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A Hybrid Genetic-Neural System for Predicting Protein Secondary Structure

机译:预测蛋白质二级结构的混合遗传-神经系统

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Background Due to the strict relation between protein function and structure, the prediction of protein 3D-structure has become one of the most important tasks in bioinformatics and proteomics. In fact, notwithstanding the increase of experimental data on protein structures available in public databases, the gap between known sequences and known tertiary structures is constantly increasing. The need for automatic methods has brought the development of several prediction and modelling tools, but a general methodology able to solve the problem has not yet been devised, and most methodologies concentrate on the simplified task of predicting secondary structure. Results In this paper we concentrate on the problem of predicting secondary structures by adopting a technology based on multiple experts. The system performs an overall processing based on two main steps: first, a "sequence-to-structure" prediction is enforced by resorting to a population of hybrid (genetic-neural) experts, and then a "structure-to-structure" prediction is performed by resorting to an artificial neural network. Experiments, performed on sequences taken from well-known protein databases, allowed to reach an accuracy of about 76%, which is comparable to those obtained by state-of-the-art predictors. Conclusion The adoption of a hybrid technique, which encompasses genetic and neural technologies, has demonstrated to be a promising approach in the task of protein secondary structure prediction.
机译:背景技术由于蛋白质功能和结构之间的严格关系,蛋白质3D结构的预测已成为生物信息学和蛋白质组学中最重要的任务之一。实际上,尽管公开数据库中有关蛋白质结构的实验数据有所增加,但已知序列与已知三级结构之间的差距仍在不断增加。对自动方法的需求带来了几种预测和建模工具的发展,但尚未设计出能够解决该问题的通用方法,并且大多数方法集中于简化预测二级结构的任务。结果在本文中,我们通过采用基于多位专家的技术集中于预测二级结构的问题。该系统基于两个主要步骤执行总体处理:首先,通过诉诸混合(遗传-神经)专家来实施“序列到结构”预测,然后进行“结构到结构”预测通过使用人工神经网络来执行。对从知名蛋白质数据库中提取的序列进行的实验可达到约76%的准确度,与通过最新的预测变量获得的准确度相当。结论采用包含遗传和神经技术的混合技术已被证明是蛋白质二级结构预测任务中的一种有前途的方法。

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