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SVmine improves structural variation detection by integrative mining of predictions from multiple algorithms

机译:SVMINE通过多种算法的完全预测的综合挖掘来提高结构变异检测

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摘要

Motivation: Structural variation (SV) is an important class of genomic variations in human genomes. A number of SV detection algorithms based on high-throughput sequencing data have been developed, but they have various and often limited level of sensitivity, specificity and breakpoint resolution. Furthermore, since overlaps between predictions of algorithms are low, SV detection based on multiple algorithms, an often-used strategy in real applications, has little effect in improving the performance of SV detection.
机译:动机:结构变异(SV)是人类基因组的重要类别变异。 已经开发了许多基于高吞吐量测序数据的SV检测算法,但它们具有各种且通常有限的灵敏度,特异性和断点分辨率。 此外,由于算法预测之间的重叠是低的,因此基于多种算法的SV检测,实际应用中的经常使用的策略在提高SV检测的性能方面几乎没有效果。

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