Health
Machine learning helps pinpoint sources of the most common cardiac arrhythmia – Science Codex

Researchers from Skoltech and their US colleagues have designed a new machine learning-based approach for detecting atrial fibrillation drivers, small patches of the heart muscle that are hypothesized to cause this most common type of cardiac arrhythmia. This approach may lead to more efficient targeted medical interventions to treat the condition that is estimated to affect more than 33 million people worldwide, according to the American Heart Association. The recent paper was published in the…
-
Business17 hours ago
The pros and cons of buying CBA shares in September
-
Noosa News17 hours ago
Rent changes on way for hundreds of social housing recipients following government review
-
Noosa News15 hours ago
Police reject claims about detained protester; SEQ train lines to be disrupted; BlueCare to cut enrolled nurses
-
Business13 hours ago
Where will Berkshire Hathaway be in 1 year?