用于分析成像质谱数据的矩阵因式分解技术。

Peter W Siy, Richard A Moffitt, R Mitchell Parry, Yanfeng Chen, Ying Liu, M Cameron Sullards, Alfred H Merrill, May D Wang
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引用次数: 0

摘要

成像质谱法是一种了解二维样品中分子分布的方法。这种方法对多种分子有效,但会产生大量数据。人工很难从这些大数据集中提取重要信息,因此需要自动方法来发现重要的空间和光谱特征。本文解释并探讨了独立成分分析和非负矩阵因式分解,将其作为识别数据中潜在因素的工具。这些技术与更标准的分析工具--原理成分分析进行了比较和对比。结果发现,独立分量分析和非负矩阵因式分解是更有效的分析方法。小鼠小脑数据集用于测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matrix Factorization Techniques for Analysis of Imaging Mass Spectrometry Data.

Imaging mass spectrometry is a method for understanding the molecular distribution in a two-dimensional sample. This method is effective for a wide range of molecules, but generates a large amount of data. It is difficult to extract important information from these large datasets manually and automated methods for discovering important spatial and spectral features are needed. Independent component analysis and non-negative matrix factorization are explained and explored as tools for identifying underlying factors in the data. These techniques are compared and contrasted with principle component analysis, the more standard analysis tool. Independent component analysis and non-negative matrix factorization are found to be more effective analysis methods. A mouse cerebellum dataset is used for testing.

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