Rapid prediction of multi-dimensional NMR data sets using FANDAS

Publication date

2018

Authors

Narasimhan, SiddarthISNI 0000000493311093
Mance, DeniISNI 0000000506025003
de Agrela Pinto, CeciliaISNI 0000000443853142
Weingarth, MarkusISNI 0000000358154718
Bonvin, A.M.J.J.ORCID 0000-0001-7369-1322ISNI 0000000396501354
Baldus, MarcISNI 0000000139673796

Editors

Ghose, Ranajeet

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

Abstract

Solid-state NMR (ssNMR) can provide structural information at the most detailed level and, at the same time, is applicable in highly heterogeneous and complex molecular environments. In the last few years, ssNMR has made significant progress in uncovering structure and dynamics of proteins in their native cellular environments [1–4]. Additionally, ssNMR has proven to be useful in studying large biomolecular complexes as well as membrane proteins at the atomic level [5]. In such studies, innovative labeling schemes have become a powerful approach to tackle spectral crowding. In fact, selecting the appropriate isotope-labeling schemes and a careful choice of the ssNMR experiments to be conducted are critical for applications of ssNMR in complex biomolecular systems. Previously, we have introduced a software tool called FANDAS (Fast Analysis of multidimensional NMR DAta Sets) that supports such investigations from the early stages of sample preparation to the final data analysis [6]. Here, we present a new version of FANDAS, called FANDAS 2.0, with improved user interface and extended labeling scheme options allowing the user to rapidly predict and analyze ssNMR data sets for a given protein-based application. It provides flexible options for advanced users to customize the program for tailored applications. In addition, the list of ssNMR experiments that can be predicted now includes proton (1H) detected pulse sequences. FANDAS 2.0, written in Python, is freely available through a user-friendly web interface at http://milou.science.uu.nl/services/FANDAS.

Keywords

Biomolecular NMR, Labeling schemes, Spectral analysis and proton detection, Spectral prediction, Taverne, Molecular Biology, Genetics

Citation

Narasimhan, S, Mance, D, de Agrela Pinto, C, Weingarth, M, Bonvin, A M J J & Baldus, M 2018, Rapid prediction of multi-dimensional NMR data sets using FANDAS. in R Ghose (ed.), Protein NMR : Methods and Protocols. Methods in Molecular Biology, vol. 1688, Humana Press, New York, pp. 111-132. https://doi.org/10.1007/978-1-4939-7386-6_6