OBJECTIVES: As the public's interest in companion dogs grows, health issues in these animals are also emerging, necessitating the optimization of whole exome sequencing (WES) as a valuable method for disease prediction. While WES targeting the human genome is well established, WES targeting the canine genome is understudied, and there is a need to find effective analysis kits. METHODS: We compared and analyzed the performance of three WES kits from Twist and Agilent using the canine genome as the target to perform genetic analysis of canine diseases effectively. The levels of total reads, the duplication rate, and variant calling in canine genomic DNA samples from seven healthy dogs (three beagles, one bichon fry, one maltese, one welsh corgi, and one mixed breed) without any interventions were examined through WES via Twist and Agilent kits. RESULTS: We found that while Twist had the lowest total read number, the number of reads in the SSXT series was significantly (P<0.05) greater. Twist showed low evenness and high standard deviation, but the SSXT series showed relatively high evenness. Compared with Twist, the SSXT series from a depth of 30Ã presented a significantly (P<0.05) greater target ratio. Among the four kits, the significantly lowest duplicate ratio was confirmed for SSXT (O/N) (30% lower than Twist). CONCLUSION: The most important performance of the kit, the number of variants detected, was 48,302 for Twist and 130,506 for SSXT (O/N). On the basis of the performance comparison results, SSXT (O/N) was found to have the best performance.
Comparative analysis of whole exome sequencing kits for the canine genome.
犬类基因组全外显子组测序试剂盒的比较分析
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作者:Jang Jinhee, Lee Yong-Jik, Ko Soohyun, Abd El-Aty A M, Gecili Ibrahim, Jeong Ji Hoon, Kwon ChangHyuk, Jung Tae Woo
| 期刊: | PLoS One | 影响因子: | 2.600 |
| 时间: | 2024 | 起止号: | 2024 Nov 4; 19(11):e0312203 |
| doi: | 10.1371/journal.pone.0312203 | 种属: | Canine |
| 研究方向: | 其它 | ||
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