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Automatic Classification of Nodules from 2D Ultrasound Images Using Deep Learning Networks.
Tareke, Tewele W; Leclerc, Sarah; Vuillemin, Catherine; Buffier, Perrine; Crevisy, Elodie; Nguyen, Amandine; Monnier Meteau, Marie-Paule; Legris, Pauline; Angiolini, Serge; Lalande, Alain.
Afiliação
  • Tareke TW; ICMUB Laboratory, UMR CNRS 6302, University of Burgundy, 7 Bld Jeanne d'Arc, 21000 Dijon, France.
  • Leclerc S; ICMUB Laboratory, UMR CNRS 6302, University of Burgundy, 7 Bld Jeanne d'Arc, 21000 Dijon, France.
  • Vuillemin C; Medical Imaging Department, Hospital of Bastia, 20600 Bastia, France.
  • Buffier P; Department of Endocrinology-Diabetology, University Hospital, 21000 Dijon, France.
  • Crevisy E; Department of Endocrinology-Diabetology, University Hospital, 21000 Dijon, France.
  • Nguyen A; Department of Endocrinology-Diabetology, University Hospital, 21000 Dijon, France.
  • Monnier Meteau MP; Department of Endocrinology-Diabetology, University Hospital, 21000 Dijon, France.
  • Legris P; Department of Endocrinology-Diabetology, University Hospital, 21000 Dijon, France.
  • Angiolini S; Medical Imaging Department, Hospital of Bastia, 20600 Bastia, France.
  • Lalande A; ICMUB Laboratory, UMR CNRS 6302, University of Burgundy, 7 Bld Jeanne d'Arc, 21000 Dijon, France.
J Imaging ; 10(8)2024 Aug 22.
Article em En | MEDLINE | ID: mdl-39194992
ABSTRACT

OBJECTIVE:

In clinical practice, thyroid nodules are typically visually evaluated by expert physicians using 2D ultrasound images. Based on their assessment, a fine needle aspiration (FNA) may be recommended. However, visually classifying thyroid nodules from ultrasound images may lead to unnecessary fine needle aspirations for patients. The aim of this study is to develop an automatic thyroid ultrasound image classification system to prevent unnecessary FNAs.

METHODS:

An automatic computer-aided artificial intelligence system is proposed for classifying thyroid nodules using a fine-tuned deep learning model based on the DenseNet architecture, which incorporates an attention module. The dataset comprises 591 thyroid nodule images categorized based on the Bethesda score. Thyroid nodules are classified as either requiring FNA or not. The challenges encountered in this task include managing variability in image quality, addressing the presence of artifacts in ultrasound image datasets, tackling class imbalance, and ensuring model interpretability. We employed techniques such as data augmentation, class weighting, and gradient-weighted class activation maps (Grad-CAM) to enhance model performance and provide insights into decision making.

RESULTS:

Our approach achieved excellent results with an average accuracy of 0.94, F1-score of 0.93, and sensitivity of 0.96. The use of Grad-CAM gives insights on the decision making and then reinforce the reliability of the binary classification for the end-user perspective.

CONCLUSIONS:

We propose a deep learning architecture that effectively classifies thyroid nodules as requiring FNA or not from ultrasound images. Despite challenges related to image variability, class imbalance, and interpretability, our method demonstrated a high classification accuracy with minimal false negatives, showing its potential to reduce unnecessary FNAs in clinical settings.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article