Hoda Kalabizadeh, Ludovica Griffanti, Pak Hei Yeung, Natalie Voets, Grace Gillis, Clare E Mackay, Ana IL Namburete, Nicola K Dinsdale, Konstantinos Kamnitsas
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引用次数: 0
Abstract
Brain atrophy assessment in MRI, particularly of the hippocampus, is commonly used to support diagnosis and monitoring of dementia. Consequently, there is a demand for accurate automated hippocampus quantification. Most existing segmentation methods have been developed and validated on research datasets and, therefore, may not be appropriate for clinical MR images and populations, leading to potential gaps between dementia research and clinical practice. In this study, we investigated the performance of segmentation models trained on research data that were style-transferred to resemble clinical scans. Our results highlighted the importance of intensity normalisation methods in MRI segmentation, and their relation to domain shift and style-transfer. We found that whilst normalising intensity based on min and max values, commonly used in generative MR harmonisation methods, may create a need for style transfer, Z-score normalisation effectively maintains style consistency, and optimises performance. Moreover, we show for our datasets spatial augmentations are more beneficial than style harmonisation. Thus, emphasising robust normalisation techniques and spatial augmentation significantly improves MRI hippocampus segmentation.
核磁共振成像中的脑萎缩评估,尤其是海马体的萎缩评估,通常用于痴呆症的诊断和监测。因此,需要对海马体进行精确的自动量化。现有的大多数分割方法都是在研究数据集上开发和验证的,因此可能不适合临床磁共振图像和人群,导致痴呆症研究和临床实践之间可能存在差距。在本研究中,我们研究了在研究数据上训练的分割模型的性能,这些数据经过样式转换后与临床扫描数据相似。我们的研究结果强调了核磁共振成像分割中强度归一化方法的重要性,以及它们与领域转移和风格转换的关系。我们发现,虽然基于最小值和最大值的强度归一化(通常用于生成式磁共振协调方法)可能会产生风格转换需求,但 Z 分数归一化能有效保持风格一致性,并优化性能。此外,我们的数据集显示,空间增强比风格协调更有益。因此,强调稳健的归一化技术和空间增强技术能显著提高磁共振成像海马区块的分割效果。