Diagnosis and prediction of lung cancer through different classification techniques with tumor markers

肺癌 逻辑回归 决策树 人工神经网络 癌症 内科学 医学 肿瘤科 人工智能 机器学习 计算机科学
作者
Guang-jin Nie,Feifei Feng,Yongjun Wu,WU Yi-ming
标识
DOI:10.3760/cma.j.issn.1001-9391.2009.05.001
摘要

Objective To study which classification model was most suitable for establishing a multi-tumor markers lung cancer prediction model, through established logistic regression model, decision trees model and artificial neural network model. Methods RIA analysis, ELISA, spectrophotometry, high-performance liquid chromatography (HPLC) and atomic absorption spectrometry were used to measure the serum CEA , CA125, gastrin, NSE, B2-MG, sIL-6 receptors, sialic acid, nitric oxide, Cu, Zn, Ca and the pseudo-urine nucleoside of urine samples in lung cancer patients, benign lung disease patients and healthy controls. The lung cancer diagnosis models were established by logistic regression analysis, decision tree analysis and artificial neural network training. Results The diagnosis sensitivities of the logistic regression analysis, decision tree analysis and artificial neural network model with 12 tumor markers in lung cancer were 94.00%, 100.00% and 100.00%; the specificity were 100.00%, 98.89% and 100.00%; the total accurate 94.29%, 95.00% and 90.00%, respectively. Conclusion The results of three classification models with 12 tumor markers in diagnosis of lung cancer are ideal. Especially the C5.0 decision tree model and the artificial neural network model are more suitable for the prediction and diagnosis of the lung cancer. Key words: Lung neoplasms;  Sentinel surveillance;  Neural networks(computer)
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