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Pancreatic cancer: Spotlight on BRG1

机译:胰腺癌:聚焦于BRG1

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A detailed comprehension of protein-based interfaces is essential for the rational drug development. One of the key features of these interfaces is their solvent accessible surface area profile. With that in mind, we tested a group of 12 SASA-based features for their ability to correlate and differentiate hot- and null-spots. These were tested in three different data sets, explicit water MD, implicit water MD, and static PDB structure. We found no discernible improvement with the use of more comprehensive data sets obtained from molecular dynamics. The features tested were shown to be capable of discerning between hot- and null-spots, while presenting low correlations. Residue standardization such as relSASAi or rel/resSASAi, improved the features as a tool to predict ΔΔGbinding values. A new method using support machine learning algorithms was developed: SBHD (Sasa-Based Hot-spot Detection). This method presents a precision, recall, and F1 score of 0.72, 0.81, and 0.76 for the training set and 0.91, 0.73, and 0.81 for an independent test set. Proteins 2014; 82:479-490.
机译:基于蛋白质的界面的详细理解对于合理的药物开发至关重要。这些界面的关键特征之一是其溶剂可及的表面积分布。考虑到这一点,我们测试了12种基于SASA的功能对它们进行关联和区分热点和零点的能力。这些在三个不同的数据集中进行了测试,显性水MD,隐性水MD和静态PDB结构。我们发现使用从分子动力学获得的更全面的数据集没有明显的改善。结果表明,所测试的特征能够区分热点和零点,同时呈现出较低的相关性。诸如relSASAi或rel / resSASAi之类的残基标准化改进了功能,可作为预测ΔΔGbinding值的工具。开发了一种使用支持​​机器学习算法的新方法:SBHD(基于Sasa的热点检测)。对于训练集,此方法的精确度,召回率和F1得分分别为0.72、0.81和0.76,对于独立测试集,则为0.91、0.73和0.81。蛋白质2014; 82:479-490。

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