6 research outputs found
APE-Gen2.0: Expanding Rapid Class I PeptideāMajor Histocompatibility Complex Modeling to Post-Translational Modifications and Noncanonical Peptide Geometries
The recognition of peptides bound to class I major histocompatibility
complex (MHC-I) receptors by T-cell receptors (TCRs) is a determinant
of triggering the adaptive immune response. While the exact molecular
features that drive the TCR recognition are still unknown, studies
have suggested that the geometry of the joint peptideāMHC (pMHC)
structure plays an important role. As such, there is a definite need
for methods and tools that accurately predict the structure of the
peptide bound to the MHC-I receptor. In the past few years, many pMHC
structural modeling tools have emerged that provide high-quality modeled
structures in the general case. However, there are numerous instances
of non-canonical cases in the immunopeptidome that the majority of
pMHC modeling tools do not attend to, most notably, peptides that
exhibit non-standard amino acids and post-translational modifications
(PTMs) or peptides that assume non-canonical geometries in the MHC
binding cleft. Such chemical and structural properties have been shown
to be present in neoantigens; therefore, accurate structural modeling
of these instances can be vital for cancer immunotherapy. To this
end, we have developed APE-Gen2.0, a tool that improves upon its predecessor
and other pMHC modeling tools, both in terms of modeling accuracy
and the available modeling range of non-canonical peptide cases. Some
of the improvements include (i) the ability to model peptides that
have different types of PTMs such as phosphorylation, nitration, and
citrullination; (ii) a new and improved anchor identification routine
in order to identify and model peptides that exhibit a non-canonical
anchor conformation; and (iii) a web server that provides a platform
for easy and accessible pMHC modeling. We further show that structures
predicted by APE-Gen2.0 can be used to assess the effects that PTMs
have in binding affinity in a more accurate manner than just using
solely the sequence of the peptide. APE-Gen2.0 is freely available
at https://apegen.kavrakilab.org
APE-Gen2.0: Expanding Rapid Class I PeptideāMajor Histocompatibility Complex Modeling to Post-Translational Modifications and Noncanonical Peptide Geometries
The recognition of peptides bound to class I major histocompatibility
complex (MHC-I) receptors by T-cell receptors (TCRs) is a determinant
of triggering the adaptive immune response. While the exact molecular
features that drive the TCR recognition are still unknown, studies
have suggested that the geometry of the joint peptideāMHC (pMHC)
structure plays an important role. As such, there is a definite need
for methods and tools that accurately predict the structure of the
peptide bound to the MHC-I receptor. In the past few years, many pMHC
structural modeling tools have emerged that provide high-quality modeled
structures in the general case. However, there are numerous instances
of non-canonical cases in the immunopeptidome that the majority of
pMHC modeling tools do not attend to, most notably, peptides that
exhibit non-standard amino acids and post-translational modifications
(PTMs) or peptides that assume non-canonical geometries in the MHC
binding cleft. Such chemical and structural properties have been shown
to be present in neoantigens; therefore, accurate structural modeling
of these instances can be vital for cancer immunotherapy. To this
end, we have developed APE-Gen2.0, a tool that improves upon its predecessor
and other pMHC modeling tools, both in terms of modeling accuracy
and the available modeling range of non-canonical peptide cases. Some
of the improvements include (i) the ability to model peptides that
have different types of PTMs such as phosphorylation, nitration, and
citrullination; (ii) a new and improved anchor identification routine
in order to identify and model peptides that exhibit a non-canonical
anchor conformation; and (iii) a web server that provides a platform
for easy and accessible pMHC modeling. We further show that structures
predicted by APE-Gen2.0 can be used to assess the effects that PTMs
have in binding affinity in a more accurate manner than just using
solely the sequence of the peptide. APE-Gen2.0 is freely available
at https://apegen.kavrakilab.org
APE-Gen2.0: Expanding Rapid Class I PeptideāMajor Histocompatibility Complex Modeling to Post-Translational Modifications and Noncanonical Peptide Geometries
The recognition of peptides bound to class I major histocompatibility
complex (MHC-I) receptors by T-cell receptors (TCRs) is a determinant
of triggering the adaptive immune response. While the exact molecular
features that drive the TCR recognition are still unknown, studies
have suggested that the geometry of the joint peptideāMHC (pMHC)
structure plays an important role. As such, there is a definite need
for methods and tools that accurately predict the structure of the
peptide bound to the MHC-I receptor. In the past few years, many pMHC
structural modeling tools have emerged that provide high-quality modeled
structures in the general case. However, there are numerous instances
of non-canonical cases in the immunopeptidome that the majority of
pMHC modeling tools do not attend to, most notably, peptides that
exhibit non-standard amino acids and post-translational modifications
(PTMs) or peptides that assume non-canonical geometries in the MHC
binding cleft. Such chemical and structural properties have been shown
to be present in neoantigens; therefore, accurate structural modeling
of these instances can be vital for cancer immunotherapy. To this
end, we have developed APE-Gen2.0, a tool that improves upon its predecessor
and other pMHC modeling tools, both in terms of modeling accuracy
and the available modeling range of non-canonical peptide cases. Some
of the improvements include (i) the ability to model peptides that
have different types of PTMs such as phosphorylation, nitration, and
citrullination; (ii) a new and improved anchor identification routine
in order to identify and model peptides that exhibit a non-canonical
anchor conformation; and (iii) a web server that provides a platform
for easy and accessible pMHC modeling. We further show that structures
predicted by APE-Gen2.0 can be used to assess the effects that PTMs
have in binding affinity in a more accurate manner than just using
solely the sequence of the peptide. APE-Gen2.0 is freely available
at https://apegen.kavrakilab.org
APE-Gen2.0: Expanding Rapid Class I PeptideāMajor Histocompatibility Complex Modeling to Post-Translational Modifications and Noncanonical Peptide Geometries
The recognition of peptides bound to class I major histocompatibility
complex (MHC-I) receptors by T-cell receptors (TCRs) is a determinant
of triggering the adaptive immune response. While the exact molecular
features that drive the TCR recognition are still unknown, studies
have suggested that the geometry of the joint peptideāMHC (pMHC)
structure plays an important role. As such, there is a definite need
for methods and tools that accurately predict the structure of the
peptide bound to the MHC-I receptor. In the past few years, many pMHC
structural modeling tools have emerged that provide high-quality modeled
structures in the general case. However, there are numerous instances
of non-canonical cases in the immunopeptidome that the majority of
pMHC modeling tools do not attend to, most notably, peptides that
exhibit non-standard amino acids and post-translational modifications
(PTMs) or peptides that assume non-canonical geometries in the MHC
binding cleft. Such chemical and structural properties have been shown
to be present in neoantigens; therefore, accurate structural modeling
of these instances can be vital for cancer immunotherapy. To this
end, we have developed APE-Gen2.0, a tool that improves upon its predecessor
and other pMHC modeling tools, both in terms of modeling accuracy
and the available modeling range of non-canonical peptide cases. Some
of the improvements include (i) the ability to model peptides that
have different types of PTMs such as phosphorylation, nitration, and
citrullination; (ii) a new and improved anchor identification routine
in order to identify and model peptides that exhibit a non-canonical
anchor conformation; and (iii) a web server that provides a platform
for easy and accessible pMHC modeling. We further show that structures
predicted by APE-Gen2.0 can be used to assess the effects that PTMs
have in binding affinity in a more accurate manner than just using
solely the sequence of the peptide. APE-Gen2.0 is freely available
at https://apegen.kavrakilab.org
APE-Gen2.0: Expanding Rapid Class I PeptideāMajor Histocompatibility Complex Modeling to Post-Translational Modifications and Noncanonical Peptide Geometries
The recognition of peptides bound to class I major histocompatibility
complex (MHC-I) receptors by T-cell receptors (TCRs) is a determinant
of triggering the adaptive immune response. While the exact molecular
features that drive the TCR recognition are still unknown, studies
have suggested that the geometry of the joint peptideāMHC (pMHC)
structure plays an important role. As such, there is a definite need
for methods and tools that accurately predict the structure of the
peptide bound to the MHC-I receptor. In the past few years, many pMHC
structural modeling tools have emerged that provide high-quality modeled
structures in the general case. However, there are numerous instances
of non-canonical cases in the immunopeptidome that the majority of
pMHC modeling tools do not attend to, most notably, peptides that
exhibit non-standard amino acids and post-translational modifications
(PTMs) or peptides that assume non-canonical geometries in the MHC
binding cleft. Such chemical and structural properties have been shown
to be present in neoantigens; therefore, accurate structural modeling
of these instances can be vital for cancer immunotherapy. To this
end, we have developed APE-Gen2.0, a tool that improves upon its predecessor
and other pMHC modeling tools, both in terms of modeling accuracy
and the available modeling range of non-canonical peptide cases. Some
of the improvements include (i) the ability to model peptides that
have different types of PTMs such as phosphorylation, nitration, and
citrullination; (ii) a new and improved anchor identification routine
in order to identify and model peptides that exhibit a non-canonical
anchor conformation; and (iii) a web server that provides a platform
for easy and accessible pMHC modeling. We further show that structures
predicted by APE-Gen2.0 can be used to assess the effects that PTMs
have in binding affinity in a more accurate manner than just using
solely the sequence of the peptide. APE-Gen2.0 is freely available
at https://apegen.kavrakilab.org
APE-Gen2.0: Expanding Rapid Class I PeptideāMajor Histocompatibility Complex Modeling to Post-Translational Modifications and Noncanonical Peptide Geometries
The recognition of peptides bound to class I major histocompatibility
complex (MHC-I) receptors by T-cell receptors (TCRs) is a determinant
of triggering the adaptive immune response. While the exact molecular
features that drive the TCR recognition are still unknown, studies
have suggested that the geometry of the joint peptideāMHC (pMHC)
structure plays an important role. As such, there is a definite need
for methods and tools that accurately predict the structure of the
peptide bound to the MHC-I receptor. In the past few years, many pMHC
structural modeling tools have emerged that provide high-quality modeled
structures in the general case. However, there are numerous instances
of non-canonical cases in the immunopeptidome that the majority of
pMHC modeling tools do not attend to, most notably, peptides that
exhibit non-standard amino acids and post-translational modifications
(PTMs) or peptides that assume non-canonical geometries in the MHC
binding cleft. Such chemical and structural properties have been shown
to be present in neoantigens; therefore, accurate structural modeling
of these instances can be vital for cancer immunotherapy. To this
end, we have developed APE-Gen2.0, a tool that improves upon its predecessor
and other pMHC modeling tools, both in terms of modeling accuracy
and the available modeling range of non-canonical peptide cases. Some
of the improvements include (i) the ability to model peptides that
have different types of PTMs such as phosphorylation, nitration, and
citrullination; (ii) a new and improved anchor identification routine
in order to identify and model peptides that exhibit a non-canonical
anchor conformation; and (iii) a web server that provides a platform
for easy and accessible pMHC modeling. We further show that structures
predicted by APE-Gen2.0 can be used to assess the effects that PTMs
have in binding affinity in a more accurate manner than just using
solely the sequence of the peptide. APE-Gen2.0 is freely available
at https://apegen.kavrakilab.org