2019
DOI: 10.1093/bioinformatics/btz497
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Positive multistate protein design

Abstract: Motivation Structure-based computational protein design (CPD) plays a critical role in advancing the field of protein engineering. Using an all-atom energy function, CPD tries to identify amino acid sequences that fold into a target structure and ultimately perform a desired function. The usual approach considers a single rigid backbone as a target, which ignores backbone flexibility. Multistate design (MSD) allows instead to consider several backbone states simultaneously, defining challengi… Show more

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Cited by 22 publications
(41 citation statements)
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References 32 publications
(6 reference statements)
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“…to optimize specificity or a bound vs. unbound state), a sequence that maximizes the di↵erence in optimal energies between desirable and undesirable states is often sought. These "negative design" problems define computationally far more challenging NP NP -complete problems [69]. This is consistent with the fact that solving a negative multi-state design problem requires to explore the sequence space, and for each sequence and state, to explore its conformation space.…”
Section: Algorithms Considering Several Input Structuresmentioning
confidence: 71%
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“…to optimize specificity or a bound vs. unbound state), a sequence that maximizes the di↵erence in optimal energies between desirable and undesirable states is often sought. These "negative design" problems define computationally far more challenging NP NP -complete problems [69]. This is consistent with the fact that solving a negative multi-state design problem requires to explore the sequence space, and for each sequence and state, to explore its conformation space.…”
Section: Algorithms Considering Several Input Structuresmentioning
confidence: 71%
“…When the aim is to stabilize any of the considered conformational states, the Boltzmann-weighted average of the energies (defined as the sum of optimal energies, weighted by their Boltzmann probabilities) in each state may be an attractive criteria [14]. Because this gives an exponential advantage to the backbone with lowest energy, the computation of this fitness has been approximated by the minimum optimal energy [12,33,69] defining what is called "multistate analysis" (MSA) [13]. MSA showed interesting results when combined with local backbone fluctuation search algorithms for each state.…”
Section: Algorithms Considering Several Input Structuresmentioning
confidence: 99%
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