首页> 外文期刊>Clinical chemistry and laboratory medicine: CCLM >Pancreatic cancer biomarkers discovery by surface-enhanced laser desorption and ionization time-of-flight mass spectrometry.
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Pancreatic cancer biomarkers discovery by surface-enhanced laser desorption and ionization time-of-flight mass spectrometry.

机译:通过表面增强激光解吸和电离飞行时间质谱法发现胰腺癌生物标记物。

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摘要

BACKGROUND: Surface-enhanced laser desorption and ionization time-of-flight mass spectrometry (SELDI-TOF/MS), a laboratory-friendly technique, is used to identify biomarkers for cancer. The aim of the present study was to explore the application of SELDI proteomic patterns in serum for distinguishing between cases of pancreatic cancer, chronic pancreatitis, type 2 diabetes mellitus and healthy controls. METHODS: Sera from 12 healthy controls, 24 patients with type 2 diabetes mellitus, 126 with pancreatic cancer, including 84 with diabetes, and 61 with chronic pancreatitis, 32 of which were diabetics, were analyzed using SELDI-TOF/MS. Spectra (IMAC-30) were clustered and classified using Biomarker Wizard and Biomarker Pattern software. RESULTS: Two decision tree classification algorithms, one with and one without CA 19-9, were constructed. In the absence of CA 19-9, the splitting protein peaks were: m/z 1526, 1211, and 3519; when CA 19-9 was used in the analysis, it replaced the m/z 3519 splitter. The two algorithms performed equally for classifying patients. A classification tree that considered diabetic patients only was constructed; the main splitters were: 1211, CA 19-9, 7903, 3359, 1802. With this algorithm, 100% of patients with type 2 diabetes mellitus, 97% with chronic pancreatitis and 77% of patients with pancreatic cancer were correctly classified. SELDI-TOF/MS features improved the diagnostic accuracy of CA 19-9 (AUC = 0.883 for CA 19-9; AUC = 0.935 for CA 19-9 and SELDI-TOF/MS features combined). CONCLUSIONS: SELDI-TOF/MS allows identification of new peptides which, in addition to CA 19-9, enable the correct classification of the vast majority of patients with pancreatic cancer, which can be distinguished from patients with chronic pancreatitis or type 2 diabetes mellitus.
机译:背景:表面增强型激光解吸和电离飞行时间质谱仪(SELDI-TOF / MS)是一种实验室友好型技术,用于鉴定癌症的生物标志物。本研究的目的是探索血清中SELDI蛋白质组学模式在区分胰腺癌,慢性胰腺炎,2型糖尿病和健康对照中的应用。方法:采用SELDI-TOF / MS对12名健康对照者,24名2型糖尿病患者,126名胰腺癌患者,包括84名糖尿病患者和61名慢性胰腺炎患者(其中32名糖尿病患者)的血清进行了分析。使用Biomarker Wizard和Biomarker Pattern软件对光谱(IMAC-30)进行聚类和分类。结果:构造了两种决策树分类算法,一种带有CA 19-9,一种没有CA 19-9。在没有CA 19-9的情况下,分裂蛋白峰为:m / z 1526、1211和3519;在分析中使用CA 19-9时,它取代了m / z 3519分离器。两种算法在分类患者方面表现均等。构建仅考虑糖尿病患者的分类树;主要拆分器是:1211,CA 19-9、7903、3359、1802。使用此算法,可以正确分类100%的2型糖尿病患者,97%的慢性胰腺炎患者和77%的胰腺癌患者。 SELDI-TOF / MS功能提高了CA 19-9的诊断准确性(对于CA 19-9,AUC = 0.883;对于CA 19-9,AUC = 0.935,并结合了SELDI-TOF / MS功能)。结论:SELDI-TOF / MS可以鉴定新肽,除CA 19-9外,还可以对绝大多数胰腺癌患者进行正确分类,这可以与慢性胰腺炎或2型糖尿病患者区分开。

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