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1Academic Journal
Authors: F. V. Kazantsev, M. F. Trofimova, T. M. Khlebodarova, Yu. G. Matushkin, S. A. Lashin, Ф. В. Казанцев, М. Ф. Трофимова, Т. М. Хлебодарова, Ю. Г. Матушкин, С. А. Лашин
Contributors: This work was supported by the projects of the Kurchatov Genomic Centre of ICG SB RAS No. 075-15-2019-1662.
Source: Vavilov Journal of Genetics and Breeding; Том 28, № 8 (2024); 897-903 ; Вавиловский журнал генетики и селекции; Том 28, № 8 (2024); 897-903 ; 2500-3259 ; 10.18699/vjgb-24-88
Subject Terms: рациональная мета¬болическая инженерия, bacterial metabolism, metabolic optimization, rational metabolic engineering, метаболизм бактерии, оптимизация метаболизма
File Description: application/pdf
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