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Maximum a posteriori estimation of relative abundances of protein conformations

机译:蛋白质构象相对丰度的最大后验估计

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Estimation of mixture coefficients of protein conformations find applications in understanding protein behavior. We describe a method for maximum a posteriori (MAP) estimation of the mixture coefficients of ensemble of conformations in a protein mixture solution using measured small angle X-ray scattering (SAXS) intensities. The proposed method builds upon a model for the measurements of crystallographically determined conformations. Assuming that a priori information on the protein mixture is available and this prior follows a Dirichlet distribution we develop a method to estimate the relative abundances with MAP estimator. Adenylate kinase (ADK) protein is selected as the test bed due to its known conformations. Known conformations are assumed to form the full vector bases that span the measurement space. A subset selection method that chooses an identifiable subset from these bases is developed. Using the selected subset, in Monte Carlo simulations, mixture coefficient estimation performances of MAP and maximum likelihood (which assumes uniform prior on mixture coefficients) estimators are compared. The results show that prior knowledge improves estimation accuracy, but performance is sensitive to perturbations in the prior distribution parameters.
机译:蛋白质构象的混合系数的估计可用于理解蛋白质行为。我们描述了一种使用测得的小角度X射线散射(SAXS)强度对蛋白质混合物溶液中构象整体的混合系数进行最大后验(MAP)估计的方法。所提出的方法建立在用于晶体学确定的构象的测量的模型的基础上。假设有关蛋白质混合物的先验信息可用并且该先验信息遵循Dirichlet分布,我们开发了一种使用MAP估计器估计相对丰度的方法。由于其已知构象,选择腺苷酸激酶(ADK)蛋白作为测试床。假定已知构象形成跨越测量空间的完整向量基。开发了从这些基础中选择可识别子集的子集选择方法。使用选定的子集,在蒙特卡洛模拟中,比较了MAP的混合系数估计性能和最大似然(假设混合系数先验均匀)估计量。结果表明,先验知识可以提高估计精度,但是性能对先验分布参数中的扰动敏感。

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