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Natural Language Processing to extract SNOMED-CT codes from pathological reports

Authors :
Cazzaniga, G
Eccher, A
Munari, E
Marletta, S
Bonoldi, E
Della Mea, V
Cadei, M
Sbaraglia, M
Guerriero, A
Dei Tos, A
Pagni, F
L'Imperio, V
Cazzaniga, Giorgio
Eccher, Albino
Munari, Enrico
Marletta, Stefano
Bonoldi, Emanuela
Della Mea, Vincenzo
Cadei, Moris
Sbaraglia, Marta
Guerriero, Angela
Dei Tos, Angelo Paolo
Pagni, Fabio
L'Imperio, Vincenzo
Cazzaniga, G
Eccher, A
Munari, E
Marletta, S
Bonoldi, E
Della Mea, V
Cadei, M
Sbaraglia, M
Guerriero, A
Dei Tos, A
Pagni, F
L'Imperio, V
Cazzaniga, Giorgio
Eccher, Albino
Munari, Enrico
Marletta, Stefano
Bonoldi, Emanuela
Della Mea, Vincenzo
Cadei, Moris
Sbaraglia, Marta
Guerriero, Angela
Dei Tos, Angelo Paolo
Pagni, Fabio
L'Imperio, Vincenzo
Publication Year :
2023

Abstract

Objective. The use of standardized structured reports (SSR) and suitable terminologies like SNOMED-CT can enhance data retrieval and analysis, fostering large-scale studies and collaboration. However, the still large prevalence of narrative reports in our laboratories warrants alternative and automated labeling approaches. In this project, natural language processing (NLP) methods were used to associate SNOMED-CT codes to structured and unstructured reports from an Italian Digital Pathology Department. Methods. Two NLP-based automatic coding systems (support vector machine, SVM, and long-short term memory, LSTM) were trained and applied to a series of narrative reports. Results. The 1163 cases were tested with both algorithms, showing good performances in terms of accuracy, precision, recall, and F1 score, with SVM showing slightly better performances as compared to LSTM (0.84, 0.87, 0.83, 0.82 vs 0.83, 0.85, 0.83, 0.82, respectively). The integration of an explainability allowed identification of terms and groups of words of importance, enabling fine-tuning, balancing semantic meaning and model performance. Conclusions. AI tools allow the automatic SNOMED-CT labeling of the pathology archives, providing a retrospective fix to the large lack of organization of narrative reports.

Details

Database :
OAIster
Notes :
ELETTRONICO, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1427430333
Document Type :
Electronic Resource