Features Partner Sites Information LinkXpress hp
Sign In
Advertise with Us
Sekisui Diagnostics UK Ltd.

Download Mobile App




Machine Learning Detects Cardiovascular Diseases Before Symptoms Appear

By HospiMedica International staff writers
Posted on 14 Aug 2024

Cardiovascular diseases rank among the leading causes of mortality globally, often remaining undetected until symptoms manifest and the condition becomes advanced, necessitating surgical intervention over medication. Researchers have devised a method to enhance the early detection of these diseases, bypassing expensive diagnostics like MRI or CT, through the use of a digital twin of the patient, which also allows for more in-depth disease investigation. This innovation promises to ease the strain on patients, doctors, and medical facilities alike.

Developed by the team at Graz University of Technology (TU Graz, Styria, Austria), this new approach leverages the principle that any disease altering cardiovascular mechanics also modifies the externally applied electrical field in specific ways, affecting conditions such as arteriosclerosis, aortic dissection, aneurysms, and heart valve defects. Researchers can utilize standard electrical, bio-impedance, or optical signals—from ECGs, PPGs, or smartwatches—which are analyzed through a self-developed machine learning model. This model detects potential diseases from the signals and assesses the likelihood of their presence, enabling earlier intervention when medication might still be viable over surgery.

The machine learning model's training incorporated real clinical bio-impedance data and simulation values from cardiovascular system models. With numerous cardiovascular parameters and extensive simulation needs for statistically significant results, machine learning enables the achievement of results with more than 90% accuracy swiftly. Another benefit of this machine learning analysis is its capacity to identify changes in ECG data that are not easily visible to even seasoned physicians.

For instance, this technology can assess the extent of arterial stiffening, often a precursor to aortic dissection, thus serving as an early warning sign. Once a significant change is detected, the diagnostic data can be used to construct a multi-physical simulation model or a digital twin, which not only predicts the disease's progression but also facilitates deeper analysis by medical professionals. The researchers are actively refining this technology in collaboration with healthcare industry partners to enhance the accuracy of their algorithms and further tailor them for clinical application.

“There is a lot of information that can be collected from outside the body with little effort,” said Vahid Badeli from the Institute of Fundamentals and Theory in Electrical Engineering at TU Graz. “So far, it has been difficult to find out exactly what this information means. But with our computer models and the help of machine learning, we can understand it better and find correlations.”

Related Links:
TU Graz

Gold Member
SARS‑CoV‑2/Flu A/Flu B/RSV Sample-To-Answer Test
SARS‑CoV‑2/Flu A/Flu B/RSV Cartridge (CE-IVD)
Gold Member
12-Channel ECG
CM1200B
New
Hospital Bed Mattress Cover
Skin IQ 365
New
Ultrasound Needle Guide
Ultra-Pro 3
Read the full article by registering today, it's FREE! It's Free!
Register now for FREE to HospiMedica.com and get complete access to news and events that shape the world of Hospital Medicine.
  • Free digital version edition of HospiMedica International sent by email on regular basis
  • Free print version of HospiMedica International magazine (available only outside USA and Canada).
  • Free and unlimited access to back issues of HospiMedica International in digital format
  • Free HospiMedica International Newsletter sent every week containing the latest news
  • Free breaking news sent via email
  • Free access to Events Calendar
  • Free access to LinkXpress new product services
  • REGISTRATION IS FREE AND EASY!
Click here to Register








Channels

Patient Care

view channel
Image: The portable biosensor platform uses printed electrochemical sensors for the rapid, selective detection of Staphylococcus aureus (Photo courtesy of AIMPLAS)

Portable Biosensor Platform to Reduce Hospital-Acquired Infections

Approximately 4 million patients in the European Union acquire healthcare-associated infections (HAIs) or nosocomial infections each year, with around 37,000 deaths directly resulting from these infections,... Read more
Copyright © 2000-2025 Globetech Media. All rights reserved.