2020
DOI: 10.3389/fonc.2020.01134
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Sequential and Iterative Auto-Segmentation of High-Risk Clinical Target Volume for Radiotherapy of Nasopharyngeal Carcinoma in Planning CT Images

Abstract: Background: Accurate segmentation of tumor targets is critical for maximizing tumor control and minimizing normal tissue toxicity. We proposed a sequential and iterative U-Net (SI-Net) deep learning method to auto-segment the high-risk primary tumor clinical target volume (CTVp1) for treatment planning of nasopharyngeal carcinoma (NPC) radiotherapy. Methods: The SI-Net is a variant of the U-Net architecture. The input of SI-Net includes one CT image, the CTVp1 contour on this… Show more

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Cited by 16 publications
(25 citation statements)
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“…This result was expected because of the 3D convolution kernels used in this study. Similar results were reported in [17] even with a semi 3D approach. Different from clinicians (or uniform-expansion in TPS) who handle the CT images and delineate the CTV contours slice-by-slice, our trained model took the full 3D volumetric information into account and naturally enforced the smoothness of the predicted contours in axial direction.…”
Section: Discussionsupporting
confidence: 88%
See 1 more Smart Citation
“…This result was expected because of the 3D convolution kernels used in this study. Similar results were reported in [17] even with a semi 3D approach. Different from clinicians (or uniform-expansion in TPS) who handle the CT images and delineate the CTV contours slice-by-slice, our trained model took the full 3D volumetric information into account and naturally enforced the smoothness of the predicted contours in axial direction.…”
Section: Discussionsupporting
confidence: 88%
“…In the other words, this AM-GM inequality based function alone handled imbalance well. Similar to our approach, a dice coefficient based loss function to replace BCE for UNet was reported in [16] , [17] .…”
Section: Discussionmentioning
confidence: 92%
“… 2. The paper mainly focused on the data level approach using re-sampling technique Xue et al (2020) 69 (China) NPC 150 (Combined CT and MRI images) Deep learning (Auto-contouring) 1. Segmentation: Deeplabv3+ 2.…”
Section: Methodsmentioning
confidence: 99%
“…MRI images were not used for training the model. Xue et al (2020) 46 (China) NPC 150 (Combined CT and MRI images) Deep learning (Auto-contouring) 1. Segmentation: SI-net To assess the model’s ability to segment high-risk tumors 1.…”
Section: Methodsmentioning
confidence: 99%
“…Xue [ 139 ] proposed a sequential and iterative U-Net (SI-Net) to automatically segment the target volume of the primary tumour and compared it with a conventional U-Net. It was considered that the performance of the SI-Net was better than that of the U-Net (DSCs were 0.84 and 0.80, respectively).…”
Section: Studies Based On DLmentioning
confidence: 99%