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Clinical opinions generation from general blood test results using deep neural network with principle component analysis and regularization

机译:使用具有主成分分析和正则化的深度神经网络从一般血液检查结果生成临床意见

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The conventional approach of generating clinical opinions from general blood test (GBT) results uses the deep neural network (DNN) comprised of fully-connected layers. The large number of input neurons and output neurons result in the complex DNN structure, which causes overfitting problem. However, the dimension of the input vector and the output vector cannot be reduced arbitrarily, as all GBT results and all clinical opinions should be retained. In order to avoid overfitting, we apply principal component analysis (PCA) and parameter regularization. PCA is a dimensionality reduction technique which may be used to reduce the number of input neurons, minimizing the information loss. Besides, we apply L1 penalty or L2 penalty to the loss function of the DNN to apply parameter regularization. We also apply PCA and the regularization simultaneously. Experimental results show that all three proposed methods outperform the conventional DNN, and applying only L1-regularization shows the best performance in avoiding overfitting in the DNN for generating clinical opinions.
机译:从常规血液测试(GBT)结果生成临床意见的常规方法是使用由完全连接的层组成的深度神经网络(DNN)。大量的输入神经元和输出神经元导致复杂的DNN结构,从而导致过度拟合问题。但是,输入向量和输出向量的尺寸不能任意减小,因为所有GBT结果和所有临床意见均应保留。为了避免过度拟合,我们应用主成分分析(PCA)和参数正则化。 PCA是一种降维技术,可用于减少输入神经元的数量,从而最大程度地减少信息丢失。此外,我们对DNN的损失函数应用L1罚分或L2罚分以应用参数正则化。我们还同时应用PCA和正则化。实验结果表明,所有三种提议的方法均优于常规DNN,并且仅应用L1正则化在避免DNN过度拟合以产生临床意见方面显示出最佳性能。

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