Philips Aims to Advance Cardiac MRI Technology through AI-Driven Research

PhilipsRoyal Philips (NYSE: PHG, AEX: PHIA) and Mayo Clinic announced a research collaboration aimed at advancing MRI for cardiac applications. Through this investigation, Philips and Mayo Clinic will look to harness the power of AI and the expertise of Mayo Clinic physicians to increase operational efficiency by shortening complex MRI exams and improving workflow for radiologists.

Ischemic heart disease is the world’s leading cause of mortality, accounting for 13% of all deaths globally [1], with the associated costs in the U.S. alone estimated at $252.2 billion in 2021 [2]. While a CT scan is often used to image patients presenting with heart issues, the 'gold standard' of care also includes MRI, which is especially useful when treating congenital heart disease or diseases affecting the heart muscle. However, due to its higher cost and limited availability, access to high-quality MRI is often limited.

"From the patient perspective, MRI scans can be stressful. A complex cardiac MRI exam can take over an hour, which is often challenging for patients who suffer from claustrophobia inside the bore of the scanner, find it difficult to lie still or are unable to hold their breath for the required time," said Ioannis Panagiotelis, Ph.D., Business Leader of MRI at Philips. "By applying AI at every stage of a cardiac MRI exam, we intend to expand access and greatly improve the patient experience, increase departmental efficiency, and deliver the detailed diagnostic information needed for optimal patient outcomes."

Applying AI to transform the patient experience and accelerate MRI exam times

The investigation intends to leverage Mayo Clinic's proprietary AI technology in combination with Philips' AI-driven technology. Combining these investigational technologies can potentially help reduce MRI scan times, and improve the efficiency needed to relieve the burden on healthcare professionals and mitigate today's chronic shortage of trained staff. With the benefit of AI, even less experienced radiographers may be able to successfully perform complex cardiac MRI exams.

Expanding MRI cardiac access to wider patient populations

The research will also evaluate the potential of lower-field-strength MRI solutions developed by Philips. These solutions are designed to enable MRI installations in a broader range of locations and provide safer scanning options for individuals with implants sensitive to high magnetic fields. Around 3.9% of the U.S. population are currently fitted with a metallic orthopedic or cardiac implant [3], many of whom are currently denied an MRI scan due to safety concerns. It also has been estimated that 50% to 75% of patients who are fitted with a cardiac implantable electronic device are expected to benefit from a lower-field-strength solution at some point in their patient journey [4].

Proven leader in diagnostic MRI helium-free operations

With its unique, innovative BlueSeal magnet technology, Philips is a recognized leader in sustainable, affordable cardiovascular MRI. It was the first company to introduce helium-free operations in MRI scanners in 2018, with nearly 2.75 million liters of helium saved, across more than 1,500 installations worldwide to date [5].

About Royal Philips

Royal Philips (NYSE: PHG, AEX: PHIA) is a leading health technology company focused on improving people's health and well-being through meaningful innovation. Philips' patient- and people-centric innovation leverages advanced technology and deep clinical and consumer insights to deliver personal health solutions for consumers and professional health solutions for healthcare providers and their patients in the hospital and the home.

Headquartered in the Netherlands, the company is a leader in diagnostic imaging, ultrasound, image-guided therapy, monitoring and enterprise informatics, as well as in personal health. Philips generated 2023 sales of EUR 18.2 billion and employs approximately 69,300 employees with sales and services in more than 100 countries.

1. World Health Organization (WHO) Fact Sheet: The top 10 causes of death. https://www.who.int/news-room/fact-sheets/detail/the-top-10-causes-of-death
2. Centers for Disease Control and Prevention (CDC) Fact Sheet: Heart Disease Facts. https://www.cdc.gov/heart-disease/data-research/facts-stats/index.html
3. https://www.philips.co.uk/healthcare/education-resources/publications/fieldstrength/mri-and-mr-conditional-implants.
4. Kalin R, Stanton MS. Current clinical issues for MRI scanning of pacemaker and defibrillator patients. Pacing Clin Electrophysiol. 2005;28(4):326-328. doi: 10.1111/j.1540-8159.2005.50024.x https://pubmed.ncbi.nlm.nih.gov/15826268/
5. https://www.usa.philips.com/healthcare/resources/landing/the-next-mr-wave/sealed-mr-technology?nocache

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