首页> 外文期刊>Spectrochimica Acta, Part B. Atomic Spectroscopy >Trace metal biomarker based Cancer diagnostics in body tissue by energy dispersive X-ray fluorescence and scattering spectrometry
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Trace metal biomarker based Cancer diagnostics in body tissue by energy dispersive X-ray fluorescence and scattering spectrometry

机译:通过能量分散X射线荧光和散射光谱法基于金属生物标志物的癌症诊断

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Direct diagnosis and characterization of cancer in tissue via trace biometals analyzed by energy dispersive X-ray fluorescence (EDXRF) spectrometry is challenging, as it requires sensitive detection and accurate quantitative analysis of the appropriate cancer biomarkers. The EDXRF spectrometry technique is not directly applicable due to the complexity of the tissue biopsy samples that are of limited size and irregular geometry, enhanced scatter from the sample dark matrix and extreme matrix effects as well as spectral overlaps and prominent Bremsstrahlung that masks the subtle biomarker analyte peaks. We report on the direct determination of biometals namely Cu, Mn, Fe, Zn; Mg, Co and Na and associated speciation (for Cu, Mn, Fe) in soft body tissue in the context of disease diagnostics utilizing a robust chemometrics enabled energy dispersive X-ray fluorescence and scattering (EDXRFS) spectrometric method. The EDXRFS method exploits, in addition to multiple fluorescence spectral signatures, scatter profiles associated with the trace metals and dark matrix to determine through hybridized multivariate chemometrics calibration models, the biometals in thin (10 pm) tissue sections. Wavelet transform (WT), principal component analysis (PCA) and independent component analysis (ICA) were used for spectral preprocessing towards model optimization using con-jointly artificial neural network (ANN) and partial least squares (PLS) based on paraffin wax 'standards' spiked with the cancer biomarker trace metals. Results obtained from applying oyster tissue standard validated models (to <= 6% accuracy) to dog tissues (used here as human body tissue analogues) show that both prostate and mammary malignant tissues have significantly high concentration of Zn i.e. 301 +/- 4 mu g/g and 301 +/- 4 mu g/g respectively when compared to benign tissues i.e. 160 +/- 3 mu g/g and 171 +/- 10 mu g/g. The same is the case for Fe and Cu. The concentrations of Fe, Zn, Cu and Mg in malignant (mammary) as compared to benign tissues occur in the ratios 3:1, 2:1, 3:1 and 2:1. On the other hand, for prostate malignant compared to benign tumor the corresponding ratios are 5:2, 2:1, 2:1 and 2:1 respectively. Prostate cancer was found to be characterized by strong positive correlation between Cu and Mg (0.999) and Mn and Fe (0.999) while mammary cancer is characterized by strong negative correlations between Cu and Mg ( - 0.994), Mn and Fe ( - 0.974). ICA and PCA were further used to successfully discriminate the dog tissue to 97% accuracy as either cancerous or non-cancerous based on validated pattern recognition PCA-ICA models for the determination of speciation of Cu, Fe and Mn in soft body tissue. For both mammary and prostate cancer malignancy was characterized by higher speciation of Cu, Fe and Mn (i.e. Cu2+, Fe3+, and Mn7+) compared to the benign. The results of this study demonstrate that robust chemometrics enabled EDXRFS spectrometry not only determine directly and rapidly but also accurately in a diagnostics manner cancer biomarker trace metals in soft body tissue. The technique has an additional advantage in that it has inbuilt multivariate capability to model the determined levels, their ratios and correlations as well as alterations in the speciation of the biometals to detect and characterize cancer (according to severity) as well discriminate among different types of cancer in the same tissue in a simple methodology that has potential for clinical applications.
机译:通过能量分散X射线荧光(EDXRF)光谱法分析的痕量生物谱的直接诊断和表征组织中的癌症是具有挑战性的,因为它需要对适当的癌症生物标志物的敏感性检测和准确定量分析。由于具有有限的尺寸和不规则几何形状的组织活检样品的复杂性,EDXRF光谱法不能直接适用于几何形状,从样本暗矩阵和极端矩阵效应的散射以及散射重叠和突出的Bremsstrahlung,掩盖了微妙的生物标志物分析物峰。我们报告了生物素线的直接测定,即Cu,Mn,Fe,Zn;在疾病诊断的背景下使用稳健的化学测定学能能量分散X射线荧光和散射(EDXRF)光谱法,Mg,Co和Na和相关的物种(用于Cu,Mn,Fe)在软体组织中的软体组织中的软体组织中的情况下。除了多种荧光光谱签名之外,EDXRFS方法还利用与迹线金属和暗矩阵相关的散射轮廓,以通过杂交的多变量化学计量测量校准模型来确定薄(10μm)组织部分的生物座。小波变换(WT),主成分分析(PCA)和独立分量分析(ICA)用于使用基于石蜡蜡的标准的Con-Connection人工神经网络(ANN)和局部最小二乘(PLS)进行模型优化的光谱预处理'尖刺癌症生物标记物痕量金属。从施用牡蛎组织标准验证模型(以<= 6%)到狗组织(以下用于人体组织类似物)的结果表明,前列腺和乳腺恶性组织均具有明显高浓度的Zn,即301 +/- 4亩与良性组织相比,G / g和301 +/-4μg/ g分别与良性组织,即160 +/-3μg/ g和171 +/-10μg/ g。 Fe和Cu也是如此。与良性组织相比,恶性组织(乳腺)中Fe,Zn,Cu和Mg的浓度发生在比例3:1,2:1,3:1和2:1中。另一方面,对于与良性肿瘤相比前列腺恶性相应的比率分别为5:2,2:1,2:1和2:1。发现前列腺癌的特征在于Cu和Mg(0.999)和Mn和Fe(0.999)之间的强阳性相关性,而乳腺癌的特征在于Cu和Mg( - 0.994),Mn和Fe之间的强负相关性( - 0.974) 。基于验证的模式识别PCA-ICA模型,ICA和PCA还用于成功地区分狗组织至97%的精度,以确定用于测定软体组织中Cu,Fe和Mn的形态的癌症。对于乳腺癌的乳腺癌和前列腺癌的表征,其特征在于与良性相比的Cu,Fe和Mn(即Cu2 +,Fe3 +和Mn7 +)的较高。本研究的结果表明,稳健的化学测定学使EDXRFS光谱法不仅直接且快速地确定,而且在诊断方式中以诊断方式准确地确定软体组织中的癌症生物标志物痕量金属。该技术具有额外的优点,因为它具有内置多变量能力来模拟确定的水平,其比率和相关性以及生物簇的形态的改变,以检测和表征癌症(根据严重程度),同样区分不同类型的歧视癌症在同一组织中,以简单的方法具有临床应用的潜力。

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