CLDec 11, 2024

Accurate Medical Named Entity Recognition Through Specialized NLP Models

arXiv:2412.08255v114 citationsh-index: 102024 6th International Conference on Frontier Technologies of Information and Computer (ICFTIC)
Originality Synthesis-oriented
AI Analysis

This addresses medical text processing for healthcare applications, but it is incremental as it compares existing models without introducing new methods.

This study tackled medical named entity recognition by evaluating BioBERT against other models, finding it achieved the best precision and F1 score, verifying its superiority in the medical field.

This study evaluated the effect of BioBERT in medical text processing for the task of medical named entity recognition. Through comparative experiments with models such as BERT, ClinicalBERT, SciBERT, and BlueBERT, the results showed that BioBERT achieved the best performance in both precision and F1 score, verifying its applicability and superiority in the medical field. BioBERT enhances its ability to understand professional terms and complex medical texts through pre-training on biomedical data, providing a powerful tool for medical information extraction and clinical decision support. The study also explored the privacy and compliance challenges of BioBERT when processing medical data, and proposed future research directions for combining other medical-specific models to improve generalization and robustness. With the development of deep learning technology, the potential of BioBERT in application fields such as intelligent medicine, personalized treatment, and disease prediction will be further expanded. Future research can focus on the real-time and interpretability of the model to promote its widespread application in the medical field.

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