An Juan, Tang Chuanhao, Wang Na, Liu Yi, Guo Wanfeng, Li Xiaoyan, Wang Zihe, He Kun, Liu Xiaoqing
Department of Lung Cancer, Affiliated Hospital of Academy of Military Medical Sciences, Beijing 100071, China.
Zhongguo Fei Ai Za Zhi. 2013 May;16(5):233-9. doi: 10.3779/j.issn.1009-3419.2013.05.04.
The improved survival of patients with lung cancer depends on early diagnosis of lung cancer. However, the traditional diagnostic techniques have several limitations. Mass spectrometry (MS) has been applied as a core technology for cancer diagnosis in preliminary proteomic studies. The aim of this study is to explore the differences in the serum peptide levels of patients with non-small cell lung cancer (NSCLC) and healthy individuals using matrix-assisted laser desorption/ionization (MALDI)-time-of-flight (TOF)-MS. A NSCLC serum classification model was then established.
One hundred and thirty three cases of patients with NSCLC serum specimens and 132 cases of healthy human serum specimens were randomly divided into two groups in accordance with the ratio of three to one without age and gender differences. The training group was used to establish the classification model, this group included serum samples from 100 NSCLC cases and 100 healthy individuals. The test group for validating the proposed model was composed of the remaining serum samples from 33 NSCLC cases and 32 healthy individuals. Peptides were extracted from the samples using magnetic beads--immobilized metal affinity capture--copper, and their mass spectra were obtained using an automated MALDI-TOF-MS system. The MS data from the training group was analyzed using the ClinproToolTM software to identify the individual peptide fragments and establish the classification model. The sensitivity and specificity of the model were verified by blind testing with the test group.
Among the 131 different peptide peaks, ranging from m/z 1,000 Da to 10,000 Da, 14 peaks were significantly different in the NSCLC samples of the training group, as compared with the controls (P<0.000,001; AUC≥0.9); these included 2 higher peaks and 12 lower peaks. The classification model was established, and the test group was verified for only 3 peptide peaks (7,478.59, 2,271.44 and 4,468.38 Da), which were selected by the statistical software. Blind testing revealed that the proposed method had 100% sensitivity, 96.9% specificity and 98.5% accuracy.
Our results showed that the serum peptide levels were significantly different between NSCLC patients and healthy individuals. A serum peptide-based classification of NSCLC patients was established using an automated MALDI-TOF-MS system. This method demonstrated high sensitivity and specificity in a small-scale test. Future studies should test the proposed model through mass validation. The model could be compared or combined with traditional diagnostic methods to establish novel techniques for the early diagnosis of patients with NSCLC.
肺癌患者生存率的提高依赖于肺癌的早期诊断。然而,传统诊断技术存在若干局限性。在初步的蛋白质组学研究中,质谱(MS)已被用作癌症诊断的核心技术。本研究旨在利用基质辅助激光解吸/电离(MALDI)-飞行时间(TOF)-MS探索非小细胞肺癌(NSCLC)患者与健康个体血清肽水平的差异。随后建立了NSCLC血清分类模型。
将133例NSCLC患者血清标本和132例健康人血清标本按照三比一的比例随机分为两组,无年龄和性别差异。训练组用于建立分类模型,该组包括100例NSCLC病例和100例健康个体的血清样本。用于验证所提模型的测试组由其余33例NSCLC病例和32例健康个体的血清样本组成。使用磁珠-固定金属亲和捕获-铜从样本中提取肽,并使用自动化MALDI-TOF-MS系统获得其质谱。使用ClinproToolTM软件分析训练组的MS数据,以识别单个肽片段并建立分类模型。通过对测试组进行盲测来验证模型的敏感性和特异性。
在131个不同的肽峰中,质荷比范围为1000 Da至10000 Da,训练组NSCLC样本中的14个峰与对照组相比有显著差异(P<0.000001;AUC≥0.9);其中包括2个较高的峰和12个较低的峰。建立了分类模型,测试组仅验证了统计软件选择的3个肽峰(7478.59、2271.44和4468.38 Da)。盲测显示,所提方法的敏感性为100%,特异性为96.9%,准确性为98.5%。
我们的结果表明,NSCLC患者与健康个体之间的血清肽水平存在显著差异。使用自动化MALDI-TOF-MS系统建立了基于血清肽的NSCLC患者分类。该方法在小规模测试中显示出高敏感性和特异性。未来的研究应通过大规模验证来测试所提模型。该模型可与传统诊断方法进行比较或结合,以建立NSCLC患者早期诊断的新技术。