生物
单核苷酸多态性
祖先信息标记
推论
遗传谱系
进化生物学
SNP公司
遗传结构
遗传学
人口
遗传变异
基因型
基因
人工智能
人口学
计算机科学
社会学
作者
Yunying Zhang,Fanzhang Lei,Hui Xu,Xingru Zhang,Ming Zhao,Qiong Lan,Bofeng Zhu
出处
期刊:Gene
[Elsevier]
日期:2023-07-01
卷期号:873: 147456-147456
标识
DOI:10.1016/j.gene.2023.147456
摘要
In addition to the validated ancestry-informative single nucleotide polymorphisms (AI-SNPs) in classic panels, there are many new potential AI-SNPs yet to be explored. Moreover, the search for AI-SNPs with highly discriminative power for ancestry inference in inter- and intra-continental populations has become a realistic need. In this study, 126 novel AI-SNPs were selected to distinguish the African, European, Central/South Asian and East Asian populations, and a random forest model was introduced to assess the performance of the AI-SNP set. This panel was further used in the genetic analysis of the Manchu group in Inner Mongolia, China, based on 79 reference populations from seven continental regions. Results showed that the 126 AI-SNPs were able to achieve the ancestry informative inference for African, East Asian, European, and Central/South Asian populations. Population genetic analyses indicated that the Manchu group in Inner Mongolia was genetically typical of East Asian populations and was more closely related to the northern Han Chinese and Japanese than to other Altaic-speaking populations. Overall, this study provided a selection of new promising loci of ancestry inference for major intercontinental populations and intracontinental subgroups, as well as genetic insights and valuable data for dissecting the genetic structure of the Inner Mongolian Manchu group.
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