Selection Of Genetically Diverse Recombinant Inbreds With An Ordered Gene Evolutionary Algorithm

D. Ashlock, Ruth Swanson, P. Schnable
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Abstract

Recombinant inbreds are created by crossing two genetically distinct inbred lines and then inbreeding the resulting progeny multiple times. They are used to estimate associations of genes by co-inheritance of alleles from the two parent inbred types in the recombinant inbreds derived from the cross in a process called genetic mapping. Typically the recombinant inbred lines used in a genetic mapping study are relatively well studied and so they are natural choices for microarray, proteomic, and metabolomic studies. These are quite costly and so typically use fewer individuals than are used in most genetic mapping studies. An evolutionary algorithm for selecting a subset of a collection of recombinant inbred lines with maximum genetic diversity in their mapping characters is described. The evolutionary algorithm is an ordered-gene algorithm with the first k genes in the ordered selection taken to be the subset. Ordered genes are a convenient representation for subset selection. It is found that the problem is not difficult and that in a well mixed mapping population of recombinant inbreds the marginal increase in diversity obtained by evolutionary optimization is small but significant. In order to better understand the problem, synthetic data are also examined and suggest that the problem is easy in general, not only in the specific biological cases used. Recombinant inbreds are created by crossing two genetically distinct inbred lines and then inbreeding the resulting progeny multiple times.
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用有序基因进化算法选择遗传多样性重组自交系
重组自交系是通过杂交两个遗传上不同的自交系,然后将产生的后代近亲繁殖多次而产生的。它们被用来估计基因的关联,通过在一个称为遗传作图的过程中,来自杂交的重组自交系中来自两个亲本自交系类型的等位基因的共遗传。通常,用于基因定位研究的重组自交系研究得相对较好,因此它们是微阵列、蛋白质组学和代谢组学研究的自然选择。这些方法非常昂贵,因此通常使用的个体比大多数基因作图研究中使用的个体要少。描述了一种进化算法,用于选择具有最大遗传多样性的重组自交系集合的子集。该进化算法是一种有序基因算法,将有序选择中的前k个基因作为子集。有序基因是子集选择的一种方便表示。结果表明,这一问题并不困难,在一个混合良好的重组自交系作图群体中,通过进化优化获得的多样性边际增量虽小但显著。为了更好地理解这个问题,还检查了综合数据,并表明这个问题在一般情况下是容易的,而不仅仅是在使用的特定生物学案例中。重组自交系是通过杂交两个遗传上不同的自交系,然后将产生的后代近亲繁殖多次而产生的。
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