Medical image registration is crucial for various clinical and research applications including disease diagnosis or treatment planning which require alignment of images from different modalities, time points, or subjects. Traditional registration techniques often struggle with challenges such as contrast differences, spatial distortions, and modality-specific variations. To address these limitations, we propose a method that integrates learnable edge kernels with learning-based rigid and non-rigid registration techniques. Unlike conventional layers that learn all features without specific bias, our approach begins with a predefined edge detection kernel, which is then perturbed with random noise. These kernels are learned during training to extract optimal edge features tailored to the task. This adaptive edge detection enhances the registration process by capturing diverse structural features critical in medical imaging. To provide clearer insight into the contribution of each component in our design, we introduce four variant models for rigid registration and four variant models for non-rigid registration. We evaluated our approach using a dataset provided by the Medical University across three setups: rigid registration without skull removal, with skull removal, and non-rigid registration. Additionally, we assessed performance on two publicly available datasets. Across all experiments, our method consistently outperformed state-of-the-art techniques, demonstrating its potential to improve multi-modal image alignment and anatomical structure analysis.
翻译:医学图像配准对于多种临床和研究应用至关重要,包括疾病诊断或治疗规划,这些应用需要对齐来自不同模态、时间点或受试者的图像。传统配准技术常面临对比度差异、空间扭曲和模态特异性变化等挑战。为克服这些局限,我们提出一种将可学习边缘核与基于学习的刚性和非刚性配准技术相结合的方法。与无特定偏置学习所有特征的传统层不同,我们的方法始于预定义的边缘检测核,随后通过随机噪声进行扰动。这些核在训练过程中学习,以提取针对任务优化的边缘特征。这种自适应边缘检测通过捕捉医学成像中关键的多尺度结构特征,增强了配准过程。为更清晰地揭示设计中各组件的贡献,我们针对刚性配准引入了四种变体模型,针对非刚性配准引入了四种变体模型。我们使用医科大学提供的数据集,在三种设置下评估了该方法:未去除颅骨的刚性配准、去除颅骨的刚性配准以及非刚性配准。此外,我们在两个公开可用数据集上评估了性能。所有实验结果表明,我们的方法在各项指标上均持续优于现有先进技术,证明了其在改善多模态图像对齐和解剖结构分析方面的潜力。