
interest and selection = NULL
, the outcome and treatment
vectors must only include the selected subjects. The output is the lower
and upper AF bounds. The code and output are:
attach(zika_learner)
AFbound(whichEst = "RR_tot",
outcome = mic_ceph[sel_ind == 1],
treatment = zika[sel_ind == 1],
selection = mean(sel_ind))
#> [,1] [,2]
#> [1,] "AF lower bound" 0
#> [2,] "AF upper bound" 454.09
Similar to before, whichEst = "RR_tot"
. Furthermore, the
outcome and treatment variables are microcephaly and zika. The selection
probability is specified since the other variables are restricted to
those subjects with \(I_S=1\). The
output is the lower and upper AF bounds, which are 0 and 454.09 in the
zika example.
If the raw data is not available, one can input the conditional probabilities instead. In this example, these probabilities are:
AFbound(whichEst = "RR_tot",
outcome = c(0.286, 0.004),
treatment = c(0.002, 0.998),
selection = mean(sel_ind))
#> [,1] [,2]
#> [1,] "AF lower bound" 0
#> [2,] "AF upper bound" 435.14
The difference in these two examples comes from rounding errors. Note that the treatment does not need to be recoded since there is both a lower and upper bound. Please have this in mind when comparing the bounds to the SV bound.
GAFbound()
The GAF bound is calculated using the function
GAFbound()
. The first argument is the causal estimand of
interest ("RR_tot"
, "RD_tot"
,
"RR_sub"
or "RD_sub"
). The second and third
arguments are M
and m
which are the two
sensitivity parameters for the GAF bound. The sensitivity parameters can
either be calculated using sensitivityparametersM()
, or
found elsewhere. For sensitivity parameters found elsewhere,
GAFbound()
is not restricted to the generalized
M-structure. However, the necessary assumptions for the GAF bound must
still be fulfilled (Zetterstrom 2024). The
fourth argument is outcome
, where the user inputs either
the observed numeric vector with the outcome variable or a vector with
the conditional outcome probabilities, \(P(Y=1|T=1,I_S=1)\) and \(P(Y=1|T=0,I_S=1)\). The fifth argument is
treatment
, where the user inputs either the observed
numeric vector with the treatment variable or a vector with the
conditional treatment probabilities, \(P(T=1|I_S=1)\) and \(P(T=0|I_S=1)\). The sixth argument is
selection
where the user can either input the observed
selection vector or selection probability. Its default value is
NULL
since it is only required when the causal estimands in
the total population are of interest. If the subpopulation is of
interest and selection = NULL
, the outcome and treatment
vectors must only include the selected subjects. The output is the lower
and upper GAF bounds. The code and output are:
GAFbound(whichEst = "RR_tot",
M = 0.4502,
m = 0.002,
outcome = mic_ceph[sel_ind == 1],
treatment = zika[sel_ind == 1],
selection = mean(sel_ind))
#> [,1] [,2]
#> [1,] "GAF lower bound" 0.01
#> [2,] "GAF upper bound" 147.42
Similar to before, whichEst = "RR_tot"
. The sensitivity
parameters are the output from sensitivityparametersM()
.
Furthermore, the outcome and treatment variables are microcephaly and
zika. The selection probability is specified since the other variables
are restricted to those subjects with \(I_S=1\). The output is the lower and upper
GAF bounds, which are 0.01 and 147.42 in the zika example.
If the raw data is not available, one can input the conditional probabilities instead, similar to the AF bound. Note that the treatment does not need to be recoded since there is both a lower and upper bound. Please have this in mind when comparing the bounds to the SV bound.
CAFbound()
The CAF bound is calculated using the function
CAFbound()
. The first argument is the causal estimand of
interest ("RR_tot"
, "RD_tot"
,
"RR_sub"
or "RD_sub"
). The second and third
arguments are M
and m
which are the two
sensitivity parameters for the CAF bound. The fourth argument is
outcome
, where the user inputs either the observed numeric
vector with the outcome variable or a vector with the conditional
outcome probabilities, \(P(Y=1|T=1,I_S=1)\) and \(P(Y=1|T=0,I_S=1)\). The fifth argument is
treatment
, where the user inputs either the observed
numeric vector with the treatment variable or a vector with the
conditional treatment probabilities, \(P(T=1|I_S=1)\) and \(P(T=0|I_S=1)\). The sixth argument is
selection
where the user can either input the observed
selection vector or selection probability. Its default value is
NULL
since it is only required when the causal estimands in
the total population are of interest. If the subpopulation is of
interest and selection = NULL
, the outcome and treatment
vectors must only include the selected subjects. The output is the lower
and upper CAF bounds. The code and output are:
CAFbound(whichEst = "RR_tot",
M = 0.3,
m = 0.005,
outcome = c(0.286, 0.004),
treatment = c(0.002, 0.998),
selection = mean(sel_ind))
#> [,1] [,2]
#> [1,] "CAF lower bound" 0.04
#> [2,] "CAF upper bound" 67.78
Similar to before, whichEst = "RR_tot"
. The sensitivity
parameters are chosen by the user. Furthermore, the outcome and
treatment variables are microcephaly and zika. The selection probability
is specified since other variables are restricted to those subjects with
\(I_S=1\). The output is the lower and
upper CAF bounds, which are 0.04 and 67.78 in the zika example.
If the raw data is not available, one can input the conditional probabilities instead, similar to the AF and GAF bounds. Note that the treatment does not need to be recoded since there is both a lower and upper bound. Please have this in mind when comparing the bounds to the SV bound.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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