iPRIns:一种提高人类基因组插入检测精度和召回率的工具

Sakkayaphab Piwluang, D. Wichadakul
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引用次数: 0

摘要

插入是结构变化的一种特殊类型。鉴定人类基因组中的插入对研究疾病或其功能影响至关重要。有许多工具可用于使用不同的方法和策略识别插入类型。然而,大多数方法都不能同时提供良好的查全率和查准率,特别是对于具有成对端短读序列的真实数据集。在本文中,我们提出了一种新的插入检测计算方法iPRIns,旨在提高插入检测的准确率和召回率。在10个真实数据集(NA12878的变体)中,该方法的发现和过滤过程在精度和召回率方面都优于所有其他三种工具。iPRIns在开源GPLv3许可下发布。源代码和文档可从https://github.com/cucpbioinfo/iPRIns获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
iPRIns: A Tool with the Improved Precision and Recall for Insertion Detection in the Human Genome
An insertion is a specific type of the structural variations. The identification of insertions in a human genome is essential for the study of diseases or their functional effects. There are many tools available for identifying the insertion type with different methods and strategies. However, most of them could not deliver both good recall and precision, especially for the real datasets sequenced with the paired-end short reads. In this paper, we propose iPRIns, a new computational method for detecting insertions aiming to improve both precision and recall. The proposed method with discovering and filtering processes outperformed all other three tools for 5 out of 10 real datasets, the variations of NA12878, for both precision and recall. iPRIns is released under the open-source GPLv3 license. The source code and documentation are available at https://github.com/cucpbioinfo/iPRIns.
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