2022
DOI: 10.3390/app12031665
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Deep Learning Networks for Automatic Retroperitoneal Sarcoma Segmentation in Computerized Tomography

Abstract: The volume estimation of retroperitoneal sarcoma (RPS) is often difficult due to its huge dimensions and irregular shape; thus, it often requires manual segmentation, which is time-consuming and operator-dependent. This study aimed to evaluate two fully automated deep learning networks (ENet and ERFNet) for RPS segmentation. This retrospective study included 20 patients with RPS who received an abdominal computed tomography (CT) examination. Forty-nine CT examinations, with a total of 72 lesions, were included… Show more

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Cited by 11 publications
(8 citation statements)
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“…Based on the research in this paper, continue to improve our method to make this method applicable to bone tumors in more sites. (3) Giuseppe Salvaggio et al 24,25 proposed a fully automated deep learning network called Efficient Neural Network (ENet) for segmenting prostates with mesial hyperplasia. Since then, ENet has been used for many small sample segmentation tasks.…”
Section: Discussionmentioning
confidence: 99%
“…Based on the research in this paper, continue to improve our method to make this method applicable to bone tumors in more sites. (3) Giuseppe Salvaggio et al 24,25 proposed a fully automated deep learning network called Efficient Neural Network (ENet) for segmenting prostates with mesial hyperplasia. Since then, ENet has been used for many small sample segmentation tasks.…”
Section: Discussionmentioning
confidence: 99%
“…ENet has an order of magnitude fewer parameters than U‐Net, and the segmentation speed is faster than U‐Net. Salvaggio et al 31 used ENet to segment CT images of retroperitoneal sarcoma and obtained a higher Dice similarity coefficient, indicating that ENet achieved a higher segmentation accuracy and had a higher similarity with manual segmentation.…”
Section: Related Workmentioning
confidence: 99%
“…The ENet (Efficient Neural Network) proposed by Adam Paszke et al 54 for real-time semantic segmentation is utilized in various recent biomedical researches for medical image segmentation. Salvaggio et al 55 designed an ENet-based structure for automatic retroperitoneal sarcoma segmentation and generated optimum results superior to UNet. We hope that this study might be used for head and neck segmentation in the future.…”
Section: Future Scopementioning
confidence: 99%