An Anatomy-aware Framework for Automatic Segmentation of Parotid Tumor from Multimodal MRI
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 bounda...
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Zusammenfassung: | 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 different
modalities and calibrates the multimodal information using the channel
attention mechanism. Second, considering that the segmentation model is prone
to be disturbed by similar anatomical structures and make wrong predictions, we
design anatomy-aware loss. By calculating the distance between the activation
regions of the prediction segmentation and the ground truth, our loss function
forces the model to distinguish similar anatomical structures with the tumor
and make correct predictions. Extensive experiments with MRI scans of the
parotid tumor showed that our PT-Net achieved higher segmentation accuracy than
existing networks. The anatomy-aware loss outperformed state-of-the-art loss
functions for parotid tumor segmentation. Our framework can potentially improve
the quality of preoperative diagnosis and surgery planning of parotid tumors. |
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DOI: | 10.48550/arxiv.2210.01467 |