4.3 Article

ATSAS 2.8: a comprehensive data analysis suite for small-angle scattering from macromolecular solutions

期刊

JOURNAL OF APPLIED CRYSTALLOGRAPHY
卷 50, 期 -, 页码 1212-1225

出版社

INT UNION CRYSTALLOGRAPHY
DOI: 10.1107/S1600576717007786

关键词

small-angle scattering; data analysis; biological macromolecules; structural modelling; ATSAS

资金

  1. FP7 Research Infrastructures award [283570, 264257, 653706]
  2. BMBF [05K12YE1, 05K16YEA]
  3. HFSP [RGP0017/2012]
  4. DFG/GACR [9/5-1]

向作者/读者索取更多资源

ATSAS is a comprehensive software suite for the analysis of small-angle scattering data from dilute solutions of biological macromolecules or nanoparticles. It contains applications for primary data processing and assessment, ab initio bead modelling, and model validation, as well as methods for the analysis of flexibility and mixtures. In addition, approaches are supported that utilize information from X-ray crystallography, nuclear magnetic resonance spectroscopy or atomistic homology modelling to construct hybrid models based on the scattering data. This article summarizes the progress made during the 2.5-2.8 ATSAS release series and highlights the latest developments. These include AMBIMETER, an assessment of the reconstruction ambiguity of experimental data; DATCLASS, a multiclass shape classification based on experimental data; SASRES, for estimating the resolution of ab initio model reconstructions; CHROMIXS, a convenient interface to analyse in-line size exclusion chromatography data; SHANUM, to evaluate the useful angular range in measured data; SREFLEX, to refine available high-resolution models using normal mode analysis; SUPALM for a rapid superposition of low-and high resolution models; and SASPy, the ATSAS plugin for interactive modelling in PyMOL. All these features and other improvements are included in the ATSAS release 2.8, freely available for academic users from https://www.emblhamburg.de/biosaxs/software.html.

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