Motivation: At a recent meeting, the wavelet transform was depicted as a small child kicking back at its father, the Fourier transform. Wavelets are more efficient and faster than Fourier methods in capturing the essence of data. Nowadays there is a growing interest in using wavelets in the analysis of biological sequences and molecular biology-related signals. Results: This review is intended to summarize the potential of state of the art wavelets, and in particular wavelet statistical methodology, in different areas of molecular biology: genome sequence, protein structure and microarray data analysis. I conclude by discussing the use of wavelets in modeling biological structures.
CITATION STYLE
Liò, P. (2003, January 1). Wavelets in bioinformatics and computational biology: State of art and perspectives. Bioinformatics. Oxford University Press. https://doi.org/10.1093/bioinformatics/19.1.2
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