首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Genetic algorithm pruning of probabilistic neural networks in medical disease estimation.
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Genetic algorithm pruning of probabilistic neural networks in medical disease estimation.

机译:医学疾病估计中概率神经网络的遗传算法修剪

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摘要

A hybrid model consisting of an Artificial Neural Network (ANN) and a Genetic Algorithm procedure for diagnostic risk factors selection in Medicine is proposed in this paper. A medical disease prediction may be viewed as a pattern classification problem based on a set of clinical and laboratory parameters. Probabilistic Neural Network models were assessed in terms of their classification accuracy concerning medical disease prediction. A Genetic Algorithm search was performed to examine potential redundancy in the diagnostic factors. This search led to a pruned ANN architecture, minimizing the number of diagnostic factors used during the training phase and therefore minimizing the number of nodes in the ANN input and hidden layer as well as the Mean Square Error of the trained ANN at the testing phase. As a conclusion, a number of diagnostic factors in a patient's data record can be omitted without loss of fidelity in the diagnosis procedure.
机译:提出了一种由人工神经网络和遗传算法组成的混合模型,用于医学诊断危险因素的选择。可以将医学疾病预测视为基于一组临床和实验室参数的模式分类问题。根据关于医学疾病预测的分类准确性评估了概率神经网络模型。进行了遗传算法搜索以检查诊断因素中的潜在冗余。该搜索导致了经过修剪的ANN架构,该模型使在训练阶段使用的诊断因子数量最少,因此在测试阶段使ANN输入和隐藏层中的节点数量以及训练后的ANN的均方误差最小。结论是,可以省略患者数据记录中的许多诊断因素,而不会失去诊断程序的准确性。

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