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FTIR-based spectroscopic analysis in the identification of clinically aggressive prostate cancer

机译:基于FTIR的光谱分析在临床侵袭性前列腺癌的鉴定中

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摘要

Fourier transform infrared (FTIR) spectroscopy is a vibrational spectroscopic technique that uses infrared radiation to vibrate molecular bonds within the sample that absorbs it. As different samples contain different molecular bonds or different configurations of molecular bonds, FTIR allows us to obtain chemical information on molecules within the sample. Fourier transform infrared microspectroscopy in conjunction with a principal component-discriminant function analysis (PC-DFA) algorithm was applied to the grading of prostate cancer (CaP) tissue specimens. The PC-DFA algorithm is used alongside the established diagnostic measures of Gleason grading and the tumourode/metastasis system. Principal component-discriminant function analysis improved the sensitivity and specificity of a three-band Gleason score criterion diagnosis previously reported by attaining an overall sensitivity of 92.3% and specificity of 99.4%. For the first time, we present the use of a two-band criterion showing an association of FTIR-based spectral characteristics with clinically aggressive behaviour in CaP manifest as local and/or distal spread. This paper shows the potential for the use of spectroscopic analysis for the evaluation of the biopotential of CaP in an accurate and reproducible manner.
机译:傅里叶变换红外(FTIR)光谱技术是一种振动光谱技术,它使用红外辐射来振动吸收它的样品中的分子键。由于不同的样品包含不同的分子键或分子键的不同构型,因此FTIR可使我们获得样品中分子的化学信息。傅里叶变换红外光谱结合主成分判别函数分析(PC-DFA)算法应用于前列腺癌(CaP)组织标本的分级。 PC-DFA算法与格里森分级和肿瘤/淋巴结/转移系统的既定诊断措施一起使用。主成分判别函数分析通过达到92.3%的整体灵敏度和99.4%的特异性,提高了先前报道的三波段格里森评分标准诊断的灵敏度和特异性。首次,我们提出了使用两个频段的标准,以显示基于FTIR的光谱特征与CaP表现为局部和/或远端扩散的临床侵袭行为之间的关联。本文显示了使用光谱分析技术以准确且可重复的方式评估CaP生物电势的潜力。

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