首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >NEW MDS AND CLUSTERING BASED ALGORITHMS FOR PROTEIN MODEL QUALITY ASSESSMENT AND SELECTION
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NEW MDS AND CLUSTERING BASED ALGORITHMS FOR PROTEIN MODEL QUALITY ASSESSMENT AND SELECTION

机译:蛋白质模型质量评估和选择的新MDS和基于聚类的算法

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摘要

In protein tertiary structure prediction, assessing the quality of predicted models is an essential task. Over the past years, many methods have been proposed for the protein model quality assessment (QA) and selection problem. Despite significant advances, the discerning power of current methods is still unsatisfactory. In this paper, we propose two new algorithms, CC-Select and MDS-QA, based on multidimensional scaling and k-means clustering. For the model selection problem, CC-Select combines consensus with clustering techniques to select the best models from a given pool. Given a set of predicted models, CC-Select first calculates a consensus score for each structure based on its average pairwise structural similarity to other models. Then, similar structures are grouped into clusters using multidimensional scaling and clustering algorithms. In each cluster, the one with the highest consensus score is selected as a candidate model. For the QA problem, MDS-QA combines single-model scoring functions with consensus to determine more accurate assessment score for every model in a given pool. Using extensive benchmark sets of a large collection of predicted models, we compare the two algorithms with existing state-of-the-art quality assessment methods and show significant improvement.
机译:在蛋白质三级结构预测中,评估预测模型的质量是一项基本任务。在过去的几年中,已经提出了许多用于蛋白质模型质量评估(QA)和选择问题的方法。尽管取得了重大进展,但是当前方法的辨别力仍然不能令人满意。在本文中,我们基于多维缩放和k均值聚类提出了两种新算法CC-Select和MDS-QA。对于模型选择问题,CC-Select将共识与聚类技术相结合,以从给定的库中选择最佳模型。给定一组预测模型,CC-Select首先根据其与其他模型的平均成对结构相似性为每个结构计算一个共识分数。然后,使用多维缩放和聚类算法将相似的结构分组为聚类。在每个聚类中,选择具有最高共识分数的聚类作为候选模型。对于质量检查问题,MDS-QA将单模型评分功能与共识相结合,以确定给定库中每个模型的更准确的评估得分。使用大量的预测模型的广泛基准集,我们将这两种算法与现有的最新质量评估方法进行了比较,并显示出显着的改进。

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