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基于贝叶斯-神经网络筛选矽肺早期标志物及建立诊断模型
引用本文:马庆波,向华,刘伟,王世鑫.基于贝叶斯-神经网络筛选矽肺早期标志物及建立诊断模型[J].质谱学报,2011,32(1):50-54.
作者姓名:马庆波  向华  刘伟  王世鑫
作者单位:1.重庆医科大学检验系,临床检验诊断学省部共建教育部重点实验室,重庆400016;2. 天津市东丽区东丽医院, 天津300300
基金项目:国家自然科学基金面上项目(30771788); 天津市卫生局科技基金项目(06KG10)资助
摘    要:应用液体芯片-飞行时间质谱技术检测了79例早期矽肺组和25例非暴露正常对照组的血清蛋白质.以贝叶斯判别法的最小错误率为目标函数,借助遗传算法全局优化搜索能力,筛选出能代表早期矽肺病人分类特征的最小最优差异蛋白质谱峰子集.用选定的差异蛋白质谱峰子集建立早期矽肺的神经网络诊断模型,该模型的特异性为96%,敏感性为96.25...

关 键 词:液体芯片-飞行时间质谱(MALDI-TOF-MS)  矽肺  贝叶斯  神经网络  标志物

Serum Biomarkers Selection and Diagnostic Prediction of Early Silicosis Patients Using Bayesian Network and Neural Network
MA Qing-bo,XIANG Hua,LIU Wei,WANG Shi-xin.Serum Biomarkers Selection and Diagnostic Prediction of Early Silicosis Patients Using Bayesian Network and Neural Network[J].Journal of Chinese Mass Spectrometry Society,2011,32(1):50-54.
Authors:MA Qing-bo  XIANG Hua  LIU Wei  WANG Shi-xin
Affiliation:1. Key Laboratory of Medical Diagnostics of Ministry of Education, Faculty of Laboratory Medicine,Chongqing Medical University, Chongqing 400016,China;2. The Dongli Hospital of Tianjin, Tianjin 300300, China
Abstract:Sera of 79 workers exposed to silica and 25 healthy controls were determined by matrix-assisted laser desorption ionization mass spectrometry(MALDI-TOF MS).Based on the minimum error Bayes decision theory,serum biomarkers of early silicosis patients were selected by making use of the global optimal ability of the genetic algorithm.Mass spectrometric peaks of 22 proteins were selected and used by artificial neural network(ANN) to establish a diagnostic model.A blinded test shows the ratios of correctness,sen...
Keywords:matrix-assisted laser desorption ionization mass spectrometry(MALDI-TOF MS) silicosis  Bayes  artificial neural network  biomarker  
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