The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review

Introduction: Cardiovascular diseases, a leading cause of worldwide morbidity and mortality, are increasingly being managed using state-of-the-art imaging technologies. One such technology, non-contrast computed tomography angiography (CTA), has become a critical tool in this endeavor. However, desp...

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Published in:Malaysian Journal of Medicine and Health Sciences
Main Author: Bakhtiar A.F.; Nordin S.; Ali A.M.; Kasim S.S.
Format: Review
Language:English
Published: Universiti Putra Malaysia Press 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85213838180&doi=10.47836%2fmjmhs.20.s10.27&partnerID=40&md5=e72cac6da628027b169a715527c82045
id 2-s2.0-85213838180
spelling 2-s2.0-85213838180
Bakhtiar A.F.; Nordin S.; Ali A.M.; Kasim S.S.
The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
2024
Malaysian Journal of Medicine and Health Sciences
20

10.47836/mjmhs.20.s10.27
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85213838180&doi=10.47836%2fmjmhs.20.s10.27&partnerID=40&md5=e72cac6da628027b169a715527c82045
Introduction: Cardiovascular diseases, a leading cause of worldwide morbidity and mortality, are increasingly being managed using state-of-the-art imaging technologies. One such technology, non-contrast computed tomography angiography (CTA), has become a critical tool in this endeavor. However, despite these advancements, challenges such as computational cost and limited spatiotemporal resolution remain, which prevent the full exploitation of the capabilities of these imaging techniques. Recent strides in machine learning, specifically deep learning methodologies, offer promising solutions to these limitations. In this systematic review, we explore the advancements in deep learning (DL) for generating synthetic contrast-enhanced CT images, focusing on techniques that either create or augment contrast without the use of iodinated contrast media. Methods: Utilizing PRISMA guidelines, our methodology involved a thorough search through major databases, selecting studies based on specific inclusion and exclusion criteria related to artificial intelligence’s role in enhancing or mimicking contrast in CT scans. Results: Our findings, derived from 29 articles, highlight significant progress in this field, particularly in non-contrast cardiovascular CT imaging, where DL models like generative adversarial networks (GAN) have shown promise. However, challenges such as image alignment and the need for high-quality paired datasets remain. Conclusion: The review underscores the potential of DL in medical imaging, suggesting a promising future for reducing contrast doses in clinical settings, with further research needed to optimize this innovative approach. © 2024 Universiti Putra Malaysia Press. All rights reserved.
Universiti Putra Malaysia Press
16758544
English
Review

author Bakhtiar A.F.; Nordin S.; Ali A.M.; Kasim S.S.
spellingShingle Bakhtiar A.F.; Nordin S.; Ali A.M.; Kasim S.S.
The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
author_facet Bakhtiar A.F.; Nordin S.; Ali A.M.; Kasim S.S.
author_sort Bakhtiar A.F.; Nordin S.; Ali A.M.; Kasim S.S.
title The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
title_short The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
title_full The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
title_fullStr The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
title_full_unstemmed The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
title_sort The Advancement of Deep Learning in Non-Contrast Computed Tomography Angiography for Cardiovascular Imaging: A Systematic Review
publishDate 2024
container_title Malaysian Journal of Medicine and Health Sciences
container_volume 20
container_issue
doi_str_mv 10.47836/mjmhs.20.s10.27
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85213838180&doi=10.47836%2fmjmhs.20.s10.27&partnerID=40&md5=e72cac6da628027b169a715527c82045
description Introduction: Cardiovascular diseases, a leading cause of worldwide morbidity and mortality, are increasingly being managed using state-of-the-art imaging technologies. One such technology, non-contrast computed tomography angiography (CTA), has become a critical tool in this endeavor. However, despite these advancements, challenges such as computational cost and limited spatiotemporal resolution remain, which prevent the full exploitation of the capabilities of these imaging techniques. Recent strides in machine learning, specifically deep learning methodologies, offer promising solutions to these limitations. In this systematic review, we explore the advancements in deep learning (DL) for generating synthetic contrast-enhanced CT images, focusing on techniques that either create or augment contrast without the use of iodinated contrast media. Methods: Utilizing PRISMA guidelines, our methodology involved a thorough search through major databases, selecting studies based on specific inclusion and exclusion criteria related to artificial intelligence’s role in enhancing or mimicking contrast in CT scans. Results: Our findings, derived from 29 articles, highlight significant progress in this field, particularly in non-contrast cardiovascular CT imaging, where DL models like generative adversarial networks (GAN) have shown promise. However, challenges such as image alignment and the need for high-quality paired datasets remain. Conclusion: The review underscores the potential of DL in medical imaging, suggesting a promising future for reducing contrast doses in clinical settings, with further research needed to optimize this innovative approach. © 2024 Universiti Putra Malaysia Press. All rights reserved.
publisher Universiti Putra Malaysia Press
issn 16758544
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