Kortemme Tanja, Kim David E, Baker David
Department of Biopharmaceutical Sciences and California Institute for Quantitative Biomedical Research, University of California San Francisco, CA 94107, USA.
Sci STKE. 2004 Feb 3;2004(219):pl2. doi: 10.1126/stke.2192004pl2.
Protein-protein interactions are key components of all signal transduction processes, so methods to alter these interactions promise to become important tools in dissecting function of connectivities in these networks. We have developed a fast computational approach for the prediction of energetically important amino acid residues in protein-protein interfaces (available at http://robetta.bakerlab.org/alaninescan), which we, following Peter Kollman, have termed "computational alanine scanning." The input consists of a three-dimensional structure of a protein-protein complex; output is a list of "hot spots," or amino acid side chains that are predicted to significantly destabilize the interface when mutated to alanine, analogous to the results of experimental alanine-scanning mutagenesis. 79% of hot spots and 68% of neutral residues were correctly predicted in a test of 233 mutations in 19 protein-protein complexes. A single interface can be analyzed in minutes. The computational methodology has been validated by the successful design of protein interfaces with new specificity and activity, and has yielded new insights into the mechanisms of receptor specificity and promiscuity in biological systems.
蛋白质-蛋白质相互作用是所有信号转导过程的关键组成部分,因此改变这些相互作用的方法有望成为剖析这些网络中连接功能的重要工具。我们开发了一种快速计算方法,用于预测蛋白质-蛋白质界面中能量上重要的氨基酸残基(可在http://robetta.bakerlab.org/alaninescan获取),按照彼得·科尔曼的说法,我们将其称为“计算丙氨酸扫描”。输入是蛋白质-蛋白质复合物的三维结构;输出是一份“热点”列表,即预测当突变为丙氨酸时会显著破坏界面稳定性的氨基酸侧链,这类似于实验性丙氨酸扫描诱变的结果。在对19个蛋白质-蛋白质复合物中的233个突变进行的测试中,79%的热点和68%的中性残基被正确预测。单个界面可在数分钟内分析完毕。该计算方法已通过成功设计具有新特异性和活性的蛋白质界面得到验证,并对生物系统中受体特异性和混杂性的机制产生了新的见解。