ODS - Statistical Methods for Outcome-Dependent Sampling Designs
Outcome-dependent sampling (ODS) schemes are
cost-effective ways to enhance study efficiency. In ODS
designs, one observes the exposure/covariates with a
probability that depends on the outcome variable. Popular ODS
designs include case-control for binary outcome, case-cohort
for time-to-event outcome, and continuous outcome ODS design
(Zhou et al. 2002) <doi: 10.1111/j.0006-341X.2002.00413.x>.
Because ODS data has biased sampling nature, standard
statistical analysis such as linear regression will lead to
biases estimates of the population parameters. This package
implements four statistical methods related to ODS designs: (1)
An empirical likelihood method analyzing the primary continuous
outcome with respect to exposure variables in continuous ODS
design (Zhou et al., 2002). (2) A partial linear model
analyzing the primary outcome in continuous ODS design (Zhou,
Qin and Longnecker, 2011) <doi:
10.1111/j.1541-0420.2010.01500.x>. (3) Analyze a secondary
outcome in continuous ODS design (Pan et al. 2018) <doi:
10.1002/sim.7672>. (4) An estimated likelihood method analyzing
a secondary outcome in case-cohort data (Pan et al. 2017) <doi:
10.1111/biom.12838>.