A Systematic Literature Review on Automatic Recognition and Classification of Coronary Atherosclerosis
Authors: Nisha K. Prajapati and Amit V. Patel
Publishing Date: 16-09-2022
ISBN: 978-81-955020-5-9
Abstract
Cardiovascular diseases have a high morbidity rate and per year it leads to 17 million deaths worldwide. Coronary Atherosclerosis is one of the chief causes of stroke and progressive heart disease marked by lipids and fibrous elements accumulation in the arteries. Artificial intelligence (AI) has established remarkable progress in recent times in clinical practice helping patients and healthcare professionals in the accurate and faster diagnosis of diseases. Prediction models in the identification of Atherosclerosis have set foot in the academic literature to assist in making medical decisions during urgent circumstances. This paper aimed to systematically review automatic atherosclerotic plaque detection algorithms. The advantages of these latest techniques in automatic recognition of atherosclerotic plaque, its composition, classification strategy and future predictions in terms of severity are elucidated in this review with limitations and research gaps. The findings suggest that deep learning models are the future of diagnosis and ensemble learning algorithms are best in non-invasive accurate detection of cardiovascular diseases.
Keywords
Atherosclerosis, Coronary Artery Diseases, Artificial Intelligence (AI), Non-Invasive Techniques, Deep Learning, Ensemble Learning.
Cite as
Nisha K. Prajapati and Amit V. Patel, "A Systematic Literature Review on Automatic Recognition and Classification of Coronary Atherosclerosis", In: Saroj Hiranwal and Garima Mathur (eds), Artificial Intelligence and Communication Technologies, SCRS, India, 2022, pp. 409-427. https://doi.org/10.52458/978-81-955020-5-9-39