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Useful uncommon plots

Introduction

The xpose.xtras package attempts to bring old favorites back to the xpose framework from its predecessor xpose4, and those are named as such to allow easy access to documentation. This vignette brings focus to the visualizations in this package that are unlikely to be used for most projects, but are still helpful to have when they are needed. The underlying tools built for these functions are also powerful and supportive of greater extension of the xpose framework.

Model-averaged plots

Model-averaging can be useful when two or more models can describe different aspects of the data or the pharmacology, but for various reasons a mixture model or other population approach would be inadequate. It can also be helpful when multiple models have been developed for various populations and a new population being fit does not necessarily consist entirely of any previously fitted population.

This package facilitates the generation of model-averaged diagnostics. The approach is rudimentary and experimental, merely creating an averaged version of an xpose_data object from an xpose_set. As referenced in the documentation, the Model Selection and Model Averaged Algorithms used by Uster et al. are implemented to do this averaging (?modavg_xpdb). Because both algorithms require individual objective functions, there is an argument to automatically apply backfill_iofv().

pheno_set %>%
  ipred_vs_idv_modavg(auto_backfill = TRUE, quiet=TRUE)
#> `geom_smooth()` using formula = 'y ~ x'
#> `geom_smooth()` using formula = 'y ~ x'

The default title, subtitle and caption for these experimental figures are rough, especially for large sets. Changes for better appearance should be expected in the future.

Categorical dependent variables

Categorical DVs are frequently modeled but there are a variety of methods used to visually diagnose these modeled endpoints, typically model-specific. Along with adding generic support for categorical DVs, xpose.xtras also adds a few plots to diagnose models developed for them.

To use these diagnostics, a model for a categorical DV needs to have the column for that DV stated (if it is “DV” that needs to be ripped away from the dv variable type), and have a column predicting the likelihood or probability of that DV having a certain value. An example using an M3 model is below and in the documentation.

pkpd_m3 %>%
  # Need to ensure var types are set
  set_var_types(catdv=BLQ,dvprobs=LIKE) %>%
  # Set probs ("LIKE is the probability tht BLQ is 1")
  set_dv_probs(1, 1~LIKE, .dv_var = BLQ) %>%
  # Optional, but useful to set levels
  set_var_levels(1, BLQ = lvl_bin()) %>%
  catdv_vs_dvprobs(quiet=TRUE)
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'

It is expected that there will be a somewhat sigmoidal or at least up- and right-ward relationship between the two sets of observations in an adequate model, but as with all diagnostics the interpretation for this plot is subjective to an extent.

All plots for categorical DVs have at most two sets of data. It is untested what would happen if all observations fell into one category, but it is unlikely to produce a good model. This is relevant because the catdv functions can still be used for models that have multiple levels, such as the vismodegib muscle spasm model (from Lu et al.) built into the examples. For these models, the plot is essentially dichotomizing the probability of one observation compared to the probability of not that observation,

vismo_xpdb <- vismo_pomod  %>%
  set_var_types(.problem=1, catdv=DV, dvprobs=matches("^P\\d+$")) %>%
  set_dv_probs(.problem=1, 0~P0,1~P1,ge(2)~P23)
vismo_xpdb %>%
  catdv_vs_dvprobs(quiet=TRUE)
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'

vismo_xpdb %>%
  catdv_vs_dvprobs(cutpoint = 2, quiet=TRUE)
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'

vismo_xpdb %>%
  catdv_vs_dvprobs(cutpoint = 3, quiet=TRUE)
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'
#> `geom_smooth()` using method = 'gam' and formula = 'y ~ s(x, bs = "cs")'

None of the examples can be used to demonstrate this easily, but these plots can also be model-averaged using the generic plotfun_modavg() function.

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They may not be fully stable and should be used with caution. We make no claims about them.
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