Abstract
Motivation: Clustering gene expression data given in terms of timeseries is a challenging problem that imposes its own particular constraints. Traditional clustering methods based on conventional similarity measures are not always suitable for clustering time-series data. A few methods have been proposed recently for clustering microarray time-series, which take the temporal dimension of the data into account. The inherent principle behind these methods is to either define a similarity measure appropriate for temporal expression data, or pre-process the data in such a way that the temporal relationships between and within the time-series are considered during the subsequent clustering phase. Results: We introduce pairwise gene expression profile alignment, which vertically shifts two profiles in such a way that the area between their corresponding curves is minimal. Based on the pairwise alignment operation, we define a new distance function that is appropriate for time-series profiles. We also introduce a new clustering method that involves multiple expression profile alignment, which generalizes pairwise alignment to a set of profiles. Extensive experiments on well-known datasets yield encouraging results of at least 80% classification accuracy.
Cite
CITATION STYLE
Subhani, N., Rueda, L., Ngom, A., Burden, C. J., & Bishop, M. (2011). Multiple gene expression profile alignment for microarray time-series data clustering. In Bioinformatics (Vol. 27, pp. 2281–2288). Oxford University Press. https://doi.org/10.1093/bioinformatics/btq422
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