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Predicting the transactivation activity of p53 missense mutants using a four-body potential score derived from Delaunay tessellations.

机译:使用衍生自Delaunay镶嵌的四体电位评分,预测p53错义突变体的反式激活活性。

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We describe a novel statistical scoring method based on a computational geometry approach to predict the functional impact (transactivation activity) of missense mutations in the DNA-binding domain (DBD) of the tumor suppressor TP53, which is the most frequently mutated gene in human cancer. Residual scores (RS) for each residue were calculated to reflect differences in the compositional preferences of four nearest-neighbor residues between mutant and wild-type proteins. The RS were then combined into a residual score profile (RSP) representing the RS values for all 194 residues in the DBD. Mutants were grouped into functional categories based on their transactivation activities experimentally measured in yeast functional assays using p53-response elements from eight different promoters. While these functional categories showed significant differences in average RS, the latter lacked resolution power to predict the transactivation activities of individual mutants. In contrast, using decision tree models, we found that the RSP predicted transactivation with an accuracy varying between 64.2% and 78.5% depending on the promoter. Lastly, we used the best model to predict the functional outcome of all missense mutants in the DBD of p53 and compared the predictions with their frequency of occurrence in human cancers. We found that mutants predicted as functional (F) accounted for approximately 14% of all missense mutants found in cancers, while mutants predicted as nonfunctional (NF) represented approximately 86% of the mutants. These results show that this computational approach provides a fast and reliable method for predicting the functional impact of p53 mutants associated with cancer.
机译:我们描述一种基于计算几何方法的新型统计评分方法,以预测肿瘤抑制基因TP53的DNA结合域(DBD)中的错义突变的功能影响(反式激活),这是人类癌症中最常见的突变基因。计算每个残基的残值(RS),以反映突变型和野生型蛋白之间四个最邻近残基的组成偏好的差异。然后将RS合并为代表DBD中所有194个残基的RS值的残差得分配置文件(RSP)。根据使用八种不同启动子的p53反应元件在酵母功能分析中实验测得的突变激活活性,将突变体分为功能类别。尽管这些功能类别在平均RS上显示出显着差异,但后者缺乏解析能力来预测单个突变体的反式激活活性。相反,使用决策树模型,我们发现RSP预测反式激活的准确性取决于启动子,介于64.2%和78.5%之间。最后,我们使用最佳模型预测了p53 DBD中所有错义突变体的功能结果,并将预测结果与其在人类癌症中的发生频率进行了比较。我们发现预测为功能性(F)的突变体约占癌症中所有错义突变体的14%,而预测为非功能性(NF)的突变体约占突变体的86%。这些结果表明,这种计算方法为预测与癌症相关的p53突变体的功能影响提供了一种快速可靠的方法。

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