RESUMEN
This study investigates how to reduce nurses' repetitive electronic nursing record tasks. We applied generative AI by learning nursing record data practiced with virtual patient data. We aim to evaluate generative AI's usefulness, usability, and availability when applied to nursing record creation tasks. The nursing record data collected through the electronic nursing record system for nursing students without privacy issues is in the form of NANDA, FocusDAR, SOAPIE, and narrative records. We trained 50,000 nursing record data and upgraded the performance through generative AI and fine-tuning. A separate API was used to connect with the practice electronic nursing record system, and 40 experienced nurses from a university hospital conducted tests. The electronic nursing record, through generative AI, is expected to contribute to easing the workload of nurses.
Asunto(s)
Inteligencia Artificial , Registros Electrónicos de Salud , Diagnóstico de Enfermería , Registros de Enfermería , Interfaz Usuario-Computador , HumanosRESUMEN
The purpose of this study is to develop cloud-based electronic nursing records (ENR) that can be used as Academic-EMR to help students adapt to the clinical field and improve the clarity of nursing records and nursing information capabilities. This research and development are expected to increase the efficiency of nursing work in clinical sites by improving students' access to ENR through the development of various virtual patient contents.