Neural network predicts sequence of TP53 gene based on DNA chip |
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Authors: | Spicker Jeppe S Wikman Friedrik Lu Ming-Lan Cordon-Cardo Carlos Workman Christopher ØRntoft Torben F Brunak Søren Knudsen Steen |
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Affiliation: | Center for Biological Sequence Analysis, Technical University of Denmark, 2800 Lyngby, Denmark. |
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Abstract: | We have trained an artificial neural network to predict the sequence of the human TP53 tumor suppressor gene based on a p53 GeneChip. The trained neural network uses as input the fluorescence intensities of DNA hybridized to oligonucleotides on the surface of the chip and makes between zero and four errors in the predicted 1300 bp sequence when tested on wild-type TP53 sequence. AVAILABILITY: The trained neural network is available for academic use by contacting steen@cbs.dtu.dk |
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