Lin Hui, López-Tapia Santiago, Schiffers Florian, Wu Yunan, Gunasekaran Suvai, Hwang Julia, Bishara Dima, Kholmovski Eugene, Elbaz Mohammed, Passman Rod S, Kim Daniel, Katsaggelos Aggelos K
Department of Electrical and Computer Engineering, Northwestern University, Evanston, IL, USA.
Department of Radiology, Northwestern University, Chicago, IL, USA.
Heliyon. 2024 Mar 28;10(7):e28539. doi: 10.1016/j.heliyon.2024.e28539. eCollection 2024 Apr 15.
Left atrial (LA) fibrosis plays a vital role as a mediator in the progression of atrial fibrillation. 3D late gadolinium-enhancement (LGE) MRI has been proven effective in identifying LA fibrosis. Image analysis of 3D LA LGE involves manual segmentation of the LA wall, which is both lengthy and challenging. Automated segmentation poses challenges owing to the diverse intensities in data from various vendors, the limited contrast between LA and surrounding tissues, and the intricate anatomical structures of the LA. Current approaches relying on 3D networks are computationally intensive since 3D LGE MRIs and the networks are large. Regarding this issue, most researchers came up with two-stage methods: initially identifying the LA center using a scaled-down version of the MRIs and subsequently cropping the full-resolution MRIs around the LA center for final segmentation. We propose a lightweight transformer-based 3D architecture, Usformer, designed to precisely segment LA volume in a single stage, eliminating error propagation associated with suboptimal two-stage training. The transposed attention facilitates capturing the global context in large 3D volumes without significant computation requirements. Usformer outperforms the state-of-the-art supervised learning methods in terms of accuracy and speed. First, with the smallest Hausdorff Distance (HD) and Average Symmetric Surface Distance (ASSD), it achieved a dice score of 93.1% and 92.0% in the 2018 Atrial Segmentation Challenge and our local institutional dataset, respectively. Second, the number of parameters and computation complexity are largely reduced by 2.8x and 3.8x, respectively. Moreover, Usformer does not require a large dataset. When only 16 labeled MRI scans are used for training, Usformer achieves a 92.1% dice score in the challenge dataset. The proposed Usformer delineates the boundaries of the LA wall relatively accurately, which may assist in the clinical translation of LA LGE for planning catheter ablation of atrial fibrillation.
左心房(LA)纤维化在房颤进展过程中作为一种介质发挥着至关重要的作用。三维延迟钆增强(LGE)磁共振成像已被证明在识别LA纤维化方面有效。三维LA LGE的图像分析涉及LA壁的手动分割,这既耗时又具有挑战性。由于来自不同供应商的数据强度各异、LA与周围组织之间的对比度有限以及LA复杂的解剖结构,自动分割面临挑战。当前依赖三维网络的方法计算量很大,因为三维LGE磁共振成像和网络都很大。针对这个问题,大多数研究人员提出了两阶段方法:首先使用缩小版的磁共振成像识别LA中心,随后围绕LA中心裁剪全分辨率磁共振成像以进行最终分割。我们提出了一种基于轻量级变压器的三维架构Usformer,旨在在单个阶段精确分割LA容积,消除与次优两阶段训练相关的误差传播。转置注意力有助于在大型三维容积中捕获全局上下文,而无需大量计算需求。Usformer在准确性和速度方面优于当前最先进的监督学习方法。首先,在2018年心房分割挑战赛和我们当地机构的数据集中,它分别以最小的豪斯多夫距离(HD)和平均对称表面距离(ASSD),实现了93.1%和92.0%的骰子系数得分。其次,参数数量和计算复杂度分别大幅降低了2.8倍和3.8倍。此外,Usformer不需要大量数据集。当仅使用16次标记的磁共振成像扫描进行训练时,Usformer在挑战数据集中实现了92.1%的骰子系数得分。所提出的Usformer相对准确地勾勒出LA壁的边界,这可能有助于LA LGE在房颤导管消融规划中的临床转化。