| Literature DB >> 35439683 |
Luis Fábregas-Ibáñez1, Gunnar Jeschke2, Stefan Stoll3.
Abstract
Dipolar electron paramagnetic resonance (EPR) experiments, such as double electron-electron resonance (DEER), measure distributions of nanometer-scale distances between paramagnetic centers, which are valuable for structural characterization of proteins and other macromolecular systems. One challenge in the least-squares fitting analysis of dipolar EPR data is the separation of the inter-molecular contribution (background) and the intra-molecular contribution. For noisy experimental traces of insufficient length, this separation is not unique, leading to identifiability problems for the background model parameters and the long-distance region of the intra-molecular distance distribution. Here, we introduce a regularization approach that mitigates this by including an additional penalty term in the objective function that is proportional to the variance of the distance distribution and thereby penalizes non-compact distributions. We examine the reliability of this approach statistically on a large set of synthetic data and illustrate it with an experimental example. The results show that the introduction of compactness can improve identifiability.Entities:
Keywords: Compactness; DEER; Data analysis; Dipolar EPR spectroscopy; Distance distribution; Electron paramagnetic resonance; Identifiablity; PELDOR; Profile likelihood; Pulse dipolar spectroscopy; Regularization
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Year: 2022 PMID: 35439683 DOI: 10.1016/j.jmr.2022.107218
Source DB: PubMed Journal: J Magn Reson ISSN: 1090-7807 Impact factor: 2.229