一种新的表位数据集:基于mcl的图学习模型数据集生成算法的性能

Binti Solihah, Aina Musdholifah, A. Azhari
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引用次数: 0

摘要

当然,表位数据集可以用图形表示。前面方法中的数据集准备是模型开发的一部分。有许多基于图的分类和回归方法。然而,由于没有合适格式的数据集,很难确定它们在构象表位预测模型上的表现。本研究旨在建立一个合适格式的数据集来评估核图和图卷积网络。该数据集是由图抗原上的图聚类产生的,可用于识别许多基于图神经网络的构象表位预测算法的性能。从先前的研究中下载符合形成构象表位预测数据集标准的Ag-Ab复合物。以特定暴露抗原链残基形式的原始数据集根据其与旁位的接近程度标记为表位或非表位。原始数据集中的工程特征来源于抗原-抗体复合物的结构和倾向得分。将原子水平的相互作用聚合到剩余水平,可以创建抗原链的初始图。MCL、MLR-MCL和PS-MCL是从初始图中获得标记子聚类的图聚类算法。将平衡因子参数设置为多个值,以确定基于最小碎片的最佳数据集形成。MCL算法的输出用作基线。经过碎片化分析,在平衡因子为2时,MLR-MCL算法的模型性能最佳。PS-MCL在值为0.9时表现最佳。基于最小碎片,MLR-MCL算法比MCL和PS-MCL提供了最好的模型性能。根据基准数据集格式的数据集可用于识别由图聚类过程形成的抗原子图的特征,并探索图卷积网络等基于图的学习构象表位预测模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Epitope Dataset: Performance of the MCL-Based Algorithms to Generate Dataset for Graph Learning Model
Naturally, the epitope dataset can be presented as a graph. Dataset preparation in the previous methods is part of model development. There are many graph-based classification and regression methods. Still, it is difficult to identify their performance on the conformational epitope prediction model because datasets in a suitable format are unavailable. This research aims to build a dataset in a suitable format to evaluate kernel graph and graph convolution network. This dataset, which results from graph clustering on graph antigens, can be used to identify the performance of many graph neural network-based algorithms for conformational epitope prediction. The Ag-Ab complexes that meet the criteria for forming a conformational epitope prediction dataset from previous studies were downloaded from the Protein Data Bank. Raw datasets in the form of specific exposed antigen chain residues are labeled as epitope or non-epitope based on their proximity to the paratope. The engineering features in the raw dataset are derived from the structure of the antigen-antibody complex and the propensity score. Aggregating atomic-level interactions into residual levels create an initial graph of the antigen chain. The MCL, MLR-MCL, and PS-MCL are graph clustering algorithms to obtain labeled sub-clusters from the initial graph. A balance factor parameter is set to several values to identify the optimal dataset formation based on minimal fragmentation. The output of the MCL algorithm is used as a baseline. As a result of the fragmentation analysis that occurs, the MLR-MCL algorithm gives the best model performance at a balance factor equal to 2. PS-MCL gives the best performance at a value of 0.9. Based on the minimum fragmentation, the MLR-MCL algorithm provides the best model performance compared to MCL and PS-MCL. The dataset in a format according to benchmarking dataset can be used to identify the characteristics of antigen subgraphs formed from the graph clustering process and to explore the performance of graph-based learning conformational epitope prediction models such as graph convolution networks.
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