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Unread 02-02-2018, 11:31 PM
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Default Optimal Tikhonov Regularization for DEER Spectroscopy

Optimal Tikhonov Regularization for DEER Spectroscopy

Publication date: Available online 1 February 2018
Source:Journal of Magnetic Resonance

Author(s): Thomas H. Edwards, Stefan Stoll

Tikhonov regularization is the most commonly used method for extracting distance distributions from experimental double electron-electron resonance (DEER) spectroscopy data. This method requires the selection of a regularization parameter, ? , and a regularization operator, L. We analyze the performance of a large set of ? selection methods and several regularization operators, using a test set of over half a million synthetic noisy DEER traces. These are generated from distance distributions obtained from in silico double labeling of a protein crystal structure of T4 lysozyme with the spin label MTSSL. We compare the methods and operators based on their ability to recover the model distance distributions from the noisy time traces. The results indicate that several ? selection methods perform quite well, among them the Akaike information criterion and the generalized cross validation with either the first- or second-derivative operator. They perform significantly better than currently utilized L-curve methods.
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