首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.2; Lecture Notes in Computer Science; 4492 >Detecting Biomarkers for Major Adverse Cardiac Events Using SVM with PLS Feature Selection and Extraction
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Detecting Biomarkers for Major Adverse Cardiac Events Using SVM with PLS Feature Selection and Extraction

机译:使用具有PLS特征选择和提取功能的SVM检测主要不良心脏事件的生物标志物

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Detection of biomarkers capable of predicting a patient's risk of major adverse cardiac events (MACE) is of clinical significance. Due to the high dynamic range of the protein concentration in human blood, applying proteomics techniques for protein profiling can generate large arrays of data for development of optimized clinical biomarker panels. The objective of this study is to discover an optimized subset of biomarkers for predicting risk of MACE containing less than ten biomarkers. In this paper, we connect linear SVM with PLS feature selection and extraction. A simplified PLS algorithm selects a subset of biomarkers and extracts latent variables and prediction performance of linear SVM is dramatically improved. The proposed method is compared with a widely used PLS-Logistic Discriminant solution and several other reported methods based on the MACE prediction experiments.
机译:检测能够预测患者发生重大不良心脏事件(MACE)风险的生物标记物具有临床意义。由于人血中蛋白质浓度的高动态范围,因此应用蛋白质组学技术进行蛋白质谱分析可以生成大量数据,用于开发优化的临床生物标记物。这项研究的目的是发现生物标志物的优化子集,以预测包含少于十种生物标志物的MACE风险。在本文中,我们将线性SVM与PLS特征选择和提取连接在一起。简化的PLS算法选择生物标记的子集并提取潜在变量,从而大大提高了线性SVM的预测性能。将该方法与广泛使用的PLS-Logistic判别解和其他基于MACE预测实验的报道方法进行了比较。

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