bCohort {mSimCC} | R Documentation |
Aggregate data from several microsimulated cohorts
Description
This function aggregates data from several microsimulated cohorts.
Usage
bCohort(ind)
Arguments
ind |
microsimulated cohort obtained using |
Value
Data frame with health states as columns and ages as rows.
Author(s)
David Moriña (Universitat de Barcelona), Pedro Puig (Universitat Autònoma de Barcelona) and Mireia Diaz (Institut Català d'Oncologia)
References
Georgalis L, de Sanjosé S, Esnaola M, Bosch F X, Diaz M. Present and future of cervical cancer prevention in Spain: a cost-effectiveness analysis. European Journal of Cancer Prevention 2016;25(5):430-439.
Moriña D, de Sanjosé S, Diaz M. Impact of model calibration on cost-effectiveness analysis of cervical cancer prevention 2017;7.
See Also
mSimCC-package
, microsim
, costs
, le
,
plotCIN1Incidence
, plotCIN2Incidence
, plotCIN3Incidence
,
plotIncidence
, plotMortality
, plotPrevalence
,
qalys
, yls
Examples
data(probs)
nsim <- 3
p.men <- 0
size <- 20
min.age <- 10
max.age <- 84
#### Natural history
hn <- microsim(seed=1234, nsim, probs, abs_states=c(10, 11), sympt_states=c(5, 6, 7, 8),
prob_sympt=c(0.11, 0.23, 0.66, 0.9),
size, p.men, min.age, max.age,
utilityCoefs = c(1, 1, 0.987, 0.87, 0.87, 0.76, 0.67, 0.67, 0.67, 0.938, 0, 0),
costCoefs.md = c(0, 0, 254.1, 1495.9, 1495.9, 5546.8, 12426.4, 23123.4,
34016.6, 0, 0, 0),
costCoefs.nmd = c(0, 0, 81.4, 194.1, 194.1, 219.1, 219.1, 219.1, 219.1, 0, 0, 0),
costCoefs.i = c(0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0), disc=3,
treatProbs=c(0,0,1,1,1,0.9894,0.9422,0.8262,0.5507,0,0,0),
nCores=1) ### individual level
hn_c <- bCohort(hn) ### Aggregated level