4.6 Article

PeMNet for Pectoral Muscle Segmentation

期刊

BIOLOGY-BASEL
卷 11, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/biology11010134

关键词

pectoral segmentation; deep learning; global channel attention module

类别

资金

  1. CSC
  2. Royal Society International Exchanges Cost Share Award, UK [RP202G0230]
  3. Medical Research Council Confidence in Concept Award, UK [MC_PC_17171]
  4. Hope Foundation for Cancer Research, UK [RM60G0680]
  5. Sino-UK Industrial Fund, UK [RP202G0289]
  6. Global Challenges Research Fund (GCRF), UK [P202PF11]
  7. British Heart Foundation Accelerator Award, UK [AA/18/3/34220]
  8. Guangxi Key Laboratory of Trusted Software [kx201901]
  9. FEDER Una manera de hacer Europa [RTI2018-098913-B100]
  10. Consejeria de Economia, Innovacion, Ciencia y Empleo (Junta de Andalucia)
  11. FEDER [CV20-45250, A-TIC-080-UGR18, B-TIC-586-UGR20, P20-00525]
  12. [MCIN/AEI/10.13039/501100011033/]

向作者/读者索取更多资源

Deep learning has become popular in breast cancer CAD systems, but existing methods suffer from reliance on manually crafted features and high computational costs. Therefore, the authors propose a novel deep learning segmentation framework that improves accuracy and efficiency through a new network architecture and attention module.
Simple Summary: Deep learning has become a popular technique in modern computer-aided (CAD) systems. In breast cancer CAD systems, breast pectoral segmentation is an important procedure to remove unwanted pectoral muscle in the images. In recent decades, there are numerous studies aiming at developing efficient and accurate methods for pectoral muscle segmentation. However, some methods heavily rely on manually crafted features that can easily lead to segmentation failure. Moreover, deep learning-based methods are still suffering from poor performance at high computational costs. Therefore, we propose a novel deep learning segmentation framework to provide fast and accurate pectoral muscle segmentation result. In the proposed framework, the novel network architecture enables more useful information to be used and therefore improve the segmentation results. The experimental results using two public datasets validated the effectiveness of the proposed network.& nbsp;As an important imaging modality, mammography is considered to be the global gold standard for early detection of breast cancer. Computer-Aided (CAD) systems have played a crucial role in facilitating quicker diagnostic procedures, which otherwise could take weeks if only radiologists were involved. In some of these CAD systems, breast pectoral segmentation is required for breast region partition from breast pectoral muscle for specific analysis tasks. Therefore, accurate and efficient breast pectoral muscle segmentation frameworks are in high demand. Here, we proposed a novel deep learning framework, which we code-named PeMNet, for breast pectoral muscle segmentation in mammography images. In the proposed PeMNet, we integrated a novel attention module called the Global Channel Attention Module (GCAM), which can effectively improve the segmentation performance of Deeplabv3+ using minimal parameter overheads. In GCAM, channel attention maps (CAMs) are first extracted by concatenating feature maps after paralleled global average pooling and global maximum pooling operation. CAMs are then refined and scaled up by multi-layer perceptron (MLP) for elementwise multiplication with CAMs in next feature level. By iteratively repeating this procedure, the global CAMs (GCAMs) are then formed and multiplied elementwise with final feature maps to lead to final segmentation. By doing so, CAMs in early stages of a deep convolution network can be effectively passed on to later stages of the network and therefore leads to better information usage. The experiments on a merged dataset derived from two datasets, INbreast and OPTIMAM, showed that PeMNet greatly outperformed state-of-the-art methods by achieving an IoU of 97.46%, global pixel accuracy of 99.48%, Dice similarity coefficient of 96.30%, and Jaccard of 93.33%, respectively.

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