利用双向神经网络和离散类的蛋白质结构重建和可视化

Alessia Auriemma Citarella, Lorenzo Porcelli, Luigi Di Biasi, M. Risi, G. Tortora
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引用次数: 2

摘要

近年来,深度学习技术在生物信息学任务中取得了一些成功,包括蛋白质构象预测。在这项工作中,我们提出了一个双向长短期记忆(BLSTM)网络系统,称为人类蛋白质角度预测(HPAP),以提高蛋白质二面角的预测。我们介绍了5°的蛋白质扭转角类的离散细分,以及与可访问表面积和体积相关的四个新特征。总共有73个类(72个类包括-180°和180°之间的角度,另一个类用于编码序列开始时的自由角度),最大期望误差为±2.5°。我们在几个参数组合中测试了三个模型变体。利用我们的模型,我们得到了$\psi$角的平均绝对误差降低了约2°。虽然我们的数据集缩小了,但$\varphi$和$\psi$角度的精度与现有方法相当。准确地预测角度对于精确地重建蛋白质的三维结构是有用的。在这种情况下,预测仅限于$\varphi$和$\psi$角度,当预测正确时,我们将可视化局部发生的情况。如果预测的角度与真实角度相差甚远,即使是很小的误差也会破坏主干。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction and Visualization of Protein Structures by exploiting Bidirectional Neural Networks and Discrete Classes
In recent years, Deep Learning techniques have achieved some success in bioinformatics tasks, including protein conformation prediction. In this work, we propose a Bidirectional Long Short-Term Memory (BLSTM) network system, called Human Proteins Angles Prediction (HPAP), in order to improve the prediction of dihedral angles of proteins. We have introduced a discrete subdivision in classes of 5° for protein torsion angles and four new features related to accessible surface area and volume. In total there are 73 classes (72 classes include the angles between -180° and 180°, a further class is used to code the free angles at the beginning of the sequence) with a maximum expected error of ±2.5°. We have tested three model variants in several parameter combinations. With our model, we have obtained a decrease of the mean absolute error of about 2° for the $\psi$ angle. Although our dataset is reduced in size, the accuracy of $\varphi$ and $\psi$ angles is comparable to the existing methods. Predicting angles accurately is useful for accurately reconstructing the three-dimensional structure of a protein. In this context, the prediction is limited to the $\varphi$ and $\psi$ angles and we will visualize what happens locally when a prediction is correct. In case the prediction is far from true angles, even a small error can deconstruct the backbone.
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