Researchers at University College London (UCL) have identified five subtypes of heart failure that could predict a patient’s future risk, according to a study published in The Lancet Digital Health. The study analysed anonymised patient data from more than 300,000 patients aged over 30 diagnosed with heart failure in the UK over a 20-year period. Researchers used machine learning techniques to identify the five subtypes: early-onset, late-onset, metabolic, cardiometabolic and atrial fibrillation-related. Mortality risks varied widely by subtype, with corresponding 1-year mortality risks for all causes of 20% for early-onset, 46% for late-onset, 61% for atrial fibrillation-related, 11% for metabolic and 37% for cardiometabolic. The researchers have developed an app that clinicians can use to identify heart failure subtypes, potentially leading to more precise treatment strategies.
Discovering Five Types of Heart Failure with Artificial Intelligence Technology
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