蛋白质组学癌症分类与质谱数据。

Jagath C Rajapakse, Kai-Bo Duan, Wee Kiang Yeo
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引用次数: 36

摘要

癌症蛋白质组学的最终目标是使蛋白质组学技术适应临床实验室的常规使用,用于疾病状态的诊断和预后分类,以及评估药物毒性和疗效。对肿瘤特异性蛋白质组谱的分析也可以更好地了解肿瘤的发展和癌症治疗的新靶点的确定。患者样本之间的生物学变异性以及生物标志物浓度的巨大动态范围是目前面临的主要挑战,努力推断出特定疾病状态特有的诊断模式。虽然有几种策略可以解决这个问题,但我们在这里关注的是使用质谱(MS)进行蛋白质组学分析和生物标志物鉴定的癌症分类。质谱技术的最新进展开始使复杂样品的蛋白质含量的高通量分析成为可能。对于癌症分类,通过质谱仪器对来自癌症患者和非癌症患者或不同癌症分期的蛋白质样本进行分析,并利用质谱模式构建诊断分类器。为了说明特征选择在癌症分类中的重要性,我们提出了一种基于支持向量机递归特征消除(SVM-RFE)的方法,并在卵巢癌和肺癌的两个癌症数据集上进行了演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proteomic cancer classification with mass spectrometry data.

The ultimate goal of cancer proteomics is to adapt proteomic technologies for routine use in clinical laboratories for the purpose of diagnostic and prognostic classification of disease states, as well as in evaluating drug toxicity and efficacy. Analysis of tumor-specific proteomic profiles may also allow better understanding of tumor development and the identification of novel targets for cancer therapy. The biological variability among patient samples as well as the huge dynamic range of biomarker concentrations are currently the main challenges facing efforts to deduce diagnostic patterns that are unique to specific disease states. While several strategies exist to address this problem, we focus here on cancer classification using mass spectrometry (MS) for proteomic profiling and biomarker identification. Recent advances in MS technology are starting to enable high-throughput profiling of the protein content of complex samples. For cancer classification, the protein samples from cancer patients and noncancer patients or from different cancer stages are analyzed through MS instruments and the MS patterns are used to build a diagnostic classifier. To illustrate the importance of feature selection in cancer classification, we present a method based on support vector machine-recursive feature elimination (SVM-RFE), demonstrated on two cancer datasets from ovarian and lung cancer.

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