DNA chip image processing via cellular neural networks

In this work, a new cellular neural network algorithm for DNA-chip automatic analysis is outlined. It allows to automatically classify in real-time fluorescence images from DNA microarray after the hybridization process. The paper introduces the main issues in DNA-chip technology and reports the key features of CNN application in this field, together with the description of a sample CNN algorithm and simulation results.

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