doIMRMC_java | R Documentation |
doIMRMC_java takes ROC data as a data frame and runs a multi-reader multi-case analysis
based on U-statistics as described in the following papers
Gallas2006_Acad-Radiol_v13p353 (single-modality),
Gallas2008_Neural-Networks_v21p387 (multiple modalities, arbitrary study designs),
Gallas2009_Commun-Stat-A-Theor_v38p2586 (framework paper). This function is deprecated, please use doIMRMC
instead.
doIMRMC_java(
data = NULL,
fileName = NULL,
workDir = NULL,
iMRMCjarFullPath = NULL,
stripDatesForTests = FALSE
)
data |
an iMRMC formatted data frame, see dfMRMC_example |
fileName |
This character string identifies the location of an iMRMC input file. The input file is identical to data except there is a free text section to start, then a line with "BEGIN DATA:", then the data frame info. |
workDir |
This character string determines the directory where intermediate results are written. If this parameter is not set, the program writes the intermediate results to the directory specified by tempdir() and then deletes them. |
iMRMCjarFullPath |
This character string identifies the location of the iMRMC.jar file this jar file can be downloaded from https://github.com/DIDSR/iMRMC/releases this R program supports version iMRMC-v3p2.jar |
stripDatesForTests |
Since results include a date and time stamp, these need to be stripped out when doing the package tests. This parameter flags whether or not the dates should be stripped out. |
In detail, this procedure reads the name of an input file from the local file system, or takes a data frame and writes it to the local file system formatted for the iMRMC program (found at https://github.com/DIDSR/iMRMC/releases), it executes a java app, the iMRMC engine, which writes the results to the local files system, it reads the analysis results from the local file system, packs the analysis results into a list object, deletes the data and analysis results from the local file system, and returns the list object.
This software requires Java(>=8).
The examples took too long for CRAN to accept. So here is an example:
# Create a sample configuration file config <- sim.gRoeMetz.config() # Simulate an MRMC ROC data set dFrame.imrmc <- sim.gRoeMetz(config) # Analyze the MRMC ROC data result <- doIMRMC_java(dFrame.imrmc)
[list] iMRMC outputs. The objects of this list are described in detail in the iMRMC documentation which can be found at <http://didsr.github.io/iMRMC/000_iMRMC/userManualHTML/index.htm>
Here is a quick summary:
perReader
data.frame containing the performance results for each reader.
Key variables of this data frame are AUCA, AUCB, AUCAminusAUCB and the corresponding
variances, confidence intervals, degrees of freedom and p-values.
Ustat
data.frame containing the reader-average performance results.
The analysis results are based on U-statistics and the papers listed above.
Key variables of this data frame are AUCA, AUCB, AUCAminusAUCB and the corresponding
variances, confidence intervals, degrees of freedom and p-values.
MLEstat
data.frame containing the reader-average performance results.
The analysis results are based on V-statistics, which approximates the true distribution with
the empirical distribution. The empirical distribution equals the nonparametric MLE
estimate of the true distribution, which is also equivalent to the ideal bootstrap estimate.
Please refer to the papers listed above.
Key variables of this data frame are AUCA, AUCB, AUCAminusAUCB and the corresponding
variances, confidence intervals, degrees of freedom and p-values.
ROC
list containing ROC curves
There is an ROC curve for every combination of reader and modality.
For every modality, there are also four average ROC curves. These are discussed in
Chen2014_Br-J-Radiol_v87p20140016.
The diagonal average averages the reader-specific ROC curves along y = -x + b for b in (0,1).
The horizontal average averages the reader specific ROC curves along y = b for b in (0,1).
The vertical average averages the reader specific ROC curves along x = b for b in (0,1).
The pooled average ignores readerID and pools all the scores together to create one ROC curve.
varDecomp
list containing different decompositions of the total variance.
Please refer to Gallas2009_Commun-Stat-A-Theor_v38p2586 (framework paper).
The different decompositions are BCK, BDG, DBM, MS, OR.
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