An Anatomy-aware Framework for Automatic Segmentation of Parotid Tumor from Multimodal MRI
Yifan Gao, Yin Dai, Fayu Liu, Weibing Chen, and Lifu Shi

TL;DR
This paper introduces a novel anatomy-aware framework using a Transformer-based multimodal fusion network and specialized loss function to improve the accuracy of automatic parotid tumor segmentation from multimodal MRI, aiding diagnosis and treatment planning.
Contribution
The paper presents a new anatomy-aware segmentation framework with a Transformer-based fusion network and a novel loss function tailored for parotid tumor MRI analysis.
Findings
PT-Net outperforms existing networks in segmentation accuracy.
Anatomy-aware loss improves distinction between tumor and similar structures.
Framework enhances preoperative diagnosis and surgical planning.
Abstract
Magnetic Resonance Imaging (MRI) plays an important role in diagnosing the parotid tumor, where accurate segmentation of tumors is highly desired for determining appropriate treatment plans and avoiding unnecessary surgery. However, the task remains nontrivial and challenging due to ambiguous boundaries and various sizes of the tumor, as well as the presence of a large number of anatomical structures around the parotid gland that are similar to the tumor. To overcome these problems, we propose a novel anatomy-aware framework for automatic segmentation of parotid tumors from multimodal MRI. First, a Transformer-based multimodal fusion network PT-Net is proposed in this paper. The encoder of PT-Net extracts and fuses contextual information from three modalities of MRI from coarse to fine, to obtain cross-modality and multi-scale tumor information. The decoder stacks the feature maps of…
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Taxonomy
TopicsSalivary Gland Tumors Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · Head and Neck Cancer Studies
