Department of Computer Science and Technology, Heilongjiang University, Harbin, People's Republic of China.
Biomed Phys Eng Express. 2024 Jul 24;10(5). doi: 10.1088/2057-1976/ad6161.
The segmentation of atrial scars in LGE-MRI images has huge potential value for clinical diagnosis and subsequent treatment. In clinical practice, atrial scars are usually manually calibrated by experienced experts, which is time-consuming and prone to errors. However, automatic segmentation also faces difficulties due to myocardial scars' small size and variable shape. The present study introduces a dual branch network, incorporating edge attention, and deep supervision strategy. Edge attention is introduced to fully utilize the spatial relationship between the scar and the atrium. Besides, dense attention is embedded in bottom layer to solve feature disappearance. At the same time, deep supervision accelerates the convergence of the model and improves segmentation accuracy. The experiments were conducted on the 2022 atrial and scar segmentation challenge dataset. The results demonstrate that the proposed method has achieved superior performance.
左心房疤痕的分割在 LGE-MRI 图像中具有巨大的临床诊断和后续治疗价值。在临床实践中,左心房疤痕通常由经验丰富的专家手动校准,这既耗时又容易出错。然而,由于心肌疤痕的体积小且形状多变,自动分割也面临困难。本研究引入了一种双分支网络,结合边缘注意力和深度监督策略。边缘注意力被引入以充分利用疤痕和左心房之间的空间关系。此外,密集注意力被嵌入底层以解决特征消失问题。同时,深度监督加速了模型的收敛,提高了分割的准确性。实验是在 2022 年心房和疤痕分割挑战赛数据集上进行的。结果表明,所提出的方法取得了优异的性能。