NTSM: a non-salient target segmentation model for oral mucosal diseases

Oral mucosal diseases are similar to the surrounding normal tissues, i.e., their many non-salient features, which poses a challenge for accurate segmentation lesions. Additionally, high-precision large models generate too many parameters, which puts pressure on storage and makes it difficult to depl...

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Veröffentlicht in:BMC oral health 2024-05, Vol.24 (1), p.521-17, Article 521
Hauptverfasser: Ju, Jianguo, Zhang, Qian, Guan, Ziyu, Shen, Xuemin, Shen, Zhengyu, Xu, Pengfei
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Sprache:eng
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Zusammenfassung:Oral mucosal diseases are similar to the surrounding normal tissues, i.e., their many non-salient features, which poses a challenge for accurate segmentation lesions. Additionally, high-precision large models generate too many parameters, which puts pressure on storage and makes it difficult to deploy on portable devices. To address these issues, we design a non-salient target segmentation model (NTSM) to improve segmentation performance while reducing the number of parameters. The NTSM includes a difference association (DA) module and multiple feature hierarchy pyramid attention (FHPA) modules. The DA module enhances feature differences at different levels to learn local context information and extend the segmentation mask to potentially similar areas. It also learns logical semantic relationship information through different receptive fields to determine the actual lesions and further elevates the segmentation performance of non-salient lesions. The FHPA module extracts pathological information from different views by performing the hadamard product attention (HPA) operation on input features, which reduces the number of parameters. The experimental results on the oral mucosal diseases (OMD) dataset and international skin imaging collaboration (ISIC) dataset demonstrate that our model outperforms existing state-of-the-art methods. Compared with the nnU-Net backbone, our model has 43.20% fewer parameters while still achieving a 3.14% increase in the Dice score. Our model has high segmentation accuracy on non-salient areas of oral mucosal diseases and can effectively reduce resource consumption.
ISSN:1472-6831
1472-6831
DOI:10.1186/s12903-024-04193-x