Suppr超能文献

基于表面增强激光解吸电离技术的血清决策树分类法预测慢性乙型肝炎、肝硬化及肝细胞癌

Prediction of chronic hepatitis B, liver cirrhosis and hepatocellular carcinoma by SELDI-based serum decision tree classification.

作者信息

Cui Jiefeng, Kang Xiaonan, Dai Zhi, Huang Cheng, Zhou Haijun, Guo Kun, Li Yan, Zhang Yu, Sun Ruixia, Chen Jie, Li Yang, Tang Zhaoyou, Uemura Toshimasa, Liu Yinkun

机构信息

Liver Cancer Institute, Zhongshan Hospital, Fudan University, 136 Yi Xue Yuan Road, Shanghai, 200032, China.

出版信息

J Cancer Res Clin Oncol. 2007 Nov;133(11):825-34. doi: 10.1007/s00432-007-0224-y. Epub 2007 May 22.

Abstract

PURPOSE

To screen potential serological biomarkers and develop decision tree classifications of chronic hepatitis B, liver cirrhosis (LC) and hepatocellular carcinoma (HCC), respectively, with high prediction score for improving diagnosis of liver diseases.

METHODS

The total serum samples were randomly divided into three training sets (41 HBV and 35 health; 36 LC and 35 health; 39 HCC and 35 health) and three testing groups (34 HBV and 38 health; 18 LC and 52 health; 42 HCC and 47 health). Selected WCX2 protein chip capture followed by SELDI-TOF-MS analysis was applied to generate the serum protein profiles. Subsequently serum protein spectra were normalized and aligned by Ciphergen SELDI Software 3.1.1 with Biomarker Wizard including baseline subtraction, mass accuracy calibration, automatic peak detection. Once the intensities of selected significant peaks from the training data set were transferred to further BPS analysis, an optimized classification tree with sequence-decision was established to divide training data set into disease group and control group successfully. A double blind test was employed to determine the clinical sensitivity and clinical specificity of three models.

RESULTS

After comparative analysis of SELDI based serum protein profile between the cases of disease and healthy, a HCC decision tree classification with sensitivity of 94.872% and specificity of 94.286%; a LC decision tree classification with sensitivity of 91.667% and specificity of 94.286% and a HBV decision tree classification with sensitivity of 95.122% and specificity of 94.286% were produced by BPS respectively. When three decision tree models were challenged by the double-blind test samples, clinical sensitivity and clinical specificity of these models were predicted in diagnosis of three liver diseases (HCC: 90.48 and 89.36%; cirrhosis: 100 and 86.5%; HBV: 85.29 and 84.21%).

CONCLUSION

SELDI-based decision tree classifications showed great advantages over conventional serological biomarkers in the diagnosis of chronic hepatitis B, LC as well as HCC.

摘要

目的

筛选潜在的血清学生物标志物,并分别建立慢性乙型肝炎、肝硬化(LC)和肝细胞癌(HCC)的决策树分类方法,以获得高预测评分,从而改善肝脏疾病的诊断。

方法

将血清样本随机分为三个训练集(41例乙肝患者和35例健康对照;36例肝硬化患者和35例健康对照;39例肝细胞癌患者和35例健康对照)和三个测试组(34例乙肝患者和38例健康对照;18例肝硬化患者和52例健康对照;42例肝细胞癌患者和47例健康对照)。采用选定的WCX2蛋白芯片捕获技术,随后进行表面增强激光解吸电离飞行时间质谱(SELDI-TOF-MS)分析,以生成血清蛋白谱。随后,使用Ciphergen SELDI软件3.1.1中的Biomarker Wizard对血清蛋白谱进行归一化和比对,包括基线扣除、质量精度校准和自动峰检测。一旦将训练数据集中选定的显著峰强度转移到进一步的BPS分析中,就建立了一个具有序列决策的优化分类树,成功地将训练数据集分为疾病组和对照组。采用双盲试验来确定三种模型的临床敏感性和临床特异性。

结果

通过对疾病患者和健康对照者基于SELDI的血清蛋白谱进行比较分析,BPS分别生成了一个肝细胞癌决策树分类,敏感性为94.872%,特异性为94.286%;一个肝硬化决策树分类,敏感性为91.667%,特异性为94.286%;一个乙肝决策树分类,敏感性为95.122%,特异性为94.286%。当三个决策树模型接受双盲测试样本的检验时,这些模型在三种肝脏疾病(肝细胞癌:90.48和89.36%;肝硬化:100和86.5%;乙肝:85.29和84.21%)诊断中的临床敏感性和临床特异性得到了预测。

结论

基于SELDI的决策树分类在慢性乙型肝炎、肝硬化以及肝细胞癌的诊断中显示出优于传统血清学生物标志物的巨大优势。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验