Login / Signup

Breast segmentation in infrared thermography from characteristical inframammary shape.

Francisco J Alvarez-PadillaJorge L Flores-NunezJuan R Alvarez-PadillaFrancisco J GonzalezAntonio Oceguera-VillanuevaBrian A Gutierrez-Quiroz
Published in: International journal for numerical methods in biomedical engineering (2024)
Infrared thermography is gaining relevance in breast cancer assessment. For this purpose, breast segmentation in thermograms is an important task for performing automatic image analysis and detecting possible temperature changes that indicate the presence of malignancy. However, it is not a simple task since the breast limit borders, especially the top borders, often have low contrast, making it difficult to isolate the breast area. Several algorithms have been proposed for breast segmentation, but these highly depend on the contrast at the lower breast borders and on filtering algorithms to remove false edges. This work focuses on taking advantage of the distinctive inframammary shape to simplify the definition of the lower breast border, regardless of the contrast level, which indeed also provides a strong anatomical reference to support the definition of the poorly marked upper boundary of the breasts, which has been one of the major challenges in the literature. In order to demonstrate viability of the proposed technique for an automatic breast segmentation, we applied it to a database with 180 thermograms and compared their results with those reported by others in the literature. We found that our approach achieved a high performance, in terms of Intersection over Union of 0.934, even higher than that reported by artificial intelligence algorithms. The performance is invariant to breast sizes and thermal contrast of the images.
Keyphrases
  • deep learning
  • artificial intelligence
  • machine learning
  • convolutional neural network
  • magnetic resonance
  • systematic review
  • big data
  • contrast enhanced
  • computed tomography
  • young adults