Abstract
Modeling complex time-course patterns is a challenging issue in microarray study due to complex gene expression patterns in response to the time-course experiment. We introduce the generalized correlation coefficient and propose a combinatory approach for detecting, testing and clustering the heterogeneous time-course gene expression patterns. Application of the method identified nonlinear time-course patterns in high agreement with parametric analysis. We conclude that the non-parametric nature in the generalized correlation analysis could be an useful and efficient tool for analyzing microarray time-course data and for exploring the complex relationships in the omics data for studying their association with disease and health.
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Tan, Q., Thomassen, M., Burton, M., Mose, K. F., Andersen, K. E., Hjelmborg, J., & Kruse, T. (2017). Generalized Correlation Coefficient for Non-Parametric Analysis of Microarray Time-Course Data. Journal of Integrative Bioinformatics, 14(2). https://doi.org/10.1515/jib-2017-0011
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