基于多元特征融合可视化的蛋白质组质谱分析

Hui Meng, Wenxue Hong, Jialin Song, Liqiang Wang
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引用次数: 0

摘要

蛋白质质谱(MS)模式识别是近年来出现的一种新的癌症诊断方法。应用蛋白质组质谱结合模式分类技术发现新的生物标志物已成功地用于几种癌症疾病的预测诊断。然而,提取能够代表不同类别身份的良好特征是有效分类的关键因素。此外,另一个主要问题是如何有效地处理大量的特征。本文讨论了MS分类的这两个前沿问题。提出了一种基于图形化多元特征融合的高维数据可视化表示方法。我们提出的图形处理方法依赖于使用多层特征融合结构,该结构产生作为低维表示的输出。采用特征选择和特征提取相结合的方法实现特征融合。使用基于ms的公共癌症数据集对提出的方法进行了测试,结果很有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Proteomic Mass Spectra Based on Multivariate Feature Fusion Visualization
Protein mass spectrometry (MS) pattern recognition has recently emerged as a new method for cancer diagnosis. Application of proteomic mass spectra coupled with pattern classification techniques to discover novel biomarkers has been successfully used for the predictive diagnoses of several cancer diseases. However, the extraction of good features that can represent the identities of different classes plays the frontal critical factor for effective classification. In addition, another major problem is how to effectively handle a large number of features. This paper address these two frontal issues for MS classification. We propose a method based on graphical multivariate feature fusion and use it to offer a visual representation of high dimensional data. The graphical processing method we propose, relies on using a multilayered structure of feature fusion which produces as output of the lower dimensional representation. We implement feature fusion by combining method of feature selection and feature extraction. The proposed methodology was tested using public MS-based cancer datasets and the results are promising.
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