dspline: Spline dose-response functions

View source: R/dose.functions.R

dsplineR Documentation

Spline dose-response functions

Description

Used to fit B-splines, natural cubic splines, and piecewise linear splines\insertCiteperperoglu2019MBNMAdose.

Usage

dspline(
  type = "bs",
  knots = 1,
  degree = 1,
  beta.1 = "rel",
  beta.2 = "rel",
  beta.3 = "rel",
  beta.4 = "rel"
)

Arguments

type

The type of spline. Can take "bs" (B-spline), "ns" (natural cubic spline), or "ls" (piecewise linear spline)

knots

The number/location of spline internal knots. If a single number is given it indicates the number of knots (they will be equally spaced across the range of doses for each agent). If a numeric vector is given it indicates the location of the knots.

degree

The degree of the piecewise B-spline polynomial - e.g. degree=1 for linear, degree=2 for quadratic, degree=3 for cubic.

beta.1

Pooling for the 1st coefficient. Can take "rel", "common", "random" or be assigned a numeric value (see details).

beta.2

Pooling for the 2nd coefficient. Can take "rel", "common", "random" or be assigned a numeric value (see details).

beta.3

Pooling for the 3rd coefficient. Can take "rel", "common", "random" or be assigned a numeric value (see details).

beta.4

Pooling for the 4th coefficient. Can take "rel", "common", "random" or be assigned a numeric value (see details).

Value

An object of class("dosefun")

Dose-response parameters

Argument Model specification
"rel" Implies that relative effects should be pooled for this dose-response parameter separately for each agent in the network.
"common" Implies that all agents share the same common effect for this dose-response parameter.
"random" Implies that all agents share a similar (exchangeable) effect for this dose-response parameter. This approach allows for modelling of variability between agents.
numeric() Assigned a numeric value, indicating that this dose-response parameter should not be estimated from the data but should be assigned the numeric value determined by the user. This can be useful for fixing specific dose-response parameters (e.g. Hill parameters in Emax functions) to a single value.

When relative effects are modelled on more than one dose-response parameter, correlation between them is automatically estimated using a vague inverse-Wishart prior. This prior can be made slightly more informative by specifying the scale matrix omega and by changing the degrees of freedom of the inverse-Wishart prior using the priors argument in mbnma.run().

References

\insertAllCited

Examples

# Second order B spline with 2 knots and random effects on the 2nd coefficient
dspline(type="bs", knots=2, degree=2,
  beta.1="rel", beta.2="rel")

# Piecewise linear spline with knots at 0.1 and 0.5 quantiles
# Single parameter independent of treatment estimated for 1st coefficient
#with random effects
dspline(type="ls", knots=c(0.1,0.5),
  beta.1="random", beta.2="rel")


MBNMAdose documentation built on Aug. 8, 2023, 5:11 p.m.