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Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects

Amplification of HER2 can drive the proliferation of cancer cells, and several inhibitors of HER2 have been successfully developed. Recent advances in next-generation sequencing now reveal that HER2 is subject to mutation, with over 2,000 unique variants observed in human cancers. Several examples o...

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Autores principales: Ishiyama, Noboru, O'Connor, Matthew, Salomatov, Andrei, Romashko, Darlene, Thakur, Shalabh, Mentes, Ahmet, Hopkins, Julia F., Frampton, Garrett M., Albacker, Lee A., Kohlmann, Anna, Roberts, Christopher, Buck, Elizabeth
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Association for Cancer Research 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10152233/
https://www.ncbi.nlm.nih.gov/pubmed/35503682
http://dx.doi.org/10.1158/0008-5472.CAN-21-0940
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author Ishiyama, Noboru
O'Connor, Matthew
Salomatov, Andrei
Romashko, Darlene
Thakur, Shalabh
Mentes, Ahmet
Hopkins, Julia F.
Frampton, Garrett M.
Albacker, Lee A.
Kohlmann, Anna
Roberts, Christopher
Buck, Elizabeth
author_facet Ishiyama, Noboru
O'Connor, Matthew
Salomatov, Andrei
Romashko, Darlene
Thakur, Shalabh
Mentes, Ahmet
Hopkins, Julia F.
Frampton, Garrett M.
Albacker, Lee A.
Kohlmann, Anna
Roberts, Christopher
Buck, Elizabeth
author_sort Ishiyama, Noboru
collection PubMed
description Amplification of HER2 can drive the proliferation of cancer cells, and several inhibitors of HER2 have been successfully developed. Recent advances in next-generation sequencing now reveal that HER2 is subject to mutation, with over 2,000 unique variants observed in human cancers. Several examples of oncogenic HER2 mutations have been described, and these primarily occur at allosteric sites outside the ATP-binding site. To identify the full spectrum of oncogenic HER2 driver mutations aside from a few well-studied mutations, we developed mutation-allostery-pharmacology (MAP), an in silico prediction algorithm based on machine learning. By applying this computational approach to 820 single-nucleotide variants, a list of 222 known and potential driver mutations was produced. Of these 222 mutations, 111 were screened by Ba/F3-retrovirus proliferation assays; 37 HER2 mutations were experimentally determined to be driver mutations, comprising 15 previously characterized and 22 newly identified oncogenic mutations. These oncogenic mutations mostly affected allosteric sites in the extracellular domain (ECD), transmembrane domain, and kinase domain of HER2, with only a single mutation in the HER2 orthosteric ATP site. Covalent homodimerization was established as a common mechanism of activation among HER2 ECD allosteric mutations, including the most prevalent HER2 mutation, S310F. Furthermore, HER2 allosteric mutants with enhanced covalent homodimerization were characterized by altered pharmacology that reduces the activity of existing anti-HER2 agents, including the mAb trastuzumab and the tyrosine kinase inhibitor lapatinib. Overall, the MAP-scoring and functional validation analyses provided new insights into the oncogenic activity and therapeutic targeting of HER2 mutations in cancer. SIGNIFICANCE: This study identified new oncogenic HER2 allosteric mutations, including ECD mutations that share covalent dimerization as a mechanism of oncogenicity, suggesting the need for novel inhibitors to treat HER2-mutant cancers.
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spelling pubmed-101522332023-05-03 Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects Ishiyama, Noboru O'Connor, Matthew Salomatov, Andrei Romashko, Darlene Thakur, Shalabh Mentes, Ahmet Hopkins, Julia F. Frampton, Garrett M. Albacker, Lee A. Kohlmann, Anna Roberts, Christopher Buck, Elizabeth Cancer Res Computational Cancer Biology and Technology Amplification of HER2 can drive the proliferation of cancer cells, and several inhibitors of HER2 have been successfully developed. Recent advances in next-generation sequencing now reveal that HER2 is subject to mutation, with over 2,000 unique variants observed in human cancers. Several examples of oncogenic HER2 mutations have been described, and these primarily occur at allosteric sites outside the ATP-binding site. To identify the full spectrum of oncogenic HER2 driver mutations aside from a few well-studied mutations, we developed mutation-allostery-pharmacology (MAP), an in silico prediction algorithm based on machine learning. By applying this computational approach to 820 single-nucleotide variants, a list of 222 known and potential driver mutations was produced. Of these 222 mutations, 111 were screened by Ba/F3-retrovirus proliferation assays; 37 HER2 mutations were experimentally determined to be driver mutations, comprising 15 previously characterized and 22 newly identified oncogenic mutations. These oncogenic mutations mostly affected allosteric sites in the extracellular domain (ECD), transmembrane domain, and kinase domain of HER2, with only a single mutation in the HER2 orthosteric ATP site. Covalent homodimerization was established as a common mechanism of activation among HER2 ECD allosteric mutations, including the most prevalent HER2 mutation, S310F. Furthermore, HER2 allosteric mutants with enhanced covalent homodimerization were characterized by altered pharmacology that reduces the activity of existing anti-HER2 agents, including the mAb trastuzumab and the tyrosine kinase inhibitor lapatinib. Overall, the MAP-scoring and functional validation analyses provided new insights into the oncogenic activity and therapeutic targeting of HER2 mutations in cancer. SIGNIFICANCE: This study identified new oncogenic HER2 allosteric mutations, including ECD mutations that share covalent dimerization as a mechanism of oncogenicity, suggesting the need for novel inhibitors to treat HER2-mutant cancers. American Association for Cancer Research 2023-05-02 2022-05-03 /pmc/articles/PMC10152233/ /pubmed/35503682 http://dx.doi.org/10.1158/0008-5472.CAN-21-0940 Text en ©2022 The Authors; Published by the American Association for Cancer Research https://creativecommons.org/licenses/by-nc-nd/4.0/This open access article is distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) license.
spellingShingle Computational Cancer Biology and Technology
Ishiyama, Noboru
O'Connor, Matthew
Salomatov, Andrei
Romashko, Darlene
Thakur, Shalabh
Mentes, Ahmet
Hopkins, Julia F.
Frampton, Garrett M.
Albacker, Lee A.
Kohlmann, Anna
Roberts, Christopher
Buck, Elizabeth
Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects
title Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects
title_full Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects
title_fullStr Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects
title_full_unstemmed Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects
title_short Computational and Functional Analyses of HER2 Mutations Reveal Allosteric Activation Mechanisms and Altered Pharmacologic Effects
title_sort computational and functional analyses of her2 mutations reveal allosteric activation mechanisms and altered pharmacologic effects
topic Computational Cancer Biology and Technology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10152233/
https://www.ncbi.nlm.nih.gov/pubmed/35503682
http://dx.doi.org/10.1158/0008-5472.CAN-21-0940
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