首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Development, Validation and Comparison of Artificial Neural Network Models and Logistic Regression Models Predicting Survival of Unresectable Pancreatic Cancer
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Development, Validation and Comparison of Artificial Neural Network Models and Logistic Regression Models Predicting Survival of Unresectable Pancreatic Cancer

机译:人工神经网络模型的发展,验证和比较预测不可切征胰腺癌存活的逻辑回归模型

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Background: Prediction models for the overall survival of pancreatic cancer remain unsatisfactory. We aimed to explore artificial neural networks (ANNs) modelling to predict the survival of unresectable pancreatic cancer patients. Methods: Thirty-two clinical parameters were collected from 221 unresectable pancreatic cancer patients, and their prognostic ability was evaluated using univariate and multivariate logistic regression. ANN and logistic regression (LR) models were developed on a training group (168 patients), and the area under the ROC curve (AUC) was used for comparison of the ANN and LR models. The models were further tested on the testing group (53 patients), and k-statistics were used for accuracy comparison. Results: We built three ANN models, based on 3, 7 and 32 basic features, to predict 8-month survival. All 3 ANN models showed better performance, with AUCs significantly higher than those from the respective LR models (0.811 vs. 0.680, 0.844 vs. 0.722, 0.921 vs. 0.849, all p0.05). The ability of the ANN models to discriminate 8-month survival with higher accuracy than the respective LR models was further confirmed in 53 consecutive patients. Conclusion: We developed ANN models predicting the 8-month survival of unresectable pancreatic cancer patients. These models may help to optimize personalized patient management.
机译:背景:胰腺癌整体存活的预测模型仍然不令人满意。我们旨在探索人工神经网络(ANNS)建模,以预测不可切征胰腺癌患者的存活。方法:从221例不可切征的胰腺癌患者中收集了32种临床参数,使用单变量和多变量逻辑回归评估其预后能力。 ANN和Logistic回归(LR)模型是在训练组(168名患者)上开发的,ROC曲线(AUC)下的面积用于比较ANN和LR模型。该模型在测试组(53名患者)上进一步测试,K统计用于精度比较。结果:我们建于三个Ann型号,基于3,7和32个基本功能,预测8个月的生存。所有3个ANN模型表现出更好的性能,AUCS显着高于各自的LR模型(0.811对0.680,0.844,0.844与0.722,0.921与0.849,所有P <0.05)。 ANN模型在连续53名患者中进一步确认了ANN模型以比相应的LR模型更高的精度辨别8个月的存活率。结论:我们开发了预测未调查胰腺癌患者8个月存活的ANN模型。这些模型可能有助于优化个性化患者管理。

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