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Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data

BACKGROUND: Cobalt-ferrite nanoparticles (Co-Fe NPs) are attractive for nanotechnology-based therapies. Thus, exploring their effect on viability of seven different cell lines representing different organs of the human body is highly important. METHODS: The toxicological effects of Co-Fe NPs were st...

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Autores principales: Horev-Azaria, Limor, Baldi, Giovanni, Beno, Delila, Bonacchi, Daniel, Golla-Schindler, Ute, Kirkpatrick, James C, Kolle, Susanne, Landsiedel, Robert, Maimon, Oded, Marche, Patrice N, Ponti, Jessica, Romano, Roni, Rossi, François, Sommer, Dieter, Uboldi, Chiara, Unger, Ronald E, Villiers, Christian, Korenstein, Rafi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3734223/
https://www.ncbi.nlm.nih.gov/pubmed/23895432
http://dx.doi.org/10.1186/1743-8977-10-32
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author Horev-Azaria, Limor
Baldi, Giovanni
Beno, Delila
Bonacchi, Daniel
Golla-Schindler, Ute
Kirkpatrick, James C
Kolle, Susanne
Landsiedel, Robert
Maimon, Oded
Marche, Patrice N
Ponti, Jessica
Romano, Roni
Rossi, François
Sommer, Dieter
Uboldi, Chiara
Unger, Ronald E
Villiers, Christian
Korenstein, Rafi
author_facet Horev-Azaria, Limor
Baldi, Giovanni
Beno, Delila
Bonacchi, Daniel
Golla-Schindler, Ute
Kirkpatrick, James C
Kolle, Susanne
Landsiedel, Robert
Maimon, Oded
Marche, Patrice N
Ponti, Jessica
Romano, Roni
Rossi, François
Sommer, Dieter
Uboldi, Chiara
Unger, Ronald E
Villiers, Christian
Korenstein, Rafi
author_sort Horev-Azaria, Limor
collection PubMed
description BACKGROUND: Cobalt-ferrite nanoparticles (Co-Fe NPs) are attractive for nanotechnology-based therapies. Thus, exploring their effect on viability of seven different cell lines representing different organs of the human body is highly important. METHODS: The toxicological effects of Co-Fe NPs were studied by in-vitro exposure of A549 and NCIH441 cell-lines (lung), precision-cut lung slices from rat, HepG2 cell-line (liver), MDCK cell-line (kidney), Caco-2 TC7 cell-line (intestine), TK6 (lymphoblasts) and primary mouse dendritic-cells. Toxicity was examined following exposure to Co-Fe NPs in the concentration range of 0.05 -1.2 mM for 24 and 72 h, using Alamar blue, MTT and neutral red assays. Changes in oxidative stress were determined by a dichlorodihydrofluorescein diacetate based assay. Data analysis and predictive modeling of the obtained data sets were executed by employing methods of Knowledge Discovery from Data with emphasis on a decision tree model (J48). RESULTS: Different dose–response curves of cell viability were obtained for each of the seven cell lines upon exposure to Co-Fe NPs. Increase of oxidative stress was induced by Co-Fe NPs and found to be dependent on the cell type. A high linear correlation (R(2)=0.97) was found between the toxicity of Co-Fe NPs and the extent of ROS generation following their exposure to Co-Fe NPs. The algorithm we applied to model the observed toxicity belongs to a type of supervised classifier. The decision tree model yielded the following order with decrease of the ranking parameter: NP concentrations (as the most influencing parameter), cell type (possessing the following hierarchy of cell sensitivity towards viability decrease: TK6 > Lung slices > NCIH441 > Caco-2 = MDCK > A549 > HepG2 = Dendritic) and time of exposure, where the highest-ranking parameter (NP concentration) provides the highest information gain with respect to toxicity. The validity of the chosen decision tree model J48 was established by yielding a higher accuracy than that of the well-known “naive bayes” classifier. CONCLUSIONS: The observed correlation between the oxidative stress, caused by the presence of the Co-Fe NPs, with the hierarchy of sensitivity of the different cell types towards toxicity, suggests that oxidative stress is one possible mechanism for the toxicity of Co-Fe NPs.
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spelling pubmed-37342232013-08-06 Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data Horev-Azaria, Limor Baldi, Giovanni Beno, Delila Bonacchi, Daniel Golla-Schindler, Ute Kirkpatrick, James C Kolle, Susanne Landsiedel, Robert Maimon, Oded Marche, Patrice N Ponti, Jessica Romano, Roni Rossi, François Sommer, Dieter Uboldi, Chiara Unger, Ronald E Villiers, Christian Korenstein, Rafi Part Fibre Toxicol Research BACKGROUND: Cobalt-ferrite nanoparticles (Co-Fe NPs) are attractive for nanotechnology-based therapies. Thus, exploring their effect on viability of seven different cell lines representing different organs of the human body is highly important. METHODS: The toxicological effects of Co-Fe NPs were studied by in-vitro exposure of A549 and NCIH441 cell-lines (lung), precision-cut lung slices from rat, HepG2 cell-line (liver), MDCK cell-line (kidney), Caco-2 TC7 cell-line (intestine), TK6 (lymphoblasts) and primary mouse dendritic-cells. Toxicity was examined following exposure to Co-Fe NPs in the concentration range of 0.05 -1.2 mM for 24 and 72 h, using Alamar blue, MTT and neutral red assays. Changes in oxidative stress were determined by a dichlorodihydrofluorescein diacetate based assay. Data analysis and predictive modeling of the obtained data sets were executed by employing methods of Knowledge Discovery from Data with emphasis on a decision tree model (J48). RESULTS: Different dose–response curves of cell viability were obtained for each of the seven cell lines upon exposure to Co-Fe NPs. Increase of oxidative stress was induced by Co-Fe NPs and found to be dependent on the cell type. A high linear correlation (R(2)=0.97) was found between the toxicity of Co-Fe NPs and the extent of ROS generation following their exposure to Co-Fe NPs. The algorithm we applied to model the observed toxicity belongs to a type of supervised classifier. The decision tree model yielded the following order with decrease of the ranking parameter: NP concentrations (as the most influencing parameter), cell type (possessing the following hierarchy of cell sensitivity towards viability decrease: TK6 > Lung slices > NCIH441 > Caco-2 = MDCK > A549 > HepG2 = Dendritic) and time of exposure, where the highest-ranking parameter (NP concentration) provides the highest information gain with respect to toxicity. The validity of the chosen decision tree model J48 was established by yielding a higher accuracy than that of the well-known “naive bayes” classifier. CONCLUSIONS: The observed correlation between the oxidative stress, caused by the presence of the Co-Fe NPs, with the hierarchy of sensitivity of the different cell types towards toxicity, suggests that oxidative stress is one possible mechanism for the toxicity of Co-Fe NPs. BioMed Central 2013-07-29 /pmc/articles/PMC3734223/ /pubmed/23895432 http://dx.doi.org/10.1186/1743-8977-10-32 Text en Copyright © 2013 Horev-Azaria et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Horev-Azaria, Limor
Baldi, Giovanni
Beno, Delila
Bonacchi, Daniel
Golla-Schindler, Ute
Kirkpatrick, James C
Kolle, Susanne
Landsiedel, Robert
Maimon, Oded
Marche, Patrice N
Ponti, Jessica
Romano, Roni
Rossi, François
Sommer, Dieter
Uboldi, Chiara
Unger, Ronald E
Villiers, Christian
Korenstein, Rafi
Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
title Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
title_full Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
title_fullStr Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
title_full_unstemmed Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
title_short Predictive Toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
title_sort predictive toxicology of cobalt ferrite nanoparticles: comparative in-vitro study of different cellular models using methods of knowledge discovery from data
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3734223/
https://www.ncbi.nlm.nih.gov/pubmed/23895432
http://dx.doi.org/10.1186/1743-8977-10-32
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