Deep learning for predicting rehospitalization in acute heart failure: Model foundation and external validation.
Mi-Na KimYong Seok LeeYoungmin ParkAyoung JungHanjee SoJoonwoong ParkJin-Joo ParkDong-Joo ChoiSo-Ree KimSeong-Mi ParkPublished in: ESC heart failure (2024)
Our deep learning-based model using real-world data could provide valid predictions of HF rehospitalization in 1 year follow-up. It can be easily utilized to guide appropriate interventions or care strategies for patients with HF. The closed monitoring and blood test in daily clinics are important for assessing the risk of HF rehospitalization.