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FRESA.CAD (version 3.3.0)

Feature Selection Algorithms for Computer Aided Diagnosis

Description

Contains a set of utilities for building and testing statistical models (linear, logistic,ordinal or COX) for Computer Aided Diagnosis/Prognosis applications. Utilities include data adjustment, univariate analysis, model building, model-validation, longitudinal analysis, reporting and visualization.

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Version

Install

install.packages('FRESA.CAD')

Monthly Downloads

309

Version

3.3.0

License

LGPL (>= 2)

Maintainer

Jose Tamez-Pena

Last Published

September 29th, 2020

Functions in FRESA.CAD (3.3.0)

CVsignature

Cross-validated Signature
FRESAScale

Data frame normalization
ClustClass

Hybrid Hierarchical Modeling
BESS

CV BeSS fit
FRESA.Model

Automated model selection
EmpiricalSurvDiff

Estimate the LR value and its associated p-values
FilterUnivariate

Univariate Filters
BSWiMS.model

BSWiMS model selection
cancerVarNames

Data frame used in several examples of this package
FRESA.CAD-package

FeatuRE Selection Algorithms for Computer-Aided Diagnosis (FRESA.CAD)
LM_RIDGE_MIN

Ridge Linear Models
ForwardSelection.Model.Res

NeRI-based feature selection procedure for linear, logistic, or Cox proportional hazards regression models
GMVECluster

Set Clustering using the Generalized Minimum Volume Ellipsoid (GMVE)
GMVEBSWiMS

Hybrid Hierarchical Modeling with GMVE and BSWiMS
getVar.Bin

Analysis of the effect of each term of a binary classification model by analysing its reclassification performance
mRMR.classic_FRESA

FRESA.CAD wrapper of mRMRe::mRMR.classic
getVar.Res

Analysis of the effect of each term of a linear regression model by analysing its residuals
jaccardMatrix

Jaccard Index of two labeled sets
listTopCorrelatedVariables

List the variables that are highly correlated with each other
bootstrapValidation_Bin

Bootstrap validation of binary classification models
clusterISODATA

Cluster Clustering using the Isodata Approach
crossValidationFeatureSelection_Bin

IDI/NRI-based selection of a linear, logistic, or Cox proportional hazards regression model from a set of candidate variables
ForwardSelection.Model.Bin

IDI/NRI-based feature selection procedure for linear, logistic, and Cox proportional hazards regression models
bootstrapValidation_Res

Bootstrap validation of regression models
nearestCentroid

Class Label Based on the Minimum Mahalanobis Distance
modelFitting

Fit a model to the data
predict.FRESA_NAIVEBAYES

predict.FRESAKNN

Predicts class::knn models
HLCM

Latent class based modeling of binary outcomes
NAIVE_BAYES

Naive Bayes Modeling
backVarElimination_Res

NeRI-based backwards variable elimination
bootstrapVarElimination_Bin

IDI/NRI-based backwards variable elimination with bootstrapping
KNN_method

KNN Setup for KNN prediction
reportEquivalentVariables

Report the set of variables that will perform an equivalent IDI discriminant function
rankInverseNormalDataFrame

rank-based inverse normal transformation of the data
predict.FRESA_HLCM

Predicts BOOST_BSWiMS models
TUNED_SVM

Tuned SVM
predict.FRESAsignature

backVarElimination_Bin

IDI/NRI-based backwards variable elimination
plot.bootstrapValidation_Bin

Plot ROC curves of bootstrap results
plot.bootstrapValidation_Res

Plot ROC curves of bootstrap results
predict.FRESA_SVM

bootstrapVarElimination_Res

NeRI-based backwards variable elimination with bootstrapping
featureAdjustment

Adjust each listed variable to the provided set of covariates
updateModel.Res

Update the NeRI-based model using new data or new threshold values
updateModel.Bin

Update the IDI/NRI-based model using new data or new threshold values
baggedModel

Get the bagged model from a list of models
filteredFit

A generic fit method with a filtered step for feature selection
improvedResiduals

Estimate the significance of the reduction of predicted residuals
heatMaps

Plot a heat map of selected variables
predict.FRESA_RIDGE

residualForFRESA

Return residuals from prediction
ensemblePredict

The median prediction from a list of models
crossValidationFeatureSelection_Res

NeRI-based selection of a linear, logistic, or Cox proportional hazards regression model from a set of candidate variables
nearestNeighborImpute

nearest neighbor NA imputation
GLMNET

GLMNET fit with feature selection"
barPlotCiError

Bar plot with error bars
benchmarking

Compare performance of different model fitting/filtering algorithms
signatureDistance

Distance to the signature template
plot.FRESA_benchmark

Plot the results of the model selection benchmark
trajectoriesPolyFeatures

Extract the per patient polynomial Coefficients of a feature trayectory
predict.FRESA_BESS

predict.fitFRESA

Linear or probabilistic prediction
uniRankVar

Univariate analysis of features (additional values returned)
getKNNpredictionFromFormula

Predict classification using KNN
predict.FRESA_FILTERFIT

plotModels.ROC

Plot test ROC curves of each cross-validation model
predict.CLUSTER_CLASS

getSignature

Returns a CV signature template
summaryReport

Report the univariate analysis, the cross-validation analysis and the correlation analysis
predictionStats

Prediction Evaluation
timeSerieAnalysis

Fit the listed time series variables to a given model
predict.GMVE

predict.GMVE_BSWiMS

predict.FRESA_GLMNET

Predicts GLMNET fitted objects
summary.fitFRESA

Returns the summary of the fit
summary.bootstrapValidation_Bin

Generate a report of the results obtained using the bootstrapValidation_Bin function
randomCV

Cross Validation of Prediction Models
update.uniRankVar

Update the univariate analysis using new data
univariateRankVariables

Univariate analysis of features