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Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells

BACKGROUND: Drug repurposing enables the discovery of potential cancer treatments using publically available data from over 4000 published Food and Drug Administration approved and experimental drugs. However, the ability to effectively evaluate the drug's efficacy remains a challenge. Impedime...

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Autores principales: Naeem, Aisha, Dakshanamurthy, Sivanesan, Walthieu, Henry, Parasido, Erika, Avantaggiati, Maria, Tricoli, Lucas, Kumar, Deepak, Lee, Richard J., Feldman, Adam, Noon, Muhammad S., Byers, Stephen, Rodriguez, Olga, Albanese, Chris
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7540414/
https://www.ncbi.nlm.nih.gov/pubmed/32761925
http://dx.doi.org/10.1002/pros.24050
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author Naeem, Aisha
Dakshanamurthy, Sivanesan
Walthieu, Henry
Parasido, Erika
Avantaggiati, Maria
Tricoli, Lucas
Kumar, Deepak
Lee, Richard J.
Feldman, Adam
Noon, Muhammad S.
Byers, Stephen
Rodriguez, Olga
Albanese, Chris
author_facet Naeem, Aisha
Dakshanamurthy, Sivanesan
Walthieu, Henry
Parasido, Erika
Avantaggiati, Maria
Tricoli, Lucas
Kumar, Deepak
Lee, Richard J.
Feldman, Adam
Noon, Muhammad S.
Byers, Stephen
Rodriguez, Olga
Albanese, Chris
author_sort Naeem, Aisha
collection PubMed
description BACKGROUND: Drug repurposing enables the discovery of potential cancer treatments using publically available data from over 4000 published Food and Drug Administration approved and experimental drugs. However, the ability to effectively evaluate the drug's efficacy remains a challenge. Impediments to broad applicability include inaccuracies in many of the computational drug‐target algorithms and a lack of clinically relevant biologic modeling systems to validate the computational data for subsequent translation. METHODS: We have integrated our computational proteochemometric systems network pharmacology platform, DrugGenEx‐Net, with primary, continuous cultures of conditionally reprogrammed (CR) normal and prostate cancer (PCa) cells derived from treatment‐naive patients with primary PCa. RESULTS: Using the transcriptomic data from two matched pairs of benign and tumor‐derived CR cells, we constructed drug networks to describe the biological perturbation associated with each prostate cell subtype at multiple levels of biological action. We prioritized the drugs by analyzing these networks for statistical coincidence with the drug action networks originating from known and predicted drug‐protein targets. Prioritized drugs shared between the two patients’ PCa cells included carfilzomib (CFZ), bortezomib (BTZ), sulforaphane, and phenethyl isothiocyanate. The effects of these compounds were then tested in the CR cells, in vitro. We observed that the IC(50) values of the normal PCa CR cells for CFZ and BTZ were higher than their matched tumor CR cells. Transcriptomic analysis of CFZ‐treated CR cells revealed that genes involved in cell proliferation, proteases, and downstream targets of serine proteases were inhibited while KLK7 and KLK8 were induced in the tumor‐derived CR cells. CONCLUSIONS: Given that the drugs in the database are extremely well‐characterized and that the patient‐derived cells are easily scalable for high throughput drug screening, this combined in vitro and in silico approach may significantly advance personalized PCa treatment and for other cancer applications.
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spelling pubmed-75404142020-10-09 Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells Naeem, Aisha Dakshanamurthy, Sivanesan Walthieu, Henry Parasido, Erika Avantaggiati, Maria Tricoli, Lucas Kumar, Deepak Lee, Richard J. Feldman, Adam Noon, Muhammad S. Byers, Stephen Rodriguez, Olga Albanese, Chris Prostate Original Articles BACKGROUND: Drug repurposing enables the discovery of potential cancer treatments using publically available data from over 4000 published Food and Drug Administration approved and experimental drugs. However, the ability to effectively evaluate the drug's efficacy remains a challenge. Impediments to broad applicability include inaccuracies in many of the computational drug‐target algorithms and a lack of clinically relevant biologic modeling systems to validate the computational data for subsequent translation. METHODS: We have integrated our computational proteochemometric systems network pharmacology platform, DrugGenEx‐Net, with primary, continuous cultures of conditionally reprogrammed (CR) normal and prostate cancer (PCa) cells derived from treatment‐naive patients with primary PCa. RESULTS: Using the transcriptomic data from two matched pairs of benign and tumor‐derived CR cells, we constructed drug networks to describe the biological perturbation associated with each prostate cell subtype at multiple levels of biological action. We prioritized the drugs by analyzing these networks for statistical coincidence with the drug action networks originating from known and predicted drug‐protein targets. Prioritized drugs shared between the two patients’ PCa cells included carfilzomib (CFZ), bortezomib (BTZ), sulforaphane, and phenethyl isothiocyanate. The effects of these compounds were then tested in the CR cells, in vitro. We observed that the IC(50) values of the normal PCa CR cells for CFZ and BTZ were higher than their matched tumor CR cells. Transcriptomic analysis of CFZ‐treated CR cells revealed that genes involved in cell proliferation, proteases, and downstream targets of serine proteases were inhibited while KLK7 and KLK8 were induced in the tumor‐derived CR cells. CONCLUSIONS: Given that the drugs in the database are extremely well‐characterized and that the patient‐derived cells are easily scalable for high throughput drug screening, this combined in vitro and in silico approach may significantly advance personalized PCa treatment and for other cancer applications. John Wiley and Sons Inc. 2020-08-06 2020-10-01 /pmc/articles/PMC7540414/ /pubmed/32761925 http://dx.doi.org/10.1002/pros.24050 Text en © 2020 The Authors. The Prostate Published by Wiley Periodicals LLC This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Original Articles
Naeem, Aisha
Dakshanamurthy, Sivanesan
Walthieu, Henry
Parasido, Erika
Avantaggiati, Maria
Tricoli, Lucas
Kumar, Deepak
Lee, Richard J.
Feldman, Adam
Noon, Muhammad S.
Byers, Stephen
Rodriguez, Olga
Albanese, Chris
Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
title Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
title_full Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
title_fullStr Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
title_full_unstemmed Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
title_short Predicting new drug indications for prostate cancer: The integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
title_sort predicting new drug indications for prostate cancer: the integration of an in silico proteochemometric network pharmacology platform with patient‐derived primary prostate cells
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7540414/
https://www.ncbi.nlm.nih.gov/pubmed/32761925
http://dx.doi.org/10.1002/pros.24050
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