Comparative and Functional Genomics
Volume 2007 (2007), Article ID 90578, 12 pages
doi:10.1155/2007/90578
Research Article
Normalisation of Multicondition cDNA Macroarray Data
School of Chemical Engineering and Advanced Materials, Merz Court, University of Newcastle upon Tyne, Newcastle upon Tyne NE1 7RU, UK
Received 17 July 2006; Revised 21 December 2006; Accepted 28 February 2007
Recommended by John Quackenbush
Abstract
Background. Normalisation is a critical step in obtaining
meaningful information from the high-dimensional DNA array data. This is
particularly important when complex biological hypotheses/questions, such
a functional analysis and regulatory interactions within biological systems, are
investigated. A nonparametric, intensity-dependent normalisation method based
on global identification of self-consistent set (SCS) of genes is proposed here for
such systems.
Results. The SCS normalisation is introduced and its behaviour
demonstrated for a range of user-defined parameters affecting sits performance. It is
compared to a standard global normalisation method in terms of noise reduction and
signal retention.
Conclusions. The SCS normalisation results using 16 macroarray
data sets from a Bacillus subtilis experiment confirm that the method
is capable of reducing undesirable experimental variation whilst retaining important
biological information. The ease and speed of implementation mean that this method
can be easily adapted to other multicondition time/strain series single colour array data.