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DNA 条形码揭示了新热带疟蚊(按蚊:Nyssorhynchus)的 Albitaris 组中已知和新的分类单元。

DNA barcoding reveals both known and novel taxa in the Albitarsis Group (Anopheles: Nyssorhynchus) of Neotropical malaria vectors.

机构信息

Entomology Branch, Walter Reed Army Institute of Research, 503 Robert Grant Avenue, Silver Spring, Maryland 20910, USA.

出版信息

Parasit Vectors. 2012 Feb 21;5:44. doi: 10.1186/1756-3305-5-44.

Abstract

BACKGROUND

Mosquitoes belonging to the Albitarsis Group (Anopheles: Nyssorhynchus) are of importance as malaria vectors across the Neotropics. The Group currently comprises six known species, and recent studies have indicated further hidden biodiversity within the Group. DNA barcoding has been proposed as a highly useful tool for species recognition, although its discriminatory utility has not been verified in closely related taxa across a wide geographic distribution.

METHODS

DNA barcodes (658 bp of the mtDNA Cytochrome c Oxidase--COI) were generated for 565 An. albitarsis s.l. collected in Argentina, Brazil, Colombia, Paraguay, Trinidad and Venezuela over the past twenty years, including specimens from type series and type localities. Here we test the utility of currently advocated barcoding methodologies, including the Kimura-two-parameter distance model (K2P) and Neighbor-joining analysis (NJ), for determining species delineation within mosquitoes of the Neotropical Albitarsis Group of malaria vectors (Anopheles: Nyssorhynchus), and compare results with Bayesian analysis.

RESULTS

Species delineation through barcoding analysis and Bayesian phylogenetic analysis, fully concur. Analysis of 565 sequences (302 unique haplotypes) resolved nine NJ tree clusters, with less than 2% intra-node variation. Mean intra-specific variation (K2P) was 0.009 (range 0.002-0.014), whereas mean inter-specific divergence were several-fold higher at 0.041 (0.020-0.056), supporting the reported "barcoding gap". These results show full support for separate species status of the six known species in the Albitarsis Group (An. albitarsis s.s., An. albitarsis F, An. deaneorum, An. janconnae, An. marajoara and An. oryzalimnetes), and also support species level status for two previously detected lineages--An. albitarsis G &An. albitarsis I (designated herein). In addition, we highlight the presence of a unique mitochondrial lineage close to An. deaneorum and An. marajoara (An. albitarsis H) from Rondônia and Mato Grosso in southwestern Brazil. Further integrated studies are required to confirm the status of this lineage.

CONCLUSIONS

DNA barcoding provides a reliable means of identifying both known and undiscovered biodiversity within the closely related taxa of the Albitarsis Group. We advocate its usage in future studies to elucidate the vector competence and respective distributions of all eight species in the Albitarsis Group and the novel mitochondrial lineage (An. albitarsis H) recovered in this study.

摘要

背景

属于 Albitarsis 组(按蚊:Nyssorhynchus)的蚊子作为新热带地区的疟疾传播媒介具有重要意义。该组目前包括六个已知物种,最近的研究表明该组内存在更多隐藏的生物多样性。DNA 条形码已被提议作为一种非常有用的物种识别工具,尽管其在广泛地理分布的密切相关分类群中的鉴别效用尚未得到验证。

方法

为过去 20 年在阿根廷、巴西、哥伦比亚、巴拉圭、特立尼达和委内瑞拉收集的 565 只 An. albitarsis s.l.(包括来自模式系列和模式产地的标本)生成了 DNA 条形码(mtDNA 细胞色素 c 氧化酶-COI 的 658 bp)。在这里,我们测试了当前提倡的条形码方法的效用,包括 Kimura-two-parameter distance model (K2P) 和 Neighbor-joining analysis (NJ),用于确定新热带地区疟疾传播媒介的 Albitarsis 组(按蚊:Nyssorhynchus)中蚊子的物种划分,并将结果与贝叶斯分析进行比较。

结果

通过条形码分析和贝叶斯系统发育分析确定的物种划分完全一致。对 565 条序列(302 个独特的单倍型)的分析确定了 9 个 NJ 树群,节点内变异小于 2%。种内平均变异(K2P)为 0.009(范围为 0.002-0.014),而种间平均差异则高出数倍,为 0.041(0.020-0.056),支持报道的“条形码间隙”。这些结果完全支持 Albitarsis 组中六个已知物种(An. albitarsis s.s.、An. albitarsis F、An. deaneorum、An. janconnae、An. marajoara 和 An. oryzalimnetes)的独立物种地位,也支持先前检测到的两个谱系的物种水平地位——An. albitarsis G 和 An. albitarsis I(在此指定)。此外,我们还强调了在巴西西南部的朗多尼亚和马托格罗索发现的与 An. deaneorum 和 An. marajoara 密切相关的独特线粒体谱系(An. albitarsis H)的存在。需要进一步的综合研究来确认该谱系的地位。

结论

DNA 条形码为鉴定 Albitarsis 组内密切相关分类群中的已知和未发现生物多样性提供了可靠的手段。我们主张在未来的研究中使用它来阐明 Albitarsis 组中所有 8 个物种以及本研究中回收的新线粒体谱系(An. albitarsis H)的媒介能力和各自的分布。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d3e3/3350407/3fba80f7180e/1756-3305-5-44-1.jpg

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