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Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples

SIMPLE SUMMARY: Neoantigens have emerged as highly personalized cancer therapeutic targets in recent years. Numerous studies have reported phenomenal therapeutic efficacy through treatments targeting cancer patient-specific neoantigens. Despite the growing interests, to identify druggable neoantigen...

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Autores principales: Terai, Yuri Laguna, Huang, Chun, Wang, Baoli, Kang, Xiaonan, Han, Jing, Douglass, Jacqueline, Hsiue, Emily Han-Chung, Zhang, Ming, Purohit, Raj, deSilva, Taylor, Wang, Qing
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8909145/
https://www.ncbi.nlm.nih.gov/pubmed/35267551
http://dx.doi.org/10.3390/cancers14051243
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author Terai, Yuri Laguna
Huang, Chun
Wang, Baoli
Kang, Xiaonan
Han, Jing
Douglass, Jacqueline
Hsiue, Emily Han-Chung
Zhang, Ming
Purohit, Raj
deSilva, Taylor
Wang, Qing
author_facet Terai, Yuri Laguna
Huang, Chun
Wang, Baoli
Kang, Xiaonan
Han, Jing
Douglass, Jacqueline
Hsiue, Emily Han-Chung
Zhang, Ming
Purohit, Raj
deSilva, Taylor
Wang, Qing
author_sort Terai, Yuri Laguna
collection PubMed
description SIMPLE SUMMARY: Neoantigens have emerged as highly personalized cancer therapeutic targets in recent years. Numerous studies have reported phenomenal therapeutic efficacy through treatments targeting cancer patient-specific neoantigens. Despite the growing interests, to identify druggable neoantigens is still largely dependent on genomic sequencing and AI algorithm-based prediction, which have been proven to be error-prone. Numerous reported mass spectrometry-based neoantigen assays utilized multi-gram levels of the tumor tissues, required invasive procedures, and were not practically feasible for most cancer patients, particularly patients that were non-operable or with early diseases, who may benefit most from immunotherapeutic approaches. Here we reported an integrated pipeline that can detect and quantify patient-specific neoantigens from a very limited amount of patient samples through a variety of innovative designs and optimizations. It may enable neoantigen-based therapeutics to benefit a broader spectrum of cancer and non-cancer patients. ABSTRACT: The presentation of neoantigens on the cell membrane is the foundation for most cancer immunotherapies. Due to their extremely low abundance, analyzing neoantigens in clinical samples is technically difficult, hindering the development of neoantigen-based therapeutics for more general use in the treatment of diverse cancers worldwide. Here, we describe an integrated system, “Valid-NEO”, which reveals patient-specific cancer neoantigen therapeutic targets from minute amounts of clinical samples through direct observation, without computer-based prediction, in a sensitive, rapid, and reproducible manner. The overall four-hour procedure involves mass spectrometry analysis of neoantigens purified from tumor samples through recovery of HLA molecules with HLA antibodies. Valid-NEO could be applicable to the identification and quantification of presented neoantigens in cancer patients, particularly when only limited amounts of sample are available.
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spelling pubmed-89091452022-03-11 Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples Terai, Yuri Laguna Huang, Chun Wang, Baoli Kang, Xiaonan Han, Jing Douglass, Jacqueline Hsiue, Emily Han-Chung Zhang, Ming Purohit, Raj deSilva, Taylor Wang, Qing Cancers (Basel) Article SIMPLE SUMMARY: Neoantigens have emerged as highly personalized cancer therapeutic targets in recent years. Numerous studies have reported phenomenal therapeutic efficacy through treatments targeting cancer patient-specific neoantigens. Despite the growing interests, to identify druggable neoantigens is still largely dependent on genomic sequencing and AI algorithm-based prediction, which have been proven to be error-prone. Numerous reported mass spectrometry-based neoantigen assays utilized multi-gram levels of the tumor tissues, required invasive procedures, and were not practically feasible for most cancer patients, particularly patients that were non-operable or with early diseases, who may benefit most from immunotherapeutic approaches. Here we reported an integrated pipeline that can detect and quantify patient-specific neoantigens from a very limited amount of patient samples through a variety of innovative designs and optimizations. It may enable neoantigen-based therapeutics to benefit a broader spectrum of cancer and non-cancer patients. ABSTRACT: The presentation of neoantigens on the cell membrane is the foundation for most cancer immunotherapies. Due to their extremely low abundance, analyzing neoantigens in clinical samples is technically difficult, hindering the development of neoantigen-based therapeutics for more general use in the treatment of diverse cancers worldwide. Here, we describe an integrated system, “Valid-NEO”, which reveals patient-specific cancer neoantigen therapeutic targets from minute amounts of clinical samples through direct observation, without computer-based prediction, in a sensitive, rapid, and reproducible manner. The overall four-hour procedure involves mass spectrometry analysis of neoantigens purified from tumor samples through recovery of HLA molecules with HLA antibodies. Valid-NEO could be applicable to the identification and quantification of presented neoantigens in cancer patients, particularly when only limited amounts of sample are available. MDPI 2022-02-28 /pmc/articles/PMC8909145/ /pubmed/35267551 http://dx.doi.org/10.3390/cancers14051243 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Terai, Yuri Laguna
Huang, Chun
Wang, Baoli
Kang, Xiaonan
Han, Jing
Douglass, Jacqueline
Hsiue, Emily Han-Chung
Zhang, Ming
Purohit, Raj
deSilva, Taylor
Wang, Qing
Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples
title Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples
title_full Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples
title_fullStr Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples
title_full_unstemmed Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples
title_short Valid-NEO: A Multi-Omics Platform for Neoantigen Detection and Quantification from Limited Clinical Samples
title_sort valid-neo: a multi-omics platform for neoantigen detection and quantification from limited clinical samples
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8909145/
https://www.ncbi.nlm.nih.gov/pubmed/35267551
http://dx.doi.org/10.3390/cancers14051243
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