论文标题
用于心肌灌注MRI定量的物理信息神经网络
Physics-informed neural networks for myocardial perfusion MRI quantification
论文作者
论文摘要
示踪动力模型允许定量动态参数,例如动态对比增强磁共振(MR)图像的血流。将观察到的数据与多室交换模型拟合在一起是可取的,因为它们在生理上是合理的,并直接解决血液流量和微血管功能。但是,模型拟合的可靠性受到低信噪比,时间分辨率和采集长度的限制。这可能导致参数估计不正确。 这项研究介绍了物理知识的神经网络(PINN)作为执行心肌灌注MR定量的一种手段,该方法为推理动力学参数提供了多功能方案。可以训练这些神经网络以适合观察到的灌注MR数据,同时尊重由多隔间交换模型描述的基本物理保护定律。在这里,我们为在心肌灌注MR中实施PINN提供了一个框架。 该方法在硅和体内都得到了验证。在计算机研究中,与标准的非线性最小二乘拟合方法相比,观察到均值误差的总体减少。体内研究表明,该方法产生的参数值与先前在文献中发现的参数值相当,并提供了与患者临床诊断相匹配的参数图。
Tracer-kinetic models allow for the quantification of kinetic parameters such as blood flow from dynamic contrast-enhanced magnetic resonance (MR) images. Fitting the observed data with multi-compartment exchange models is desirable, as they are physiologically plausible and resolve directly for blood flow and microvascular function. However, the reliability of model fitting is limited by the low signal-to-noise ratio, temporal resolution, and acquisition length. This may result in inaccurate parameter estimates. This study introduces physics-informed neural networks (PINNs) as a means to perform myocardial perfusion MR quantification, which provides a versatile scheme for the inference of kinetic parameters. These neural networks can be trained to fit the observed perfusion MR data while respecting the underlying physical conservation laws described by a multi-compartment exchange model. Here, we provide a framework for the implementation of PINNs in myocardial perfusion MR. The approach is validated both in silico and in vivo. In the in silico study, an overall reduction in mean-squared error with the ground-truth parameters was observed compared to a standard non-linear least squares fitting approach. The in vivo study demonstrates that the method produces parameter values comparable to those previously found in literature, as well as providing parameter maps which match the clinical diagnosis of patients.