4.7 Article

Model-Driven Deep Learning Method for Pancreatic Cancer Segmentation Based on Spiral-Transformation

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 41, Issue 1, Pages 75-87

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2021.3104460

Keywords

Three-dimensional displays; Image segmentation; Cancer; Spirals; Deep learning; Solid modeling; Tumors; Spiral transformation; model-driven deep learning; data augmentation; pancreatic cancer segmentation

Funding

  1. Innovation Research Plan from the Shanghai Municipal Education Commission [WF220408215, ZXWF082101/072]
  2. MedEngineering Crossing Foundation from Shanghai Jiao Tong University [AH0820009]

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In this study, a model-driven deep learning method based on spiral transformation was proposed for the segmentation of pancreatic cancer. The method effectively applied 3D contextual information by mapping 3D images onto 2D planes while preserving the spatial relationship between textures. Additionally, a transformation-weight-corrected module and a smooth regularization based on rebuilding prior knowledge were embedded to optimize the segmentation results. Promising segmentation performance was achieved on multi-parametric MRIs according to extensive experiments.
Pancreatic cancer is a lethal malignant tumor with one of the worst prognoses. Accurate segmentation of pancreatic cancer is vital in clinical diagnosis and treatment. Due to the unclear boundary and small size of cancers, it is challenging to both manually annotate and automatically segment cancers. Considering 3D information utilization and small sample sizes, we propose a model-driven deep learning method for pancreatic cancer segmentation based on spiral transformation. Specifically, a spiral-transformation algorithm with uniform sampling was developed to map 3D images onto 2D planes while preserving the spatial relationship between textures, thus addressing the challenge in effectively applying 3D contextual information in a 2D model. This study is the first to introduce spiral transformation in a segmentation task to provide effective data augmentation, alleviating the issue of small sample size. Moreover, a transformation-weight-corrected module was embedded into the deep learning model to unify the entire framework. It can achieve 2D segmentation and corresponding 3D rebuilding constraint to overcome non-unique 3D rebuilding results due to the uniform and dense sampling. A smooth regularization based on rebuilding prior knowledge was also designed to optimize segmentation results. The extensive experiments showed that the proposed method achieved a promising segmentation performance on multi-parametric MRIs, where T2, T1, ADC, DWI images obtained the DSC of 65.6%, 64.0%, 64.5%, 65.3%, respectively. This method can provide a novel paradigm to efficiently apply 3D information and augment sample sizes in the development of artificial intelligence for cancer segmentation. Our source codes will be released at https://github.com/SJTUBME-QianLab/ Spiral-Segmentation.

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