Dark - The Analysis of Dark Adaptation Data
The recovery of visual sensitivity in a dark environment
is known as dark adaptation. In a clinical or research setting
the recovery is typically measured after a dazzling flash of
light and can be described by the Mahroo, Lamb and Pugh (MLP)
model of dark adaptation. The functions in this package take
dark adaptation data and use nonlinear regression to find the
parameters of the model that 'best' describe the data. They do
this by firstly, generating rapid initial objective estimates
of data adaptation parameters, then a multi-start algorithm is
used to reduce the possibility of a local minimum. There is
also a bootstrap method to calculate parameter confidence
intervals. The functions rely upon a 'dark' list or object.
This object is created as the first step in the workflow and
parts of the object are updated as it is processed.