首页> 外文会议>International Symposium on Computational Life Sciences(CompLife 2005); 20050925-27; Konstanz(DE) >ProSpect: An R Package for Analyzing SELDI Measurements Identifying Protein Biomarkers
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ProSpect: An R Package for Analyzing SELDI Measurements Identifying Protein Biomarkers

机译:ProSpect:用于分析SELDI测量以鉴定蛋白质生物标志物的R包

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Protein expression profiling is a multidisciplinary research field which promises success for early cancer detection and monitoring of this widespread disease. The surface enhanced laser desorption and ion-ization (SELDI) is a mass spectrometry method and one of two widely used techniques for protein biomarker discovery in cancer research. There are several algorithms for signal detection in mass spectra but they are known to have poor specificity and sensitivity. Scientists have to review the analyzed mass spectra manually which is time consuming and error prone. Therefore, algorithms with improved specificity are urgently needed. We aimed to develop a peak detection method with much better specificity than the standard methods. The proposed peak algorithm is divided into three steps: (1) data import and preparation, (2) signal detection by using an Analysis of Variance (ANOVA) and the required F-statistics, and (3) classification of the computed peak cluster as significant based on the false discovery rate (FDR) specified by the user. The proposed method offers a significantly reduced preprocessing time of SELDI spectra, especially for large studies. The developed algorithms are implemented in R and available as open source packages ProSpect, rsmooth, and ProSpectGUI. The software implementation aims a high error tolerance and an easy handling for user which are unfamiliar with the statistical software R. Furthermore, the modular software design allows the simple extension and adaptation of the available code basis in the further development of the software.
机译:蛋白质表达谱分析是一个多学科的研究领域,有望在早期癌症检测和监测这种广泛疾病中取得成功。表面增强激光解吸和离子化(SELDI)是一种质谱方法,是癌症研究中蛋白质生物标志物发现的两种广泛使用的技术之一。质谱图中有几种用于信号检测的算法,但已知它们的特异性和灵敏度较差。科学家必须手动检查分析的质谱图,这既费时又容易出错。因此,迫切需要具有改进的特异性的算法。我们旨在开发一种具有比标准方法更好的特异性的峰检测方法。提出的峰值算法分为三个步骤:(1)数据导入和准备;(2)使用方差分析(ANOVA)和所需的F统计量进行信号检测;以及(3)将计算出的峰值簇分类为根据用户指定的错误发现率(FDR)确定有效。所提出的方法大大减少了SELDI光谱的预处理时间,特别是对于大型研究而言。所开发的算法在R中实现,可以作为开源软件包ProSpect,rsmooth和ProSpectGUI使用。该软件实现的目标是具有较高的容错能力和易于用户使用的特性,而这是统计软件R所不熟悉的。此外,模块化软件设计允许在软件的进一步开发中简单扩展和适配可用的代码基础。

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