Enhancing Ovarian Tumor Diagnosis: Performance of Convolutional Neural Networks in Classifying Ovarian Masses Using Ultrasound Images. Academic Article uri icon

Overview

abstract

  • Background/Objectives: This study aims to create a strong binary classifier and evaluate the performance of pre-trained convolutional neural networks (CNNs) to effectively distinguish between benign and malignant ovarian tumors from still ultrasound images. Methods: The dataset consisted of 3510 ultrasound images from 585 women with ovarian tumors, 390 benign and 195 malignant, that were classified by experts and verified by histopathology. A 20% to80% split for training and validation was applied within a k-fold cross-validation framework, ensuring comprehensive utilization of the dataset. The final classifier was an aggregate of three pre-trained CNNs (VGG16, ResNet50, and InceptionNet), with experimentation focusing on the aggregation weights and decision threshold probability for the classification of each mass. Results: The aggregate model outperformed all individual models, achieving an average sensitivity of 96.5% and specificity of 88.1% compared to the subjective assessment's (SA) 95.9% sensitivity and 93.9% specificity. All the above results were calculated at a decision threshold probability of 0.2. Notably, misclassifications made by the model were similar to those made by SA. Conclusions: CNNs and AI-assisted image analysis can enhance the diagnosis and aid ultrasonographers with less experience by minimizing errors. Further research is needed to fine-tune CNNs and validate their performance in diverse clinical settings, potentially leading to even higher sensitivity and overall accuracy.

authors

  • Giourga, Maria
  • Petropoulos, Ioannis Nikolaos
  • Stavros, Sofoklis
  • Potiris, Anastasios
  • Gerede, Angeliki
  • Sapantzoglou, Ioakeim
  • Fanaki, Maria
  • Papamattheou, Eleni
  • Karasmani, Christina
  • Karampitsakos, Theodoros
  • Topis, Spyridon
  • Zikopoulos, Athanasios
  • Daskalakis, Georgios
  • Domali, Ekaterini

publication date

  • July 15, 2024

Identity

PubMed Central ID

  • PMC11277638

Digital Object Identifier (DOI)

  • 10.3390/jcm13144123

PubMed ID

  • 39064163

Additional Document Info

volume

  • 13

issue

  • 14