Pertsemlidis Alexander, Zelinka Jan, Fondon John W, Henderson R Keith, Otwinowski Zbyszek
UT Southwestern Medical Center.
Stat Appl Genet Mol Biol. 2005;4:Article35. doi: 10.2202/1544-6115.1165. Epub 2005 Nov 22.
We describe a method for the generation of knowledge-based potentials and apply it to the observed torsional angles of known protein structures. The potential is derived using Bayesian reasoning, and is useful as a prior for further such reasoning in the presence of additional data. The potential takes the form of a probability density function, which is described by a small number of coefficients with the number of necessary coefficients determined by tests based on statistical significance and entropy. We demonstrate the methods in deriving one such potential corresponding to two dimensions, the Ramachandran plot. In contrast to traditional histogram-based methods, the function is continuous and differentiable. These properties allow us to use the function as a force term in the energy minimization of appropriately described structures. The method can easily be extended to other observable angles and higher dimensions, or to include sequence dependence and should find applications in structure determination and validation.
我们描述了一种生成基于知识的势的方法,并将其应用于已知蛋白质结构的观测扭转角。该势是通过贝叶斯推理得出的,在存在额外数据的情况下,可作为进一步此类推理的先验。该势采用概率密度函数的形式,由少量系数描述,所需系数的数量通过基于统计显著性和熵的测试确定。我们展示了推导对应于二维(拉氏图)的此类势的方法。与传统的基于直方图的方法不同,该函数是连续且可微的。这些特性使我们能够将该函数用作适当描述结构能量最小化中的力项。该方法可以很容易地扩展到其他可观测角度和更高维度,或纳入序列依赖性,并且应该会在结构确定和验证中找到应用。