Avazov Kuldashboy, Mirzakhalilov Sanjar, Umirzakova Sabina, Abdusalomov Akmalbek, Cho Young Im
Department of Computer Engineering, Gachon University Sujeong-Gu, Seongnam-si 13120, Gyeonggi-Do, Republic of Korea.
Department of Computer Systems, Tashkent University of Information Technologies Named After Muhammad Al-Khwarizmi, Tashkent 100200, Uzbekistan.
Bioengineering (Basel). 2024 Dec 23;11(12):1302. doi: 10.3390/bioengineering11121302.
Accurate segmentation of brain tumors in MRI scans is critical for diagnosis and treatment planning. Traditional segmentation models, such as U-Net, excel in capturing spatial information but often struggle with complex tumor boundaries and subtle variations in image contrast. These limitations can lead to inconsistencies in identifying critical regions, impacting the accuracy of clinical outcomes. To address these challenges, this paper proposes a novel modification to the U-Net architecture by integrating a spatial attention mechanism designed to dynamically focus on relevant regions within MRI scans. This innovation enhances the model's ability to delineate fine tumor boundaries and improves segmentation precision. Our model was evaluated on the Figshare dataset, which includes annotated MRI images of meningioma, glioma, and pituitary tumors. The proposed model achieved a Dice similarity coefficient (DSC) of 0.93, a recall of 0.95, and an AUC of 0.94, outperforming existing approaches such as V-Net, DeepLab V3+, and nnU-Net. These results demonstrate the effectiveness of our model in addressing key challenges like low-contrast boundaries, small tumor regions, and overlapping tumors. Furthermore, the lightweight design of the model ensures its suitability for real-time clinical applications, making it a robust tool for automated tumor segmentation. This study underscores the potential of spatial attention mechanisms to significantly enhance medical imaging models and paves the way for more effective diagnostic tools.
在磁共振成像(MRI)扫描中准确分割脑肿瘤对于诊断和治疗规划至关重要。传统的分割模型,如U-Net,在捕捉空间信息方面表现出色,但在处理复杂的肿瘤边界和图像对比度的细微变化时往往存在困难。这些限制可能导致在识别关键区域时出现不一致,从而影响临床结果的准确性。为了应对这些挑战,本文提出了一种对U-Net架构的新颖改进,通过集成一种空间注意力机制,旨在动态聚焦于MRI扫描中的相关区域。这一创新增强了模型描绘精细肿瘤边界的能力,并提高了分割精度。我们的模型在Figshare数据集上进行了评估,该数据集包括脑膜瘤、胶质瘤和垂体瘤的带注释MRI图像。所提出的模型实现了0.93的骰子相似系数(DSC)、0.95的召回率和0.94的AUC,优于V-Net、DeepLab V3+和nnU-Net等现有方法。这些结果证明了我们的模型在应对低对比度边界、小肿瘤区域和重叠肿瘤等关键挑战方面的有效性。此外,该模型的轻量级设计确保了其适用于实时临床应用,使其成为自动肿瘤分割的强大工具。这项研究强调了空间注意力机制在显著增强医学成像模型方面的潜力,并为更有效的诊断工具铺平了道路。