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Proteomic mass spectra classification using decision tree based ensemble methods

机译:基于决策树集成方法的蛋白质组质谱分类

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Motivation: Modern mass spectrometry allows the determination of proteomic fingerprints of body fluids like serum, saliva or urine. These measurements can be used in many medical applications in order to diagnose the current state or predict the evolution of a disease. Recent developments in machine learning allow one to exploit such datasets, characterized by small numbers of very high-dimensional samples.Results: We propose a systematic approach based on decision tree ensemble methods, which is used to automatically determine proteomic biomarkers and predictive models. The approach is validated on two datasets of surface-enhanced laser desorption/ionization time of flight measurements, for the diagnosis of rheumatoid arthritis and inflammatory bowel diseases. The results suggest that the methodology can handle a broad class of similar problems.
机译:动机:现代质谱技术可以确定体液(如血清,唾液或尿液)的蛋白质组指纹图谱。这些测量结果可用于许多医疗应用中,以诊断当前状态或预测疾病的发展。机器学习的最新发展使人们可以利用以少量极高维样本为特征的此类数据集。结果:我们提出了一种基于决策树集成方法的系统方法,该方法可用于自动确定蛋白质组学生物标记和预测模型。该方法在两个表面增强的激光解吸/电离飞行时间测量数据集上得到验证,用于诊断类风湿性关节炎和炎症性肠病。结果表明该方法可以处理各种各样的类似问题。

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