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Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics

BACKGROUND: Selective cancer cell recognition is the most challenging objective in the targeted delivery of anti-cancer agents. Extruded specific cancer cell membrane coated nanoparticles, exploiting the potential of homotypic binding along with certain protein-receptor interactions, have recently p...

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Autores principales: Khan, Saif, Khan, Mohd Wajid Ali, Sherwani, Subuhi, Alouffi, Sultan, Alam, Mohammad Jahoor, Al-Motair, Khalid, Khan, Shahper
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10090548/
https://www.ncbi.nlm.nih.gov/pubmed/37063901
http://dx.doi.org/10.3389/fimmu.2023.1162213
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author Khan, Saif
Khan, Mohd Wajid Ali
Sherwani, Subuhi
Alouffi, Sultan
Alam, Mohammad Jahoor
Al-Motair, Khalid
Khan, Shahper
author_facet Khan, Saif
Khan, Mohd Wajid Ali
Sherwani, Subuhi
Alouffi, Sultan
Alam, Mohammad Jahoor
Al-Motair, Khalid
Khan, Shahper
author_sort Khan, Saif
collection PubMed
description BACKGROUND: Selective cancer cell recognition is the most challenging objective in the targeted delivery of anti-cancer agents. Extruded specific cancer cell membrane coated nanoparticles, exploiting the potential of homotypic binding along with certain protein-receptor interactions, have recently proven to be the method of choice for targeted delivery of anti-cancer drugs. Prediction of the selective targeting efficiency of the cancer cell membrane encapsulated nanoparticles (CCMEN) is the most critical aspect in selecting this strategy as a method of delivery. MATERIALS AND METHODS: A probabilistic model based on binding scores and differential expression levels of Glioblastoma cancer cells (GCC) membrane proteins (factors and receptors) was implemented on python 3.9.1. Conditional binding efficiency (CBE) was derived for each combination of protein involved in the interactions. Selective propensities and Odds ratios in favour of cancer cells interactions were determined for all the possible combination of surface proteins for ‘k’ degree of interaction. The model was experimentally validated by two types of Test cultures. RESULTS: Several Glioblastoma cell surface antigens were identified from literature and databases. Those were screened based on the relevance, availability of expression levels and crystal structure in public databases. High priority eleven surface antigens were selected for probabilistic modelling. A new term, Break-even point (BEP) was defined as a characteristic of the typical cancer cell membrane encapsulated delivery agents. The model predictions lie within ±7% of the experimentally observed values for both experimental test culture types. CONCLUSION: The implemented probabilistic model efficiently predicted the directional preference of the exposed nanoparticle coated with cancer cell membrane (in this case GCC membrane). This model, however, is developed and validated for glioblastoma, can be easily tailored for any type of cancer involving CCMEN as delivery agents for potential cancer immunotherapy. This probabilistic model would help in the development of future cancer immunotherapeutic with greater specificity.
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spelling pubmed-100905482023-04-13 Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics Khan, Saif Khan, Mohd Wajid Ali Sherwani, Subuhi Alouffi, Sultan Alam, Mohammad Jahoor Al-Motair, Khalid Khan, Shahper Front Immunol Immunology BACKGROUND: Selective cancer cell recognition is the most challenging objective in the targeted delivery of anti-cancer agents. Extruded specific cancer cell membrane coated nanoparticles, exploiting the potential of homotypic binding along with certain protein-receptor interactions, have recently proven to be the method of choice for targeted delivery of anti-cancer drugs. Prediction of the selective targeting efficiency of the cancer cell membrane encapsulated nanoparticles (CCMEN) is the most critical aspect in selecting this strategy as a method of delivery. MATERIALS AND METHODS: A probabilistic model based on binding scores and differential expression levels of Glioblastoma cancer cells (GCC) membrane proteins (factors and receptors) was implemented on python 3.9.1. Conditional binding efficiency (CBE) was derived for each combination of protein involved in the interactions. Selective propensities and Odds ratios in favour of cancer cells interactions were determined for all the possible combination of surface proteins for ‘k’ degree of interaction. The model was experimentally validated by two types of Test cultures. RESULTS: Several Glioblastoma cell surface antigens were identified from literature and databases. Those were screened based on the relevance, availability of expression levels and crystal structure in public databases. High priority eleven surface antigens were selected for probabilistic modelling. A new term, Break-even point (BEP) was defined as a characteristic of the typical cancer cell membrane encapsulated delivery agents. The model predictions lie within ±7% of the experimentally observed values for both experimental test culture types. CONCLUSION: The implemented probabilistic model efficiently predicted the directional preference of the exposed nanoparticle coated with cancer cell membrane (in this case GCC membrane). This model, however, is developed and validated for glioblastoma, can be easily tailored for any type of cancer involving CCMEN as delivery agents for potential cancer immunotherapy. This probabilistic model would help in the development of future cancer immunotherapeutic with greater specificity. Frontiers Media S.A. 2023-03-29 /pmc/articles/PMC10090548/ /pubmed/37063901 http://dx.doi.org/10.3389/fimmu.2023.1162213 Text en Copyright © 2023 Khan, Khan, Sherwani, Alouffi, Alam, Al-Motair and Khan https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Khan, Saif
Khan, Mohd Wajid Ali
Sherwani, Subuhi
Alouffi, Sultan
Alam, Mohammad Jahoor
Al-Motair, Khalid
Khan, Shahper
Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics
title Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics
title_full Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics
title_fullStr Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics
title_full_unstemmed Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics
title_short Directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: A probabilistic approach for cancer therapeutics
title_sort directional preference for glioblastoma cancer cell membrane encapsulated nanoparticle population: a probabilistic approach for cancer therapeutics
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10090548/
https://www.ncbi.nlm.nih.gov/pubmed/37063901
http://dx.doi.org/10.3389/fimmu.2023.1162213
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