生物
貂皮
基因组
同步
染色体
进化生物学
遗传学
基因
生态学
栖息地
作者
Andrey Tomarovsky,Ruqayya Khan,Olga Dudchenko,Azamat Totikov,Natalia A. Serdyukova,David Weisz,Nadezhda V. Vorobieva,Tatiana Bulyonkova,Alexei V. Abramov,Wenhui Nie,Jinhuan Wang,Svetlana A. Romanenko,Anastasia A. Proskuryakova,Nikolay Cherkasov,M.A. Ferguson‐Smith,Fengtang Yang,Elena Balanovska,M. Thomas P. Gilbert,Alexander S. Graphodatsky,E Aiden
标识
DOI:10.1093/jhered/esaf001
摘要
Abstract The stone marten (Martes foina) is an important species for cytogenetic studies in the order Carnivora. ZooFISH probes created from its chromosomes provided a strong and clean signal in chromosome painting experiments and were valuable for studying the evolution of carnivoran genome architecture. The research revealed that the stone marten chromosome set is similar to the presumed ancestral karyotype of the Carnivora, which added an additional value for the species. Using linked-read and Hi-C sequencing, we generated a chromosome-length genome assembly of a male stone marten (Gansu province, China) from a primary cell line. The stone marten assembly had a length of 2.42 Gbp, scaffold N50 of 144 Mbp, and a 96.2% BUSCO completeness score. We identified 19 chromosomal scaffolds (2n=38) and assigned them chromosome ids based on chromosome painting data. Annotation identified 20,087 protein-coding gene models, of which 18,283 were assigned common names. Comparison of the stone marten assembly with the cat, dog, and human genomes revealed several small syntenic blocks absent on the published painting maps. Finally, we assessed the heterozygosity and its distribution over the chromosomes. The detected low heterozygosity level (0.4 hetSNPs/kbp) and the presence of long RoHs require further research and a new evaluation of the conservation status of the stone marten in China. Combined with available carnivoran genomes in large scale synteny analysis, the stone marten genome will highlight new features and events in carnivoran evolution, hidden from cytogenetic approaches.
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