生物
DNA条形码
细胞色素c氧化酶亚单位Ⅰ
底漆(化妆品)
脊椎动物
序列分析
血粉
遗传学
基因
寄主(生物学)
进化生物学
线粒体DNA
动物
化学
有机化学
作者
Lawrence E. Reeves,Nathan D. Burkett‐Cadena
出处
期刊:CSH Protocols
[Cold Spring Harbor Laboratory]
日期:2023-07-17
卷期号:2024 (10): pdb.prot108292-pdb.prot108292
被引量:2
标识
DOI:10.1101/pdb.prot108292
摘要
Mosquitoes take blood meals from a diverse range of host animals and their host associations vary by species. Characterizing these associations is an important element of the transmission dynamics of mosquito-vectored pathogens. To characterize mosquito host associations, various molecular techniques have been developed, which are collectively referred to as blood meal analysis. DNA barcoding has diverse biological applications and is well-suited to mosquito blood meal analysis. The standard DNA barcoding marker for animals is a 5′ fragment of the cytochrome c oxidase I ( COI ) gene. A major advantage of this marker is its taxonomic coverage in DNA sequence reference databases, making it feasible to identify a wider range of mosquito host species than with any other gene. However, the COI gene contains high sequence variation at potential priming sites between vertebrate orders. Coupled with the need for primer sequences to be mismatched with mosquito priming sites so that annealing to mosquito DNA is inhibited, it can be difficult to design primers suitable for blood meal analysis applications. Several primers are available that perform well in mosquito blood meal analysis, annealing to priming sites for most vertebrate host taxa, but not to those of mosquitoes. Because priming site sequence variation among vertebrate taxa can cause amplification to fail, a hierarchical approach to DNA barcoding-based blood meal analysis can be applied. In such an approach, no single primer set is expected to be effective for 100% of potential host species. If amplification fails in the initial reaction, a subsequent reaction is attempted with primers that anneal to different priming sites, and so on, until amplification is successful.
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