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Open AccessJournal ArticleDOI

pROC: an open-source package for R and S+ to analyze and compare ROC curves

TLDR
pROC as mentioned in this paper is a package for R and S+ that contains a set of tools displaying, analyzing, smoothing and comparing ROC curves in a user-friendly, object-oriented and flexible interface.
Abstract
Receiver operating characteristic (ROC) curves are useful tools to evaluate classifiers in biomedical and bioinformatics applications. However, conclusions are often reached through inconsistent use or insufficient statistical analysis. To support researchers in their ROC curves analysis we developed pROC, a package for R and S+ that contains a set of tools displaying, analyzing, smoothing and comparing ROC curves in a user-friendly, object-oriented and flexible interface. With data previously imported into the R or S+ environment, the pROC package builds ROC curves and includes functions for computing confidence intervals, statistical tests for comparing total or partial area under the curve or the operating points of different classifiers, and methods for smoothing ROC curves. Intermediary and final results are visualised in user-friendly interfaces. A case study based on published clinical and biomarker data shows how to perform a typical ROC analysis with pROC. pROC is a package for R and S+ specifically dedicated to ROC analysis. It proposes multiple statistical tests to compare ROC curves, and in particular partial areas under the curve, allowing proper ROC interpretation. pROC is available in two versions: in the R programming language or with a graphical user interface in the S+ statistical software. It is accessible at http://expasy.org/tools/pROC/ under the GNU General Public License. It is also distributed through the CRAN and CSAN public repositories, facilitating its installation.

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Journal ArticleDOI

Serum amino acid profiles and their alterations in colorectal cancer

TL;DR: The authors' serum metabolic profiling in colon cancer revealed multiple significant disease-associated alterations in the amino acid profile with promising diagnostic power, and found a model including CEA, glycine, and tyrosine as best discriminating and superior to CEA alone with an AUROC of 0.878.
Journal ArticleDOI

Iterative rank-order normalization of gene expression microarray data

TL;DR: The IRON method provides a practical solution to common needs of expression analysis, which uses the best-performing techniques from each of several popular processing methods while retaining the ability to incrementally renormalize data without altering previously normalized expression.
Posted Content

cutpointr: Improved Estimation and Validation of Optimal Cutpoints in R

TL;DR: The cutpointr package offers robust methods for estimating optimal cutpoints and the out-of-sample performance of binary classification algorithms, and provides mechanisms to utilize user-defined metrics and estimation methods.
Journal ArticleDOI

Prediction of novel long non-coding RNAs based on RNA-Seq data of mouse Klf1 knockout study

TL;DR: A computational pipeline for detecting novel lncRNAs from the RNA-Seq data is presented and can predict a set of novels, which have shorter transcript length, fewer exons, shorter putative open reading frame, compared with known protein-coding transcripts.

Antigen presentation and tumor immunogenicity in cancer immunotherapy response prediction

Shixiang Wang
TL;DR: This study suggests that TIGS is an effective tumor-inherent biomarker for ICI-response prediction, which combines tumor mutational burden (TMB) and an expression signature of the antigen processing and presenting machinery (APM) to measure tumor immunogenicity score.
References
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BookDOI

Modern Applied Statistics with S

TL;DR: A guide to using S environments to perform statistical analyses providing both an introduction to the use of S and a course in modern statistical methods.
Journal ArticleDOI

An introduction to ROC analysis

TL;DR: The purpose of this article is to serve as an introduction to ROC graphs and as a guide for using them in research.
Journal ArticleDOI

Comparing the areas under two or more correlated receiver operating characteristic curves: a nonparametric approach.

TL;DR: A nonparametric approach to the analysis of areas under correlated ROC curves is presented, by using the theory on generalized U-statistics to generate an estimated covariance matrix.
Journal ArticleDOI

A method of comparing the areas under receiver operating characteristic curves derived from the same cases.

James A. Hanley, +1 more
- 01 Sep 1983 - 
TL;DR: This paper refines the statistical comparison of the areas under two ROC curves derived from the same set of patients by taking into account the correlation between the areas that is induced by the paired nature of the data.

Modern Applied Statistics With S

TL;DR: The modern applied statistics with s is universally compatible with any devices to read, and is available in the digital library an online access to it is set as public so you can download it instantly.
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What is proc autoreg in sas?

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