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Biomarker selection and sample prediction for multi-category disease on MALDI-TOF data

机译:基于MALDI-TOF数据的多类别疾病的生物标志物选择和样本预测

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Motivation: Diseases normally progress through several stages. Therefore, biomarkers corresponding to each stage may exist. To deal with such a multi-category problem, including sample stage prediction and biomarker selection, we propose methods for classification and feature selection. The proposed classification method is based on two schemes: error-correcting output coding (ECOC) and pairwise coupling (PWC). The final decision for a test sample prediction is an integration of these two schemes. The biomarker pattern for distinguishing each disease category from another one is achieved by the development of an extended Markov blanket (EMB) feature selection method.Results: In this study, a liver cancer matrix-assisted laser desorption/ionization time-of-flight (MALDI-TOF) mass spectrometry (MS) dataset was used, which comprises hepatocellular carcinoma (HCC), cirrhosis, and healthy spectra. Peak patterns were discovered for distinguishing pairwise categories among the three classes. Importance and reliability of individual peaks were presented by the measurements of certain weight values and frequencies. The classification capability of the proposed approach was compared with classical ECOC, random forest, Naive Bayes, and J48 methods.
机译:动机:疾病通常会经历几个阶段。因此,可能存在与每个阶段相对应的生物标记。为了解决这样的多类别问题,包括样本阶段预测和生物标志物选择,我们提出了分类和特征选择的方法。所提出的分类方法基于两种方案:纠错输出编码(ECOC)和成对耦合(PWC)。测试样本预测的最终决定是这两种方案的整合。通过开发扩展的马尔可夫毯(EMB)特征选择方法,可以实现区分每种疾病类别的生物标志物模式。结果:在这项研究中,肝癌基质辅助激光解吸/电离飞行时间(使用MALDI-TOF)质谱(MS)数据集,其中包括肝细胞癌(HCC),肝硬化和健康光谱。发现了峰型以区分三个类别中的成对类别。通过测量某些权重值和频率来显示各个峰的重要性和可靠性。将该方法的分类能力与经典ECOC,随机森林,朴素贝叶斯和J48方法进行了比较。

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