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PeptideMind — Applying machine learning algorithms to assess replicate quality in shotgun proteomic data

机译:Peptidemind - 应用机器学习算法评估霰弹枪蛋白质组数据的复制质量

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Assessment of replicate quality is an important process for any shotgun proteomics experiment. One fundamental question in proteomics data analysis is whether any specific replicates in a set of analyses are biasing the downstream comparative quantitation. In this paper, we present an experimental method to address such a concern. PeptideMind uses a series of clustering Machine Learning algorithms to assess outliers when comparing proteomics data from two states with six replicates each. The program is a JVM native application written in the Kotlin language with Python sub-process calls to scikit-learn. By permuting the six data replicates provided into four hundred triplet non redundant pairwise comparisons, PeptideMind determines if any one replicate is biasing the downstream quantitation of the states. In addition, PeptideMind generates useful visual representations of the spread of the significance measures, allowing researchers a rapid, effective way to monitor the quality of those identified proteins found to be differentially expressed between sample states.
机译:复制质量评估是任何霰弹枪蛋白质组学实验的重要过程。蛋白质组学数据分析中的一个基本问题是在一组分析中是否有任何特定的复制是偏置下游比较定量。在本文中,我们提出了一种解决此类问题的实验方法。 PeptiDemind使用一系列聚类机器学习算法来评估异常值,在将六个州与六个复制的两个状态进行比较时,评估异常值。该程序是用Python子进程调用kotlin语言编写的JVM本机应用程序,对Scikit-Learn。通过置换提供给四百个三联非冗余成对比较的六个数据复制,PeptiDemind确定了任何一个复制是否偏置了状态的下游定量。此外,PeptiDemind还产生了有用的显着视觉表示的意义措施,允许研究人员一种快速,有效的方法来监测发现在样本状态之间差异表达的那些蛋白质的质量。

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