Kaandorp Misha P T, Zijlstra Frank, Karimi Davood, Gholipour Ali, While Peter T
Department of Radiology and Nuclear Medicine, St. Olav's University Hospital, Trondheim, Norway; Department of Circulation and Medical Imaging, NTNU - Norwegian University of Science and Technology, Trondheim, Norway; Department of Radiology, Boston Children's Hospital, Harvard Medical School, Boston, MA, USA; Center for MR Research, University Children's Hospital Zurich, Zurich, Switzerland; University of Zurich, Zurich, Switzerland.
Department of Radiology and Nuclear Medicine, St. Olav's University Hospital, Trondheim, Norway; Department of Circulation and Medical Imaging, NTNU - Norwegian University of Science and Technology, Trondheim, Norway.
Med Image Anal. 2025 Apr;101:103414. doi: 10.1016/j.media.2024.103414. Epub 2024 Nov 26.
In medical image analysis, the utilization of biophysical models for signal analysis offers valuable insights into the underlying tissue types and microstructural processes. In diffusion-weighted magnetic resonance imaging (DWI), a major challenge lies in accurately estimating model parameters from the acquired data due to the inherently low signal-to-noise ratio (SNR) of the signal measurements and the complexity of solving the ill-posed inverse problem. Conventional model fitting approaches treat individual voxels as independent. However, the tissue microenvironment is typically homogeneous in a local environment, where neighboring voxels may contain correlated information. To harness the potential benefits of exploiting correlations among signals in adjacent voxels, this study introduces a novel approach to deep learning parameter estimation that effectively incorporates relevant spatial information. This is achieved by training neural networks on patches of synthetic data encompassing plausible combinations of direct correlations between neighboring voxels. We evaluated the approach on the intravoxel incoherent motion (IVIM) model in DWI. We explored the potential of several deep learning architectures to incorporate spatial information using self-supervised and supervised learning. We assessed performance quantitatively using novel fractal-noise-based synthetic data, which provide ground truths possessing spatial correlations. Additionally, we present results of the approach applied to in vivo DWI data consisting of twelve repetitions from a healthy volunteer. We demonstrate that supervised training on larger patch sizes using attention models leads to substantial performance improvements over both conventional voxelwise model fitting and convolution-based approaches.
在医学图像分析中,利用生物物理模型进行信号分析能够为潜在的组织类型和微观结构过程提供有价值的见解。在扩散加权磁共振成像(DWI)中,一个主要挑战在于,由于信号测量本身的低信噪比(SNR)以及求解不适定逆问题的复杂性,要从采集的数据中准确估计模型参数。传统的模型拟合方法将各个体素视为独立的。然而,组织微环境在局部环境中通常是均匀的,相邻体素可能包含相关信息。为了利用相邻体素间信号相关性的潜在益处,本研究引入了一种新的深度学习参数估计方法,该方法有效地整合了相关的空间信息。这是通过在包含相邻体素间直接相关性合理组合的合成数据块上训练神经网络来实现的。我们在DWI的体素内不相干运动(IVIM)模型上评估了该方法。我们探索了几种深度学习架构利用自监督和监督学习整合空间信息的潜力。我们使用基于分形噪声的新型合成数据进行定量性能评估,这些合成数据提供了具有空间相关性的真值。此外,我们展示了该方法应用于来自一名健康志愿者的十二次重复的体内DWI数据的结果。我们证明,使用注意力模型在更大的数据块尺寸上进行监督训练,相较于传统的逐体素模型拟合和基于卷积的方法,能带来显著的性能提升。