基于遗传算法的特征选择和基于MicroRNA谱的乳腺癌分类反向传播神经网络参数优化

Amazona Adorada, A. Wibowo
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引用次数: 2

摘要

乳腺癌是女性中最常见的癌症之一。由于没有找到适当的早期检测方法,乳腺癌死亡率每年都在增加。MicroRNA可以作为一种潜在的生物标志物,因为与正常情况相比,MicroRNA特征在乳腺癌中的表达值会降低或增加。但是由于构成乳腺癌的microRNA有数千种,因此要彻底检测它需要大量的资金。反向传播人工神经网络方法具有良好的泛化性能,适合用于多特征的分类方法。如果能精确地优化使用的参数,神经网络模型的分类结果将更加准确。遗传算法具有全局搜索的特点,可用于反向传播神经网络参数优化和特征选择。本研究旨在比较使用遗传算法优化参数和特征选择的反向传播人工神经网络(GABPNN_ FS)与使用不使用特征选择的遗传算法优化的反向传播人工神经网络(GABPNN)的性能。结果表明,GABPNN具有较好的识别效果,误差值为0.016115。而GABPNN_ FS的平均进程持续时间更快,为53.2689秒。在GABPNN_ FS上,基于microRNA谱进行乳腺癌分类的最佳个体染色体翻译结果为随机状态= 6098,学习率= 0.7,隐藏神经元数= 6,选择特征= 707个特征,准确度、灵敏度和特异性分别为97.50%、99.00%和96.00%。
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Genetic Algorithm-Based Feature Selection and Optimization of Backpropagation Neural Network Parameters for Classification of Breast Cancer Using MicroRNA Profiles
Breast cancer is one of the most common types of cancer found in women. Breast cancer mortality increases every year because it has not found an appropriate early detection method. MicroRNA can be used as a potential biomarker, because the profile of the microRNA feature in breast cancer will decrease or increase the value of expression compared to normal conditions. But because of the thousands of types of microRNA that make up breast cancer, a lot of money is needed to detect it entirely. Backpropagation Artificial Neural Network Method has good performance in generalization, so it is suitable to be used as a method for classification with many features. The classification results from the neural network model will be more accurate if the parameters used can be optimized precisely. Genetic algorithms can be used to optimize backpropagation neural network parameters as well as feature selection, because of its global search characteristics. This study aims to compare the performance of backpropagation artificial neural networks optimized parameters as well as feature selection using genetic algorithms (GABPNN_ FS) with backpropagation artificial neural networks optimized using genetic algorithms without feature selection (GABPNN). The results showed that the GABPNN had better results with an error value of 0.016115. But GABPNN_ FS has a faster average process duration of 53.2689 seconds. The best individual chromosome translation results on GABPNN_ FS for breast cancer classification based on microRNA profile are random state = 6098, learning rate = 0.7, number of neuron hidden = 6, and selected features = 707 features that produce accuracy, sensitivity, and specificity ie 97.50 %, 99.00% and 96.00%.
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