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公共在线数据库能否作为大麻遗传关联研究的表型信息来源?

Can public online databases serve as a source of phenotypic information for Cannabis genetic association studies?

机构信息

Department of Biology, Montclair State University, Montclair, New Jersey, United States of America.

Sackler Institute for Comparative Genomics, American Museum of Natural History, New York, New York, United States of America.

出版信息

PLoS One. 2021 Feb 23;16(2):e0247607. doi: 10.1371/journal.pone.0247607. eCollection 2021.

Abstract

The use of Cannabis is gaining greater social acceptance for its beneficial medicinal and recreational uses. With this acceptance has come new opportunities for crop management, selective breeding, and the potential for targeted genetic manipulation. However, as an agricultural product Cannabis lags far behind other domesticated plants in knowledge of the genes and genetic variation that influence plant traits of interest such as growth form and chemical composition. Despite this lack of information, there are substantial publicly available resources that document phenotypic traits believed to be associated with particular Cannabis varieties. Such databases could be a valuable resource for developing a greater understanding of genes underlying phenotypic variation if combined with appropriate genetic information. To test this potential, we collated phenotypic data from information available through multiple online databases. We then produced a Cannabis SNP database from 845 strains to examine genome wide associations in conjunction with our assembled phenotypic traits. Our goal was not to locate Cannabis-specific genetic variation that correlates with phenotypic variation as such, but rather to examine the potential utility of these databases more broadly for future, explicit genome wide association studies (GWAS), either in stand-alone analyses or to complement other types of data. For this reason, we examined a very broad array of phenotypic traits. In total, we performed 201 distinct association tests using web-derived phenotype data appended to 290 uniquely named Cannabis strains. Our results indicated that chemical phenotypes, such as tetrahydrocannabinol (THC) and cannabidiol (CBD) content, may have sufficiently high-quality information available through web-based sources to allow for genetic association inferences. In many cases, variation in chemical traits correlated with genetic variation in or near biologically reasonable candidate genes, including several not previously implicated in Cannabis chemical variation. As with chemical phenotypes, we found that publicly available data on growth traits such as height, area of growth, and floral yield may be precise enough for use in future association studies. In contrast, phenotypic information for subjective traits such as taste, physiological affect, neurological affect, and medicinal use appeared less reliable. These results are consistent with the high degree of subjectivity for such trait data found on internet databases, and suggest that future work on these important but less easily quantifiable characteristics of Cannabis may require dedicated, controlled phenotyping.

摘要

大麻的使用因其有益的药用和娱乐用途而越来越被社会所接受。随着这种接受程度的提高,出现了新的作物管理、选择性育种和潜在的靶向遗传操作机会。然而,作为一种农产品,大麻在影响其生长形态和化学成分等感兴趣植物特性的基因和遗传变异方面的知识远远落后于其他驯化植物。尽管缺乏信息,但有大量公开的资源记录了被认为与特定大麻品种相关的表型特征。如果将这些数据库与适当的遗传信息结合起来,它们可能成为了解表型变异背后基因的宝贵资源。为了检验这种潜力,我们从多个在线数据库中收集了表型数据。然后,我们从 845 个大麻品种中生成了一个 SNP 数据库,以结合我们组装的表型特征来检查全基因组关联。我们的目标不是寻找与表型变异相关的大麻特异性遗传变异,而是更广泛地检查这些数据库在未来明确的全基因组关联研究(GWAS)中的潜在用途,无论是单独进行分析还是补充其他类型的数据。出于这个原因,我们检查了非常广泛的表型特征。总共,我们使用网络衍生的表型数据进行了 201 次不同的关联测试,这些数据附加到 290 个独特命名的大麻品种中。我们的结果表明,化学表型,如四氢大麻酚(THC)和大麻二酚(CBD)含量,可能通过基于网络的来源提供了足够高质量的信息,从而可以进行遗传关联推断。在许多情况下,化学性状的变异与生物合理候选基因内或附近的遗传变异相关,包括以前未涉及大麻化学变异的几个基因。与化学表型一样,我们发现,通过互联网数据库获得的生长性状的公开数据,如高度、生长面积和花产量,可能足够精确,可用于未来的关联研究。相比之下,味觉、生理影响、神经影响和药用等主观性状的表型信息似乎不太可靠。这些结果与互联网数据库中此类性状数据的高度主观性一致,并表明未来对大麻这些重要但更难以量化的特征的研究可能需要专门的、受控的表型分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f358/7901747/faf5b6432f9f/pone.0247607.g001.jpg

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