Whole-Genome Sequences of Propionibacterium australiense NML (LCDC) 98A072 T and NML (LCDC) 98A078, Associated with Granulomatous Bovine Lesions
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چکیده
منابع مشابه
Draft Genome Sequences of Microbacterium hominis LCDC-84-0209T Isolated from a Human Lung Aspirate and Microbacterium laevaniformans LCDC 91-0039 Isolated from a Human Blood Culture
Draft genomes for Microbacterium hominis 84-0209(T) and M. laevaniformans 91-0039 were studied. Genome sizes (bps, [G+C contents]) were 3,506,522 (70.96%) and 2,999,965 (69.51%), respectively. Annotation revealed: (M. hominis) three rRNA sequences, 45 tRNA genes, and 3,218 coding sequences; (M. laevaniformans) three rRNA sequences, 49 tRNA genes, and 2,874 coding sequences.
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ژورنال
عنوان ژورنال: Microbiology Resource Announcements
سال: 2018
ISSN: 2576-098X
DOI: 10.1128/mra.01445-18