Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5914824 | Journal of Structural Biology | 2011 | 10 Pages |
Abstract
Computational algorithms to construct structural models from SAXS experimental data are reviewed. SAXS data provides a wealth of information to study the structure and dynamics of biological molecules, however it does not provide atomic details of structures. Thus combining the low-resolution data with already known X-ray structure is a common approach to study conformational transitions of biological molecules. This review provides a survey of SAXS modeling approaches. In addition, we will discuss theoretical backgrounds and performance of our approach, in which elastic network normal mode analysis is used to predict reasonable conformational transitions from known X-ray structures, and find alternative conformations that are consistent with SAXS data.
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Authors
Osamu Miyashita, Christian Gorba, Florence Tama,