Can AI diagnose cardiovascular disease faster?

"Timely understanding and precise treatment of cardiovascular disease will ultimately benefit millions of individuals by reducing the high risk for mortality and improving the quality of life," says Zeeshan Ahmed. (Credit: Getty Images)

Researchers may be able to predict cardiovascular disease, such as arterial fibrillation and heart failure, by using artificial intelligence to examine the genes in patients’ DNA.

“With the successful execution of our model, we predicted the association of highly significant cardiovascular disease genes tied to demographic variables like race, gender, and age,” says Zeeshan Ahmed, an assistant professor with the department of medicine at Rutgers University Robert Wood Johnson Medical School and lead author of the study in Genomics.

According to the World Health Organization, cardiovascular disease is the leading cause of death globally, yet it is estimated that more than 75% of premature cardiovascular disease is preventable. Atrial fibrillation and heart failure contribute to about 45% of all cardiovascular disease deaths.

Despite significant advancements in cardiovascular disease diagnostics, prevention, and treatment, about half of the affected patients reportedly die within five years of receiving a diagnosis for a variety of reasons. including genetic and environmental factors.

The researchers say the use of AI and machine learning can accelerate our ability to identify genes that have important implications for cardiovascular disease, which can lead to improvements in diagnoses and treatment.

The researchers analyzed healthy patients and patients diagnosed with cardiovascular disease and used AI and machine-learning models to investigate the genes known to be associated with the most common manifestations of cardiovascular disease, including atrial fibrillation and heart failure. They identified a group of genes that were significantly associated with having cardiovascular disease.

They also found significant differences among race, gender, and age factors based on the cardiovascular disease. While age and gender factors correlated to heart failure, age and race factors correlated to atrial fibrillation. For example, in the patients examined, the older the patient, the more likely they were to have a cardiovascular disease.

“Timely understanding and precise treatment of cardiovascular disease will ultimately benefit millions of individuals by reducing the high risk for mortality and improving the quality of life,” Ahmed says.

Future research should extend this approach by analyzing the full set of genes in patients with cardiovascular disease which may reveal important biomarkers and risk factors associated with the cardiovascular disease susceptibility.

Source: Rutgers University