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Applied and Environmental Microbiology, December 2005, p. 8663-8676, Vol. 71, No. 12
0099-2240/05/$08.00+0     doi:10.1128/AEM.71.12.8663-8676.2005
Copyright © 2005, American Society for Microbiology. All Rights Reserved.

Evaluation of Gel-Pad Oligonucleotide Microarray Technology by Using Artificial Neural Networks{dagger}

Alex Pozhitkov,1 Boris Chernov,2 Gennadiy Yershov,2 and Peter A. Noble1*

University of Washington, Seattle, Washington 98195, and,1 Biodetection Technologies Section, Argonne National Laboratory, Argonne, Illinois 604392

Received 21 April 2005/ Accepted 12 July 2005

Past studies have suggested that thermal dissociation analysis of nucleic acids hybridized to DNA microarrays would improve discrimination among duplex types by scanning through a broad range of stringency conditions. To more fully constrain the utility of this approach using a previously described gel-pad microarray format, artificial neural networks (NNs) were trained to recognize noisy or low-quality data, as might derive from nonspecific fluorescence, poor hybridization, or compromised data collection. The NNs were trained to classify dissociation profiles (melts) into groups based on selected characteristics (e.g., initial signal intensity, area under the curve) using a data set of 21,044 profiles derived from 186 probes hybridized to a study set of RNA extracted from 32 microbes common to the human oral cavity. Three melt profile groups were identified: one group consisted mostly of ideal melt profiles; another group consisted mostly of poor melt profiles; and, the remainder were difficult to classify. Screening of melting profiles of perfect-match hybrids revealed inconsistencies in the form of melting profiles even for identical probes on the same microarray hybridized to same target rRNA. Approximately 18% of perfect-match duplex types were correctly classified as poor. Experimental variability and deviation from ideal melt behavior were shown to be attributable primarily to a method of local background subtraction that was very sensitive to displacement of the grid frames used for image capture (both determined by the image analysis system) and duplexes with low binding constants. Additional results showed that long RNA fragments limit the discriminating power among duplex types.


* Corresponding author. Mailing address: 201 More Hall, Civil and Environmental Engineering, University of Washington, Seattle, WA 98195. Phone: (206) 685-7583. Fax: (206) 685-7583. E-mail: panoble{at}washington.edu.

{dagger} Supplemental material for this article may be found at http://aem.asm.org/.


Applied and Environmental Microbiology, December 2005, p. 8663-8676, Vol. 71, No. 12
0099-2240/05/$08.00+0     doi:10.1128/AEM.71.12.8663-8676.2005
Copyright © 2005, American Society for Microbiology. All Rights Reserved.




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