Probabilistic 3D Correspondence Prediction from Sparse Unsegmented Images.

Krithika Iyer, Shireen Y Elhabian
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Abstract

The study of physiology demonstrates that the form (shape) of anatomical structures dictates their functions, and analyzing the form of anatomies plays a crucial role in clinical research. Statistical shape modeling (SSM) is a widely used tool for quantitative analysis of forms of anatomies, aiding in characterizing and identifying differences within a population of subjects. Despite its utility, the conventional SSM construction pipeline is often complex and time-consuming. Additionally, reliance on linearity assumptions further limits the model from capturing clinically relevant variations. Recent advancements in deep learning solutions enable the direct inference of SSM from unsegmented medical images, streamlining the process and improving accessibility. However, the new methods of SSM from images do not adequately account for situations where the imaging data quality is poor or where only sparse information is available. Moreover, quantifying aleatoric uncertainty, which represents inherent data variability, is crucial in deploying deep learning for clinical tasks to ensure reliable model predictions and robust decision-making, especially in challenging imaging conditions. Therefore, we propose SPI-CorrNet, a unified model that predicts 3D correspondences from sparse imaging data. It leverages a teacher network to regularize feature learning and quantifies data-dependent aleatoric uncertainty by adapting the network to predict intrinsic input variances. Experiments on the LGE MRI left atrium dataset and Abdomen CT-1K liver datasets demonstrate that our technique enhances the accuracy and robustness of sparse image-driven SSM.

从稀疏未分割图像进行概率三维对应预测
生理学研究表明,解剖结构的形态(形状)决定了其功能,分析解剖结构的形态在临床研究中起着至关重要的作用。统计形状建模(SSM)是一种广泛使用的工具,用于对解剖结构的形状进行定量分析,帮助描述和识别受试者群体中的差异。尽管它很有用,但传统的 SSM 构建流程往往复杂且耗时。此外,对线性假设的依赖进一步限制了模型捕捉临床相关变异的能力。深度学习解决方案的最新进展使得从未分类的医学图像中直接推断 SSM 成为可能,从而简化了流程并提高了可及性。然而,从图像推断 SSM 的新方法并不能充分考虑成像数据质量较差或仅有稀疏信息的情况。此外,量化代表固有数据变异性的不确定性(aleatoric uncertainty)对于将深度学习应用于临床任务以确保可靠的模型预测和稳健的决策至关重要,尤其是在具有挑战性的成像条件下。因此,我们提出了 SPI-CorrNet 模型,这是一个能从稀疏成像数据中预测三维对应关系的统一模型。它利用教师网络来正则化特征学习,并通过调整网络来预测内在输入方差,从而量化与数据相关的不确定性。在 LGE MRI 左心房数据集和腹部 CT-1K 肝脏数据集上的实验表明,我们的技术提高了稀疏图像驱动 SSM 的准确性和鲁棒性。
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