Cardiology ranked No. 2 among all specialties with 122 FDA-cleared AI models

Cardiology continues to have the second largest number of clinical artificial intelligence (AI) algorithms cleared by the U.S. Food and Drug Administration, trailing only radiology. The FDA's latest update covers all AI approvals through May 2024.

There are now 122 FDA-cleared AI algorithms specific to cardiology. This makes up 14% of the 882 clinical AI algorithms now on the U.S. market. 

The new FDA numbers include market clearances up to March 31, 2024. The first approval of a clinical AI algorithm was in 1995. The first cardiology specific algorithm was for HeartFlow FFR-CT in 2016. That algorithm was also the first AI to be included in a cardiology guideline when the 2021 AHA/ACC/ASE/CHEST/SAEM/SCCT/SCMR Guideline for the Evaluation and Diagnosis of Chest Pain was released.

Radiology continues to rank No. 1 for overall AI approvals with 649. Medical imaging AI accounts for 74% of all the FDA-cleared algorithms. Cardiology is a distant second, followed by neurology as an even more distant third with 22 algorithms. 

AI has been a key trend at all cardiology meetings in recent years. While a lot of this has been focused on research, there is also a lot of discussion in sessions and on expo floors about actual clinical implementation.

"AI offers us the potential to help raise our awareness of different diseases. In the future, we could be looking at a situation where AI raises suspicion for various diseases, and expert echocardiographers work collaboratively with AI to make accurate diagnoses," explained Jeremy Slivnick, MD, assistant professor of medicine and an advanced cardiac imager at the University of Chicago, who recently spoke to Cardiovascular Business about his research on AI for the early detection of cardiac amyloidosis

What is AI being used for in cardiology?

Cardiac AI is seeing integration primarily in the two areas of cardiac imaging and ECG analysis. AI is now available across all cardiac imaging modalities to improve image quality, reduce scan times and automate anatomy identification and measurements. AI models are even evaluating images that are either too time-consuming or too impractical for human readers, a trend that includes detailed echo strain analyses, automated coronary plaque assessments, blood fluid dynamics assessments and image derived fractional flow reserve (FFR) assessments based on CT scans and cath lab angiographic acquisitions.

When it comes to ECG, AI is being used in a number of different devices, including smart stethoscopes with built-in ECG sensor  and consumer-grade devices such as smart watches. 

Some of the most recent AI approvals in cardiology include:

   • Automation of echo workflows, measurements and strain on the new Siemens Origin cardiac ultrasound system

   • Algorithms to speed workflow and accuracy in the latest Biosense Webster Carto 3 mapping system for cardiac ablations

   • AI to reduce the number of false alerts for atrial fibrillation and pause episodes in the Reveal LINQ insertable cardiac monitor

   • Detection of low ejection fraction on a stethoscope in 15 seconds

   • Deep-learning image reconstruction technology for dedicated cardiovascular CT scanners

   • Automated detection of signs of hypertrophic cardiomyopathy (HCM) in routine ECGs

See the complete FDA list of all 882 clinical AI algorithms

Dave Fornell is a digital editor with Cardiovascular Business and Radiology Business magazines. He has been covering healthcare for more than 16 years.

Dave Fornell has covered healthcare for more than 17 years, with a focus in cardiology and radiology. Fornell is a 5-time winner of a Jesse H. Neal Award, the most prestigious editorial honors in the field of specialized journalism. The wins included best technical content, best use of social media and best COVID-19 coverage. Fornell was also a three-time Neal finalist for best range of work by a single author. He produces more than 100 editorial videos each year, most of them interviews with key opinion leaders in medicine. He also writes technical articles, covers key trends, conducts video hospital site visits, and is very involved with social media. E-mail: dfornell@innovatehealthcare.com

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