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Development of highly accurate method for predicting the tertiary structure of chemically modified peptides

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dc.contributor.advisor Raghava, G.P.S.
dc.contributor.author VARUN, VARUN
dc.date.accessioned 2026-05-25T09:16:13Z
dc.date.available 2026-05-25T09:16:13Z
dc.date.issued 2026-05
dc.identifier.citation 64 en_US
dc.identifier.uri http://dr.iiserpune.ac.in:8080/xmlui/handle/123456789/11189
dc.description.abstract Predicting the tertiary structure of the peptides with non-canonical amino acids (NCAAs) remains a big hurdle in computational biology, despite it being a rapidly growing class of therapeutics. Existing methods for peptide structure prediction are largely limited to natural amino acids, while the state-of-the-art all-atom models capable of handling NCAAs, such as AlphaFold 3 and Boltz-1, require substantial GPU infrastructure which is inaccessible to most research groups. Classical approaches like PEPstrMOD relies on force-fields, but are limited to NCAAs with pre-existing force field parameters, leaving the majority of chemical modification space poorly covered. To overcome these issues, we developed Alpha-Mod, a hybrid and computationally efficient pipeline for tertiary structure prediction of peptides containing non-canonical amino acids. Alpha-Mod employs a divide-and-conquer strategy by getting the backbone structure prediction from AlphaFold 2, while the ET-Flow generates the three-dimensional conformer of each of the NCAA independently from its SMILES representation in isolation. These are merged using the Kabsch algorithm for anchor-atom superimposition and refined with the MACE-OFF23 machine learning force field to eliminate steric clashes without needing residue-specific parameters. Alpha-Mod was benchmarked on three datasets: ModPep 257 (n=257), ModPep 16 (n=16), and a newly curated dataset PEP_SOLO (n=23). On ModPep 257, Alpha-Mod achieved a mean Cα RMSD of 3.65 Å, outperforming AlphaFold 3 (4.14 Å) and PEPstrMOD (4.07 Å). Secondary structure recovery on ModPep 257 yielded a Q3 accuracy of 95.43% for Alpha-Mod versus 74.05% for AlphaFold 3. On ModPep 16, Alpha-Mod achieved a mean Cα RMSD of 2.40 Å compared to 4.35 Å for PEPstrMOD, representing a significant improvement on structured modified peptides. These results demonstrate that modular integration of bioinformatic and cheminformatic tools can achieve competitive or superior structural accuracy relative to all-atom deep learning models for a large and therapeutically relevant subset of the modified peptide space, while operating at a fraction of the computational cost and without requiring model retraining or residue-specific force field parameters. Alpha-Mod is available on Github and also a colab notebook has been provided for better accessibility to the research community. en_US
dc.description.sponsorship raghava@iiitd.ac.in en_US
dc.language.iso en en_US
dc.subject Peptide tertiary structure prediction en_US
dc.subject Non-canonical amino acid en_US
dc.subject AlphaFold 2 en_US
dc.subject ET-FLOW en_US
dc.subject chemical modifications en_US
dc.title Development of highly accurate method for predicting the tertiary structure of chemically modified peptides en_US
dc.type Thesis en_US
dc.description.embargo One Year en_US
dc.type.degree BS-MS en_US
dc.contributor.department Dept. of Biology en_US
dc.contributor.registration 20211070 en_US


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  • MS THESES [2219]
    Thesis submitted to IISER Pune in partial fulfilment of the requirements for the BS-MS Dual Degree Programme/MSc. Programme/MS-Exit Programme

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