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JOURNALS // Program Systems: Theory and Applications

Program Systems: Theory and Applications, 2017, Volume 8, Issue 2, Pages 45–68 (Mi ps262)

Computer tools for analysis of transcriptomics data: program complex ExpGene
A. M. Spitsina, A. O. Bragin, A. I. Dergilev, I. V. Chadaeva, N. N. Tverdokhleb, E. R. Galieva, L. E. Tabikhanova, Yu. L. Orlov

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