Myo-regressor Deep Informed Neural NetwOrk (Myo-DINO) for fast MR parameters mapping in neuromuscular disorders

IF 4.9 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computer methods and programs in biomedicine Pub Date : 2024-08-28 DOI:10.1016/j.cmpb.2024.108399
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Abstract

Magnetic Resonance (MR) parameters mapping in muscle Magnetic Resonance Imaging (mMRI) is predominantly performed using pattern recognition-based algorithms, which are characterised by high computational costs and scalability issues in the context of multi-parametric mapping.

Deep Learning (DL) has been demonstrated to be a robust and efficient method for rapid MR parameters mapping. However, its application in mMRI domain to investigate Neuromuscular Disorders (NMDs) has not yet been explored. In addition, data-driven DL models suffered in interpretation and explainability of the learning process. We developed a Physics Informed Neural Network called Myo-Regressor Deep Informed Neural NetwOrk (Myo-DINO) for efficient and explainable Fat Fraction (FF), water-T2 (wT2) and B1 mapping from a cohort of NMDs.A total of 2165 slices (232 subjects) from Multi-Echo Spin Echo (MESE) images were selected as the input dataset for which FF, wT2,B1 ground truth maps were computed using the MyoQMRI toolbox. This toolbox exploits the Extended Phase Graph (EPG) theory with a two-component model (water and fat signal) and slice profile to simulate the signal evolution in the MESE framework. A customized U-Net architecture was implemented as the Myo-DINO architecture. The squared L2 norm loss was complemented by two distinct physics models to define two ‘Physics-Informed’ loss functions: Cycling Loss 1 embedded a mono-exponential model to describe the relaxation of water protons, while Cycling Loss 2 incorporated the EPG theory with slice profile to model the magnetization dephasing under the effect of gradients and RF pulses. The Myo-DINO was trained with the hyperparameter value of the 'Physics-Informed' component held constant, i.e. λmodel = 1, while different hyperparameter values (λcnn) were applied to the squared L2 norm component in both the cycling loss. In particular, hard (λcnn=10), normal (λcnn=1) and self-supervised (λcnn=0) constraints were applied to gradually decrease the impact of the squared L2 norm component on the ‘Physics Informed’ term during the Myo-DINO training process.

Myo-DINO achieved higher performance with Cycling Loss 2 for FF, wT2 and B1 prediction. In particular, high reconstruction similarity and quality (Structural Similarity Index > 0.92, Peak Signal to Noise ratio > 30.0 db) and small reconstruction error (Normalized Root Mean Squared Error < 0.038) to the reference maps were shown with self-supervised weighting of the Cycling Loss 2. In addition muscle-wise FF, wT2 and B1 predicted values showed good agreement with the reference values. The Myo-DINO has been demonstrated to be a robust and efficient workflow for MR parameters mapping in the context of mMRI. This provides preliminary evidence that it can be an effective alternative to the reference post-processing algorithm. In addition, our results demonstrate that Cycling Loss 2, which incorporates the Extended Phase Graph (EPG) model, provides the most robust and relevant physical constraints for Myo-DINO in this multi-parameter regression task. The use of Cycling Loss 2 with self-supervised constraint improved the explainability of the learning process because the network acquired domain knowledge solely in accordance with the assumptions of the EPG model.

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用于快速绘制神经肌肉疾病磁共振参数图的肌调节器深度信息神经网络(Myo-DINO)
肌肉磁共振成像(mMRI)中的磁共振(MR)参数映射主要是使用基于模式识别的算法进行的,这些算法的特点是计算成本高,而且在多参数映射中存在可扩展性问题。然而,深度学习在 mMRI 领域用于研究神经肌肉疾病(NMD)的应用尚未得到探索。此外,数据驱动的 DL 模型在学习过程的解释性和可解释性方面存在缺陷。我们开发了一种名为 "肌回归深度神经网络"(Myo-Regressor Deep Informed Neural NetwOrk,Myo-DINO)的物理信息神经网络,用于从一组 NMDs 患者中高效、可解释的脂肪分数(FF)、水-T2(wT2)和 B1 映射。我们从多回波自旋回波(MESE)图像中选取了总共 2165 张切片(232 名受试者)作为输入数据集,并使用 MyoQMRI 工具箱计算了 FF、wT2、B1 地面真值映射。该工具箱利用扩展相位图(EPG)理论和双分量模型(水和脂肪信号)以及切片轮廓来模拟 MESE 框架中的信号演变。定制的 U-Net 架构作为 Myo-DINO 架构得以实现。平方 L2 常模损失由两个不同的物理模型补充,以定义两个 "物理信息 "损失函数:Cycling Loss 1 嵌入了单指数模型来描述水质子的弛豫,而 Cycling Loss 2 则结合了带有切片轮廓的 EPG 理论来模拟梯度和射频脉冲作用下的磁化消相。在训练 Myo-DINO 时,"物理信息 "分量的超参数值保持不变,即 λmodel = 1,而两个循环损失中的平方 L2 准则分量采用了不同的超参数值(λcnn)。特别是,在 Myo-DINO 训练过程中,应用了硬约束(λcnn=10)、正常约束(λcnn=1)和自我监督约束(λcnn=0),以逐渐减少 L2 准则平方分量对 "物理信息 "项的影响。特别是,在循环损失 2 的自我监督加权下,与参考图相比,重建相似度和质量高(结构相似度指数为 0.92,峰值信噪比为 30.0 db),重建误差小(归一化均方根误差为 0.038)。此外,肌肉方面的 FF、wT2 和 B1 预测值与参考值显示出良好的一致性。事实证明,Myo-DINO 是在 mMRI 背景下绘制 MR 参数图的稳健而高效的工作流程。这初步证明它可以有效替代参考后处理算法。此外,我们的研究结果表明,在这项多参数回归任务中,结合了扩展相位图(EPG)模型的循环损失 2 为 Myo-DINO 提供了最稳健、最相关的物理约束。使用带有自我监督约束的 Cycling Loss 2 提高了学习过程的可解释性,因为网络完全是根据 EPG 模型的假设获得领域知识的。
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来源期刊
Computer methods and programs in biomedicine
Computer methods and programs in biomedicine 工程技术-工程:生物医学
CiteScore
12.30
自引率
6.60%
发文量
601
审稿时长
135 days
期刊介绍: To encourage the development of formal computing methods, and their application in biomedical research and medical practice, by illustration of fundamental principles in biomedical informatics research; to stimulate basic research into application software design; to report the state of research of biomedical information processing projects; to report new computer methodologies applied in biomedical areas; the eventual distribution of demonstrable software to avoid duplication of effort; to provide a forum for discussion and improvement of existing software; to optimize contact between national organizations and regional user groups by promoting an international exchange of information on formal methods, standards and software in biomedicine. Computer Methods and Programs in Biomedicine covers computing methodology and software systems derived from computing science for implementation in all aspects of biomedical research and medical practice. It is designed to serve: biochemists; biologists; geneticists; immunologists; neuroscientists; pharmacologists; toxicologists; clinicians; epidemiologists; psychiatrists; psychologists; cardiologists; chemists; (radio)physicists; computer scientists; programmers and systems analysts; biomedical, clinical, electrical and other engineers; teachers of medical informatics and users of educational software.
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