Proceedings of the 2019 8th International Conference on Software and Information Engineering 2019
DOI: 10.1145/3328833.3328867
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Deep learning approach for breast cancer diagnosis

Abstract: Breast cancer is one of the leading fatal disease worldwide with high risk control if early discovered. Conventional method for breast screening is x-ray mammography, which is known to be challenging for early detection of cancer lesions. The dense breast structure produced due to the compression process during imaging lead to difficulties to recognize small size abnormalities. Also, inter-and intra-variations of breast tissues lead to significant difficulties to achieve high diagnosis accuracy using hand-craf… Show more

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Cited by 16 publications
(7 citation statements)
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“…Increasing the kernel size of O-Net resulted in an improvement in segmentation accuracy. 19 The Three Time Points (3TP) U-Net has been presented by Piantadosi et al, which means that the images used in this model were taken at three different time points: before injection of contrast agent, 2 min after injection of contrast agent, and 6 min after injection of contrast agent. 20 Zhou et al have discussed 3D DenseNet.…”
Section: Deep Learning-based Methods For the Detection Of Mri Breast ...mentioning
confidence: 99%
See 1 more Smart Citation
“…Increasing the kernel size of O-Net resulted in an improvement in segmentation accuracy. 19 The Three Time Points (3TP) U-Net has been presented by Piantadosi et al, which means that the images used in this model were taken at three different time points: before injection of contrast agent, 2 min after injection of contrast agent, and 6 min after injection of contrast agent. 20 Zhou et al have discussed 3D DenseNet.…”
Section: Deep Learning-based Methods For the Detection Of Mri Breast ...mentioning
confidence: 99%
“…Rashed and Seoud created the O‐Net, which was the fusion of two UNets to segment tumors from breast mammography. Increasing the kernel size of O‐Net resulted in an improvement in segmentation accuracy 19 …”
Section: Review Of Related Workmentioning
confidence: 99%
“…They applied C-Means algorithm on the centers of a fixed number of groups founded by K-Means, in order to improve the accuracy of classification. Rashed et al (2019) developed a novel network architecture with an inspiration from U-net structure to predict breast cancer in early stages. Omondiagbe (2019) investigated classification performance of Support Vector Machine (using radial basis kernel), Artificial Neural Networks and Naïve Bayes for breast cancer prediction, focusing on integrating machine learning techniques with feature selection and extraction methods.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Not only does it allow them to share data and insights about a diagnosis across the globe easily, but with computational pathology, algorithms capabilities may be leveraged to ease pathologists' work on many tasks. Deep learning has shown promising results for various applications such as cancer classification [1,2,3], detection [4,5,6] or segmentation [7,8] of biomarkers required for diagnosis.…”
Section: Introductionmentioning
confidence: 99%