IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Relevance of Machine Learning to Cardiovascular Imaging

Relevance of Machine Learning to Cardiovascular Imaging
View Sample PDF
Author(s): Sumesh Sasidharan (Imperial College London, UK), M. Yousuf Salmasi (Imperial College London, UK), Selene Pirola (Imperial College London, UK)and Omar A. Jarral (Imperial College London, UK)
Copyright: 2023
Pages: 17
Source title: Research Anthology on Improving Medical Imaging Techniques for Analysis and Intervention
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-6684-7544-7.ch029

Purchase

View Relevance of Machine Learning to Cardiovascular Imaging on the publisher's website for pricing and purchasing information.

Abstract

Artificial intelligence (AI) broadly concerns analytical algorithms that iteratively learn from big datasets, allowing computers to find concealed insights. These encompass a range of operations comprising several terms, including machine learning(ML), cognitive learning, deep learning, and reinforcement learning-based methods that can be used to incorporate and comprehend complex biomedical and healthcare data in scenarios where traditional statistical approaches cannot be implemented. For cardiovascular imaging in particular, machine learning guarantees to be a transformative tool that can address many unmet needs for patient-specific management, accurate prediction of disease progression, and the tracking of identifiable biomarkers of disease processes. In this chapter, the authors discuss fundamentals of machine learning algorithms for image analysis in the cardiovascular system by evaluating the need for ML in this field and examining the potential obstacles and challenges of implementation in the context of three common imaging modalities used in cardiovascular medicine.

Related Content

Aylin Gökhan, Kubilay Dogan Kilic, Türker Çavuşoğlu, Yiğit Uyanıkgil. © 2024. 12 pages.
Pratyush Panda, Subhalaxmi Das. © 2024. 21 pages.
Vikram Singh, Sangeeta Rani. © 2024. 17 pages.
Pancham Singh, Mrignainy Kansal, Shirshendu Lahiri, Harshit Vishnoi, Lakshay Mittal. © 2024. 19 pages.
Shreeharsha Dash, Subhalaxmi Das. © 2024. 16 pages.
V. Sathya, Shalini Parthiban, M. Megavarshini, V. Shenbagaraman, R. Ramya. © 2024. 13 pages.
Olalekan Joel Awujoola, Theophilus Enem Aniemeka, Oluwasegun Abiodun Abioye, Abidemi Elizabeth Awujoola, Fiyinfoluwa Ajakaiye, Olayinka Racheal Adelegan. © 2024. 34 pages.
Body Bottom