Computational Biosequence Analysis by Neural Networks

نویسنده

  • S.
چکیده

The use of ariificial neural networks for biological sequence analysis has ncenily been strongly intensified. This paper describes work on ihe dificuli coding/noncoding classification problem in human DNA an important step in the informaiion processing of the living cell. The network approach was utilized noi only for gccnemlizaiion purposes, but also aa 5 tool for obiain;rag knowledge aboui previously unknown local features of the DNA sequence.

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تاریخ انتشار 2017