Cardiovascular diseases are the leading cause of mortality, morbidity, and hospitalization around the world. Recent technological advances have facilitated analyzing, visualizing, and monitoring cardiovascular diseases using emerging computational fluid dynamics, blood flow imaging, and wearable sensing technologies. Yet, computational cost, limited spatiotemporal resolution, and obstacles for thorough data analysis have hindered the utility of such techniques to curb cardiovascular diseases. We herein discuss how leveraging machine learning techniques, and in particular deep learning methods, could overcome these limitations and offer promise for translation. We discuss the remarkable capacity of recently developed machine learning techniq...
Cardiovascular disease (CVD) is the world’s leading cause of mortality. There is significant interes...
Cardiovascular disease (CVD), despite the significant advances in the diagnosis and treatments, stil...
This chapter presents deep learning methodologies for medical imaging tasks. The chapter starts with...
Cardiovascular diseases are the leading cause of mortality, morbidity, and hospitalization around th...
Recent advances in machine learning (ML) have made it possible to analyze high-dimensional and compl...
Heart and circulatory diseases cause a quarter of all deaths in the UK and cardiac imaging offers an...
Machine learning with deep neural networks has demonstrated high performance for high dimensionality...
Cardiovascular diseases (CVD) are the leading cause of death worldwide. It is predicted that CVD wil...
Abstract: Cardiovascular diseases are a major cause of death worldwide, making early detection and d...
Cardiovascular disease is the most common preventable cause of death, accounting for up to 45% of mo...
Advances in technology have always had the potential and opportunity to shape the practice of medici...
Artificial intelligence (AI) has captured the minds of science fiction writers and the general publi...
Cardiovascular imaging is going to change substantially in the next decade, fueled by the deep learn...
Computational fluid dynamics (CFD) modeling of blood flow plays an important role in better understa...
Deep learning (DL) is a subdomain of machine learning (ML) representing exponentially growing potent...
Cardiovascular disease (CVD) is the world’s leading cause of mortality. There is significant interes...
Cardiovascular disease (CVD), despite the significant advances in the diagnosis and treatments, stil...
This chapter presents deep learning methodologies for medical imaging tasks. The chapter starts with...
Cardiovascular diseases are the leading cause of mortality, morbidity, and hospitalization around th...
Recent advances in machine learning (ML) have made it possible to analyze high-dimensional and compl...
Heart and circulatory diseases cause a quarter of all deaths in the UK and cardiac imaging offers an...
Machine learning with deep neural networks has demonstrated high performance for high dimensionality...
Cardiovascular diseases (CVD) are the leading cause of death worldwide. It is predicted that CVD wil...
Abstract: Cardiovascular diseases are a major cause of death worldwide, making early detection and d...
Cardiovascular disease is the most common preventable cause of death, accounting for up to 45% of mo...
Advances in technology have always had the potential and opportunity to shape the practice of medici...
Artificial intelligence (AI) has captured the minds of science fiction writers and the general publi...
Cardiovascular imaging is going to change substantially in the next decade, fueled by the deep learn...
Computational fluid dynamics (CFD) modeling of blood flow plays an important role in better understa...
Deep learning (DL) is a subdomain of machine learning (ML) representing exponentially growing potent...
Cardiovascular disease (CVD) is the world’s leading cause of mortality. There is significant interes...
Cardiovascular disease (CVD), despite the significant advances in the diagnosis and treatments, stil...
This chapter presents deep learning methodologies for medical imaging tasks. The chapter starts with...