Hedibi Hicham, Beladgham Mohammed, Bouida Ahmed
Laboratory of Information Processing and Telecommunication (LTIT), University TAHRI Mohammed of Bechar, BP 417 Route de l'indépendance, Bechar, 08000, Algeria.
Laboratory of Information Processing and Telecommunication (LTIT), University TAHRI Mohammed of Bechar, BP 417 Route de l'indépendance, Bechar, 08000, Algeria.
Comput Biol Med. 2025 Jul;193:110380. doi: 10.1016/j.compbiomed.2025.110380. Epub 2025 May 29.
Low-grade gliomas (LGGs) are among the most problematic brain tumors to reliably segment in FLAIR MRI, and effective delineation of these lesions is critical for clinical diagnosis, treatment planning, and patient monitoring. Nevertheless, conventional U-Net-based approaches usually suffer from the loss of critical structural details owing to repetitive down-sampling, while the encoder features often retain irrelevant information that is not properly utilized by the decoder. To solve these challenges, this paper offers a dual-attention U-shaped design, named ECASE-Unet, which seamlessly integrates Efficient Channel Attention (ECA) and Squeeze-and-Excitation (SE) blocks in both the encoder and decoder stages. By selectively recalibrating channel-wise information, the model increases diagnostically significant regions of interest and reduces noise. Furthermore, dilated convolutions are introduced at the bottleneck layer to capture multi-scale contextual cues without inflating computational complexity, and dropout regularization is systematically applied to prevent overfitting on heterogeneous data. Experimental results on the Kaggle Low-Grade-Glioma dataset suggest that ECASE-Unet greatly outperforms previous segmentation algorithms, reaching a Dice coefficient of 0.9197 and an Intersection over Union (IoU) of 0.8521. Comprehensive ablation studies further reveal that integrating ECA and SE modules delivers complementing benefits, supporting the model's robust efficacy in precisely identifying LGG boundaries. These findings underline the potential of ECASE-Unet to expedite clinical operations and improve patient outcomes. Future work will focus on improving the model's applicability to new MRI modalities and studying the integration of clinical characteristics for a more comprehensive characterization of brain tumors.
低级别胶质瘤(LGGs)是在液体衰减反转恢复(FLAIR)磁共振成像(MRI)中最难可靠分割的脑肿瘤之一,有效勾勒这些病变对于临床诊断、治疗规划和患者监测至关重要。然而,传统的基于U-Net的方法通常由于重复下采样而导致关键结构细节丢失,而编码器特征往往保留了解码器未正确利用的无关信息。为了解决这些挑战,本文提出了一种双注意力U形设计,名为ECASE-Unet,它在编码器和解码器阶段无缝集成了高效通道注意力(ECA)和挤压激励(SE)模块。通过选择性地重新校准通道信息,该模型增加了具有诊断意义的感兴趣区域并减少了噪声。此外,在瓶颈层引入了扩张卷积以捕获多尺度上下文线索而不增加计算复杂度,并系统地应用了随机失活正则化以防止在异质数据上过度拟合。在Kaggle低级别胶质瘤数据集上的实验结果表明,ECASE-Unet大大优于先前的分割算法,达到了0.9197的Dice系数和0.8521的交并比(IoU)。全面的消融研究进一步表明,集成ECA和SE模块带来了互补的好处,支持该模型在精确识别LGG边界方面的强大功效。这些发现强调了ECASE-Unet在加快临床操作和改善患者预后方面的潜力。未来的工作将集中于提高该模型对新MRI模态的适用性,并研究临床特征的整合以更全面地表征脑肿瘤。