Metabolomic biomarkers in cervicovaginal fluid for detecting endometrial cancer through nuclear magnetic resonance spectroscopy.

Shih-Chun Cheng, Kueian Chen, Chih-Yung Chiu, Kuan-Ying Lu, Hsin-Ying Lu, Meng-Han Chiang, Cheng-Kun Tsai, Chi-Jen Lo, Mei-Ling Cheng, Ting-Chang Chang, Gigin Lin
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引用次数: 24

Abstract

Introduction: Endometrial cancer (EC) is one of the most common gynecologic neoplasms in developed countries but lacks screening biomarkers.

Objectives: We aim to identify and validate metabolomic biomarkers in cervicovaginal fluid (CVF) for detecting EC through nuclear magnetic resonance (NMR) spectroscopy.

Methods: We screened 100 women with suspicion of EC and benign gynecological conditions, and randomized them into the training and independent testing datasets using a 5:1 study design. CVF samples were analyzed using a 600-MHz NMR spectrometer equipped with a cryoprobe. Four machine learning algorithms-support vector machine (SVM), partial least squares discriminant analysis (PLS-DA), random forest (RF), and logistic regression (LR), were applied to develop the model for identifying metabolomic biomarkers in cervicovaginal fluid for EC detection.

Results: A total of 54 women were eligible for the final analysis, with 21 EC and 33 non-EC. From 29 identified metabolites in cervicovaginal fluid samples, the top-ranking metabolites chosen through SVM, RF and PLS-DA which existed in independent metabolic pathways, i.e. phosphocholine, malate, and asparagine, were selected to build the prediction model. The SVM, PLS-DA, RF, and LR methods all yielded area under the curve values between 0.88 and 0.92 in the training dataset. In the testing dataset, the SVM and RF methods yielded the highest accuracy of 0.78 and the specificity of 0.75 and 0.80, respectively.

Conclusion: Phosphocholine, asparagine, and malate from cervicovaginal fluid, which were identified and independently validated through models built using machine learning algorithms, are promising metabolomic biomarkers for the detection of EC using NMR spectroscopy.

通过核磁共振波谱检测子宫内膜癌的宫颈阴道液代谢组学生物标志物。
子宫内膜癌(EC)是发达国家最常见的妇科肿瘤之一,但缺乏筛查性生物标志物。目的:我们旨在通过核磁共振(NMR)波谱鉴定和验证宫颈阴道液(CVF)中用于检测EC的代谢组学生物标志物。方法:我们筛选了100名怀疑EC和良性妇科疾病的女性,采用5:1的研究设计将其随机分为训练和独立测试数据集。CVF样品使用配备冷冻探针的600 mhz核磁共振光谱仪进行分析。采用四种机器学习算法——支持向量机(SVM)、偏最小二乘判别分析(PLS-DA)、随机森林(RF)和逻辑回归(LR),建立了识别宫颈阴道液中代谢组学生物标志物的模型,用于EC检测。结果:共有54名妇女符合最终分析的条件,其中21例为EC, 33例为非EC。从宫颈阴道液样本中鉴定的29种代谢物中,通过SVM、RF和PLS-DA选择存在于独立代谢途径中排名靠前的代谢物,即磷酸胆碱、苹果酸盐和天冬酰胺,构建预测模型。SVM、PLS-DA、RF和LR方法在训练数据集中的曲线下面积均在0.88 ~ 0.92之间。在测试数据集中,SVM和RF方法的准确率最高,分别为0.78,特异性为0.75和0.80。结论:通过机器学习算法建立的模型鉴定并独立验证了来自宫颈阴道液的磷胆碱、天冬酰胺和苹果酸盐,它们是利用核磁共振光谱检测EC的有前途的代谢组学生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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