Tae-Hyeong Kwon
|
Dae-Ho Kim
|
Se Young Kim
and 1 other persons
| 2025, 30(6)
| pp.11~20
| number of Cited : 0
In this study, we developed a model to support nurse decision-making using Korean nursing record data and explored methods to enhance performance by applying data augmentation techniques. Previous research primarily focused on English medical data, resulting in a lack of studies on Korean medical data. To address this gap, we utilized electronic medical record (EMR) data from abdominal surgery patients and developed a KoBERT-based model for predicting nursing actions. Additionally, we applied techniques such as up/down sampling, few-shot augmentation, back-translation, and synonym replacement to mitigate data imbalance and compared their performance. Experimental results show that the Few-shot Augmentation achieved the highest performance, confirming that data augmentation is effective in increasing the diversity of EMR data.