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Pepsin-like aspartic proteases (PAPs) as model systems for combining biomolecular simulation with biophysical experiments

Bhakat, Soumendranath LU (2021) In RSC Advances 11(18). p.11026-11047
Abstract

Pepsin-like aspartic proteases (PAPs) are a class of aspartic proteases which shares tremendous structural similarity with human pepsin. One of the key structural features of PAPs is the presence of a β-hairpin motif otherwise known as flap. The biological function of the PAPs is highly dependent on the conformational dynamics of the flap region. In apo PAPs, the conformational dynamics of the flap is dominated by the rotational degrees of freedom associated withχ1 andχ2 angles of conserved Tyr (or Phe in some cases). However it is plausible that dihedral order parameters associated with several other residues might play crucial roles in the conformational dynamics of apo PAPs. Due to their size, complexities associated with... (More)

Pepsin-like aspartic proteases (PAPs) are a class of aspartic proteases which shares tremendous structural similarity with human pepsin. One of the key structural features of PAPs is the presence of a β-hairpin motif otherwise known as flap. The biological function of the PAPs is highly dependent on the conformational dynamics of the flap region. In apo PAPs, the conformational dynamics of the flap is dominated by the rotational degrees of freedom associated withχ1 andχ2 angles of conserved Tyr (or Phe in some cases). However it is plausible that dihedral order parameters associated with several other residues might play crucial roles in the conformational dynamics of apo PAPs. Due to their size, complexities associated with conformational dynamics and clinical significance (drug targets for malaria, Alzheimer's diseaseetc.), PAPs provide a challenging testing ground for computational and experimental methods focusing on understanding conformational dynamics and molecular recognition in biomolecules. The opening of the flap region is necessary to accommodate substrate/ligand in the active site of the PAPs. The BIG challenge is to gain atomistic details into how reversible ligand binding/unbinding (molecular recognition) affects the conformational dynamics. Recent reports of kinetics (Ki,Kd) and thermodynamic parameters (ΔH,TΔS, and ΔG) associated with macro-cyclic ligands bound to BACE1 (belongs to PAP family) provide a perfect challenge (how to deal with big ligands with multiple torsional angles and select optimum order parameters to study reversible ligand binding/unbinding) for computational methods to predict binding free energies and kinetics beyond typical test systemse.g.benzamide-trypsin. In this work, i reviewed several order parameters which were proposed to capture the conformational dynamics and molecular recognition in PAPs. I further highlighted how machine learning methods can be used as order parameters in the context of PAPs. I then proposed some open ideas and challenges in the context of molecular simulation and put forward my case on how biophysical experimentse.g.NMR, time-resolved FRETetc.can be used in conjunction with biomolecular simulation to gain complete atomistic insights into the conformational dynamics of PAPs.

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author
organization
publishing date
type
Contribution to journal
publication status
published
subject
in
RSC Advances
volume
11
issue
18
pages
22 pages
publisher
Royal Society of Chemistry
external identifiers
  • scopus:85102736155
  • pmid:35423571
ISSN
2046-2069
DOI
10.1039/d0ra10359d
language
English
LU publication?
yes
id
8f6031e5-9442-47dd-bd1d-f6a2cb25af9a
date added to LUP
2021-03-31 07:52:28
date last changed
2024-06-01 08:20:01
@article{8f6031e5-9442-47dd-bd1d-f6a2cb25af9a,
  abstract     = {{<p>Pepsin-like aspartic proteases (PAPs) are a class of aspartic proteases which shares tremendous structural similarity with human pepsin. One of the key structural features of PAPs is the presence of a β-hairpin motif otherwise known as flap. The biological function of the PAPs is highly dependent on the conformational dynamics of the flap region. In apo PAPs, the conformational dynamics of the flap is dominated by the rotational degrees of freedom associated withχ1 andχ2 angles of conserved Tyr (or Phe in some cases). However it is plausible that dihedral order parameters associated with several other residues might play crucial roles in the conformational dynamics of apo PAPs. Due to their size, complexities associated with conformational dynamics and clinical significance (drug targets for malaria, Alzheimer's diseaseetc.), PAPs provide a challenging testing ground for computational and experimental methods focusing on understanding conformational dynamics and molecular recognition in biomolecules. The opening of the flap region is necessary to accommodate substrate/ligand in the active site of the PAPs. The BIG challenge is to gain atomistic details into how reversible ligand binding/unbinding (molecular recognition) affects the conformational dynamics. Recent reports of kinetics (K<sub>i</sub>,K<sub>d</sub>) and thermodynamic parameters (ΔH,TΔS, and ΔG) associated with macro-cyclic ligands bound to BACE1 (belongs to PAP family) provide a perfect challenge (how to deal with big ligands with multiple torsional angles and select optimum order parameters to study reversible ligand binding/unbinding) for computational methods to predict binding free energies and kinetics beyond typical test systemse.g.benzamide-trypsin. In this work, i reviewed several order parameters which were proposed to capture the conformational dynamics and molecular recognition in PAPs. I further highlighted how machine learning methods can be used as order parameters in the context of PAPs. I then proposed some open ideas and challenges in the context of molecular simulation and put forward my case on how biophysical experimentse.g.NMR, time-resolved FRETetc.can be used in conjunction with biomolecular simulation to gain complete atomistic insights into the conformational dynamics of PAPs.</p>}},
  author       = {{Bhakat, Soumendranath}},
  issn         = {{2046-2069}},
  language     = {{eng}},
  number       = {{18}},
  pages        = {{11026--11047}},
  publisher    = {{Royal Society of Chemistry}},
  series       = {{RSC Advances}},
  title        = {{Pepsin-like aspartic proteases (PAPs) as model systems for combining biomolecular simulation with biophysical experiments}},
  url          = {{http://dx.doi.org/10.1039/d0ra10359d}},
  doi          = {{10.1039/d0ra10359d}},
  volume       = {{11}},
  year         = {{2021}},
}