SCorP: Statistics-Informed Dense Correspondence Prediction Directly from Unsegmented Medical Images.

Krithika Iyer, Jadie Adams, Shireen Y Elhabian
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Abstract

Statistical shape modeling (SSM) is a powerful computational framework for quantifying and analyzing the geometric variability of anatomical structures, facilitating advancements in medical research, diagnostics, and treatment planning. Traditional methods for shape modeling from imaging data demand significant manual and computational resources. Additionally, these methods necessitate repeating the entire modeling pipeline to derive shape descriptors (e.g., surface-based point correspondences) for new data. While deep learning approaches have shown promise in streamlining the construction of SSMs on new data, they still rely on traditional techniques to supervise the training of the deep networks. Moreover, the predominant linearity assumption of traditional approaches restricts their efficacy, a limitation also inherited by deep learning models trained using optimized/established correspondences. Consequently, representing complex anatomies becomes challenging. To address these limitations, we introduce SCorP, a novel framework capable of predicting surface-based correspondences directly from unsegmented images. By leveraging the shape prior learned directly from surface meshes in an unsupervised manner, the proposed model eliminates the need for an optimized shape model for training supervision. The strong shape prior acts as a teacher and regularizes the feature learning of the student network to guide it in learning image-based features that are predictive of surface correspondences. The proposed model streamlines the training and inference phases by removing the supervision for the correspondence prediction task while alleviating the linearity assumption. Experiments on the LGE MRI left atrium dataset and Abdomen CT-1K liver datasets demonstrate that the proposed technique enhances the accuracy and robustness of image-driven SSM, providing a compelling alternative to current fully supervised methods.

SCorP:直接从未分类医学图像进行统计信息密集对应预测。
统计形状建模(SSM)是一种强大的计算框架,用于量化和分析解剖结构的几何可变性,促进医学研究、诊断和治疗规划的进步。利用成像数据进行形状建模的传统方法需要大量的人工和计算资源。此外,这些方法还需要重复整个建模过程,以便为新数据推导形状描述符(例如基于面的点对应关系)。虽然深度学习方法在简化新数据的 SSM 构建方面显示出了前景,但它们仍然依赖于传统技术来监督深度网络的训练。此外,传统方法中占主导地位的线性假设限制了它们的功效,使用优化/既定对应关系训练的深度学习模型也继承了这一局限性。因此,表示复杂的解剖结构变得具有挑战性。为了解决这些局限性,我们引入了 SCorP,这是一种能够直接从未分离图像预测基于表面的对应关系的新型框架。通过利用以无监督方式直接从表面网格中学习到的形状先验,所提出的模型无需优化形状模型来进行训练监督。强大的形状先验可作为教师,规范学生网络的特征学习,指导其学习基于图像的特征,这些特征可预测表面对应关系。所提出的模型简化了训练和推理阶段,在减轻线性假设的同时取消了对对应预测任务的监督。在 LGE MRI 左心房数据集和腹部 CT-1K 肝脏数据集上进行的实验表明,所提出的技术提高了图像驱动的 SSM 的准确性和鲁棒性,为当前的全监督方法提供了令人信服的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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