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Comparison between artificial neural network and Cox regression model in predicting the survival rate of gastric cancer patients

机译:人工神经网络与Cox回归模型预测胃癌患者生存率的比较

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摘要

The aim of this study was to determine the prognostic factors and their significance in gastric cancer (GC) patients, using the artificial neural network (ANN) and Cox regression hazard (CPH) models. A retrospective analysis was undertaken, including 289 patients with GC who had undergone gastrectomy between 2006 and 2007. According to the CPH analysis, disease stage, peritoneal dissemination, radical surgery and body mass index (BMI) were selected as the significant variables. According to the ANN model, disease stage, radical surgery, serum CA19-9 levels, peritoneal dissemination and BMI were selected as the significant variables. The true prediction of the ANN was 85.3% and of the CPH model 81.9%. In conclusion, the present study demonstrated that the ANN model is a more powerful tool in determining the significant prognostic variables for GC patients, compared to the CPH model. Therefore, this model is recommended for determining the risk factors of such patients.
机译:这项研究的目的是使用人工神经网络(ANN)和Cox回归风险(CPH)模型确定胃癌(GC)患者的预后因素及其意义。进行回顾性分析,其中包括2006年至2007年间接受胃切除术的289例胃癌患者。根据CPH分析,选择疾病阶段,腹膜扩散,根治性手术和体重指数(BMI)作为显着变量。根据ANN模型,选择疾病分期,根治性手术,血清CA19-9水平,腹膜扩散和BMI作为显着变量。 ANN的真实预测为85.3%,CPH模型的真实预测为81.9%。总之,本研究表明,与CPH模型相比,ANN模型是确定GC患者重要预后变量的更有效工具。因此,建议使用此模型来确定此类患者的危险因素。

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