2022
DOI: 10.3390/cancers14164030
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Connected-SegNets: A Deep Learning Model for Breast Tumor Segmentation from X-ray Images

Abstract: Inspired by Connected-UNets, this study proposes a deep learning model, called Connected-SegNets, for breast tumor segmentation from X-ray images. In the proposed model, two SegNet architectures are connected with skip connections between their layers. Moreover, the cross-entropy loss function of the original SegNet has been replaced by the intersection over union (IoU) loss function in order to make the proposed model more robust against noise during the training process. As part of data preprocessing, a hist… Show more

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Cited by 15 publications
(13 citation statements)
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“…Adaptive Neuro Fuzzy Classifier (Rani et al, 2023) Due to its structure, which incorporates the intuitive nature of fuzzy logic systems with the learning capabilities of neural networks, this approach is employed for handling complex relationships in data. (Alkhaleefah et al, 2022;Abdelhafiz et al, 2020;Ashwini et al, 2023;Bai et al, 2022;Boudouh and Bouakkaz, 2023a;Lingampally and Kavuri, 2023;Liu et al, 2023;Mahmood et al, 2021Mahmood et al, , 2022Malathi and Latha, 2023;Maqsood et al, 2022;Cao et al, 2020;Castro-Tapia et al, 2021;Ertugrul and Abdullah, 2022;El Houby and Yassin, 2021;Falconi et al, 2020;George Melekoodappattu et al, 2022;Gerbasi et al, 2023;Gnanasekaran et al, 2020;Harris et al, 2023;Montaha et al, 2021;Huang and Lin, 2021;Jayandhi et al, 2022;Karthiga et al, 2022 (Cai et al, 2021;Narayanan et al, 2022;Nithya and Santhi, 2021;Oyelade and Ezugwu, 2022;Oza et al, 2022;Pawar et al, 2022;Ragab et al, 2021Ragab et al, , 2019Ravikumar et al, 2023;Kavitha et al, 2021) Histogram Equalization (Ahmad et al, 2023;Alfifi et al, 2020;Arora et al, 2020;Babu and Jerome, 2022;Baccouche et al, 2022;…”
Section: Continuation Ofmentioning
confidence: 99%
See 1 more Smart Citation
“…Adaptive Neuro Fuzzy Classifier (Rani et al, 2023) Due to its structure, which incorporates the intuitive nature of fuzzy logic systems with the learning capabilities of neural networks, this approach is employed for handling complex relationships in data. (Alkhaleefah et al, 2022;Abdelhafiz et al, 2020;Ashwini et al, 2023;Bai et al, 2022;Boudouh and Bouakkaz, 2023a;Lingampally and Kavuri, 2023;Liu et al, 2023;Mahmood et al, 2021Mahmood et al, , 2022Malathi and Latha, 2023;Maqsood et al, 2022;Cao et al, 2020;Castro-Tapia et al, 2021;Ertugrul and Abdullah, 2022;El Houby and Yassin, 2021;Falconi et al, 2020;George Melekoodappattu et al, 2022;Gerbasi et al, 2023;Gnanasekaran et al, 2020;Harris et al, 2023;Montaha et al, 2021;Huang and Lin, 2021;Jayandhi et al, 2022;Karthiga et al, 2022 (Cai et al, 2021;Narayanan et al, 2022;Nithya and Santhi, 2021;Oyelade and Ezugwu, 2022;Oza et al, 2022;Pawar et al, 2022;Ragab et al, 2021Ragab et al, , 2019Ravikumar et al, 2023;Kavitha et al, 2021) Histogram Equalization (Ahmad et al, 2023;Alfifi et al, 2020;Arora et al, 2020;Babu and Jerome, 2022;Baccouche et al, 2022;…”
Section: Continuation Ofmentioning
confidence: 99%
“…Seg-Net (Abdelhafiz et al, 2020) SegNet's encoder-decoder design uses max-pooling indices to retain spatial details while remaining memory efficient unlike U-net. Connected Seg-Net (Alkhaleefah et al, 2022) It is comprised of two encoder and decoder networks. After cascading a second SegNet, additional skip connections are used to connect the first decoder and second encoder networks.…”
Section: Multi Tasking U-netmentioning
confidence: 99%
“…Alkhaleefah et al. ( 70 ) developed a DL model called Connected SegNets for segmenting breast tumors from X-ray images. In the proposed model, two SegNet architectures are connected by skip-the-loop connections between their layers.…”
Section: Application Of Deep Learning In Mammographymentioning
confidence: 99%
“…In the original publication [ 1 ], there was a mistake in Figure 5 as published. Figure 6 was repeated twice.…”
mentioning
confidence: 99%