Development and transfer learning of self-attention model for major adverse cardiovascular events prediction across hospitals

Author:

Kim Yunha1,Kang Heejun2,Seo Hyeram3,Choi Heejung1,Kim Minkyoung3,Han JiYe3,Kee Gaeun1,Park Seohyun1,Ko Soyoung1,Jung HyoJe1,Kim Byeolhee1,Jun Tae Joon4,Kim Young-Hak5

Affiliation:

1. Department of Medical Science, Asan Medical Institute of Convergence Science and Technology, Asan Medical Center, University of Ulsan College of Medicine, 88, Olympicro 43gil, Songpagu, 05505

2. Division of Cardiology, Asan Medical Center, 88, Olympicro 43gil, Songpagu, 05505

3. Department of Information Medicine, Asan Medical Center, 88, Olympicro 43gil, Songpagu, 05505

4. Big Data Research Center, Asan Institute for Life Sciences, Asan Medical Center, 88, Olympicro 43gil, Songpagu, 05505

5. Division of Cardiology, Department of Information Medicine, Asan Medical Center, University of Ulsan College of Medicine, 88, Olympicro 43gil, Songpagu, 05505

Abstract

Abstract Predicting major adverse cardiovascular events (MACE) is crucial due to its high readmission rate and severe sequelae. Current risk scoring model of MACE are based on a few features of a patient status at a single time point. We developed a self-attention-based model to predict MACE within 3 years from time series data utilizing numerous features in electronic medical records (EMRs). In addition, we demonstrated transfer learning for hospitals with insufficient data through code mapping and feature selection of top 50 features by the calculated importance. We established operational definitions and categories for diagnoses, medications, and laboratory tests to streamline scattered codes, enhancing clinical interpretability across hospitals. This resulted in reduced feature size and improved data quality for transfer learning. The pre-trained model demonstrated an increase in AUROC after transfer learning, from 0.564 to 0.821. Furthermore, to validate the effectiveness of the predicted scores, we analyzed the data using traditional survival analysis, which confirmed an elevated hazard ratio for a group of patients with high scores.

Publisher

Research Square Platform LLC

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