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Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment

Antibody-drug conjugate therapy has attracted considerable attention in recent years. Since the selection of appropriate targets is a critical aspect of antibody-drug conjugate research and development, a big data research for discovery of candidate targets per tumor type is outstanding and of high...

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Autores principales: Razzaghdoust, Abolfazl, Rahmatizadeh, Shahabedin, Mofid, Bahram, Muhammadnejad, Samad, Parvin, Mahmoud, Torbati, Peyman Mohammadi, Basiri, Abbas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7801065/
https://www.ncbi.nlm.nih.gov/pubmed/33490264
http://dx.doi.org/10.1155/2021/2670573
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author Razzaghdoust, Abolfazl
Rahmatizadeh, Shahabedin
Mofid, Bahram
Muhammadnejad, Samad
Parvin, Mahmoud
Torbati, Peyman Mohammadi
Basiri, Abbas
author_facet Razzaghdoust, Abolfazl
Rahmatizadeh, Shahabedin
Mofid, Bahram
Muhammadnejad, Samad
Parvin, Mahmoud
Torbati, Peyman Mohammadi
Basiri, Abbas
author_sort Razzaghdoust, Abolfazl
collection PubMed
description Antibody-drug conjugate therapy has attracted considerable attention in recent years. Since the selection of appropriate targets is a critical aspect of antibody-drug conjugate research and development, a big data research for discovery of candidate targets per tumor type is outstanding and of high interest. Thus, the purpose of this study was to identify and prioritize candidate antibody-drug conjugate targets with translational potential across common types of cancer by mining the Human Protein Atlas, as a unique big data resource. To perform a multifaceted screening process, XML and TSV files including immunohistochemistry expression data for 45 normal tissues and 20 tumor types were downloaded from the Human Protein Atlas website. For genes without high protein expression across critical normal tissues, a quasi H-score (range, 0-300) was computed per tumor type. All genes with a quasi H − score ≥ 150 were extracted. Of these, genes with cell surface localization were selected and included in a multilevel validation process. Among 19670 genes that encode proteins, 5520 membrane protein-coding genes were included in this study. During a multistep data mining procedure, 332 potential targets were identified based on the level of the protein expression across critical normal tissues and 20 tumor types. After validation, 23 cell surface proteins were identified and prioritized as candidate antibody-drug conjugate targets of which two have interestingly been approved by the FDA for use in solid tumors, one has been approved for lymphoma, and four have currently been entered in clinical trials. In conclusion, we identified and prioritized several candidate targets with translational potential, which may yield new clinically effective and safe antibody-drug conjugates. This large-scale antibody-based proteomic study allows us to go beyond the RNA-seq studies, facilitates bench-to-clinic research of targeted anticancer therapeutics, and offers valuable insights into the development of new antibody-drug conjugates.
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spelling pubmed-78010652021-01-22 Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment Razzaghdoust, Abolfazl Rahmatizadeh, Shahabedin Mofid, Bahram Muhammadnejad, Samad Parvin, Mahmoud Torbati, Peyman Mohammadi Basiri, Abbas Biomed Res Int Research Article Antibody-drug conjugate therapy has attracted considerable attention in recent years. Since the selection of appropriate targets is a critical aspect of antibody-drug conjugate research and development, a big data research for discovery of candidate targets per tumor type is outstanding and of high interest. Thus, the purpose of this study was to identify and prioritize candidate antibody-drug conjugate targets with translational potential across common types of cancer by mining the Human Protein Atlas, as a unique big data resource. To perform a multifaceted screening process, XML and TSV files including immunohistochemistry expression data for 45 normal tissues and 20 tumor types were downloaded from the Human Protein Atlas website. For genes without high protein expression across critical normal tissues, a quasi H-score (range, 0-300) was computed per tumor type. All genes with a quasi H − score ≥ 150 were extracted. Of these, genes with cell surface localization were selected and included in a multilevel validation process. Among 19670 genes that encode proteins, 5520 membrane protein-coding genes were included in this study. During a multistep data mining procedure, 332 potential targets were identified based on the level of the protein expression across critical normal tissues and 20 tumor types. After validation, 23 cell surface proteins were identified and prioritized as candidate antibody-drug conjugate targets of which two have interestingly been approved by the FDA for use in solid tumors, one has been approved for lymphoma, and four have currently been entered in clinical trials. In conclusion, we identified and prioritized several candidate targets with translational potential, which may yield new clinically effective and safe antibody-drug conjugates. This large-scale antibody-based proteomic study allows us to go beyond the RNA-seq studies, facilitates bench-to-clinic research of targeted anticancer therapeutics, and offers valuable insights into the development of new antibody-drug conjugates. Hindawi 2021-01-02 /pmc/articles/PMC7801065/ /pubmed/33490264 http://dx.doi.org/10.1155/2021/2670573 Text en Copyright © 2021 Abolfazl Razzaghdoust et al. https://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Razzaghdoust, Abolfazl
Rahmatizadeh, Shahabedin
Mofid, Bahram
Muhammadnejad, Samad
Parvin, Mahmoud
Torbati, Peyman Mohammadi
Basiri, Abbas
Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment
title Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment
title_full Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment
title_fullStr Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment
title_full_unstemmed Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment
title_short Data-Driven Discovery of Molecular Targets for Antibody-Drug Conjugates in Cancer Treatment
title_sort data-driven discovery of molecular targets for antibody-drug conjugates in cancer treatment
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7801065/
https://www.ncbi.nlm.nih.gov/pubmed/33490264
http://dx.doi.org/10.1155/2021/2670573
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