The Kabardino-Balkarian State University named after H. M. Berbekov has created an intelligent system capable of determining the risk of developing heart failure in advance.
The machine learning algorithm is built on processing a large array of anonymized medical data from open sources. The training sample included the results of laboratory tests, clinical indicators, data from medical history, as well as information about patients' daily habits. This multi-layered approach helps the system identify hidden relationships and predict the possible development of the disease with high accuracy.
The technology acts as a specialist assistant. It provides an objective analytical assessment, based on which the doctor can make an informed decision about further examination, prescribing treatment, or changing the patient's lifestyle. Machine learning algorithms record subtle dependencies in information that often go unnoticed during standard diagnostics and identify underestimated risk factors.
The development provides cardiologists with new tools for disease prevention and personalized treatment approaches. In addition to clinical benefits, the system improves the efficiency of medical institutions: it helps reduce the burden on hospitals and saves time through rapid information processing and structured analysis.
Specialists call the ability to predict the disease before the appearance of pronounced symptoms the key advantage of the technology. This allows for the development of an individual monitoring and treatment strategy in advance, reducing the likelihood of complications and the need for emergency hospitalization.
Read materials on the topic:
At the Higher School of Economics, AI was taught to predict complications after a heart attack
Accuracy over 95%: in a hospital in Khabarovsk, AI helped reduce mortality from vascular diseases
Now on home
The service contains data on 45,000 fraudulent sites
Modernized engines may equip the Lada Azimut crossover
The price is 132 billion 265.8 million rubles
The manufacturer plans to strengthen its lineup of light commercial vehicles
The production of carbon fiber was organized in the shortest possible time
Electric vans will speed up the repair of urban transport infrastructure
Countries are working to synchronize regulations in the field of AI
The service's average daily audience is 55 million people
Stable Isomaterial Based on Metakaolin Has a Density Below 300 kg/m³
Re-identification quality improved twofold with new DynaMix method
Russians will be able to find out about debts online