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Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)

Critical ML or CML is a critical approach development of the standard ML (SML) procedure. Conventional ML (ML) is being used in radiology departments where complex neuroimages are discriminated using ML technology. Radiologists and researchers found that sole decision by the ML algorithms is not acc...

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Autores principales: Baker, Mohammed Rashad, Padmaja, D. Lakshmi, Puviarasi, R., Mann, Suman, Panduro-Ramirez, Jeidy, Tiwari, Mohit, Samori, Issah Abubakari
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9023163/
https://www.ncbi.nlm.nih.gov/pubmed/35465018
http://dx.doi.org/10.1155/2022/6501975
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author Baker, Mohammed Rashad
Padmaja, D. Lakshmi
Puviarasi, R.
Mann, Suman
Panduro-Ramirez, Jeidy
Tiwari, Mohit
Samori, Issah Abubakari
author_facet Baker, Mohammed Rashad
Padmaja, D. Lakshmi
Puviarasi, R.
Mann, Suman
Panduro-Ramirez, Jeidy
Tiwari, Mohit
Samori, Issah Abubakari
author_sort Baker, Mohammed Rashad
collection PubMed
description Critical ML or CML is a critical approach development of the standard ML (SML) procedure. Conventional ML (ML) is being used in radiology departments where complex neuroimages are discriminated using ML technology. Radiologists and researchers found that sole decision by the ML algorithms is not accurate enough to implement the treatment procedure. Thus, an intelligent decision is required further by the radiologists after evaluating the ML outcomes. The current research is based on the critical ML, where radiologists' critical thinking ability, IQ (intelligence quotient), and experience in radiology have been examined to understand how these factors affect the accuracy of neuroimaging discrimination. A primary quantitative survey has been carried out, and the data were analysed in IBM SPSS. The results showed that experience in works has a positive impact on neuroimaging discrimination accuracy. IQ and trained ML are also responsible for improving the accuracy as well. Thus, radiologists with more experience in that field are able to improve the discriminative and diagnostic capability of CML.
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spelling pubmed-90231632022-04-22 Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM) Baker, Mohammed Rashad Padmaja, D. Lakshmi Puviarasi, R. Mann, Suman Panduro-Ramirez, Jeidy Tiwari, Mohit Samori, Issah Abubakari Comput Math Methods Med Research Article Critical ML or CML is a critical approach development of the standard ML (SML) procedure. Conventional ML (ML) is being used in radiology departments where complex neuroimages are discriminated using ML technology. Radiologists and researchers found that sole decision by the ML algorithms is not accurate enough to implement the treatment procedure. Thus, an intelligent decision is required further by the radiologists after evaluating the ML outcomes. The current research is based on the critical ML, where radiologists' critical thinking ability, IQ (intelligence quotient), and experience in radiology have been examined to understand how these factors affect the accuracy of neuroimaging discrimination. A primary quantitative survey has been carried out, and the data were analysed in IBM SPSS. The results showed that experience in works has a positive impact on neuroimaging discrimination accuracy. IQ and trained ML are also responsible for improving the accuracy as well. Thus, radiologists with more experience in that field are able to improve the discriminative and diagnostic capability of CML. Hindawi 2022-04-14 /pmc/articles/PMC9023163/ /pubmed/35465018 http://dx.doi.org/10.1155/2022/6501975 Text en Copyright © 2022 Mohammed Rashad Baker et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Baker, Mohammed Rashad
Padmaja, D. Lakshmi
Puviarasi, R.
Mann, Suman
Panduro-Ramirez, Jeidy
Tiwari, Mohit
Samori, Issah Abubakari
Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)
title Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)
title_full Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)
title_fullStr Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)
title_full_unstemmed Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)
title_short Implementing Critical Machine Learning (ML) Approaches for Generating Robust Discriminative Neuroimaging Representations Using Structural Equation Model (SEM)
title_sort implementing critical machine learning (ml) approaches for generating robust discriminative neuroimaging representations using structural equation model (sem)
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9023163/
https://www.ncbi.nlm.nih.gov/pubmed/35465018
http://dx.doi.org/10.1155/2022/6501975
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