Cheng Lv, Xu-Jun Shu, Jun Qiu, Zi-Cheng Xiong, Jing-Bo Ye, Shang-Bo Li, Sheng-Bo Chen, Hong Rao
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To address these challenges, we propose the MamTrans algorithm, which integrates state-space models (SSMs) with attention mechanisms to significantly improve computational efficiency while maintaining segmentation accuracy.</p><p><strong>Methods: </strong>This study utilized 418 cases of axial T1-weighted contrast-enhanced MRI data of brain tumors, comprising 177 cases of high-grade gliomas and 241 cases of meningiomas. To validate the findings, five-fold cross-validation was employed.</p><p><strong>Results: </strong>The newly algorithm MamTrans achieved promising segmentation results in the high-grade glioma segmentation experiment, with an intersection over union (IoU) of 88.12, a Dice similarity coefficient (DSC) of 89.23, and a Hausdorff distance (HD) of 12.67. In the meningioma segmentation experiment, its segmentation metrics were IoU of 90.26, DSC of 91.27, and HD of 15.14, on the external dataset, the model obtained IoU of 90.34, DSC of 91.25, and HD of 14.17, outperforming other segmentation models such as U-Net, DeepLab, and Attention U-Net.</p><p><strong>Conclusions: </strong>The research results demonstrate that the proposed MamTrans algorithm outperforms various segmentation models in the segmentation tasks of gliomas and meningiomas. 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引用次数: 0
摘要
背景:脑膜瘤和胶质瘤是最常见的良性和恶性脑肿瘤,其准确的分割对于临床评估和手术计划至关重要。尽管磁共振成像(MRI)是一种重要的诊断工具,但由于肿瘤类型和周围复杂软组织之间存在显著的形态和结构差异,因此精确分割仍然具有挑战性。虽然Mamba模型在序列处理和注意力机制方面表现优异,但两者在特征提取和计算效率方面都存在局限性。为了解决这些挑战,我们提出了MamTrans算法,该算法将状态空间模型(ssm)与注意机制相结合,在保持分割精度的同时显着提高了计算效率。方法:本研究利用418例脑肿瘤轴向t1加权增强MRI资料,其中高级别胶质瘤177例,脑膜瘤241例。为了验证研究结果,采用了五重交叉验证。结果:新算法MamTrans在高级别胶质瘤分割实验中取得了令人满意的分割效果,intersection over union (IoU)为88.12,Dice similarity coefficient (DSC)为89.23,Hausdorff distance (HD)为12.67。在脑膜瘤分割实验中,其分割指标IoU为90.26,DSC为91.27,HD为15.14,在外部数据集上,该模型获得IoU为90.34,DSC为91.25,HD为14.17,优于U-Net、DeepLab、Attention U-Net等其他分割模型。结论:研究结果表明,所提出的MamTrans算法在胶质瘤和脑膜瘤的分割任务中优于各种分割模型。该算法创新性地实现了两种形态差异显著的肿瘤类型的高精度分割,同时显著降低了模型复杂度和计算开销,具有较强的临床应用价值。
MamTrans: magnetic resonance imaging segmentation algorithm for high-grade gliomas and brain meningiomas integrating attention mechanisms and state-space models.
Background: Meningiomas and gliomas represent the most common benign and malignant brain tumors, where accurate segmentation is essential for clinical assessment and surgical planning. Although magnetic resonance imaging (MRI) serves as a crucial diagnostic tool, precise segmentation remains challenging due to significant morphological and structural variations between tumor types and surrounding complex soft tissues. While Mamba models demonstrate excellence in sequence processing and attention mechanisms show promising performance, both face limitations in feature extraction and computational efficiency, respectively. To address these challenges, we propose the MamTrans algorithm, which integrates state-space models (SSMs) with attention mechanisms to significantly improve computational efficiency while maintaining segmentation accuracy.
Methods: This study utilized 418 cases of axial T1-weighted contrast-enhanced MRI data of brain tumors, comprising 177 cases of high-grade gliomas and 241 cases of meningiomas. To validate the findings, five-fold cross-validation was employed.
Results: The newly algorithm MamTrans achieved promising segmentation results in the high-grade glioma segmentation experiment, with an intersection over union (IoU) of 88.12, a Dice similarity coefficient (DSC) of 89.23, and a Hausdorff distance (HD) of 12.67. In the meningioma segmentation experiment, its segmentation metrics were IoU of 90.26, DSC of 91.27, and HD of 15.14, on the external dataset, the model obtained IoU of 90.34, DSC of 91.25, and HD of 14.17, outperforming other segmentation models such as U-Net, DeepLab, and Attention U-Net.
Conclusions: The research results demonstrate that the proposed MamTrans algorithm outperforms various segmentation models in the segmentation tasks of gliomas and meningiomas. Innovatively, this single algorithm achieves high-precision segmentation for two tumor types with remarkably different morphologies, while significantly reducing model complexity and computational overhead, exhibiting substantial clinical application value.