深度学习架构(包括UNet、TransUNet和MIST)在先天性心脏病心脏计算机断层扫描中左心房分割的比较评价

IF 0.2 Q3 MEDICINE, GENERAL & INTERNAL
Ewha Medical Journal Pub Date : 2025-04-01 Epub Date: 2025-04-21 DOI:10.12771/emj.2025.00087
Seoyeong Yun, Jooyoung Choi
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引用次数: 0

摘要

目的:本研究比较了3种深度学习模型(UNet、TransUNet和MIST)对先天性心脏病(CHD)患者心脏计算机断层扫描(CT)图像的左心房(LA)分割。它研究了MIST模型中的建筑变化,如空间挤压和激发注意力,如何影响Dice得分和HD95。方法:我们分析了来自ImageCHD数据集的108个公开可用的、去识别的CT体积。对体积进行重新采样、强度归一化和数据增强。UNet、TransUNet和MIST模型使用97个案例中的80%进行训练,其余20%用于验证。保留11个病例用于检测。使用Dice评分(测量重叠精度)和HD95(反映边界精度)评估性能。统计学比较采用单向重复测量方差分析。结果:MIST的平均Dice评分最高(0.74;95%置信区间,0.67-0.81),显著优于TransUNet (0.53;结论:MIST显示了优越的LA分割,突出了其集成的多尺度特征和优化的架构的好处。然而,它的计算开销使实际的临床部署复杂化。我们的发现强调了先进的混合模型在心脏成像中的价值,为冠心病评估提供了更高的可靠性。未来的研究应平衡分割的准确性和可行的临床实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparative evaluation of deep learning architectures, including UNet, TransUNet, and MIST, for left atrium segmentation in cardiac computed tomography of congenital heart diseases.

Comparative evaluation of deep learning architectures, including UNet, TransUNet, and MIST, for left atrium segmentation in cardiac computed tomography of congenital heart diseases.

Comparative evaluation of deep learning architectures, including UNet, TransUNet, and MIST, for left atrium segmentation in cardiac computed tomography of congenital heart diseases.

Comparative evaluation of deep learning architectures, including UNet, TransUNet, and MIST, for left atrium segmentation in cardiac computed tomography of congenital heart diseases.

Purpose: This study compares 3 deep learning models (UNet, TransUNet, and MIST) for left atrium (LA) segmentation of cardiac computed tomography (CT) images from patients with congenital heart disease (CHD). It investigates how architectural variations in the MIST model, such as spatial squeeze-and-excitation attention, impact Dice score and HD95.

Methods: We analyzed 108 publicly available, de-identified CT volumes from the ImageCHD dataset. Volumes underwent resampling, intensity normalization, and data augmentation. UNet, TransUNet, and MIST models were trained using 80% of 97 cases, with the remaining 20% employed for validation. Eleven cases were reserved for testing. Performance was evaluated using the Dice score (measuring overlap accuracy) and HD95 (reflecting boundary accuracy). Statistical comparisons were performed via one-way repeated measures analysis of variance.

Results: MIST achieved the highest mean Dice score (0.74; 95% confidence interval, 0.67-0.81), significantly outperforming TransUNet (0.53; P<0.001) and UNet (0.49; P<0.001). Regarding HD95, TransUNet (9.09 mm) and MIST (5.77 mm) similarly outperformed UNet (27.49 mm; P<0.0001). In ablation experiments, the inclusion of spatial attention did not further enhance the MIST model's performance, suggesting redundancy with existing attention mechanisms. However, the integration of multi-scale features and refined skip connections consistently improved segmentation accuracy and boundary delineation.

Conclusion: MIST demonstrated superior LA segmentation, highlighting the benefits of its integrated multi-scale features and optimized architecture. Nevertheless, its computational overhead complicates practical clinical deployment. Our findings underscore the value of advanced hybrid models in cardiac imaging, providing improved reliability for CHD evaluation. Future studies should balance segmentation accuracy with feasible clinical implementation.

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来源期刊
Ewha Medical Journal
Ewha Medical Journal MEDICINE, GENERAL & INTERNAL-
自引率
33.30%
发文量
28
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