Assessment Pattern Mapping in NANDA-I Nursing Diagnoses Framework by BERT Approach

Main Article Content

Kubo Takahiro
Virach Sornlertlamvanich
Thatsanee Charoenporn

Abstract

Nurses play a crucial role in healthcare, directly influencing patient care quality. With a global nursing shortage, enhancing nursing efficiency and care quality is urgently needed. This foundational study explores the advantages of text and data processing techniques to determine NANDA-I nursing diagnoses using both subjective and objective patient data recorded by nurses. By employing text data similarity analysis and a prototype of the predictive model, our research aims to rene the nursing assessment process and facilitate the automation of nursing diagnoses. This work highlights the accuracy of BERT-based assessment pattern matching to support nursing practices and sets a platform for future research to address the nursing shortage effectively.

Article Details

How to Cite
[1]
K. Takahiro, V. Sornlertlamvanich, and T. Charoenporn, “Assessment Pattern Mapping in NANDA-I Nursing Diagnoses Framework by BERT Approach”, ECTI-CIT Transactions, vol. 19, no. 1, pp. 65–74, Nov. 2024.
Section
Research Article

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