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Get Free AccessFat-tailed sheep have commercial value because consumers prefer high-protein and low-fat food and producers care about feed conversion rate. However, fat-tailed sheep still have some scientific significance, as the fat tail is commonly regarded as a characteristic of environmental adaptability. Finding the candidate genes associated with fat tail formation is essential for breeding and conservation. To identify these candidate genes, we applied FST and hapFLK approaches in fat- and thin-tailed sheep with available 50K SNP genotype data. These two methods found 6.24 Mb of overlapped regions and 43 genes that may associated with fat tail development. Gene annotation showed that HOXA11, BMP2, PPP1CC, SP3, SP9, WDR92, PROKR1 and ETAA1 may play important roles in fat tail formation. These findings provide insight into tail fat development and a guide for molecular breeding and conservation.
Zehu Yuan, E. Liu, Z. Liu, James Kijas, Chunling Zhu, Shanming Hu, Xiaomeng Ma, Lei Zhang, Lei Du, H. Holly Wang, Caihong Wei (2016). Selection signature analysis reveals genes associated with tail type in Chinese indigenous sheep. , 48(1), DOI: https://doi.org/10.1111/age.12477.
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Type
Article
Year
2016
Authors
11
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1111/age.12477
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