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Adaptive Filtering Techniques Combined with Natural Selection-Based Heuristic Algorithms in the Prediction of Protein-Protein Interactions

机译:自适应滤波技术与基于自然选择的启发式算法相结合的蛋白质-蛋白质相互作用预测

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The analysis of protein-protein interactions (PPIs) is crucial to the understanding of cellular organizations, processes and functions. The reliability of the current experimental approaches interaction data is prone to error. Thus, a variety of computational methods have been developed to supplement the interactions that have been detected experimentally. The present paper's main objective is to present a novel classification framework for predicting PPIs combining the advantages of two algorithmic methods' categories (heuristic methods, adaptive filtering techniques) in order to produce high performance classifiers while maintaining their interpretability. Our goal is to find a simple mathematical equation that governs the best classifier enabling the extraction of biological knowledge. State-of-the-art adaptive filtering techniques were combined with the most contemporary heuristic methods which are based in the natural selection process. To the best of our knowledge, this is the first time that the proposed classification framework is applied and analyzed extensively for the problem of predicting PPIs. The proposed methodology was tested with a commonly used data set using all possible combinations of the selected adaptive filtering and heuristic techniques and comparisons were made. The best algorithmic combinations derived from these procedures were Genetic Algorithms with Extended Kalman Filters and Particle Swarm Optimization with Extended Kalman Filters. Using these algorithmic combinations high accuracy interpreta-ble classifiers were produced.
机译:蛋白质-蛋白质相互作用(PPI)的分析对于理解细胞组织,过程和功能至关重要。当前实验方法交互数据的可靠性易于出错。因此,已经开发了多种计算方法来补充已经通过实验检测到的相互作用。本文的主要目的是提供一种新颖的分类框架,用于预测PPI,结合两种算法方法的类别(启发式方法,自适应过滤技术)的优点,以在保持其可解释性的同时生成高性能分类器。我们的目标是找到一个控制最佳分类器的简单数学方程式,从而能够提取生物知识。先进的自适应滤波技术与基于自然选择过程的最现代的启发式方法相结合。据我们所知,这是首次将拟议的分类框架应用于预测PPI的问题并进行了广泛的分析。使用选定的自适应滤波和启发式技术的所有可能组合,使用常用数据集对提出的方法进行了测试,并进行了比较。从这些过程中得出的最佳算法组合是带有扩展卡尔曼滤波器的遗传算法和带有扩展卡尔曼滤波器的粒子群优化。使用这些算法组合,可以生成高精度的可解释分类器。

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