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Cardiovascular disease/stroke risk stratification in deep learning framework: a review

The global mortality rate is known to be the highest due to cardiovascular disease (CVD). Thus, preventive, and early CVD risk identification in a non-invasive manner is vital as healthcare cost is increasing day by day. Conventional methods for risk prediction of CVD lack robustness due to the non-...

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Autores principales: Bhagawati, Mrinalini, Paul, Sudip, Agarwal, Sushant, Protogeron, Athanasios, Sfikakis, Petros P., Kitas, George D., Khanna, Narendra N., Ruzsa, Zoltan, Sharma, Aditya M., Tomazu, Omerzu, Turk, Monika, Faa, Gavino, Tsoulfas, George, Laird, John R., Rathore, Vijay, Johri, Amer M., Viskovic, Klaudija, Kalra, Manudeep, Balestrieri, Antonella, Nicolaides, Andrew, Singh, Inder M., Chaturvedi, Seemant, Paraskevas, Kosmas I., Fouda, Mostafa M., Saba, Luca, Suri, Jasjit S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AME Publishing Company 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10315429/
https://www.ncbi.nlm.nih.gov/pubmed/37405023
http://dx.doi.org/10.21037/cdt-22-438
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author Bhagawati, Mrinalini
Paul, Sudip
Agarwal, Sushant
Protogeron, Athanasios
Sfikakis, Petros P.
Kitas, George D.
Khanna, Narendra N.
Ruzsa, Zoltan
Sharma, Aditya M.
Tomazu, Omerzu
Turk, Monika
Faa, Gavino
Tsoulfas, George
Laird, John R.
Rathore, Vijay
Johri, Amer M.
Viskovic, Klaudija
Kalra, Manudeep
Balestrieri, Antonella
Nicolaides, Andrew
Singh, Inder M.
Chaturvedi, Seemant
Paraskevas, Kosmas I.
Fouda, Mostafa M.
Saba, Luca
Suri, Jasjit S.
author_facet Bhagawati, Mrinalini
Paul, Sudip
Agarwal, Sushant
Protogeron, Athanasios
Sfikakis, Petros P.
Kitas, George D.
Khanna, Narendra N.
Ruzsa, Zoltan
Sharma, Aditya M.
Tomazu, Omerzu
Turk, Monika
Faa, Gavino
Tsoulfas, George
Laird, John R.
Rathore, Vijay
Johri, Amer M.
Viskovic, Klaudija
Kalra, Manudeep
Balestrieri, Antonella
Nicolaides, Andrew
Singh, Inder M.
Chaturvedi, Seemant
Paraskevas, Kosmas I.
Fouda, Mostafa M.
Saba, Luca
Suri, Jasjit S.
author_sort Bhagawati, Mrinalini
collection PubMed
description The global mortality rate is known to be the highest due to cardiovascular disease (CVD). Thus, preventive, and early CVD risk identification in a non-invasive manner is vital as healthcare cost is increasing day by day. Conventional methods for risk prediction of CVD lack robustness due to the non-linear relationship between risk factors and cardiovascular events in multi-ethnic cohorts. Few recently proposed machine learning-based risk stratification reviews without deep learning (DL) integration. The proposed study focuses on CVD risk stratification by the use of techniques mainly solo deep learning (SDL) and hybrid deep learning (HDL). Using a PRISMA model, 286 DL-based CVD studies were selected and analyzed. The databases included were Science Direct, IEEE Xplore, PubMed, and Google Scholar. This review is focused on different SDL and HDL architectures, their characteristics, applications, scientific and clinical validation, along with plaque tissue characterization for CVD/stroke risk stratification. Since signal processing methods are also crucial, the study further briefly presented Electrocardiogram (ECG)-based solutions. Finally, the study presented the risk due to bias in AI systems. The risk of bias tools used were (I) ranking method (RBS), (II) region-based map (RBM), (III) radial bias area (RBA), (IV) prediction model risk of bias assessment tool (PROBAST), and (V) risk of bias in non-randomized studies-of interventions (ROBINS-I). The surrogate carotid ultrasound image was mostly used in the UNet-based DL framework for arterial wall segmentation. Ground truth (GT) selection is vital for reducing the risk of bias (RoB) for CVD risk stratification. It was observed that the convolutional neural network (CNN) algorithms were widely used since the feature extraction process was automated. The ensemble-based DL techniques for risk stratification in CVD are likely to supersede the SDL and HDL paradigms. Due to the reliability, high accuracy, and faster execution on dedicated hardware, these DL methods for CVD risk assessment are powerful and promising. The risk of bias in DL methods can be best reduced by considering multicentre data collection and clinical evaluation.
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spelling pubmed-103154292023-07-04 Cardiovascular disease/stroke risk stratification in deep learning framework: a review Bhagawati, Mrinalini Paul, Sudip Agarwal, Sushant Protogeron, Athanasios Sfikakis, Petros P. Kitas, George D. Khanna, Narendra N. Ruzsa, Zoltan Sharma, Aditya M. Tomazu, Omerzu Turk, Monika Faa, Gavino Tsoulfas, George Laird, John R. Rathore, Vijay Johri, Amer M. Viskovic, Klaudija Kalra, Manudeep Balestrieri, Antonella Nicolaides, Andrew Singh, Inder M. Chaturvedi, Seemant Paraskevas, Kosmas I. Fouda, Mostafa M. Saba, Luca Suri, Jasjit S. Cardiovasc Diagn Ther Review Article The global mortality rate is known to be the highest due to cardiovascular disease (CVD). Thus, preventive, and early CVD risk identification in a non-invasive manner is vital as healthcare cost is increasing day by day. Conventional methods for risk prediction of CVD lack robustness due to the non-linear relationship between risk factors and cardiovascular events in multi-ethnic cohorts. Few recently proposed machine learning-based risk stratification reviews without deep learning (DL) integration. The proposed study focuses on CVD risk stratification by the use of techniques mainly solo deep learning (SDL) and hybrid deep learning (HDL). Using a PRISMA model, 286 DL-based CVD studies were selected and analyzed. The databases included were Science Direct, IEEE Xplore, PubMed, and Google Scholar. This review is focused on different SDL and HDL architectures, their characteristics, applications, scientific and clinical validation, along with plaque tissue characterization for CVD/stroke risk stratification. Since signal processing methods are also crucial, the study further briefly presented Electrocardiogram (ECG)-based solutions. Finally, the study presented the risk due to bias in AI systems. The risk of bias tools used were (I) ranking method (RBS), (II) region-based map (RBM), (III) radial bias area (RBA), (IV) prediction model risk of bias assessment tool (PROBAST), and (V) risk of bias in non-randomized studies-of interventions (ROBINS-I). The surrogate carotid ultrasound image was mostly used in the UNet-based DL framework for arterial wall segmentation. Ground truth (GT) selection is vital for reducing the risk of bias (RoB) for CVD risk stratification. It was observed that the convolutional neural network (CNN) algorithms were widely used since the feature extraction process was automated. The ensemble-based DL techniques for risk stratification in CVD are likely to supersede the SDL and HDL paradigms. Due to the reliability, high accuracy, and faster execution on dedicated hardware, these DL methods for CVD risk assessment are powerful and promising. The risk of bias in DL methods can be best reduced by considering multicentre data collection and clinical evaluation. AME Publishing Company 2023-06-05 2023-06-30 /pmc/articles/PMC10315429/ /pubmed/37405023 http://dx.doi.org/10.21037/cdt-22-438 Text en 2023 Cardiovascular Diagnosis and Therapy. All rights reserved. https://creativecommons.org/licenses/by-nc-nd/4.0/Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Review Article
Bhagawati, Mrinalini
Paul, Sudip
Agarwal, Sushant
Protogeron, Athanasios
Sfikakis, Petros P.
Kitas, George D.
Khanna, Narendra N.
Ruzsa, Zoltan
Sharma, Aditya M.
Tomazu, Omerzu
Turk, Monika
Faa, Gavino
Tsoulfas, George
Laird, John R.
Rathore, Vijay
Johri, Amer M.
Viskovic, Klaudija
Kalra, Manudeep
Balestrieri, Antonella
Nicolaides, Andrew
Singh, Inder M.
Chaturvedi, Seemant
Paraskevas, Kosmas I.
Fouda, Mostafa M.
Saba, Luca
Suri, Jasjit S.
Cardiovascular disease/stroke risk stratification in deep learning framework: a review
title Cardiovascular disease/stroke risk stratification in deep learning framework: a review
title_full Cardiovascular disease/stroke risk stratification in deep learning framework: a review
title_fullStr Cardiovascular disease/stroke risk stratification in deep learning framework: a review
title_full_unstemmed Cardiovascular disease/stroke risk stratification in deep learning framework: a review
title_short Cardiovascular disease/stroke risk stratification in deep learning framework: a review
title_sort cardiovascular disease/stroke risk stratification in deep learning framework: a review
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10315429/
https://www.ncbi.nlm.nih.gov/pubmed/37405023
http://dx.doi.org/10.21037/cdt-22-438
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