Title
Evaporative cooling feature selection for genotypic data involving interactions
Abstract
Motivation: The development of genome-wide capabilities for genotyping has led to the practical problem of identifying the minimum subset of genetic variants relevant to the classification of a phenotype. This challenge is especially difficult in the presence of attribute interactions, noise and small sample size. Methods: Analogous to the physical mechanism of evaporation, we introduce an evaporative cooling (EC) feature selection algorithm that seeks to obtain a subset of attributes with the optimum information temperature (i.e. the least noise). EC uses an attribute quality measure analogous to thermodynamic free energy that combines Relief-F and mutual information to evaporate (i.e. remove) noise features, leaving behind a subset of attributes that contain DNA sequence variations associated with a given phenotype. Results: EC is able to identify functional sequence variations that involve interactions (epistasis) between other sequence variations that influence their association with the phenotype. This ability is demonstrated on simulated genotypic data with attribute interactions and on real genotypic data from individuals who experienced adverse events following smallpox vaccination. The EC formalism allows us to combine information entropy, energy and temperature into a single information free energy attribute quality measure that balances interaction and main effects. Availability: Open source software, written in Java, is freely available upon request. Contact: brett.mckinney@gmail.com
Year
DOI
Venue
2007
10.1093/bioinformatics/btm317
Bioinformatics
Keywords
Field
DocType
feature selection,genotype,evaporative cooling,free energy,computer simulation,mutual information,genetics,thermodynamics,information entropy,dna sequence
Evaporative cooler,Data mining,Thermodynamic free energy,Feature selection,Computer science,Epistasis,Mutual information,Bioinformatics,Entropy (information theory),Java,Sample size determination
Journal
Volume
Issue
ISSN
23
16
1367-4803
Citations 
PageRank 
References 
13
1.20
5
Authors
5
Name
Order
Citations
PageRank
Brett A. McKinney1747.36
David M. Reif2538.31
Bill C. White3203.09
James E. Crowe Jr.4273.14
Jason H. Moore51223159.43