Cargando…

A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues

Metals are considered to be one of the most hazardous substances due to their potential for accumulation, magnification, persistence, and wide distribution in water, sediments, and aquatic organisms. Demersal fish species, such as turbot (Psetta maxima maeotica), are accepted by the scientific commu...

Descripción completa

Detalles Bibliográficos
Autores principales: Petrea, Ștefan-Mihai, Costache, Mioara, Cristea, Dragoș, Strungaru, Ștefan-Adrian, Simionov, Ira-Adeline, Mogodan, Alina, Oprica, Lacramioara, Cristea, Victor
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7587397/
https://www.ncbi.nlm.nih.gov/pubmed/33066472
http://dx.doi.org/10.3390/molecules25204696
_version_ 1783600168812150784
author Petrea, Ștefan-Mihai
Costache, Mioara
Cristea, Dragoș
Strungaru, Ștefan-Adrian
Simionov, Ira-Adeline
Mogodan, Alina
Oprica, Lacramioara
Cristea, Victor
author_facet Petrea, Ștefan-Mihai
Costache, Mioara
Cristea, Dragoș
Strungaru, Ștefan-Adrian
Simionov, Ira-Adeline
Mogodan, Alina
Oprica, Lacramioara
Cristea, Victor
author_sort Petrea, Ștefan-Mihai
collection PubMed
description Metals are considered to be one of the most hazardous substances due to their potential for accumulation, magnification, persistence, and wide distribution in water, sediments, and aquatic organisms. Demersal fish species, such as turbot (Psetta maxima maeotica), are accepted by the scientific communities as suitable bioindicators of heavy metal pollution in the aquatic environment. The present study uses a machine learning approach, which is based on multiple linear and non-linear models, in order to effectively estimate the concentrations of heavy metals in both turbot muscle and liver tissues. For multiple linear regression (MLR) models, the stepwise method was used, while non-linear models were developed by applying random forest (RF) algorithm. The models were based on data that were provided from scientific literature, attributed to 11 heavy metals (As, Ca, Cd, Cu, Fe, K, Mg, Mn, Na, Ni, Zn) from both muscle and liver tissues of turbot exemplars. Significant MLR models were recorded for Ca, Fe, Mg, and Na in muscle tissue and K, Cu, Zn, and Na in turbot liver tissue. The non-linear tree-based RF prediction models (over 70% prediction accuracy) were identified for As, Cd, Cu, K, Mg, and Zn in muscle tissue and As, Ca, Cd, Mg, and Fe in turbot liver tissue. Both machine learning MLR and non-linear tree-based RF prediction models were identified to be suitable for predicting the heavy metal concentration from both turbot muscle and liver tissues. The models can be used for improving the knowledge and economic efficiency of linked heavy metals food safety and environment pollution studies.
format Online
Article
Text
id pubmed-7587397
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-75873972020-10-29 A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues Petrea, Ștefan-Mihai Costache, Mioara Cristea, Dragoș Strungaru, Ștefan-Adrian Simionov, Ira-Adeline Mogodan, Alina Oprica, Lacramioara Cristea, Victor Molecules Article Metals are considered to be one of the most hazardous substances due to their potential for accumulation, magnification, persistence, and wide distribution in water, sediments, and aquatic organisms. Demersal fish species, such as turbot (Psetta maxima maeotica), are accepted by the scientific communities as suitable bioindicators of heavy metal pollution in the aquatic environment. The present study uses a machine learning approach, which is based on multiple linear and non-linear models, in order to effectively estimate the concentrations of heavy metals in both turbot muscle and liver tissues. For multiple linear regression (MLR) models, the stepwise method was used, while non-linear models were developed by applying random forest (RF) algorithm. The models were based on data that were provided from scientific literature, attributed to 11 heavy metals (As, Ca, Cd, Cu, Fe, K, Mg, Mn, Na, Ni, Zn) from both muscle and liver tissues of turbot exemplars. Significant MLR models were recorded for Ca, Fe, Mg, and Na in muscle tissue and K, Cu, Zn, and Na in turbot liver tissue. The non-linear tree-based RF prediction models (over 70% prediction accuracy) were identified for As, Cd, Cu, K, Mg, and Zn in muscle tissue and As, Ca, Cd, Mg, and Fe in turbot liver tissue. Both machine learning MLR and non-linear tree-based RF prediction models were identified to be suitable for predicting the heavy metal concentration from both turbot muscle and liver tissues. The models can be used for improving the knowledge and economic efficiency of linked heavy metals food safety and environment pollution studies. MDPI 2020-10-14 /pmc/articles/PMC7587397/ /pubmed/33066472 http://dx.doi.org/10.3390/molecules25204696 Text en © 2020 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Petrea, Ștefan-Mihai
Costache, Mioara
Cristea, Dragoș
Strungaru, Ștefan-Adrian
Simionov, Ira-Adeline
Mogodan, Alina
Oprica, Lacramioara
Cristea, Victor
A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues
title A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues
title_full A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues
title_fullStr A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues
title_full_unstemmed A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues
title_short A Machine Learning Approach in Analyzing Bioaccumulation of Heavy Metals in Turbot Tissues
title_sort machine learning approach in analyzing bioaccumulation of heavy metals in turbot tissues
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7587397/
https://www.ncbi.nlm.nih.gov/pubmed/33066472
http://dx.doi.org/10.3390/molecules25204696
work_keys_str_mv AT petreastefanmihai amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT costachemioara amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT cristeadragos amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT strungarustefanadrian amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT simionoviraadeline amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT mogodanalina amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT opricalacramioara amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT cristeavictor amachinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT petreastefanmihai machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT costachemioara machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT cristeadragos machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT strungarustefanadrian machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT simionoviraadeline machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT mogodanalina machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT opricalacramioara machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues
AT cristeavictor machinelearningapproachinanalyzingbioaccumulationofheavymetalsinturbottissues