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Stochastic deletion-insertion algorithm to construct dense linkage maps

机译:随机删除插入算法构造密集链接图

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In this study, we proposed a stochastic deletion-insertion (SDI) algorithm for constructing large-scale linkage maps. This SDI algorithm was compared with three published approximation approaches, the seriation (SER), neighbor mapping (NM), and unidirectional growth (UG) approaches, on the basis of simulated $F_2$ data with different population sizes, missing genotype rates, and numbers of markers. Simulation results showed that the SDI method had a similar or higher percentage of correct linkage orders than the other three methods. This SDI algorithm was also applied to a real dataset and compared with the other three methods. The total linkage map distance (cM) obtained by the SDI method (148.08 cM) was smaller than the distance obtained by SER (225.52 cM) and two published distances (150.11 cM and 150.38 cM). Since this SDI algorithm is stochastic, a more accurate linkage order can be quickly obtained by repeating this algorithm. Thus, this SDI method, which combines the advantages of accuracy and speed, is an important addition to the current linkage mapping toolkit for constructing improved linkage maps.
机译:在这项研究中,我们提出了一种随机删除插入(SDI)算法,用于构建大规模链接图。该SDI算法与模拟的$ F_2 $数据具有不同的人口规模,基因型丢失率和基因缺失率,并与三种公开的近似方法(序列化(SER),邻居映射(NM)和单向生长(UG)方法)进行了比较。标记数。仿真结果表明,SDI方法的正确链接顺序百分比与其他三种方法相似或更高。该SDI算法还应用于实际数据集,并与其他三种方法进行了比较。通过SDI方法获得的总连锁图谱距离(cM)(148.08 cM)小于通过SER获得的距离(225.52 cM)和两个公开的距离(150.11 cM和150.38 cM)。由于此SDI算法是随机的,因此可以通过重复此算法快速获得更准确的链接顺序。因此,这种结合了准确性和速度优势的SDI方法是当前链接映射工具包中用于构建改进的链接映射的重要补充。

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