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首页> 外文期刊>Journal of proteome research >CiRCus: A Framework to Enable Classification of Complex High-Throughput Experiments
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CiRCus: A Framework to Enable Classification of Complex High-Throughput Experiments

机译:马戏团:一个框架,以实现复杂的高吞吐量实验的分类

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摘要

Despite the increasing use of high-throughput experiments in molecular biology, methods for evaluating and classifying the acquired results have not kept pace, requiring significant manual efforts to do so. Here, we present CiRCus, a framework to generate custom machine learning models to classify results from high-throughput proteomics binding experiments. We show the experimental procedure that guided us to the layout of this framework as well as the usage of the framework on an example data set consisting of 557 166 protein/drug binding curves achieving an AUC of 0.9987. By applying our classifier to the data, only 6% of the data might require manual investigation. CiRCus bundles two applications, a minimal interface to label a training data set (CindeR) and an interface for the generation of random forest classifiers with optional optimization of pretrained models (CurveClassification). CiRCus is available on https://github.com/kusterlab accompanied by an in-depth user manual and video tutorial.
机译:尽管在分子生物学中越来越多地利用了高通量实验,但评估和分类所获得的结果的方法尚未保持速度,需要进行重大的手动努力。在这里,我们呈现马戏团,一个框架来生成自定义机器学习模型,以分类来自高通量蛋白质组学结合实验的结果。我们展示了指导我们对该框架布局的实验程序以及在由实现AUC的557 166蛋白/药物结合曲线组成的示例数据集上的框架的使用情况。通过将我们的分类器应用于数据,只有6%的数据可能需要手动调查。马戏团捆绑了两个应用程序,是标记训练数据集(CINDED)的最小界面和用于生成随机林分类器的接口,可选择预磨损模型(Curveclassification)。 Circus在HTTPS://github.com/kkusterlab上提供,伴随着深入的用户手册和视频教程。

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