| Literature DB >> 35276549 |
Mei Yu1, Ming Han1, Xuewei Li2, Xi Wei3, Han Jiang4, Huiling Chen5, Ruiguo Yu1.
Abstract
[S U M M A R Y] Weakly supervised segmentation for medical images ease the reliance of models on pixel-level annotation while advancing the field of computer-aided diagnosis. However, the differences in nodule size in thyroid ultrasound images and the limitations of class activation maps in weakly supervised segmentation methods typically lead to under- and/or over-segmentation problems in real predictions. To alleviate this problem, we propose a weakly supervised segmentation neural network approach. This new method is based on a dual branch soft erase module that expands the foreground response region while constraining the erroneous expansion of the foreground region by the enhancement of background features. The sensitivity of this neural network to the nodule scale size is further enhanced by the scale feature adaptation module, which in turn generates integral and high-quality segmentation masks. In addition, while the nodule area can be significantly expanded through soft erase module and scale feature adaptation module, the activation effect in the nodule edge area is still not satisfactory, so that we further add an edge-based attention mechanism to strengthen the nodule edge segmentation effect. The results of experiments performed on the thyroid ultrasound image dataset showed that our new approach significantly outperformed existing weakly supervised semantic segmentation methods, e.g., 5.9% and 6.3% more accurate than the second-based results in terms of Jaccard and Dice coefficients, respectively.Entities:
Keywords: Image segmentation; Thyroid nodules; Ultrasound; Weakly supervised
Mesh:
Year: 2022 PMID: 35276549 DOI: 10.1016/j.compbiomed.2022.105347
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589