README.md

lethal

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lethal computes lethal doses for count data based on generalized additive models (GAMs) together with parametric bootstrap confidence intervals for the lethal dose. lethal is designed for experiments with counts as outcome, which need a separate preparation for each measurment. Examples for such experiments are survival experiments where the survival is measured as the number of colony forming units (c.f.u.). In this case, one cannot measure one prepartation multiple times with various doses but one needs one experiment (with one or more biological replicates) for each dose.

Installation:

To be able to use the install_github() command, one needs to install devtools first:

    install.packages("devtools")

Using lethal

Afer installation (see above) we first need to load the package:

library("lethal")

To illustrate the usage of the package lethal we will use a data set on the UV tolerance of Geodermatophilus (Montero-Calasanz, Hofner et al., 2014):

data(geoderm.uv, package = "lethal")
summary(geoderm.uv)

The data set has 72 observations and the following 4 variables: - time time period of UV exposure in minutes. - strain type of strain: 44209 (Geodermatophilus poikilotrophi) or 43160 (Geodermatophilus obscurus). - replicate biological replicate (A or B). - value number of colony-forming units (c.f.u.) per ml.

Now, we want to model this data

## model survival fractions for UV radiation experiment
mod.uv <- LD(value ~ time, groups = "strain", experiment = "replicate",
             dose_trafo = "sqrt", data = geoderm.uv,
             family = negbin(theta = c(0.5, 10)))

To display the results, one can use

## extract model and LDs
mod.uv
## a richer representation of the model (with LDs)
summary(mod.uv)

or we can extract lethal doses only

## extract LDs only
LD(mod.uv)

To plot the results is very simple:

## plot the results
plot(mod.uv)
## with better labels:
plot(mod.uv, xlab = "Time (min)", ylab = expression(c.f.u.ml^-1))

Confidence intervals

To obtain confidence intervals, we need to rely on parametric bootstrap approaches. To simplify things, this is already implemented

## compute confidence intervals
ci.uv <- confint(mod.uv)
## extract confidence intervals (and LDs)
ci.uv

As bevore, a simple way to plot the results is available

## graphic with survival fractions and confidence intervals:
plot(ci.uv, xlab = "Time (min)", upper_ylab = expression(c.f.u.ml^-1),
mar = c(4, 9.3, 2, 2.5))
## add labels
mtext(rep(c("LD10", "LD50"), 3), side = 4,
      at = c(0.8, 1.2, 1.8, 2.2, 2.8, 3.2),
      cex = 0.75, las = 2)

References

M. d. C. Montero-Calasanz, B. Hofner, M. Göker, M. Rohde, C. Spröer, K. Hezbri, M. Gtari, P. Schumann, H.-P. Klenk (2014). "Geodermatophilus poikilotrophi sp. nov., a multi-tolerant actinomycete isolated from dolomitic marble." BioMed Research International. 2014(914767):1-11. [PDF]



hofnerb/lethal documentation built on May 17, 2019, 4:37 p.m.