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Natural language processing in the classification of radiology reports in benign gallbladder diseases / O processamento de língua natural permite a classificação correta de laudos radiológicos em doenças benignas da vesícula biliar
Santin, Lislie Gabriela; Lee, Henrique Min Ho; Silva, Viviane Mariano da; Cardoso, Ellison Fernando; Gazzola, Murilo Gleyson.
Affiliation
  • Santin, Lislie Gabriela; Hospital Israelita Albert Einstein. São Paulo. BR
  • Lee, Henrique Min Ho; Hospital Israelita Albert Einstein. São Paulo. BR
  • Silva, Viviane Mariano da; Hospital Israelita Albert Einstein. São Paulo. BR
  • Cardoso, Ellison Fernando; Hospital Israelita Albert Einstein. São Paulo. BR
  • Gazzola, Murilo Gleyson; Hospital Israelita Albert Einstein. São Paulo. BR
Radiol. bras ; 57: e20230096en, 2024. tab, graf
Article ي En | LILACS-Express | LILACS | ID: biblio-1564998
المكتبة المسؤولة: BR1.1
الموقع: 0100-3984-rb-57-e20230096.xml
RESUMO
Abstract

Objective:

To develop a natural language processing application capable of automatically identifying benign gallbladder diseases that require surgery, from radiology reports. Materials and

Methods:

We developed a text classifier to classify reports as describing benign diseases of the gallbladder that do or do not require surgery. We randomly selected 1,200 reports describing the gallbladder from our database, including different modalities. Four radiologists classified the reports as describing benign disease that should or should not be treated surgically. Two deep learning architectures were trained for classification a convolutional neural network (CNN) and a bidirectional long short-term memory (BiLSTM) network. In order to represent words in vector form, the models included a Word2Vec representation, with dimensions of 300 or 1,000. The models were trained and evaluated by dividing the dataset into training, validation, and subsets (80/10/10).

Results:

The CNN and BiLSTM performed well in both dimensional spaces. For the 300- and 1,000-dimensional spaces, respectively, the F1-scores were 0.95945 and 0.95302 for the CNN model, compared with 0.96732 and 0.96732 for the BiLSTM model.

Conclusion:

Our models achieved high performance, regardless of the architecture and dimensional space employed.
Key words

النص الكامل: 1 الفهرس: LILACS اللغة: En مجلة: Radiol. bras موضوع المجلة: DIAGNOSTICO POR IMAGEM / RADIOLOGIA السنة: 2024 نوع: Article

النص الكامل: 1 الفهرس: LILACS اللغة: En مجلة: Radiol. bras موضوع المجلة: DIAGNOSTICO POR IMAGEM / RADIOLOGIA السنة: 2024 نوع: Article