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DATA MINING AND OPTIMIZATION APPLIED TO RAMAN SPECTROSCOPY FOR ONCOLOGY APPLICATIONS

机译:数据挖掘和优化应用于肿瘤型应用的拉曼光谱

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Recent advances in Raman spectroscopy have generated a surge of interest in biomedical applications particularly in the field of oncology. As cancer is predicted to become the number one cause of death by the end of the decade, Raman spectroscopy has the potential to significantly aid in the research, diagnosis and treatment of cancer. Biomedical applications of Raman spectroscopy currently under investigation range from the research laboratory bench-top to the clinical setting at the patients bedside. Raman spectroscopic analysis of biological specimens is advantageous as it provides a spectral fingerprint, rich in molecular compositional information without disrupting the biological environment allowing in-situ biochemical observations to be made. The information dense spectra generate vast sets of complex data in which subtle variations may provide critical clues in data interpretation. Thus the investigation and implementation of advanced data mining and optimization techniques is imperative for complete, rapid and accurate data extraction. Clinical applications of Raman spectroscopy are on the horizon as optical technology progresses, but to fulfill this realization of a new class of biomedical instrumentation, the development of an optimized, fully integrated data processing methodology will be required. In this paper, we describe several methods for pre-processing raw Raman Spectra, followed by data mining techniques used for classifying spectra of cancerous cells based on cell type, environments and mechanisms of cell death.
机译:拉曼光谱的最新进展在肿瘤学领域中产生了对生物医学应用的兴趣激增。由于癌症预计到十年末成为死亡的第一原因,拉曼光谱有可能显着帮助癌症的研究,诊断和治疗。 RAMAN光谱对目前研究的生物医学应用范围从研究实验室台面到患者床边的临床环境。生物标本的拉曼光谱分析有利的是,它提供了富含分子组成信息的光谱指纹,而不会破坏允许原位生化观察的生物环境。信息密集光谱产生大集的复杂数据,其中微妙的变化可以提供数据解释中的临界线索。因此,先进的数据挖掘和优化技术的调查和实施是完全,快速和准确的数据提取的必要条件。随着光学技术的进展,拉曼光谱的临床应用是在地平线上进行的,但为了满足这一新的生物医学仪器的实现,将需要开发优化的完全集成的数据处理方法。在本文中,我们描述了用于预处理原始拉曼光谱的几种方法,其次是基于细胞类型,细胞死亡的环境和机制来分类癌细胞光谱的数据挖掘技术。

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