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Random Forest Classification of Etiologies for an Orphan Disease

Overview
Journal Stat Med
Publisher Wiley
Specialty Public Health
Date 2014 Nov 5
PMID 25366667
Citations 19
Authors
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Abstract

Classification of objects into pre-defined groups based on known information is a fundamental problem in the field of statistics. Although approaches for solving this problem exist, finding an accurate classification method can be challenging in an orphan disease setting, where data are minimal and often not normally distributed. The purpose of this paper is to illustrate the application of the random forest (RF) classification procedure in a real clinical setting and discuss typical questions that arise in the general classification framework as well as offer interpretations of RF results. This paper includes methods for assessing predictive performance, importance of predictor variables, and observation-specific information.

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References
1.
Cutler D, Edwards Jr T, Beard K, Cutler A, Hess K, Gibson J . Random forests for classification in ecology. Ecology. 2007; 88(11):2783-92. DOI: 10.1890/07-0539.1. View

2.
Polson J, Lee W . AASLD position paper: the management of acute liver failure. Hepatology. 2005; 41(5):1179-97. DOI: 10.1002/hep.20703. View

3.
Hoofnagle J, Carithers Jr R, Shapiro C, Ascher N . Fulminant hepatic failure: summary of a workshop. Hepatology. 1995; 21(1):240-52. View

4.
Lee W . Etiologies of acute liver failure. Semin Liver Dis. 2008; 28(2):142-52. DOI: 10.1055/s-2008-1073114. View

5.
Wang M, Chen X, Zhang H . Maximal conditional chi-square importance in random forests. Bioinformatics. 2010; 26(6):831-7. PMC: 2832825. DOI: 10.1093/bioinformatics/btq038. View