Applying machine learning to detect early stages of cardiac remodelling and dysfunction.
František SabovčikNicholas CauwenberghsDmitry KouznetsovFrancois HaddadAmparo Alonso-BetanzosCeline VensTatiana KuznetsovaPublished in: European heart journal. Cardiovascular Imaging (2021)
XGBoost and RF classifiers combining routinely measured clinical, laboratory, and electrocardiographic data predicted LVDD and LVH with high accuracy. These ML classifiers might be useful to pre-select individuals in whom further echocardiographic examination, monitoring, and preventive measures are warranted.