Department of Gastric Surgery and Department of General Surgery, Fujian Medical University Union Hospital, Fuzhou 350001, Fujian Province, China.
World J Gastroenterol. 2019 Nov 21;25(43):6451-6464. doi: 10.3748/wjg.v25.i43.6451.
Because of the powerful abilities of self-learning and handling complex biological information, artificial neural network (ANN) models have been widely applied to disease diagnosis, imaging analysis, and prognosis prediction. However, there has been no trained preoperative ANN (preope-ANN) model to preoperatively predict the prognosis of patients with gastric cancer (GC).
To establish a neural network model that can predict long-term survival of GC patients before surgery to evaluate the tumor condition before the operation.
The clinicopathological data of 1608 GC patients treated from January 2011 to April 2015 at the Department of Gastric Surgery, Fujian Medical University Union Hospital were analyzed retrospectively. The patients were randomly divided into a training set (70%) for establishing a preope-ANN model and a testing set (30%). The prognostic evaluation ability of the preope-ANN model was compared with that of the American Joint Commission on Cancer (8 edition) clinical TNM (cTNM) and pathological TNM (pTNM) staging through the receiver operating characteristic curve, Akaike information criterion index, Harrell's C index, and likelihood ratio chi-square.
We used the variables that were statistically significant factors for the 3-year overall survival as input-layer variables to develop a preope-ANN in the training set. The survival curves within each score of the preope-ANN had good discrimination ( < 0.05). Comparing the preope-ANN model, cTNM, and pTNM in both the training and testing sets, the preope-ANN model was superior to cTNM in predictive discrimination (C index), predictive homogeneity (likelihood ratio chi-square), and prediction accuracy (area under the curve). The prediction efficiency of the preope-ANN model is similar to that of pTNM.
The preope-ANN model can accurately predict the long-term survival of GC patients, and its predictive efficiency is not inferior to that of pTNM stage.
由于具有强大的自我学习能力和处理复杂生物信息的能力,人工神经网络(ANN)模型已广泛应用于疾病诊断、影像分析和预后预测。然而,目前还没有经过训练的术前 ANN(preope-ANN)模型来术前预测胃癌(GC)患者的预后。
建立一种能够预测 GC 患者术前长期生存的神经网络模型,以评估手术前的肿瘤情况。
回顾性分析 2011 年 1 月至 2015 年 4 月福建医科大学附属协和医院胃外科收治的 1608 例 GC 患者的临床病理资料。患者被随机分为训练集(70%)用于建立 preope-ANN 模型和测试集(30%)。通过受试者工作特征曲线、Akaike 信息准则指数、Harrell's C 指数和似然比卡方比较 preope-ANN 模型与美国癌症联合委员会(第 8 版)临床 TNM(cTNM)和病理 TNM(pTNM)分期的预后评估能力。
我们使用统计学上对 3 年总生存率有显著影响的变量作为输入层变量,在训练集中开发了 preope-ANN。每个 preope-ANN 评分内的生存曲线具有良好的区分度(<0.05)。在训练集和测试集中比较 preope-ANN 模型、cTNM 和 pTNM 模型,preope-ANN 模型在预测判别力(C 指数)、预测同质性(似然比卡方)和预测准确性(曲线下面积)方面均优于 cTNM。preope-ANN 模型的预测效率与 pTNM 相似。
preope-ANN 模型可以准确预测 GC 患者的长期生存,其预测效率不亚于 pTNM 分期。