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Signal enhancement and data mining for chemical and biological samples using mass spectrometry.

机译:使用质谱对化学和生物样品进行信号增强和数据挖掘。

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摘要

Mass spectrometry has been actively involved in the areas of healthcare, pharmaceutics, environmental analysis, food industry and forensics due to its ability to provide molecular information at trace levels. Recently, because of the complexity of chemical and biological samples, computer-assisted mass spectra analysis, including signal enhancement, statistics and machine learning, has been drawn more and more attention especially for researches in biomarker identification, sample classification and omics-related areas where high volume of data is generated.;Typically, mass spectra analysis follows two steps. Firstly, signal enhancement is performed to systematically filter out the background noise and enhance the detected signals. Secondly, data mining is used to extract the meaningful signals in the mass spectra. Depending on the mechanisms of mass spectrometry and nature of samples, different methods in signal enhancement and data mining are developed to address the needs.;Image current measurement followed by Fourier transform is a non-destructive mass analysis method and has been widely used for Fourier transform ion cyclotron resonance, Orbitrap mass spectrometers and recently quadrupole ion traps. The phase between the ion excitation and the image current measurement typically needs to be well controlled for obtaining high quality spectra. In this thesis, a data processing method based on self-correlation (SC) function has been explored for signal enhancement with image current data recorded at random phases. The simple algorithm of the SC method was introduced and a series of data used for demonstrations was simulated based on a previous study on non-destructive mass analysis using an ion trap. A significant improvement has been achieved in the signal-to-noise ratio (SNR) as well as in the accuracy of the peak ratio. The efficiency of using a mask data set for selected ion monitoring has also been demonstrated.;In recent researches in chemical and biological studies, biomarker profiling using mass spectrometry plays an essential role in biological studies and is high dependent on the data analysis for sample classification. In this thesis, power normalization of the mass spectra has been proposed as a method of altering the weights of peaks at different intensity levels. In combination of the supporting vector machine method, its impact on the sample classification has been characterized using the data in four studies previously reported for distinguishing anomeric configurations of sugars, types of bacteria, stages of melanoma and types of breast cancer. Comprehensive analysis of the data with normalization at different power normalization index (PNI) was developed with analysis tools, including error-PNI plots, reference profiles and error source profiles, to assess the analytical method as well as to find the proper approach to classify the samples involved in the study.
机译:由于质谱仪能够提供痕量水平的分子信息,因此它一直积极参与医疗保健,制药,环境分析,食品工业和法医学领域。近年来,由于化学和生物样品的复杂性,包括信号增强,统计和机器学习在内的计算机辅助质谱分析已引起越来越多的关注,尤其是在生物标志物识别,样品分类和与组学相关的领域中,生成大量数据。通常,质谱分析遵循两个步骤。首先,进行信号增强以系统地滤除背景噪声并增强检测到的信号。其次,使用数据挖掘来提取质谱图中有意义的信号。根据质谱分析的机理和样品的性质,开发了不同的信号增强和数据挖掘方法来满足需求。图像电流测量和傅立叶变换是一种无损质量分析方法,已被广泛用于傅立叶分析。变换离子回旋共振,Orbitrap质谱仪和最近的四极离子阱。通常需要很好地控制离子激发和图像电流测量之间的相位以获得高质量的光谱。本文研究了一种基于自相关(SC)函数的数据处理方法,以随机相位记录的图像当前数据进行信号增强。介绍了SC方法的简单算法,并基于先前对使用离子阱进行无损质量分析的研究,对用于演示的一系列数据进行了仿真。信噪比(SNR)以及峰值比的准确性已获得显着改善。还证明了使用掩膜数据集进行选定离子监测的效率。;在化学和生物学研究的最新研究中,使用质谱进行生物标志物分析在生物学研究中起着至关重要的作用,并且高度依赖于用于样品分类的数据分析。本文提出了一种将质谱的功率归一化作为改变不同强度水平的峰权重的方法。结合支持向量机方法,使用先前报道的四项研究中的数据来表征其对样品分类的影响,这些研究用于区分糖的异头构型,细菌类型,黑素瘤分期和乳腺癌类型。使用包括误差PNI图,参考曲线和误差源曲线在内的分析工具开发了在不同功率归一化指数(PNI)下具有归一化的数据的综合分析,以评估分析方法以及找到合适的方法来对功率进行归类研究中涉及的样本。

著录项

  • 作者

    Du, Yuezhi.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Biomedical engineering.;Computer science.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 107 p.
  • 总页数 107
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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