Mesentean Sidonia, Fischer Stefan, Smith Jeremy C
Computational Biochemistry, IWR, University of Heidelberg, Heidelberg, Germany.
Proteins. 2006 Jul 1;64(1):210-8. doi: 10.1002/prot.20981.
Effective analysis of large-scale conformational transitions in macromolecules requires transforming them into a lower dimensional representation that captures the dominant motions. Herein, we apply and compare two different dimensionality reduction techniques, namely, principal component analysis (PCA), a linear method, and Sammon mapping, which is nonlinear. The two methods are used to analyze four different protein transition pathways of varying complexity, obtained by using either the conjugate peak refinement method or constrained molecular dynamics. For the return-stroke in myosin, both Sammon mapping and PCA show that the conformational change is dominated by a simple rotation of a rigid body. Also, in the case of the T-->R transition in hemoglobin, both methods are able to identify the two main quaternary transition events. In contrast, in the cases of the unfolding transition of staphylococcal nuclease or the signaling switch of Ras p21, which are both more complex conformational transitions, only Sammon mapping is able to identify the distinct phases of motion.
对大分子中大规模构象转变进行有效分析,需要将它们转化为能捕捉主要运动的低维表示形式。在此,我们应用并比较两种不同的降维技术,即主成分分析(PCA),一种线性方法,以及Sammon映射,这是非线性方法。这两种方法用于分析通过共轭峰细化方法或约束分子动力学获得的四种不同复杂度的蛋白质转变途径。对于肌球蛋白中的回程,Sammon映射和PCA都表明构象变化主要由刚体的简单旋转主导。此外,在血红蛋白的T→R转变的情况下,两种方法都能够识别两个主要的四级转变事件。相比之下,在葡萄球菌核酸酶的解折叠转变或Ras p21的信号开关这两种更复杂的构象转变情况下,只有Sammon映射能够识别不同的运动阶段。