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Constrained Maximum Likelihood Estimation of Relative Abundances of Protein Conformation in a Heterogeneous Mixture from Small Angle X-Ray Scattering Intensity Measurements

机译:从小角度X射线散射强度测量方法研究非均质混合物中蛋白质构象的相对丰度的受约束最大似然估计

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摘要

In this paper, we describe a model for maximum likelihood estimation (MLE) of the relative abundances of different conformations of a protein in a heterogeneous mixture from small angle X-ray scattering (SAXS) intensities. To consider cases where the solution includes intermediate or unknown conformations, we develop a subset selection method based on k-means clustering and the Cramér-Rao bound on the mixture coefficient estimation error to find a sparse basis set that represents the space spanned by the measured SAXS intensities of the known conformations of a protein. Then, using the selected basis set and the assumptions on the model for the intensity measurements, we show that the MLE model can be expressed as a constrained convex optimization problem. Employing the adenylate kinase (ADK) protein and its known conformations as an example, and using Monte Carlo simulations, we demonstrate the performance of the proposed estimation scheme. Here, although we use 45 crystallographically determined experimental structures and we could generate many more using, for instance, molecular dynamics calculations, the clustering technique indicates that the data cannot support the determination of relative abundances for more than 5 conformations. The estimation of this maximum number of conformations is intrinsic to the methodology we have used here.
机译:在本文中,我们描述了一个模型,该模型通过小角度X射线散射(SAXS)强度对异质混合物中蛋白质不同构象的相对丰度进行最大似然估计(MLE)。为了考虑解决方案包括中间构象或未知构象的情况,我们开发了一种基于k均值聚类和混合系数估计误差的Cramér-Rao约束的子集选择方法,以找到代表被测空间跨越的稀疏基集。蛋白质已知构象的SAXS强度。然后,使用选定的基集和模型上的假设进行强度测量,我们表明MLE模型可以表示为约束凸优化问题。以腺苷酸激酶(ADK)蛋白及其已知构象为例,并使用Monte Carlo模拟,我们证明了所提出的估计方案的性能。在这里,尽管我们使用45种晶体学确定的实验结构,并且可以使用分子动力学计算等方法生成更多的结构,但是聚类技术表明,数据不能支持5个以上构象的相对丰度的确定。这种最大构象数目的估计是我们在此使用的方法所固有的。

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