@article{CDT28287,
author = {Arghavan Arafati and Peng Hu and J. Paul Finn and Carsten Rickers and Andrew L. Cheng and Hamid Jafarkhani and Arash Kheradvar},
title = {Artificial intelligence in pediatric and adult congenital cardiac MRI: an unmet clinical need},
journal = {Cardiovascular Diagnosis and Therapy},
volume = {9},
number = {Suppl 2},
year = {2019},
keywords = {},
abstract = {Cardiac MRI (CMR) allows non-invasive, non-ionizing assessment of cardiac function and anatomy in patients with congenital heart disease (CHD). The utility of CMR as a non-invasive imaging tool for evaluation of CHD have been growing exponentially over the past decade. The algorithms based on artificial intelligence (AI), and in particular, deep learning, have rapidly become a methodology of choice for analyzing CMR. A wide range of applications for AI have been developed to tackle challenges in various aspects of CMR, and significant advances have also been made from image acquisition to image analysis and diagnosis. We include an overview of AI definitions, different architectures, and details on well-known methods. This paper reviews the major deep learning concepts used for analyses of patients with CHD. In the end, we have summarized a list of open challenges and concerns to be considered for future studies.},
issn = {2223-3660}, url = {https://cdt.amegroups.org/article/view/28287}
}