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Periodicity Detection Method for Small-Sample Time Series Datasets
Author(s) -
Daisuke Tominaga
Publication year - 2010
Publication title -
bioinformatics and biology insights
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.556
H-Index - 23
ISSN - 1177-9322
DOI - 10.4137/bbi.s5983
Subject(s) - computer science , noise (video) , akaike information criterion , sampling (signal processing) , harmonics , time series , algorithm , data mining , series (stratigraphy) , sample (material) , pattern recognition (psychology) , artificial intelligence , machine learning , biology , detector , paleontology , chemistry , physics , chromatography , quantum mechanics , voltage , image (mathematics) , telecommunications
Time series of gene expression often exhibit periodic behavior under the influence of multiple signal pathways, and are represented by a model that incorporates multiple harmonics and noise. Most of these data, which are observed using DNA microarrays, consist of few sampling points in time, but most periodicity detection methods require a relatively large number of sampling points. We have previously developed a detection algorithm based on the discrete Fourier transform and Akaike's information criterion. Here we demonstrate the performance of the algorithm for small-sample time series data through a comparison with conventional and newly proposed periodicity detection methods based on a statistical analysis of the power of harmonics.We show that this method has higher sensitivity for data consisting of multiple harmonics, and is more robust against noise than other methods. Although "combinatorial explosion" occurs for large datasets, the computational time is not a problem for small-sample datasets. The MATLAB/GNU Octave script of the algorithm is available on the author's web site: http://www.cbrc.jp/%7Etominaga/piccolo/.

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