预测蛋白质功能的层次神经网络

J. C. Nievola, E. Paraiso, A. Freitas
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引用次数: 2

摘要

本文介绍了一种改进的前馈神经网络来解决蛋白质功能的预测问题。由于这种分类任务本质上是分层的,因此这项工作提出了对改进的前馈神经网络使用两种不同的架构,两者都模仿要预测的类(蛋白质功能)的分层性质。第一种方法由4个前馈级联神经网络组成,每个神经网络都以前一个网络获得的分类作为输入,这意味着,网络的输入是在类层次结构中可以分配给蛋白质的更高(亲本)层次的类。第二种方法是第一种方法的扩展,它也将被分类蛋白质的属性作为输入添加到每个子网络中。在这两种情况下,它都使用了两种前馈架构:由单层可调权值组成的Adaline网络和由两层可调权值组成的MLP(多层感知器)。将这两种方法与由单个MLP组成的基线进行比较,该MLP将输入属性映射到层次结构中最低级别的类。MLP由输入层、隐藏层和输出层组成。在8个数据集上对这三种方法进行了比较,前四个数据集涉及GPCR (g蛋白偶联受体)功能的预测,后四个数据集涉及酶功能的预测。结果表明,基于MLP范式的大爆炸层次神经网络,对新实例使用自顶向下评估,与扁平版本相比,在层次问题中具有更好的行为。
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A hierarchical neural network for predicting protein functions
This paper introduces the use of a modified feedforward neural network to cope with the problem of predicting protein functions. Since this kind of classification task is inherently hierarchical, this work proposes the use of two different architectures for the modified feedforward neural network, both mimicking the hierarchical nature of the classes (protein functions) to be predicted. The first approach consists of four feed-forward neural networks in cascade, each one taking as input the classification obtained by the previous network, which means, the input to a network is the classes that could be assigned to the protein at the immediately higher (parent) level in the class hierarchy. The second approach is an extension of the first one, which also adds as input to each sub-network the attributes of the protein being classified. In both situations, it was used two kinds of feed-forward architectures: an Adaline network, which is composed of a single layer of adjustable weights, and a MLP ("Multi-Layer Perceptron"), composed by two layers of adjustable weights. Both approaches were compared with a baseline consisting of a single MLP that maps the input attributes to the classes of the lowest level in the hierarchy. The MLP was built with the input layer, plus one hidden layer and one output layer. The three approaches were compared on eight datasets, the first four involving the prediction of GPCR (G-Protein Coupled Receptor) functions and the second four datasets involving the prediction of enzymes functions. The results show that a big-bang hierarchical neural network, based on the MLP paradigm, using a top-down evaluation for new instances has better behavior in hierarchical problems, when compared to its flat version.
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