Adams Jadie, Elhabian Shireen
Scientific Computing and Imaging Institute, University of Utah, UT, USA.
School of Computing, University of Utah, UT, USA.
Med Image Comput Comput Assist Interv. 2022 Sep;13432:474-484. doi: 10.1007/978-3-031-16434-7_46. Epub 2022 Sep 16.
Statistical shape modeling (SSM) directly from 3D medical images is an underutilized tool for detecting pathology, diagnosing disease, and conducting population-level morphology analysis. Deep learning frameworks have increased the feasibility of adopting SSM in medical practice by reducing the expert-driven manual and computational overhead in traditional SSM workflows. However, translating such frameworks to clinical practice requires calibrated uncertainty measures as neural networks can produce over-confident predictions that cannot be trusted in sensitive clinical decision-making. Existing techniques for predicting shape with aleatoric (data-dependent) uncertainty utilize a principal component analysis (PCA) based shape representation computed in isolation of the model training. This constraint restricts the learning task to solely estimating pre-defined shape descriptors from 3D images and imposes a linear relationship between this shape representation and the output (i.e., shape) space. In this paper, we propose a principled framework based on the variational information bottleneck theory to relax these assumptions while predicting probabilistic shapes of anatomy directly from images without supervised encoding of shape descriptors. Here, the latent representation is learned in the context of the learning task, resulting in a more scalable, flexible model that better captures data non-linearity. Additionally, this model is self-regularized and generalizes better given limited training data. Our experiments demonstrate that the proposed method provides an accuracy improvement and better calibrated aleatoric uncertainty estimates than state-of-the-art methods.
直接从三维医学图像进行统计形状建模(SSM)是一种未得到充分利用的工具,可用于检测病理、诊断疾病以及进行群体水平的形态学分析。深度学习框架通过减少传统SSM工作流程中专家驱动的人工和计算开销,提高了在医学实践中采用SSM的可行性。然而,将此类框架转化为临床实践需要校准不确定性度量,因为神经网络可能会产生过度自信的预测,而在敏感的临床决策中这些预测是不可信的。现有的用于预测具有偶然(数据依赖)不确定性的形状的技术,利用基于主成分分析(PCA)的形状表示,该表示是在模型训练之外计算的。这种限制将学习任务局限于仅从三维图像估计预定义的形状描述符,并在这种形状表示与输出(即形状)空间之间强加了线性关系。在本文中,我们提出了一个基于变分信息瓶颈理论的原则性框架,以放宽这些假设,同时直接从图像预测解剖结构的概率形状,而无需对形状描述符进行监督编码。在此,潜在表示是在学习任务的背景下学习的,从而产生一个更具可扩展性、更灵活的模型,该模型能更好地捕捉数据的非线性。此外,该模型是自我正则化的,并且在有限的训练数据下具有更好的泛化能力。我们的实验表明,与现有方法相比,所提出的方法提高了准确性,并提供了更好校准的偶然不确定性估计。