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Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific binding properties and activities?

Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

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Page 1: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Computational engineering of bionanostructuresRam Samudrala

University of Washington

How can we analyse, design, & engineerpeptides capable of specific binding

properties and activities?

Page 2: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

A comprehensive computational approach

• Sequence-based informatics- analyse sequence patterns responsible for binding specificitywithin experimentally characterised binders by creatingspecialised similarity matrices

• Structure-based informatics- analyse structural patterns within experimental characterisedbinders by performing de novo simulations both in the presence and absence of substrate

• Computational design- use de novo protocol to predict structures of the bestcandidate peptides or peptide assemblies, with validation by further experiment

Page 3: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Sequence-based informatics

• Create specialised similarity matrices by optimising the alignment scores such that strong, moderate, and weak binders for a given inorganic substrate cluster together – determines sequences patterns:

Ersin Emre Oren (Sarikaya group)

Page 4: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Protein folding

…-L-K-E-G-V-S-K-D-…

…-CTA-AAA-GAA-GGT-GTT-AGC-AAG-GTT-…

one amino acid

Gene

Protein sequence

Unfolded protein

Native biologicallyrelevant state

spontaneous self-organisation (~1 second)

not uniquemobileinactive

expandedirregular

Page 5: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Protein folding

…-L-K-E-G-V-S-K-D-…

…-CTA-AAA-GAA-GGT-GTT-AGC-AAG-GTT-…

one amino acid

Gene

Protein sequence

Unfolded protein

Native biologicallyrelevant state

spontaneous self-organisation (~1 second)

unique shapeprecisely orderedstable/functionalglobular/compacthelices and sheets

not uniquemobileinactive

expandedirregular

Page 6: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Structure-based informatics: De novo prediction of protein structure

astronomically large number of conformations5 states/100 residues = 5100 = 1070

select

hard to design functionsthat are not fooled by

non-native conformations(“decoys”)

sample conformational space such thatnative-like conformations are found

Page 7: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Semi-exhaustive segment-based foldingEFDVILKAAGANKVAVIKAVRGATGLGLKEAKDLVESAPAALKEGVSKDDAEALKKALEEAGAEVEVK

generateMake random moves to optimisewhat is observed in known structures

… …

minimiseFind the most protein-like structures

… …

filter all-atom pairwise interactions, bad contactscompactness, secondary structure,consensus of generated conformations

Page 8: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

CASP prediction for T2155.0 Å Cα RMSD for all 53 residues

Ling-Hong Hung/Shing-Chung Ngan

Page 9: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Ling-Hong Hung/Shing-Chung Ngan

CASP prediction for T2814.3 Å Cα RMSD for all 70 residues

Page 10: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

CASP prediction for T1384.6 Å Cα RMSD for 84 residues

Page 11: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

CASP prediction for T1465.6 Å Cα RMSD for 67 residues

Page 12: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

CASP prediction for T1704.8 Å Cα RMSD for all 69 residues

Page 13: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Structure-based informatics

• Make predictions of peptides without the presence of substrates using de novo protocol

• Make predictions of peptides in the presence of substrates using physics-based force-fields such as GROMACS

• Analyse for similarity of structures (local and global) as well as common contact patterns between atoms in amino acids – the structural similarities and patterns give us the structural patterns responsible for folding and inorganic substrate binding

• Perform higher-order simulations that involve many copies of a single or multiple peptides to generate sequences with specific stabilities and inorganic binding properties – larger assemblies for more controlled binding

Page 14: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Computational design

• Select the most promising candidate peptides generated from the sequence- and structure-based informatics for further simulation and design

• Simulations can be performed to ensure that active sites and/or topologies found in nature are grafted onto these peptides

• Experimental validation – synthesise peptides and check for binding activity

• Main goal here is to help with rational design of inorganic binding peptides and focus experimental efforts in a more optimal manner

• A good framework to obtain knowledge obtained experimentally with state of the protein structure prediction methodologies

Page 15: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

oxidoreductase transferase

hydrolase ligase

lyase

Grafting of biological active sites onto engineered peptides

TIM barrelproteins

2246 withknown structure

Page 16: Computational engineering of bionanostructures Ram Samudrala University of Washington How can we analyse, design, & engineer peptides capable of specific

Acknowledgements

Samudrala group:

Aaron ChangChuck MaderDavid NickleEkachai JenwitheesukGong Cheng Jason McDermottJeremy Horst

Sarikaya group:

Ersin Emre Oren

National Institutes of HealthNational Science Foundation

Searle Scholars Program (Kinship Foundation)Puget Sound Partners in Global Health

UW Advanced Technology Initiative in Infectious Diseases

http://bioverse.compbio.washington.eduhttp://protinfo.compbio.washington.edu

Kai WangLing-Hong HungMichal GuerquinShing-Chung NganStewart MoughonTianyun LuZach Frazier