4 research outputs found
LassoHTP: a High-throughput Computational Tool for Lasso Peptide Structure Construction and Modeling
Lasso peptides are a sub-class of ribosomally synthesized and post-translationally modified peptides with a slipknot conformation. Often with superior thermal stability, protease resistance, and antimicrobial activity, lasso peptides are promising candidates for bioengineering and pharmseutical applications. To enable high-throughput computational prediction and design of lasso peptides, we developed software, LassoHTP, for automatic lasso peptide structure construction and modeling. LassoHTP consists of three modules, including: scaffold constructor, mutant generator, and molecular dynamics (MD) simulator. Based on a user-provided sequence and conformational annotation, LassoHTP can either generate the structure and conformational ensemble as is or conduct random mutagenesis. We used LassoHTP to construct eight known lasso peptide structures de novo and to simulate their conformational ensembles from 100 ns MD simulations. For benchmarking, we calculated the root mean square deviation (RMSD) of these ensembles with reference to their experimental crystal or NMR PDB structures; we also compared these RMSD values against those of the MD ensembles that are initiated from the PDB structures. The results show that the RMSD values of the LassoHTP-initiated ensembles are highly similar to those of the PDB-initiated ensembles with the ∆RMSD ranging from 0.0 to 1.2 Å and averaging at 0.5 Å. LassoHTP offers a computational platform to develop strategies for lasso peptide prediction and design
LassoHTP: A High-Throughput Computational Tool for Lasso Peptide Structure Construction and Modeling
Lasso peptides are a subclass of ribosomally synthesized
and post-translationally
modified peptides with a slipknot conformation. With superior thermal
stability, protease resistance, and antimicrobial activity, lasso
peptides are promising candidates for bioengineering and pharmaceutical
applications. To enable high-throughput computational prediction and
design of lasso peptides, we developed a software, LassoHTP, for automatic
lasso peptide structure construction and modeling. LassoHTP consists
of three modules, including the scaffold constructor, mutant generator,
and molecular dynamics (MD) simulator. With a user-provided sequence
and conformational annotation, LassoHTP can either generate the structure
and conformational ensemble as is or conduct random mutagenesis. We
used LassoHTP to construct eight known lasso peptide structures de novo and to simulate their conformational ensembles for
100 ns MD simulations. For benchmarking, we calculated the root mean
square deviation (RMSD) of these ensembles with reference to their
experimental crystal or NMR PDB structures; we also compared these
RMSD values against those of the MD ensembles that are initiated from
the PDB structures. Dihedral principal component analysis was also
conducted. The results show that the LassoHTP-initiated ensembles
are similar to those of the PDB-initiated ensembles. LassoHTP offers
a computational platform to develop strategies for lasso peptide prediction
and design
LassoHTP: A High-Throughput Computational Tool for Lasso Peptide Structure Construction and Modeling
Lasso peptides are a subclass of ribosomally synthesized
and post-translationally
modified peptides with a slipknot conformation. With superior thermal
stability, protease resistance, and antimicrobial activity, lasso
peptides are promising candidates for bioengineering and pharmaceutical
applications. To enable high-throughput computational prediction and
design of lasso peptides, we developed a software, LassoHTP, for automatic
lasso peptide structure construction and modeling. LassoHTP consists
of three modules, including the scaffold constructor, mutant generator,
and molecular dynamics (MD) simulator. With a user-provided sequence
and conformational annotation, LassoHTP can either generate the structure
and conformational ensemble as is or conduct random mutagenesis. We
used LassoHTP to construct eight known lasso peptide structures de novo and to simulate their conformational ensembles for
100 ns MD simulations. For benchmarking, we calculated the root mean
square deviation (RMSD) of these ensembles with reference to their
experimental crystal or NMR PDB structures; we also compared these
RMSD values against those of the MD ensembles that are initiated from
the PDB structures. Dihedral principal component analysis was also
conducted. The results show that the LassoHTP-initiated ensembles
are similar to those of the PDB-initiated ensembles. LassoHTP offers
a computational platform to develop strategies for lasso peptide prediction
and design
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LassoHTP: A High-Throughput Computational Tool for Lasso Peptide Structure Construction and Modeling
Lasso peptides are a subclass of ribosomally synthesized
and post-translationally
modified peptides with a slipknot conformation. With superior thermal
stability, protease resistance, and antimicrobial activity, lasso
peptides are promising candidates for bioengineering and pharmaceutical
applications. To enable high-throughput computational prediction and
design of lasso peptides, we developed a software, LassoHTP, for automatic
lasso peptide structure construction and modeling. LassoHTP consists
of three modules, including the scaffold constructor, mutant generator,
and molecular dynamics (MD) simulator. With a user-provided sequence
and conformational annotation, LassoHTP can either generate the structure
and conformational ensemble as is or conduct random mutagenesis. We
used LassoHTP to construct eight known lasso peptide structures de novo and to simulate their conformational ensembles for
100 ns MD simulations. For benchmarking, we calculated the root mean
square deviation (RMSD) of these ensembles with reference to their
experimental crystal or NMR PDB structures; we also compared these
RMSD values against those of the MD ensembles that are initiated from
the PDB structures. Dihedral principal component analysis was also
conducted. The results show that the LassoHTP-initiated ensembles
are similar to those of the PDB-initiated ensembles. LassoHTP offers
a computational platform to develop strategies for lasso peptide prediction
and design