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Prediction of longitudinal clinical outcomes after acute myocardial infarction using a dynamic machine learning algorithm.
Jeong, Joo Hee; Lee, Kwang-Sig; Park, Seong-Mi; Kim, So Ree; Kim, Mi-Na; Chae, Shung Chull; Hur, Seung-Ho; Seong, In Whan; Oh, Seok Kyu; Ahn, Tae Hoon; Jeong, Myung Ho.
Afiliação
  • Jeong JH; Division of Cardiology, Department of Internal Medicine, Anam Hospital, Korea University Medicine, Seoul, Republic of Korea.
  • Lee KS; Korea University College of Medicine, AI Center, Anam Hospital, Seoul, Republic of Korea.
  • Park SM; Division of Cardiology, Department of Internal Medicine, Anam Hospital, Korea University Medicine, Seoul, Republic of Korea.
  • Kim SR; Division of Cardiology, Department of Internal Medicine, Anam Hospital, Korea University Medicine, Seoul, Republic of Korea.
  • Kim MN; Division of Cardiology, Department of Internal Medicine, Anam Hospital, Korea University Medicine, Seoul, Republic of Korea.
  • Chae SC; Department of Internal Medicine, Kyungpook National University Hospital, Daegu, Republic of Korea.
  • Hur SH; Cardiovascular Medicine, Keimyung University Dongsan Medical Center, Daegu, Republic of Korea.
  • Seong IW; Department of Internal Medicine, Chungnam National University Hospital, Chungnam National University, College of Medicine, Daejeon, Republic of Korea.
  • Oh SK; Division of Cardiology, Department of Internal Medicine, Wonkwang University School of Medicine, Iksan, Republic of Korea.
  • Ahn TH; Department of Cardiology, Na-eun Hospital, Incheon, Republic of Korea.
  • Jeong MH; Department of Cardiology, Chonnam National University Hospital, Gwangju, Republic of Korea.
Front Cardiovasc Med ; 11: 1340022, 2024.
Article em En | MEDLINE | ID: mdl-38646154
ABSTRACT
Several regression-based models for predicting outcomes after acute myocardial infarction (AMI) have been developed. However, prediction models that encompass diverse patient-related factors over time are limited. This study aimed to develop a machine learning-based model to predict longitudinal outcomes after AMI. This study was based on a nationwide prospective registry of AMI in Korea (n = 13,104). Seventy-seven predictor candidates from prehospitalization to 1 year of follow-up were included, and six machine learning approaches were analyzed. Primary outcome was defined as 1-year all-cause death. Secondary outcomes included all-cause deaths, cardiovascular deaths, and major adverse cardiovascular event (MACE) at the 1-year and 3-year follow-ups. Random forest resulted best performance in predicting the primary outcome, exhibiting a 99.6% accuracy along with an area under the receiver-operating characteristic curve of 0.874. Top 10 predictors for the primary outcome included peak troponin-I (variable importance value = 0.048), in-hospital duration (0.047), total cholesterol (0.047), maintenance of antiplatelet at 1 year (0.045), coronary lesion classification (0.043), N-terminal pro-brain natriuretic peptide levels (0.039), body mass index (BMI) (0.037), door-to-balloon time (0.035), vascular approach (0.033), and use of glycoprotein IIb/IIIa inhibitor (0.032). Notably, BMI was identified as one of the most important predictors of major outcomes after AMI. BMI revealed distinct effects on each outcome, highlighting a U-shaped influence on 1-year and 3-year MACE and 3-year all-cause death. Diverse time-dependent variables from prehospitalization to the postdischarge period influenced the major outcomes after AMI. Understanding the complexity and dynamic associations of risk factors may facilitate clinical interventions in patients with AMI.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article