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Analysis of mass spectral serum profiles for biomarker selection.

机译:用于生物标志物选择的质谱血清谱分析。

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MOTIVATION: Mass spectrometric profiles of peptides and proteins obtained by current technologies are characterized by complex spectra, high dimensionality and substantial noise. These characteristics generate challenges in the discovery of proteins and protein-profiles that distinguish disease states, e.g. cancer patients from healthy individuals. We present low-level methods for the processing of mass spectral data and a machine learning method that combines support vector machines, with particle swarm optimization for biomarker selection. RESULTS: The proposed method identified mass points that achieved high prediction accuracy in distinguishing liver cancer patients from healthy individuals in SELDI-QqTOF profiles of serum. AVAILABILITY: MATLAB scripts to implement the methods described in this paper are available from the HWR's lab website http://lombardi.georgetown.edu/labpage
机译:动机:通过当前技术获得的肽和蛋白质的质谱图具有光谱复杂,维数高和噪音大的特点。这些特征在发现区分疾病状态的蛋白质和蛋白质谱中产生挑战。来自健康个体的癌症患者。我们提出了用于质谱数据处理的低级方法,以及将支持向量机与粒子群优化技术相结合以进行生物标记物选择的机器学习方法。结果:所提出的方法在血清SELDI-QqTOF谱图中鉴定出可将肝癌患者与健康个体区分开的高质量预测点。可用性:可以从HWR的实验室网站http://lombardi.georgetown.edu/labpage获得实现本文所述方法的MATLAB脚本。

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