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Leveraging natural language processing for efficient information extraction from breast cancer pathology reports: Single-institution study

Authors
 Park, Phillip  ;  Choi, Yeonho  ;  Han, Nayoung  ;  Park, Ye-Lin  ;  Hwang, Juyeon  ;  Chae, Heejung  ;  Yoo, Chong Woo  ;  Choi, Kui Son  ;  Kim, Hyun-Jin 
Citation
 PLOS ONE, Vol.20(2), 2025-02 
Article Number
 e0318726 
Journal Title
PLOS ONE
ISSN
 1932-6203 
Issue Date
2025-02
MeSH
Breast Neoplasms* / pathology ; Female ; Humans ; Information Storage and Retrieval* / methods ; Natural Language Processing*
Keywords
Article ; Breast Cancer ; Data Extraction ; Decision Making ; Efficient Information Extraction ; Electronic Health Record ; Histology ; Lymph Node ; Lymph Vessel Metastasis ; Natural Language Processing ; Transfer Learning (machine Learning) ; Breast Tumor ; Data Mining ; Female ; Human ; Pathology ; Procedures ; Breast Neoplasms ; Data Mining ; Female ; Humans ; Natural Language Processing
Abstract
Background Pathology reports provide important information for accurate diagnosis of cancer and optimal treatment decision making. In particular, breast cancer has known to be the most common cancer in women worldwide.Objective For the data extraction of breast cancer pathology reports in a single institute, we assessed the accuracy of methods between regular expression and natural language processing (NLP).Methods A total of 1,215 breast cancer pathology reports were annotated for NLP model development. As NLP models, we considered three BERT models with specific vocabularies including BERT-basic, BioBERT, and ClinicalBERT. K-fold cross-validation was used to verify the performance of the BERT model. The results between the regular expression and the BERT model were compared using the named entity recognition (NER) techniques.Results Among three BERT models, BioBERT was the most accurate parsing model (average performance = 0.99901) for breast cancer pathology when set to k = 5. BioBERT also had the lowest error rate for all items in the breast cancer pathology report compared to other BERT models (accuracy for all variables >= 0.9). Therefore, we finally selected BioBERT as the NLP model. When comparing the results of BioBERT and regular expressions using NER, we identified that BioBERT was more accurate than regular expression method, especially for some items such as intraductal component (BioBERT: 1.0, RegEx: 0.1644), lymph node (BioBERT: 0.9886, RegEx: 0.4792), and lymphovascular invasion (BioBERT: 0.9918, RegEx: 0.3759).Conclusions Our results showed that the NLP model, BioBERT, had higher accuracy than regular expression, suggesting the importance of BioBERT in the processing of breast cancer pathology reports.
Files in This Item:
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DOI
10.1371/journal.pone.0318726
Appears in Collections:
4. Graduate School of Public Health (보건대학원) > Graduate School of Public Health (보건대학원) > 1. Journal Papers
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/208705
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