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甲状腺癌血清多肽标志物的检测与鉴定

Detection and Identification of Serum Peptides Biomarker in Papillary Thyroid Cancer.

机构信息

School of Graduate, Second Military Medicinal University, Shanghai, China (mainland).

Department of Laboratory Medicine, General Hospital of Jinan Military Command Region, Jinan, Shandong, China (mainland).

出版信息

Med Sci Monit. 2018 Mar 17;24:1581-1587. doi: 10.12659/msm.907768.

Abstract

BACKGROUND Papillary thyroid cancer (PTC) is currently the most commonly diagnosed endocrine malignancy. In addition, the sex- and age-adjusted incidence of PTC has exhibited a greater increase over the last 2 decades than in many other malignancies. Thus, discovering noninvasive specific serum biomarker to distinguish PTC from cancer-free controls in its early stages remains an important goal. MATERIAL AND METHODS Serum samples from 88 PTC patients and 80 cancer-free controls were randomly allocated into training or validation sets. Serum peptide profiling was performed by matrix-assisted laser desorption/ionization-time of flight mass spectrometry (MALDI-TOF-MS) after using weak cation exchange magnetic beads (WCX-MB), and the results were evaluated by use of ClinProTools™ Software. To distinguish PTC from cancer-free controls, quick classifier (QC), supervised neural network (SNN), and genetic algorithm (GA) models were established. The models were blindly validated to verify their diagnostic capabilities. The most discriminative peaks were subsequently identified with a nano-liquid chromatography-electrospray ionization-tandem mass spectrometry system. RESULTS Six peptide ions were identified as the most discriminative peaks between the PTC and cancer-free control samples. The QC model exhibited satisfactory sensitivity and specificity among the 3 models that were validated. Two peaks, at m/z 2671.17 and m/z 1464.68, were identified as fragments of the alpha chain of fibrinogen, while a peak at m/z 1738.92 was a fragment of complement component 4A/B. CONCLUSIONS MS combined with ClinProTools™ software was able to detect peptide biomarkers in PTC patients. In addition, the constructed classification models provided a serum peptidome pattern for distinguishing PTC from cancer-free controls. Both fibrinogen a and complement C4A/B were identified as potential markers for diagnosis of PTC.

摘要

背景

甲状腺乳头状癌(PTC)是目前最常见的内分泌恶性肿瘤。此外,在过去的 20 年中,PTC 的性别和年龄调整发病率比许多其他恶性肿瘤增长得更快。因此,发现非侵入性的特异性血清生物标志物,以在早期将 PTC 与无癌对照区分开来,仍然是一个重要的目标。

材料和方法

将 88 例 PTC 患者和 80 例无癌对照的血清样本随机分配到训练或验证集。使用弱阳离子交换磁珠(WCX-MB)后,通过基质辅助激光解吸/电离-飞行时间质谱(MALDI-TOF-MS)进行血清肽谱分析,并使用 ClinProTools™软件进行评估。为了将 PTC 与无癌对照组区分开来,建立了快速分类器(QC)、监督神经网络(SNN)和遗传算法(GA)模型。对模型进行盲验证,以验证其诊断能力。随后使用纳流液相色谱-电喷雾串联质谱系统鉴定最具鉴别力的峰。

结果

在 PTC 和无癌对照组样本之间,确定了 6 个肽离子作为最具鉴别力的峰。在经过验证的 3 个模型中,QC 模型表现出令人满意的敏感性和特异性。两个峰,在 m/z 2671.17 和 m/z 1464.68,被鉴定为纤维蛋白原的 alpha 链片段,而一个峰在 m/z 1738.92 是补体成分 4A/B 的片段。

结论

MS 结合 ClinProTools™软件能够检测到 PTC 患者的肽生物标志物。此外,构建的分类模型为区分 PTC 与无癌对照组提供了血清肽组图谱。纤维蛋白原 a 和补体 C4A/B 均被鉴定为 PTC 诊断的潜在标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6006/5870111/d3022050393d/medscimonit-24-1581-g001.jpg

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