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首页> 外文期刊>Current genomics >Artificial Neural Network as a Classifier for the Identification of Hepatocellular Carcinoma Through Prognosticgene Signatures
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Artificial Neural Network as a Classifier for the Identification of Hepatocellular Carcinoma Through Prognosticgene Signatures

机译:人工神经网络作为通过预后基因特征识别肝细胞癌的分类器

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Background: Artificial Neural Networks (ANNs) can be used to classify tumor of Hepatocellular carcinoma based on their gene expression signatures. The neural network is trained with gene expression profiles of genes that were predictive of recurrence in liver cancer, the ANNs became capable of correctly classifying all samples and distinguishing the genes most suitable for the organization. The ability of the trained ANN models in recognizing the Cancer Genes was tested as we analyzed additional samples that were not used beforehand for the training procedure, and got the correctly classified result in the validation set. Bootstrapping of training and analysis of dataset was made as external justification for more substantial result. Result: The best result achieved when the number of hidden layers was 10. The R2 value with training is 0.99136, R2 value obtained with testing is 0.80515, R2 value obtained after validation is 0.76678 and finally, with the total number of sets the R2 value is 0.93417. Performance was reported on the basis of graph plotted between Mean Squared Error (MSE) and 23 epoch. The value of gradient of the curve was 152 after 6 validation checks and 23 iterations. Conclusion: A successful attempt at developing a method for diagnostic classification of tumors from their gene-expression autographs that efficiently classify tumors and helps in decision making for providing appropriate treatment to the patients suffering from Hepatocellular carcinoma has been carried out.
机译:背景:人工神经网络(ANN)可用于根据其基因表达特征对肝细胞癌进行分类。用预测肝癌复发的基因的基因表达谱对神经网络进行训练,人工神经网络变得能够正确分类所有样品并区分最适合组织的基因。我们分析了事先未用于训练程序的其他样本,并测试了经过训练的ANN模型识别癌症基因的能力,并在验证集中获得了正确分类的结果。引导训练和分析数据集作为外部理由,以获得更实质的结果。结果:当隐藏层数为10时,最佳结果。经过训练的R2值为0.99136,经测试获得的R2值为0.80515,验证后获得的R2值为0.76678,最后,集合的总数为R2值是0.93417。根据均方误差(MSE)和23个历元之间绘制的图表报告了性能。经过6次验证检查和23次迭代后,曲线的梯度值为152。结论:已经成功地尝试从其基因表达签名中开发出一种对肿瘤进行诊断分类的方法,该方法可以有效地对肿瘤进行分类,并有助于为患有肝细胞癌的患者提供适当治疗的决策。

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