podc {tpAUC} | R Documentation |
Partial ODC Estimation and Inference
Description
Estimate and infer the area of region under ODC curve with pre-specific FNR constraint (FNR-pODC). See Yang et al., 2017 for details.
Usage
podc(response, predictor, threshold = 0.9, method = "MW", ci = TRUE,
cp = 0.95, smooth = FALSE)
Arguments
response |
a factor, numeric or character vector of responses; typically encoded with 0 (negative) and 1 (positive). Only two classes can be used in a ROC curve. If its levels are not 0/1, the first level will be defaultly regarded as negative. |
predictor |
a numeric vector of the same length than response, containing the predicted value of each observation. An ordered factor is coerced to a numeric. |
threshold |
numeric; false negative rate (FNR) constraint. |
method |
methods to estimate FNR-pODC. |
ci |
logic; compute the confidence interval of estimation? |
cp |
numeric; coverage probability of confidence interval. |
smooth |
if |
Details
This function estimates and infers FNR partial ODC given response, predictor and pre-specific FNR constraint.
MW
: Mann-Whitney statistic. expect
: method in Yang et al., 2017 adapted from Wang and Chang, 2011. jackknife
: jackknife method in Yang et al., 2017.
Value
Estimation and Inference of FNR partial ODC.
Author(s)
Hanfang Yang, Kun Lu, Xiang Lyu, Feifang Hu, Yichuan Zhao.
See Also
Examples
library('pROC')
data(aSAH)
podc(aSAH$outcome, aSAH$s100b,threshold=0.9, method='expect',ci=TRUE, cp=0.95 )