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Application of multivariate data-analysis techniques to biomedical diagnostics based on mid-infrared spectroscopy

机译:多元数据分析技术在基于中红外光谱的生物医学诊断中的应用

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The objective of this contribution is to review the application of advanced multivariate data-analysis techniques in the field of mid-infrared (MIR) spectroscopic biomedical diagnosis. MIR spectroscopy is a powerful chemical analysis tool for detecting biomedically relevant constituents such as DNA/RNA, proteins, carbohydrates, lipids, etc., and even diseases or disease progression that may induce changes in the chemical composition or structure of biological systems including cells, tissues, and bio-fluids. However, MIR spectra of multiple constituents are usually characterized by strongly overlapping spectral features reflecting the complexity of biological samples. Consequently, MIR spectra of biological samples are frequently difficult to interpret by simple data-analysis techniques. Hence, with increasing complexity of the sample matrix more sophisticated mathematical and statistical data analysis routines are required for deconvoluting spectroscopic data and for providing useful results from information-rich spectroscopic signals. A large body of work relates to the combination of multivariate data-analysis techniques with MIR spectroscopy, and has been applied by a variety of research groups to biomedically relevant areas such as cancer detection and analysis, artery diseases, biomarkers, and other pathologies. The reported results indeed reveal a promising perspective for more widespread application of multivariate data analysis in assisting MIR spectroscopy as a screening or diagnostic tool in biomedical research and clinical studies. While the authors do not mean to ignore any relevant contributions to biomedical analysis across the entire electromagnetic spectrum, they confine the discussion in this contribution to the mid-infrared spectral range as a potentially very useful, yet underutilized frequency region. Selected representative examples without claiming completeness will demonstrate a range of biomedical diagnostic applications with particular emphasis on the advantageous interaction between multivariate data analysis and MIR spectroscopy.
机译:这项贡献的目的是回顾高级多元数据分析技术在中红外(MIR)光谱生物医学诊断领域的应用。 MIR光谱学是一种功能强大的化学分析工具,可检测与生物医学相关的成分,例如DNA / RNA,蛋白质,碳水化合物,脂质等,甚至检测可能诱发生物系统(包括细胞)化学成分或结构变化的疾病或疾病进展,组织和生物流体。但是,多种成分的MIR光谱通常以强烈重叠的光谱特征为特征,反映了生物样品的复杂性。因此,生物样品的MIR光谱通常很难通过简单的数据分析技术来解释。因此,随着样品矩阵的复杂性增加,需要更复杂的数学和统计数据分析例程来对卷积数据进行反卷积并从信息丰富的光谱信号中提供有用的结果。大量工作涉及将多元数据分析技术与MIR光谱学相结合,并且已被各种研究小组应用于生物医学相关领域,例如癌症检测和分析,动脉疾病,生物标志物和其他病理学。报道的结果确实揭示了将多元数据分析更广泛地应用于MIR光谱分析作为生物医学研究和临床研究中的筛选或诊断工具的广阔前景。尽管作者并不想忽略整个电磁频谱上对生物医学分析的任何相关贡献,但他们将讨论限制在对中红外频谱范围的讨论中,认为这是一个潜在的非常有用但未被充分利用的频率区域。在不要求完整性的情况下选择的代表性实例将证明一系列生物医学诊断应用,其中特别强调多元数据分析和MIR光谱学之间的有利相互作用。

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