College of Public Health, Zhengzhou University, Zhengzhou, People's Republic of China.
J Med Syst. 2012 Oct;36(5):2973-80. doi: 10.1007/s10916-011-9775-1. Epub 2011 Sep 1.
To evaluate the diagnosis potential of artificial neural network (ANN) model combined with six tumor markers in auxiliary diagnosis of lung cancer, to differentiate lung cancer from lung benign disease, normal control, and gastrointestinal cancers. Serum carcino-embryonic antigen (CEA), gastrin, neurone specific enolase (NSE), sialic acid (SA), Cu/Zn, Ca were measured through different experimental procedures in 117 lung cancer patients, 93 lung benign disease patients, 111 normal control, 47 gastric cancer patients, 50 patients with colon cancer and 50 esophagus cancer patients, 19 parameters of basic information were surveyed among lung cancer, lung benign disease and normal control, then developed and evaluated ANN models to distinguish lung cancer. Using the ANN model with the six serum tumor markers and 19 parameters to distinguish lung cancer from benign lung disease and healthy people, the sensitivity was 98.3%, the specificity was 99.5% and the accuracy was 96.9%. Another three ANN models with the six serum tumor markers were employed to differentiate lung cancer from three gastrointestinal cancers, the sensitivity, specificity and accuracy of distinguishing lung cancer from gastric cancer by the ANN model of lung cancer-gastric cancer were 100%, 83.3% and 93.5%, respectively; The sensitivity, specificity and accuracy of discriminating lung cancer by lung cancer-colon cancer ANN model were 90.0%, 90.0%, and 90.0%; And which were 86.7%, 84.6%, and 86.0%, respectively, by lung cancer-esophagus cancer ANN model. ANN model built with the six serum tumor markers could distinguish lung cancer, not only from lung benign disease and normal people, but also from three common gastrointestinal cancers. And our evidence indicates the ANN model maybe is an excellent and intelligent system to discriminate lung cancer.
为了评估人工神经网络(ANN)模型与六种肿瘤标志物联合在肺癌辅助诊断中的诊断潜力,以区分肺癌与肺部良性疾病、正常对照和胃肠道癌。通过不同的实验程序,对 117 例肺癌患者、93 例肺部良性疾病患者、111 例正常对照、47 例胃癌患者、50 例结肠癌患者和 50 例食管癌患者进行了血清癌胚抗原(CEA)、胃泌素、神经元特异性烯醇化酶(NSE)、唾液酸(SA)、Cu/Zn、Ca 的检测。对肺癌、肺部良性疾病和正常对照组的 19 项基本信息参数进行了调查,然后开发并评估了 ANN 模型以区分肺癌。使用包含六种血清肿瘤标志物和 19 个参数的 ANN 模型来区分肺癌与良性肺部疾病和健康人群,其敏感性为 98.3%,特异性为 99.5%,准确性为 96.9%。另外三个包含六种血清肿瘤标志物的 ANN 模型用于区分肺癌与三种胃肠道癌,肺癌-胃癌 ANN 模型鉴别胃癌的敏感性、特异性和准确性分别为 100%、83.3%和 93.5%;肺癌-结肠癌 ANN 模型鉴别肺癌的敏感性、特异性和准确性分别为 90.0%、90.0%和 90.0%;肺癌-食管癌 ANN 模型分别为 86.7%、84.6%和 86.0%。由六种血清肿瘤标志物建立的 ANN 模型不仅可以区分肺癌与肺部良性疾病和正常人,还可以区分三种常见的胃肠道癌。我们的证据表明,ANN 模型可能是一种优秀的智能系统,可用于鉴别肺癌。