相关推断:一种检测基因组数据信号变异的监督学习方法

Mario Banuelos, Omar DeGuchy, Suzanne S. Sindi, Roummel F. Marcia
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引用次数: 0

摘要

人类基因组由核苷酸组成,由字母a、C、G、T组成的长序列表示。通常,同一物种的生物体具有相似的基因组,只是在不同位置上的几个序列的长度不同。这些差异可以从插入、删除或反转字母的区域中观察到。这些异常被称为结构变异(SVs),很难检测到。鉴定sv的标准方法包括比较目标基因组的DNA片段,并将其与参考基因组进行比较。这一过程通常因测序和制图过程中产生的错误而复杂化,这可能导致假阳性检测的增加。在这项工作中,我们提出了两种不同的方法来减少误报的数量。我们将注意力集中在精炼由流行的SV工具delly检测到的删除。特别是,我们考虑了使用神经网络和梯度增强作为后处理步骤同时考虑来自父母和孩子的测序数据的能力。我们比较了每种方法在模拟和真实亲子数据上的性能,结果表明在训练数据中加入相关个体大大提高了检测真实SVs的能力。
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Related Inference: A Supervised Learning Approach to Detect Signal Variation in Genome Data
The human genome, composed of nucleotides, is represented by a long sequence of the letters A,C,G,T. Typically, organisms in the same species have similar genomes that differ by only a few sequences of varying lengths at varying positions. These differences can be observed in the form of regions where letters are inserted, deleted or inverted. These anomalies are known as structural variants (SVs) and are difficult to detect. The standard approach for identifying SVs involves comparing fragments of DNA from the genome of interest and comparing them to a reference genome. This process is usually complicated by errors produced in both the sequencing and mapping process which may result in an increase in false positive detections. In this work we propose two different approaches for reducing the number of false positives. We focus our attention on refining deletions detected by the popular SV tool delly. In particular, we consider the ability of simultaneously considering sequencing data from a parent and a child using a neural network and gradient boosting as a post-processing step. We compare the performance of each method on simulated and real parent-child data and show that including related individuals in training data greatly improves the ability to detect true SVs.
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