首页> 外文期刊>The Analyst: The Analytical Journal of the Royal Society of Chemistry: A Monthly International Publication Dealing with All Branches of Analytical Chemistry >Fourier-transform infrared spectroscopy coupled with a classification machine for the analysis of blood plasma or serum: a novel diagnostic approach for ovarian cancer?
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Fourier-transform infrared spectroscopy coupled with a classification machine for the analysis of blood plasma or serum: a novel diagnostic approach for ovarian cancer?

机译:傅里叶变换红外光谱结合分类机来分析血浆或血清:卵巢癌的新诊断方法?

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摘要

Currently available screening tests do not deliver the required sensitivity and specificity for accurate diagnosis of ovarian or endometrial cancer. Infrared (IR) spectroscopy of blood plasma or serum is a rapid, versatile, and relatively non-invasive approach which could characterize biomolecular alterations due to cancer and has potential to be utilized as a screening or diagnostic tool. In the past, no such approach has been investigated for its applicability in screening and/or diagnosis of gynaecological cancers. We set out to determine whether attenuated total reflection Fourier-transform IR (ATR-FTIR) spectroscopy coupled with a proposed classification machine could be applied to IR spectra obtained from plasma and serum for accurate class prediction (cancer vs. normal). Plasma and serum samples were obtained from ovarian cancer cases (n = 30), endometrial cancer cases (n = 30) and non-cancer controls (n = 30), and subjected to ATR-FTIR spectroscopy. Four derived datasets were processed to estimate the real-world diagnosis of ovarian and endometrial cancer. Classification results for ovarian cancer were remarkable (up to 96.7%), whereas endometrial cancer was classified with a relatively high accuracy (up to 81.7%). The results from different combinations of feature extraction and classification methods, and also classifier ensembles, were compared. No single classification system performed best for all different datasets. This demonstrates the need for a framework that can accommodate a diverse set of analytical methods in order to be adaptable to different datasets. This pilot study suggests that ATR-FTIR spectroscopy of blood is a robust tool for accurate diagnosis, and carries the potential to be utilized as a screening test for ovarian cancer in primary care settings. The proposed classification machine is a powerful tool which could be applied to classify the vibrational spectroscopy data of different biological systems (e.g., tissue, urine, saliva), with their potential application in clinical practice.
机译:当前可用的筛查测试不能提供准确诊断卵巢癌或子宫内膜癌所需的敏感性和特异性。血浆或血清的红外(IR)光谱分析是一种快速,通用且相对无创的方法,可以表征由于癌症引起的生物分子改变,并有可能被用作筛查或诊断工具。过去,尚未研究这种方法在妇科癌症的筛查和/或诊断中的适用性。我们着手确定是否可以将衰减的全反射傅里叶变换红外光谱(ATR-FTIR)光谱技术与拟议的分类机结合使用,以应用于从血浆和血清获得的红外光谱以进行准确的类别预测(癌症与正常)。从卵巢癌病例(n = 30),子宫内膜癌病例(n = 30)和非癌对照(n = 30)获得血浆和血清样品,并进行ATR-FTIR光谱分析。处理了四个导出的数据集,以评估卵巢癌和子宫内膜癌的真实诊断。卵巢癌的分类结果显着(高达96.7%),而子宫内膜癌的分类准确性较高(高达81.7%)。比较了特征提取和分类方法以及分类器集合的不同组合的结果。没有一个分类系统对所有不同的数据集都表现最佳。这表明需要一个可以容纳多种分析方法的框架,以便适应不同的数据集。这项初步研究表明,血液的ATR-FTIR光谱学是准确诊断的强大工具,具有在初级保健机构中用作卵巢癌筛查测试的潜力。所提出的分类机是功能强大的工具,可用于对不同生物系统(例如组织,尿液,唾液)的振动光谱数据进行分类,并将其潜在地应用于临床。

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