Yang Yang, Hongli Tian, Hongmei Yi, Zi Shi, Lu Wang, Yaming Fan, Fengge Wang, Jiuran Zhao
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引用次数: 0
摘要
为了降低用于品种鉴别的植物遗传标记指纹图谱的成本并提高其效率,最好能确定最佳的标记组合。我们介绍了一种基于遗传算法(GA)的标记组合筛选模型,并在软件工具 LociScan 中实现。在多种适合度函数中,基于比率的品种鉴别力提供了最大的优化空间。在遗传算法参数中,种群规模和世代数的增加不仅扩大了优化深度,还增加了计算工作量。穷举算法的优化深度与 GA 相同,但计算时间大大增加。与其他两款软件工具相比,LociScan 可以处理缺失数据,缩短计算时间,并提供更多的拟合函数。在大型数据集中,训练数据的样本量对计算时间的影响最大,而训练数据的标记大小没有影响,目标标记数对分析速度的影响有限。
LociScan, a tool for screening genetic marker combinations for plant variety discrimination
To reduce the cost and increase the efficiency of plant genetic marker fingerprinting for variety discrimination, it is desirable to identify the optimal marker combinations. We describe a marker combination screening model based on the genetic algorithm (GA) and implemented in a software tool, LociScan. Ratio-based variety discrimination power provided the largest optimization space among multiple fitness functions. Among GA parameters, an increase in population size and generation number enlarged optimization depth but also calculation workload. Exhaustive algorithm afforded the same optimization depth as GA but vastly increased calculation time. In comparison with two other software tools, LociScan accommodated missing data, reduced calculation time, and offered more fitness functions. In large datasets, the sample size of training data exerted the strongest influence on calculation time, whereas the marker size of training data showed no effect, and target marker number had limited effect on analysis speed.