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Invited: Identifying mutations from TILLING experiments

机译:邀请:从TILLING实验中识别突变

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TILLING (Targeting Induced Local Lesions IN Genomes) is a reverse genetics approach to detect effects of globally induced mutations in a population and identify the individuals that have mutations in genes of interest. As long as the DNA sequence of the target gene is known and the organism of interest can be mutagenized, TILLING provides mutations in species where tools applicable to other model systems are unavailable. Importantly, organisms amenable to TILLING include both commercially valuable species such as rice, wheat, soybean, brassica, oat, and melon, and species important for research such as medaka, zebra fish, fruit flies, arabidopsis and nematodes. TILLING -by -Sequencing leverages next-generation sequencing and an overlapping pooled experimental design. It follows up the mutagenesis with deep sequencing of pools of individuals or populations of interest. Because of the high throughput of current sequencing technologies, deep sequencing to hundred and thousand fold coverage is possible [1]. Here I present on our method, Coverage Aware Mutation calling using Bayesian analysis, CAMBa, (read like the dance), which directly considers the pooled setup and sequencing coverage levels when calculating mutation and noise probabilities. Using data from two TILLING experiments, one with lower sequencing coverage variablility and data quality and the other with higher, we validate CAMBa's efficacy in identifying mutations, and demonstrate that it outperforms significantly other methods on sequence data of lower quality and higher variance in coverage across pools. We show that our method effectively discovers mutations in large populations with sensitivity of 92.5% and specificity of 99.8% [2].
机译:TILLING(靶向基因组中的诱导局部病变)是一种反向遗传学方法,用于检测总体诱导的突变在人群中的作用,并识别在目标基因中具有突变的个体。只要目标基因的DNA序列是已知的,并且感兴趣的生物可以被诱变,在没有适用于其他模型系统的工具的情况下,TILLING可以在物种中提供突变。重要的是,适于耕种的生物既包括商业上有价值的物种,例如水稻,小麦,大豆,芸苔,燕麦和甜瓜,又包括对研究具有重要意义的物种,如,斑马鱼,果蝇,拟南芥和线虫。逐层测序利用了下一代测序和重叠的合并实验设计。它通过对感兴趣的个人或人群的库进行深度测序来跟踪诱变。由于当前测序技术的高通量,深度测序达到十万倍的覆盖率是可能的[1]。在这里,我介绍我们的方法,即使用贝叶斯分析CAMBa进行覆盖识别突变(调用像舞蹈一样),该方法在计算突变和噪声概率时直接考虑合并的设置和排序覆盖水平。使用来自两个TILLING实验的数据,一个实验具有较低的序列覆盖变异性和数据质量,而另一个实验具有较高的数据,我们验证了CAMBa在识别突变中的功效,并证明它在质量较低,覆盖范围差异较大的序列数据上明显优于其他方法池。我们表明,我们的方法有效地发现了大型人群中的突变,其敏感性为92.5%,特异性为99.8%[2]。

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