Russian version English version
Volume 13   Issue 2   Year 2018
Ustinin M.N., Rykunov S.D., Boyko A.I., Maslova O.A., Walton K.D., Llinás R.R.

Estimation of the Directions of Alpha Rhythm Elementary Sources Using the Method of Human Brain Functional Tomography Based On the Magnetic Encephalography Data

Mathematical Biology & Bioinformatics. 2018;13(2):426-436.

doi: 10.17537/2018.13.426.

References

 

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Table of Contents Original Article
Math. Biol. Bioinf.
2018;13(2):426-436
doi: 10.17537/2018.13.426
published in Russian

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

 

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