通过效应大小分析血清中代谢结直肠癌生物标志物的特异性。

Nicolas Di Giovanni, Marie-Alice Meuwis, Edouard Louis, Jean-François Focant
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引用次数: 6

摘要

导读:结直肠癌是诊断最多的癌症之一,导致大量死亡。除了现有的筛选方法,代谢谱分析可以帮助诊断和了解疾病的各种状态。目的:寻找结直肠癌(CRC)患者血清中特异性候选生物标志物(CB),并与缓解后的情况(R-CRC)进行比较,对不同患者进行评估。方法:采用综合二维气相色谱法(GC × GC)结合高分辨率飞行时间质谱法(TOF-MS)对所有血清样品进行分析,采用经优化和验证的质量控制(QC)系统调节的非靶向分析方法。首先,我们使用特定的多方法数据(预处理)处理工作流来突出、注释和评估CRC患者(n = 18)和健康对照样本(HC, n = 19)之间最改变的代谢物的性能,这些代谢物特别匹配年龄和性别,这两个最具影响力的混淆因素。相反,由于在抽样时难以控制所有临床和人口学特征,因此来自缓解期患者(n = 17)的样本不匹配。由于随之而来的偏倚风险,通常的零假设显著性检验(NHST)不能可靠地应用。因此,我们将R-CRC样本与另一组特定匹配的健康对照(R-HC, n = 17)进行比较,并通过一种称为效应大小(ES)的测量方法间接解决结直肠癌患者和缓解患者之间的差异,该方法研究了方法方面。结果:24个候选生物标志物显著改变,能够有效区分CRC和HC样本(受试者工作特征(ROC)曲线下面积(AUC)为0.86,敏感性和特异性分别为0.72和0.78)。其中10个在R-CRC样本中具有接近健康水平的信号,因此对结直肠癌具有特异性。在本研究的点双序列病例中,r-like(关联强度)和d-like(标准化平均差)ES是直接可转换的,只有线性和基于秩的ES是不同的。因此,我们使用并推荐了Hedges的g、Spearman的rho和Kendall的tau,以及一个非标准化的ES。通过散点图和分布曲线很好地表示了量化测量不确定性的置信区间。结论:发现的候选生物标志物及其特异性可以帮助发现结直肠癌,诊断缓解,并了解其病理生理,经过独立队列的适当验证。效应大小,这里应用于MS全球分析数据集,是对NHST的理想补充,也是比较和组合不同队列的有用工具,在一项研究内以及研究之间(荟萃分析)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Specificity of metabolic colorectal cancer biomarkers in serum through effect size.

Introduction: Colorectal cancer is one of the most diagnosed cancers, leading to numerous deaths. In addition to existing screening methods, metabolic profiling could help both to diagnose and to understand the various states of the disease.

Objectives: Find specific candidate biomarkers (CB) in serum of patients with colorectal cancer (CRC), in comparison to the situation after remission (R-CRC), evaluated on distinct patients.

Methods: All serum samples were analyzed using comprehensive two-dimensional gas chromatography (GC × GC) coupled to high resolution time of flight mass spectrometry (TOF-MS) through an optimized and validated untargeted analytical method regulated by a quality control (QC) system. First, we used a specific multi-approaches data (pre)processing workflow to highlight, annotate and assess the performances of the most altered metabolites between CRC patients (n = 18) and healthy control samples (HC, n = 19) specifically matched for age and gender, two of the most influential confounding factors. On the contrary, due to the difficulty to control for all clinical and demographic traits when sampling small cohorts, the samples from patients in remission (n = 17) were not matched. Because of the consequent risk of bias, the usual null hypothesis significance tests (NHST) could not be applied reliably. Therefore, we compared the R-CRC samples to another specifically matched group of healthy controls (R-HC, n = 17), and used this comparison to indirectly address the difference between patients with colorectal cancer and patients in remission through a measure called effect size (ES) whose methodological aspects were investigated.

Results: 24 candidate biomarkers were found significantly altered and able to discriminate the CRC and HC samples efficiently (Receiver Operating Characteristic (ROC) area under the curve (AUC) of 0.86, sensitivity and specificity of 0.72 and 0.78). 10 of those were found to have signals close to healthy levels in the R-CRC samples and were therefore specific to colorectal cancer. In the point-biserial case studied here, r-like (strength of association) and d-like (standardized mean difference) ES were directly convertible and only linear and rank-based ES were different. We therefore used and recommend Hedges' g, Spearman's rho and Kendall's tau, along with an unstandardized ES. The confidence intervals, that quantify the uncertainty of the measure, were well represented through scatterplots and distribution curves.

Conclusion: The candidate biomarkers found, along with their specificity, could help for the detection of colorectal cancer, the diagnosis of remission, and for the understanding of its pathophysiology, after proper validation on independent cohorts. The effect size, here applied on a MS global profiling data set, is an ideal complement to NHST and a useful tool to compare and combine distinct cohorts, within a study as well as between studies (meta-analysis).

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