fastJT: An R package for robust and efficient feature selection for machine learning and genome-wide association studies.

TitlefastJT: An R package for robust and efficient feature selection for machine learning and genome-wide association studies.
Publication TypeJournal Article
Year of Publication2019
AuthorsLin, Jiaxing, Alexander Sibley, Ivo Shterev, Andrew Nixon, Federico Innocenti, Cliburn Chan, and Kouros Owzar
JournalBMC Bioinformatics
Volume20
Issue1
Pagination333
Date Published2019 Jun 13
ISSN1471-2105
KeywordsAlgorithms, Blood Proteins, Computer Simulation, Genome-Wide Association Study, Machine Learning, Polymorphism, Single Nucleotide, Quantitative Trait, Heritable
Abstract

BACKGROUND: Parametric feature selection methods for machine learning and association studies based on genetic data are not robust with respect to outliers or influential observations. While rank-based, distribution-free statistics offer a robust alternative to parametric methods, their practical utility can be limited, as they demand significant computational resources when analyzing high-dimensional data. For genetic studies that seek to identify variants, the hypothesis is constrained, since it is typically assumed that the effect of the genotype on the phenotype is monotone (e.g., an additive genetic effect). Similarly, predictors for machine learning applications may have natural ordering constraints. Cross-validation for feature selection in these high-dimensional contexts necessitates highly efficient computational algorithms for the robust evaluation of many features.RESULTS: We have developed an R extension package, fastJT, for conducting genome-wide association studies and feature selection for machine learning using the Jonckheere-Terpstra statistic for constrained hypotheses. The kernel of the package features an efficient algorithm for calculating the statistics, replacing the pairwise comparison and counting processes with a data sorting and searching procedure, reducing computational complexity from O(n) to O(n log(n)). The computational efficiency is demonstrated through extensive benchmarking, and example applications to real data are presented.CONCLUSIONS: fastJT is an open-source R extension package, applying the Jonckheere-Terpstra statistic for robust feature selection for machine learning and association studies. The package implements an efficient algorithm which leverages internal information among the samples to avoid unnecessary computations, and incorporates shared-memory parallel programming to further boost performance on multi-core machines.

DOI10.1186/s12859-019-2869-3
Alternate JournalBMC Bioinformatics
Original PublicationfastJT: An R package for robust and efficient feature selection for machine learning and genome-wide association studies.
PubMed ID31195980
PubMed Central IDPMC6567636
Grant ListP01 CA142538 / CA / NCI NIH HHS / United States
S10 OD018164 / OD / NIH HHS / United States
P01CA142538 / / National Cancer Institute /