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Please note that this package (codaredistlm
,
Compositional Data Analysis [CoDA] redistribution linear model) is the
new actively maintained package previously known as deltacomp.
codaredistlm
packageFunctions to analyse compositional data and produce predictions (with confidence intervals) for relative increases and decreases in the compositional parts.
For an outcome variable Y
, D compositional
parts (x_1, ..., x_D
) and C covariates
(z_1, ..., z_C
); this package fits the compositional data
analysis model (notation inexact):
Y = b_0 + b_1 ilr_1 + ... + b_{D-1} ilr_{D-1} + a_1 z_1 + ... + a_C z_C + e
where ilr_i
are the D-1 isometric log ratio
variables derived from the D compositional parts
(x_1, ..., x_D
),
b_0, ..., b_{D-1}, a_1, ..., a_C
are D+C
parameters to be estimated and e ~ N(0, sigma)
is the
error. The package then makes predictions in alterations of the time-use
variables (the linearly dependent set of compositional parts) based on
this model.
For a starting point to learn about compositional data analysis please see Aitchison (1982) or van den Boogaart and Tolosana-Delgado (2013). However the articles Dumuid et al. (2017a) and Dumuid et al. (2017b) may be more approachable introductions.
Please note that the use of ‘mean composition’ means the geometric
mean on the compositional simplex and not the arithmetic mean.
If these words have little meaning to you, that is no problems as these
differently calculated means likely do not differ much in your dataset.
codaredistlm
only uses the simplex geometric mean in its
calculations from version 0.2.0 onwards.
comparisons = "prop-realloc"
Information on outcome prediction with time-use exchange between one
part and the remaining compositional parts proportionally
(comparisons = "prop-realloc"
option of the
predict_delta_comps()
function), please see Dumuid et
al. (2017a).
Suppose you have three (predictor) parts in a day summing to 1 (e.g.,
a day) to predict an outcome variable. The three parts are
sedentary
, sleep
and activity
.
Let’s assume the mean sampled composition is:
sedentary = 0.5
(i.e., half a day)sleep = 0.3
(i.e., 30% a day)activity = 0.2
(i.e., 20% a day)If you wanted to predict the change in the outcome variable from the
above mean composition with delta = +0.05
(5% of the day)
is added to sedentary
, the option
comparisons = "prop-realloc"
reduces the remaining parts by
the 5% proportionately based on their mean values, illustrated
below:
sedentary* = 0.5 + delta = 0.5 + 0.05 = 0.55
sleep* = 0.3 - delta * sleep / (sleep + activity) = 0.3 - 0.05 * 0.3 / (0.3 + 0.2) = 0.3 - 0.03 = 0.27
activity* = 0.2 - delta * activity / (sleep + activity) = 0.2 - 0.05 * 0.2 / (0.3 + 0.2) = 0.2 - 0.02 = 0.18
Noting that the new compsition:
sedentary* + sleep* + activity* = 0.55 + 0.27 + 0.18 = 1
.
Note for the example above, the option
comparisons = "prop-realloc"
in
predict_delta_comps()
will actually automatically produce
separate predictions for a delta = +0.05
on each of the
parts against the remaining parts. i.e., not only the
sedentary* = 0.5 + delta
scenario as illustrated above but
also sleep* = 0.3 + delta
and
activity* = 0.2 + delta
cases.
comparisons = "one-v-one"
For information on outcome prediction with time-use exchange between
two compositional parts (i.e., the
comparisons = "one-v-one"
option of the
predict_delta_comps()
function), please see Dumuid et
al. (2017b).
Similarly to the previous example, suppose you have three (predictor)
parts in a day summing to 1 (i.e. a day) to predict an outcome variable.
The three parts are sedentary
, sleep
and
activity
. Let’s assume the mean sampled composition is:
sedentary = 0.5
(i.e., half a day)sleep = 0.3
(i.e., 30% a day)activity = 0.2
(i.e., 20% a day)If you wanted to predict the change in the outcome variable from the
above mean composition with delta = +0.05
(5% of the day),
the option comparisons = "one-v-one"
looks at all pairwise
exchanges between the parts
(sedentary*, sleep*, activity*)
:
(0.5 + 0.05, 0.3 - 0.05, 0.2 )
(0.5 + 0.05, 0.3 , 0.2 - 0.05)
(0.5 , 0.3 + 0.05, 0.2 - 0.05)
(0.5 - 0.05, 0.3 + 0.05, 0.2 )
(0.5 - 0.05, 0.3 , 0.2 + 0.05)
(0.5 , 0.3 - 0.05, 0.2 + 0.05)
Two datasets are supplied with the package:
fairclough
andfat_data
.The fairclough
dataset was kindly provided by the
authors of Fairclough et
al. (2017). fat_data
is a randomly generated test
dataset that might roughly mimic a real dataset.
library(devtools) # see https://www.r-project.org/nosvn/pandoc/devtools.html
::install_github('tystan/codaredistlm')
devtoolslibrary(codaredistlm)
### see help file to run example
?predict_delta_comps
predict_delta_comps(
dataf = fat_data,
y = "fat",
comps = c("sl", "sb", "lpa", "mvpa"),
covars = c("sibs", "parents", "ed"),
deltas = seq(-60, 60, by = 5) / (24 * 60),
comparisons = "prop-realloc",
alpha = 0.05
)
# OR
predict_delta_comps(
dataf = fat_data,
y = "fat",
comps = c("sl", "sb", "lpa", "mvpa"),
covars = c("sibs", "parents", "ed"),
deltas = seq(-60, 60, by = 5) / (24 * 60),
comparisons = "one-v-one",
alpha = 0.05
)
Output is a data.frame
that can be turned into the plot
below using the following code.
<-
pred_df predict_delta_comps(
dataf = fairclough,
y = "z_bmi",
comps = c("sleep", "sed", "lpa", "mvpa"),
covars = c("decimal_age", "sex"),
# careful deltas greater than 25 min in magnitude induce negative compositions
# predict_delta_comps() will warn you about this :-)
deltas = seq(-20, 20, by = 5) / (24 * 60),
comparisons = "prop-realloc", # or try "one-v-one"
alpha = 0.05
)
plot_delta_comp(
# provide the returned object from predict_delta_comps()
pred_df, # x-axis can be converted from propotion of composition to meaningful units
comp_total = 24 * 60, # minutes available in the composition
units_lab = "min" # just a label for plotting
)
The function predict_delta_comps()
now outputs the
predicted outcome value (with 100 * (1 - alpha)
% confidence
interval). This data is printed to the console but also can be extracted
from the output of predict_delta_comps()
as per the below
code:
# produces a 1 line data.frame that contains
# the (simplex/geometric) mean composition,
# the "average" covariates (the median of the factor variables in order of the levels are taken as default),
# the ilr coords of the (simplex/geometric) mean composition, and
# the predicted outcome value with 100*(1-alpha)% confidence interval
attr(pred_df, "mean_pred")
See /change-notes.md.
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.
Health stats visible at Monitor.