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Profiling of Mass Spectrometry Data for Ovarian Cancer Detection Using Negative Correlation Learning

机译:使用负相关学习对用于卵巢癌检测的质谱数据进行分析

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This paper proposes a novel Mass Spectrometry data profiling method for ovarian cancer detection based on negative correlation learning (NCL). A modified Smoothed Nonlinear Energy Operator (SNEO) and correlation-based peak selection were applied to detected informative peaks for NCL to build a prediction model. In order to evaluate the performance of this novel method without bias, we employed randomization techniques by dividing the data set into testing set and training set to test the whole procedure for many times over. The classification performance of the proposed approach compared favorably with six machine learning algorithms.
机译:本文提出了一种基于负相关学习(NCL)的新型质谱数据分析方法,用于卵巢癌的检测。将改进的平滑非线性能量算子(SNEO)和基于相关性的峰选择应用于检测到的NCL信息峰,以建立预测模型。为了评估这种没有偏见的新方法的性能,我们采用了随机化技术,将数据集分为测试集和训练集,以对整个过程进行多次测试。该方法的分类性能优于六种机器学习算法。

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