外展DNA测序的机器学习回归

D. Thornley, Maxim Zverev, Stavros Petridis
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引用次数: 3

摘要

我们构建了机器学习回归器来预测荧光标记桑格法DNA测序数据的行为。这些预测用于评估序列组成的假设,通过计算假设序列与目标轨迹数据预测的可能性或偏差证据。我们机器学习一种方法来比较从序列的竞争假设中采取的措施。这是一个机器学习的实现,我们的提议,溯因性DNA碱基调用。目前的实验结果表明,神经网络在预测峰值大小方面比决策树回归器更有效,并且在此背景下为相互竞争的假设收集证据。尽管在我们的决策树回归器中有方差估计的可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learned regression for abductive DNA sequencing
We construct machine learned regressors to predict the behaviour of DNA sequencing data from the fluorescent labelled Sanger method. These predictions are used to assess hypotheses for sequence composition through calculation of likelihood or deviation evidence from the comparison of predictions from the hypothesized sequence with target trace data. We machine learn a means for comparing the measures taken from competing hypotheses for the sequence. This is a machine learned implementation of our proposal for abductive DNA basecalling. The results of the present experiments suggest that neural nets are a more effective means for predicting peak sizes than decision tree regressors, and for assembling evidence for competing hypotheses in this context. This is despite the availability of variance estimates in our decision tree regressors.
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