IVCVLGMay 29, 2023

propnet: Propagating 2D Annotation to 3D Segmentation for Gastric Tumors on CT Scans

arXiv:2305.17871v1
Originality Incremental advance
AI Analysis

This work addresses accurate and efficient segmentation for gastric tumor diagnosis and treatment, reducing radiologists' workload, but it is incremental as it builds on existing annotation propagation methods.

The study tackled 3D CT scan segmentation of gastric tumors by developing the PropNet framework, which propagates 2D annotations to 3D space, achieving a Dice score of 0.803 and improving prognostic prediction with a C-index of 0.620.

**Background:** Accurate 3D CT scan segmentation of gastric tumors is pivotal for diagnosis and treatment. The challenges lie in the irregular shapes, blurred boundaries of tumors, and the inefficiency of existing methods. **Purpose:** We conducted a study to introduce a model, utilizing human-guided knowledge and unique modules, to address the challenges of 3D tumor segmentation. **Methods:** We developed the PropNet framework, propagating radiologists' knowledge from 2D annotations to the entire 3D space. This model consists of a proposing stage for coarse segmentation and a refining stage for improved segmentation, using two-way branches for enhanced performance and an up-down strategy for efficiency. **Results:** With 98 patient scans for training and 30 for validation, our method achieves a significant agreement with manual annotation (Dice of 0.803) and improves efficiency. The performance is comparable in different scenarios and with various radiologists' annotations (Dice between 0.785 and 0.803). Moreover, the model shows improved prognostic prediction performance (C-index of 0.620 vs. 0.576) on an independent validation set of 42 patients with advanced gastric cancer. **Conclusions:** Our model generates accurate tumor segmentation efficiently and stably, improving prognostic performance and reducing high-throughput image reading workload. This model can accelerate the quantitative analysis of gastric tumors and enhance downstream task performance.

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