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Predicting Human Immunodeficiency Virus (HIV) Drug Resistance Using Recurrent Neural Networks

机译:使用递归神经网络预测人类免疫缺陷病毒(HIV)耐药性

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摘要

Predicting HIV resistance to drugs is one of many problems for which bioinformaticians have implemented and trained machine learning methods, such as neural networks. Predicting HIV resistance would be much easier if we could directly use the three-dimensional (3D) structure of the targeted protein sequences, but unfortunately we rarely have enough structural information available to train a neural network. Fur-thermore, prediction of the 3D structure of a protein is not straightforward. However, characteristics related to the 3D structure can be used to train a machine learning algorithm as an alternative to take into account the information of the protein folding in the 3D space. Here, starting from this philosophy, we select the amino acid energies as features to predict HIV drug resistance, using a specific topology of a neural network. In this paper, we demonstrate that the amino acid ener-gies are good features to represent the HIV genotype. In addi-tion, it was shown that Bidirectional Recurrent Neural Networks can be used as an efficient classification method for this prob-lem. The prediction performance that was obtained was greater than or at least comparable to results obtained previously. The accuracies vary between 81.3% and 94.7%.
机译:预测HIV对药物的抵抗力是生物信息学家已经实施和训练的机器学习方法(例如神经网络)的众多问题之一。如果我们可以直接使用目标蛋白质序列的三维(3D)结构,则预测HIV抵抗力会容易得多,但是不幸的是,我们很少有足够的结构信息可用于训练神经网络。此外,蛋白质3D结构的预测并不简单。但是,与3D结构相关的特征可用于训练机器学习算法,作为一种备选方案,以考虑3D空间中蛋白质折叠的信息。在这里,从这种哲学出发,我们使用神经网络的特定拓扑结构,选择氨基酸能量作为预测HIV耐药性的特征。在本文中,我们证明了氨基酸能量是代表HIV基因型的良好特征。此外,还表明双向递归神经网络可以用作此问题的有效分类方法。获得的预测性能大于或至少与先前获得的结果相当。准确性介于81.3%和94.7%之间。

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