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Dive into the research topics where Fabio Parmeggiani is active.

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Featured researches published by Fabio Parmeggiani.


Journal of Molecular Biology | 2008

Designed Armadillo Repeat Proteins as General Peptide-Binding Scaffolds: Consensus Design and Computational Optimization of the Hydrophobic Core

Fabio Parmeggiani; Riccardo Pellarin; Anders Peter Larsen; Gautham Varadamsetty; Michael T. Stumpp; Oliver Zerbe; Amedeo Caflisch; Andreas Plückthun

Armadillo repeat proteins are abundant eukaryotic proteins involved in several cellular processes, including signaling, transport, and cytoskeletal regulation. They are characterized by an armadillo domain, composed of tandem armadillo repeats of approximately 42 amino acids, which mediates interactions with peptides or parts of proteins in extended conformation. The conserved binding mode of the peptide in extended form, observed for different targets, makes armadillo repeat proteins attractive candidates for the generation of modular peptide-binding scaffolds. Taking advantage of the large number of repeat sequences available, a consensus-based approach combined with a force field-based optimization of the hydrophobic core was used to derive soluble, highly expressed, stable, monomeric designed proteins with improved characteristics compared to natural armadillo proteins. These sequences constitute the starting point for the generation of designed armadillo repeat protein libraries for the selection of peptide binders, exploiting their modular structure and their conserved binding mode.


Nature | 2015

Exploring the repeat protein universe through computational protein design.

T. J. Brunette; Fabio Parmeggiani; Po-Ssu Huang; Gira Bhabha; Damian C. Ekiert; Susan E. Tsutakawa; Greg L. Hura; John A. Tainer; David Baker

A central question in protein evolution is the extent to which naturally occurring proteins sample the space of folded structures accessible to the polypeptide chain. Repeat proteins composed of multiple tandem copies of a modular structure unit are widespread in nature and have critical roles in molecular recognition, signalling, and other essential biological processes. Naturally occurring repeat proteins have been re-engineered for molecular recognition and modular scaffolding applications. Here we use computational protein design to investigate the space of folded structures that can be generated by tandem repeating a simple helix–loop–helix–loop structural motif. Eighty-three designs with sequences unrelated to known repeat proteins were experimentally characterized. Of these, 53 are monomeric and stable at 95 °C, and 43 have solution X-ray scattering spectra consistent with the design models. Crystal structures of 15 designs spanning a broad range of curvatures are in close agreement with the design models with root mean square deviations ranging from 0.7 to 2.5 Å. Our results show that existing repeat proteins occupy only a small fraction of the possible repeat protein sequence and structure space and that it is possible to design novel repeat proteins with precisely specified geometries, opening up a wide array of new possibilities for biomolecular engineering.


Journal of Molecular Biology | 2012

Designed armadillo repeat proteins

Fabio Parmeggiani; Riccardo Pellarin; Anders Peter Larsen; Gautham Varadamsetty; Michael T. Stumpp; Andreas Plückthun

Designed Armadillo repeat proteins (ArmRPs) are a novel class of binding proteins intended for general modular peptide binding and have very favorable expression and stability properties. Using a combination of sequence and structural consensus analyses, we generated a 42-amino-acid designed Armadillo repeat module with six randomized positions, having a theoretical diversity of 9.9×10(6) per repeat. Structural considerations were used to replace cysteine residues, to define less conserved positions and to decide where to introduce randomized amino acid residues for potential interactions with the target peptide. Based on these concepts, combinatorial libraries of designed ArmRPs were assembled. The most stable version of designed ArmRP in library format was the N5C format, with three randomized library repeat modules flanked by full consensus repeat modules on either side and, in turn, flanked by N- and C-terminal capping repeats. Unselected members of this library were well expressed in the Escherichia coli cytoplasm, monomeric and showed the expected CD spectra and cooperative unfolding. N5C libraries were used in ribosome display selections against the peptide neurotensin. Highly specific peptide binders were enriched after four rounds of selections using ribosome display. Four peptide side chains were shown to contribute most of the interaction energy, and single alanine mutants could be discriminated. Thus, designed ArmRP libraries can become valuable sources for peptide binding molecules because of their favorable biophysical properties and with a potential for application in general modular peptide recognition.


Nature Chemical Biology | 2016

De novo design of a four-fold symmetric TIM-barrel protein with atomic-level accuracy

Po-Ssu Huang; Kaspar Feldmeier; Fabio Parmeggiani; D. Alejandro Fernández Velasco; Birte Höcker; David Baker

Despite efforts for over 25 years, de novo protein design has not succeeded in achieving the TIM-barrel fold. Here we describe the computational design of 4-fold symmetrical (β/α)8-barrels guided by geometrical and chemical principles. Experimental characterization of 33 designs revealed the importance of sidechain-backbone hydrogen bonding for defining the strand register between repeat units. The X-ray crystal structure of a designed thermostable 184-residue protein is nearly identical with the designed TIM-barrel model. PSI-BLAST searches do not identify sequence similarities to known TIM-barrel proteins, and sensitive profile-profile searches indicate that the design sequence is distant from other naturally occurring TIM-barrel superfamilies, suggesting that Nature has only sampled a subset of the sequence space available to the TIM-barrel fold. The ability to de novo design TIM-barrels opens new possibilities for custom-made enzymes.


Nature Structural & Molecular Biology | 2015

Control of repeat-protein curvature by computational protein design

Keunwan Park; Betty W. Shen; Fabio Parmeggiani; Po-Ssu Huang; Barry L. Stoddard; David Baker

Shape complementarity is an important component of molecular recognition, and the ability to precisely adjust the shape of a binding scaffold to match a target of interest would greatly facilitate the creation of high-affinity protein reagents and therapeutics. Here we describe a general approach to control the shape of the binding surface on repeat-protein scaffolds and apply it to leucine-rich-repeat proteins. First, self-compatible building-block modules are designed that, when polymerized, generate surfaces with unique but constant curvatures. Second, a set of junction modules that connect the different building blocks are designed. Finally, new proteins with custom-designed shapes are generated by appropriately combining building-block and junction modules. Crystal structures of the designs illustrate the power of the approach in controlling repeat-protein curvature.


Nature | 2015

Rational design of α-helical tandem repeat proteins with closed architectures

Lindsey Doyle; Jazmine P. Hallinan; Jill M. Bolduc; Fabio Parmeggiani; David Baker; Barry L. Stoddard; Philip Bradley

Tandem repeat proteins, which are formed by repetition of modular units of protein sequence and structure, play important biological roles as macromolecular binding and scaffolding domains, enzymes, and building blocks for the assembly of fibrous materials. The modular nature of repeat proteins enables the rapid construction and diversification of extended binding surfaces by duplication and recombination of simple building blocks. The overall architecture of tandem repeat protein structures—which is dictated by the internal geometry and local packing of the repeat building blocks—is highly diverse, ranging from extended, super-helical folds that bind peptide, DNA, and RNA partners, to closed and compact conformations with internal cavities suitable for small molecule binding and catalysis. Here we report the development and validation of computational methods for de novo design of tandem repeat protein architectures driven purely by geometric criteria defining the inter-repeat geometry, without reference to the sequences and structures of existing repeat protein families. We have applied these methods to design a series of closed α-solenoid repeat structures (α-toroids) in which the inter-repeat packing geometry is constrained so as to juxtapose the amino (N) and carboxy (C) termini; several of these designed structures have been validated by X-ray crystallography. Unlike previous approaches to tandem repeat protein engineering, our design procedure does not rely on template sequence or structural information taken from natural repeat proteins and hence can produce structures unlike those seen in nature. As an example, we have successfully designed and validated closed α-solenoid repeats with a left-handed helical architecture that—to our knowledge—is not yet present in the protein structure database.


Journal of Molecular Biology | 2015

A general computational approach for repeat protein design

Fabio Parmeggiani; Po-Ssu Huang; Sergey M. Vorobiev; Rong Xiao; Keunwan Park; Silvia Caprari; Min Su; Jayaraman Seetharaman; Lei Mao; Haleema Janjua; Gaetano T. Montelione; John F. Hunt; David Baker

Repeat proteins have considerable potential for use as modular binding reagents or biomaterials in biomedical and nanotechnology applications. Here we describe a general computational method for building idealized repeats that integrates available family sequences and structural information with Rosetta de novo protein design calculations. Idealized designs from six different repeat families were generated and experimentally characterized; 80% of the proteins were expressed and soluble and more than 40% were folded and monomeric with high thermal stability. Crystal structures determined for members of three families are within 1Å root-mean-square deviation to the design models. The method provides a general approach for fast and reliable generation of stable modular repeat protein scaffolds.


Nucleic Acids Research | 2012

Engineering domain fusion chimeras from I-OnuI family LAGLIDADG homing endonucleases

Sarah K. Baxter; Abigail R. Lambert; Ryan Kuhar; Jordan Jarjour; Nadia Kulshina; Fabio Parmeggiani; Patrick Danaher; Jacob Gano; David Baker; Barry L. Stoddard; Andrew M. Scharenberg

Although engineered LAGLIDADG homing endonucleases (LHEs) are finding increasing applications in biotechnology, their generation remains a challenging, industrial-scale process. As new single-chain LAGLIDADG nuclease scaffolds are identified, however, an alternative paradigm is emerging: identification of an LHE scaffold whose native cleavage site is a close match to a desired target sequence, followed by small-scale engineering to modestly refine recognition specificity. The application of this paradigm could be accelerated if methods were available for fusing N- and C-terminal domains from newly identified LHEs into chimeric enzymes with hybrid cleavage sites. Here we have analyzed the structural requirements for fusion of domains extracted from six single-chain I-OnuI family LHEs, spanning 40–70% amino acid identity. Our analyses demonstrate that both the LAGLIDADG helical interface residues and the linker peptide composition have important effects on the stability and activity of chimeric enzymes. Using a simple domain fusion method in which linker peptide residues predicted to contact their respective domains are retained, and in which limited variation is introduced into the LAGLIDADG helix and nearby interface residues, catalytically active enzymes were recoverable for ∼70% of domain chimeras. This method will be useful for creating large numbers of chimeric LHEs for genome engineering applications.


Protein Science | 2012

Optimization of designed armadillo repeat proteins by molecular dynamics simulations and NMR spectroscopy

Pietro Alfarano; Gautham Varadamsetty; Christina Ewald; Fabio Parmeggiani; Riccardo Pellarin; Oliver Zerbe; Andreas Plückthun; Amedeo Caflisch

A multidisciplinary approach based on molecular dynamics (MD) simulations using homology models, NMR spectroscopy, and a variety of biophysical techniques was used to efficiently improve the thermodynamic stability of armadillo repeat proteins (ArmRPs). ArmRPs can form the basis of modular peptide recognition and the ArmRP version on which synthetic libraries are based must be as stable as possible. The 42‐residue internal Arm repeats had been designed previously using a sequence‐consensus method. Heteronuclear NMR revealed unfavorable interactions present at neutral but absent at high pH. Two lysines per repeat were involved in repulsive interactions, and stability was increased by mutating both to glutamine. Five point mutations in the capping repeats were suggested by the analysis of positional fluctuations and configurational entropy along multiple MD simulations. The most stabilizing single C‐cap mutation Q240L was inferred from explicit solvent MD simulations, in which water penetrated the ArmRP. All mutants were characterized by temperature‐ and denaturant‐unfolding studies and the improved mutants were established as monomeric species with cooperative folding and increased stability against heat and denaturant. Importantly, the mutations tested resulted in a cumulative decrease of flexibility of the folded state in silico and a cumulative increase of thermodynamic stability in vitro. The final construct has a melting temperature of about 85°C, 14.5° higher than the starting sequence. This work indicates that in silico studies in combination with heteronuclear NMR and other biophysical tools may provide a basis for successfully selecting mutations that rapidly improve biophysical properties of the target proteins.


Nature Chemistry | 2017

Computational design of self-assembling cyclic protein homo-oligomers.

Jorge A. Fallas; George Ueda; William Sheffler; Vanessa Nguyen; Dan E. McNamara; Banumathi Sankaran; Jose H. Pereira; Fabio Parmeggiani; T. J. Brunette; Duilio Cascio; Todd R. Yeates; Peter H. Zwart; David Baker

Self-assembling cyclic protein homo-oligomers play important roles in biology and the ability to generate custom homo-oligomeric structures could enable new approaches to probe biological function. Here we report a general approach to design cyclic homo-oligomers that employs a new residue pair transform method for assessing the design ability of a protein-protein interface. This method is sufficiently rapid to enable systematic enumeration of cyclically docked arrangements of a monomer followed by sequence design of the newly formed interfaces. We use this method to design interfaces onto idealized repeat proteins that direct their assembly into complexes that possess cyclic symmetry. Of 96 designs that were experimentally characterized, 21 were found to form stable monodisperse homo-oligomers in solution, and 15 (4 homodimers, 6 homotrimers, 6 homotetramers and 1 homopentamer) had solution small angle X-ray scattering data consistent with the design models. X-ray crystal structures were obtained for five of the designs and each of these were shown to be very close to their design model.

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David Baker

University of Washington

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Po-Ssu Huang

University of Washington

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Barry L. Stoddard

Fred Hutchinson Cancer Research Center

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Banumathi Sankaran

Lawrence Berkeley National Laboratory

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Jose H. Pereira

Lawrence Berkeley National Laboratory

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