LSPR: An integrated periodicity detection algorithm for unevenly sampled temporal microarray data

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Abstract

Summary: We propose a three-step periodicity detection algorithm named LSPR. Our method first preprocesses the raw time-series by removing the linear trend and filtering noise. In the second step, LSPR employs a Lomb-Scargle periodogram to estimate the periodicity in the time-series. Finally, harmonic regression is applied to model the cyclic components. Inferred periodic transcripts are selected by a false discovery rate procedure. We have applied LSPR to unevenly sampled synthetic data and two Arabidopsis diurnal expression datasets, and compared its performance with the existing well-established algorithms. Results show that LSPR is capable of identifying periodic transcripts more accurately than existing algorithms. © The Author 2011. Published by Oxford University Press. All rights reserved.

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Yang, R., Zhang, C., & Su, Z. (2011). LSPR: An integrated periodicity detection algorithm for unevenly sampled temporal microarray data. Bioinformatics, 27(7), 1023–1025. https://doi.org/10.1093/bioinformatics/btr041

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