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Auteurs principaux: Motamedian, SaeedReza, Mohaghegh, Sadra, Oregani, Elham Babadi, Amjadi, Mahrsa, Shobeiri, Parnian, Cheraghi, Negin, Solouki, Niusha, Ahmadi, Nikoo, Mohammad-Rahimi, Hossein, Bouchareb, Yassine, Rahmim, Arman
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2408.00208
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author Motamedian, SaeedReza
Mohaghegh, Sadra
Oregani, Elham Babadi
Amjadi, Mahrsa
Shobeiri, Parnian
Cheraghi, Negin
Solouki, Niusha
Ahmadi, Nikoo
Mohammad-Rahimi, Hossein
Bouchareb, Yassine
Rahmim, Arman
author_facet Motamedian, SaeedReza
Mohaghegh, Sadra
Oregani, Elham Babadi
Amjadi, Mahrsa
Shobeiri, Parnian
Cheraghi, Negin
Solouki, Niusha
Ahmadi, Nikoo
Mohammad-Rahimi, Hossein
Bouchareb, Yassine
Rahmim, Arman
contents Purpose: Artificial intelligence (AI) techniques have been extensively utilized for diagnosing and prognosis of several diseases in recent years. This study identifies, appraises and synthesizes published studies on the use of AI for the prognosis of COVID-19. Method: Electronic search was performed using Medline, Google Scholar, Scopus, Embase, Cochrane and ProQuest. Studies that examined machine learning or deep learning methods to determine the prognosis of COVID-19 using CT or chest X-ray images were included. Polled sensitivity, specificity area under the curve and diagnostic odds ratio were calculated. Result: A total of 36 articles were included; various prognosis-related issues, including disease severity, mechanical ventilation or admission to the intensive care unit and mortality, were investigated. Several AI models and architectures were employed, such as the Siamense model, support vector machine, Random Forest , eXtreme Gradient Boosting, and convolutional neural networks. The models achieved 71%, 88% and 67% sensitivity for mortality, severity assessment and need for ventilation, respectively. The specificity of 69%, 89% and 89% were reported for the aforementioned variables. Conclusion: Based on the included articles, machine learning and deep learning methods used for the prognosis of COVID-19 patients using radiomic features from CT or CXR images can help clinicians manage patients and allocate resources more effectively. These studies also demonstrate that combining patient demographic, clinical data, laboratory tests and radiomic features improves model performances.
format Preprint
id arxiv_https___arxiv_org_abs_2408_00208
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Prognosis of COVID-19 using Artificial Intelligence: A Systematic Review and Meta-analysis
Motamedian, SaeedReza
Mohaghegh, Sadra
Oregani, Elham Babadi
Amjadi, Mahrsa
Shobeiri, Parnian
Cheraghi, Negin
Solouki, Niusha
Ahmadi, Nikoo
Mohammad-Rahimi, Hossein
Bouchareb, Yassine
Rahmim, Arman
Medical Physics
Artificial Intelligence
Machine Learning
Purpose: Artificial intelligence (AI) techniques have been extensively utilized for diagnosing and prognosis of several diseases in recent years. This study identifies, appraises and synthesizes published studies on the use of AI for the prognosis of COVID-19. Method: Electronic search was performed using Medline, Google Scholar, Scopus, Embase, Cochrane and ProQuest. Studies that examined machine learning or deep learning methods to determine the prognosis of COVID-19 using CT or chest X-ray images were included. Polled sensitivity, specificity area under the curve and diagnostic odds ratio were calculated. Result: A total of 36 articles were included; various prognosis-related issues, including disease severity, mechanical ventilation or admission to the intensive care unit and mortality, were investigated. Several AI models and architectures were employed, such as the Siamense model, support vector machine, Random Forest , eXtreme Gradient Boosting, and convolutional neural networks. The models achieved 71%, 88% and 67% sensitivity for mortality, severity assessment and need for ventilation, respectively. The specificity of 69%, 89% and 89% were reported for the aforementioned variables. Conclusion: Based on the included articles, machine learning and deep learning methods used for the prognosis of COVID-19 patients using radiomic features from CT or CXR images can help clinicians manage patients and allocate resources more effectively. These studies also demonstrate that combining patient demographic, clinical data, laboratory tests and radiomic features improves model performances.
title Prognosis of COVID-19 using Artificial Intelligence: A Systematic Review and Meta-analysis
topic Medical Physics
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2408.00208