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The complexities involved in the analysis of Fourier Transform Infrared Spectroscopy of breast cancer data with clustering algorithms

机译:聚类算法对乳腺癌数据进行傅里叶变换红外光谱分析的复杂性

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Fourier Transform Infrared Spectroscopy (FTIR) is a relatively new technique that has been frequently applied now a days in cancer pathology including breast cancer. The long term aim of this work is to develop novel techniques using machine learning methods for the analysis of FTIR data sets. This paper presents the preliminary work with a case study of a FTIR data set of breast cancer with two commonly used clustering algorithms of fuzzy c-means and k-means to differentiate between different cancer grades. We also discuss the complexities involved in the analysis of spectral data sets and need to find new methods. Future work will involve efforts towards development of a novel frame work with advanced machine learning methods to extract valuable information from complex spectral data sets
机译:傅里叶变换红外光谱(FTIR)是一种相对较新的技术,如今在包括乳腺癌在内的癌症病理学中已被广泛应用。这项工作的长期目标是开发使用机器学习方法分析FTIR数据集的新技术。本文以乳腺癌的FTIR数据集为例,以模糊c均值和k均值的两种常用聚类算法来区分不同癌症级别,从而为乳腺癌的FTIR数据集提供了案例研究。我们还将讨论光谱数据集分析中涉及的复杂性,并需要寻找新的方法。未来的工作将涉及通过先进的机器学习方法来开发新颖的框架,以从复杂的光谱数据集中提取有价值的信息。

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