Russian version English version
Volume 14   Issue 1   Year 2019
Nazin P.S.1,2, Gotovtsev P.M.1

Using Probabilistic Neural Networks to Predict the Localization of Proteins in Cell Compartments

Mathematical Biology & Bioinformatics. 2019;14(1):220-232.

doi: 10.17537/2019.14.220.

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Table of Contents Original Article
Math. Biol. Bioinf.
2019;14(1):220-232
doi: 10.17537/2019.14.220
published in Russian

Abstract (rus.)
Abstract (eng.)
Full text (rus., pdf)
References

 

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