Cargando…

Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology

Every year about one million people die due to diseases transmitted by mosquitoes. The infection is transmitted to a person when an infected mosquito stings, injecting the saliva into the human body. The best possible way to prevent a mosquito-borne infection till date is to save the humans from exp...

Descripción completa

Detalles Bibliográficos
Autores principales: Rustam, Furqan, Reshi, Aijaz Ahmad, Aljedaani, Wajdi, Alhossan, Abdulaziz, Ishaq, Abid, Shafi, Shabana, Lee, Ernesto, Alrabiah, Ziyad, Alsuwailem, Hessa, Ahmad, Ajaz, Rupapara, Vaibhav
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8717167/
https://www.ncbi.nlm.nih.gov/pubmed/35002454
http://dx.doi.org/10.1016/j.sjbs.2021.09.021
_version_ 1784624480398606336
author Rustam, Furqan
Reshi, Aijaz Ahmad
Aljedaani, Wajdi
Alhossan, Abdulaziz
Ishaq, Abid
Shafi, Shabana
Lee, Ernesto
Alrabiah, Ziyad
Alsuwailem, Hessa
Ahmad, Ajaz
Rupapara, Vaibhav
author_facet Rustam, Furqan
Reshi, Aijaz Ahmad
Aljedaani, Wajdi
Alhossan, Abdulaziz
Ishaq, Abid
Shafi, Shabana
Lee, Ernesto
Alrabiah, Ziyad
Alsuwailem, Hessa
Ahmad, Ajaz
Rupapara, Vaibhav
author_sort Rustam, Furqan
collection PubMed
description Every year about one million people die due to diseases transmitted by mosquitoes. The infection is transmitted to a person when an infected mosquito stings, injecting the saliva into the human body. The best possible way to prevent a mosquito-borne infection till date is to save the humans from exposure to mosquito bites. This study proposes a Machine Learning (ML) and Deep Learning based system to detect the presence of two critical disease spreading classes of mosquitoes such as the Aedes and Culex. The proposed system will effectively aid in epidemiology to design evidence-based policies and decisions by analyzing the risks and transmission. The study proposes an effective methodology for the classification of mosquitoes using ML and CNN models. The novel RIFS has been introduced which integrates two types of feature selection techniques – the ROI-based image filtering and the wrappers-based FFS technique. Comparative analysis of various ML and deep learning models has been performed to determine the most appropriate model applicable based on their performance metrics as well as computational needs. Results prove that ETC outperformed among the all applied ML model by providing 0.992 accuracy while VVG16 has outperformed other CNN models by giving 0.986 of accuracy.
format Online
Article
Text
id pubmed-8717167
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-87171672022-01-06 Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology Rustam, Furqan Reshi, Aijaz Ahmad Aljedaani, Wajdi Alhossan, Abdulaziz Ishaq, Abid Shafi, Shabana Lee, Ernesto Alrabiah, Ziyad Alsuwailem, Hessa Ahmad, Ajaz Rupapara, Vaibhav Saudi J Biol Sci Original Article Every year about one million people die due to diseases transmitted by mosquitoes. The infection is transmitted to a person when an infected mosquito stings, injecting the saliva into the human body. The best possible way to prevent a mosquito-borne infection till date is to save the humans from exposure to mosquito bites. This study proposes a Machine Learning (ML) and Deep Learning based system to detect the presence of two critical disease spreading classes of mosquitoes such as the Aedes and Culex. The proposed system will effectively aid in epidemiology to design evidence-based policies and decisions by analyzing the risks and transmission. The study proposes an effective methodology for the classification of mosquitoes using ML and CNN models. The novel RIFS has been introduced which integrates two types of feature selection techniques – the ROI-based image filtering and the wrappers-based FFS technique. Comparative analysis of various ML and deep learning models has been performed to determine the most appropriate model applicable based on their performance metrics as well as computational needs. Results prove that ETC outperformed among the all applied ML model by providing 0.992 accuracy while VVG16 has outperformed other CNN models by giving 0.986 of accuracy. Elsevier 2022-01 2021-09-20 /pmc/articles/PMC8717167/ /pubmed/35002454 http://dx.doi.org/10.1016/j.sjbs.2021.09.021 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Rustam, Furqan
Reshi, Aijaz Ahmad
Aljedaani, Wajdi
Alhossan, Abdulaziz
Ishaq, Abid
Shafi, Shabana
Lee, Ernesto
Alrabiah, Ziyad
Alsuwailem, Hessa
Ahmad, Ajaz
Rupapara, Vaibhav
Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology
title Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology
title_full Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology
title_fullStr Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology
title_full_unstemmed Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology
title_short Vector mosquito image classification using novel RIFS feature selection and machine learning models for disease epidemiology
title_sort vector mosquito image classification using novel rifs feature selection and machine learning models for disease epidemiology
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8717167/
https://www.ncbi.nlm.nih.gov/pubmed/35002454
http://dx.doi.org/10.1016/j.sjbs.2021.09.021
work_keys_str_mv AT rustamfurqan vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT reshiaijazahmad vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT aljedaaniwajdi vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT alhossanabdulaziz vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT ishaqabid vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT shafishabana vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT leeernesto vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT alrabiahziyad vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT alsuwailemhessa vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT ahmadajaz vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology
AT rupaparavaibhav vectormosquitoimageclassificationusingnovelrifsfeatureselectionandmachinelearningmodelsfordiseaseepidemiology