BOSTON – Medical images contain a wealth of information beyond what is visible to the human eye. Now, scientists are using radiomics, a relatively new form of AI that uses a quantitative approach to medical imaging, to extract much more of the data captured in medical images, which can then be used to better understand disease and to predict patient outcomes.
In a new study, physician-researchers at Beth Israel Deaconess Medical Center (BIDMC) and Lahey Hospital & Medical Center (LHMC) investigated whether radiomic data extracted from magnetic resonance imaging of people with a common heart condition may help predict arrhythmic events and potentially sudden death in these patients. In a study of more than 1,200 patients at three international medical centers, the scientists determined that including radiomic features in risk models improved predictions and identified a previously unknown feature as a significant marker of sudden cardiac death. The team’s findings appeared in Journal of the American College of Cardiology: Cardiovascular Imaging.
About one in 500 people, or 1.5 million people in the United States, have hypertrophic cardiomyopathy (HCM), a genetic heart condition in which the heart muscle becomes abnormally thick, making it harder for the heart to pump oxygenated blood to the body effectively. While sometimes symptomless, HCM can cause shortness of breath, arrhythmia and sudden cardiac death. Patients diagnosed with the condition are typically monitored for the presence of cardiac scar tissue—a major risk factor for sudden cardiac death—with magnetic resonance imaging (MRI).

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“Sudden cardiac death is a devastating complication in hypertrophic cardiomyopathy, and we need better algorithms to identify those at high risk of developing lethal arrhythmia,” said corresponding author Reza Nezafat, PhD, director of the Cardiac MR Center at BIDMC and professor of medicine at Harvard Medical School. “Effective prevention of sudden cardiac death can be achieved, but the low discrimination power of established clinical risk factors limits these efforts. We investigated the prognostic value of integrating radiomic features of scar into existing risk stratification models.”
The team, including lead author Ahmed S. Fahmy, PhD, of BIDMC, analyzed cardiac imaging data from 1,229 patients with HCM treated at academic medical centers in Boston, Toronto and Florence between 2003 and 2018. Each patient’s risk of experiencing sudden cardiac death within a five-year period was calculated using two established risk score models that depend on clinical and imaging variables, including age and family history of sudden cardiac death, as well as thickness of the heart wall and scar tissue burden.