Center for Bionics, Biomedical Research Institute, Korea Institute of Science and Technology (KIST), Seoul 02792, Republic of Korea.
Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH), 77, Cheongam-ro, Nam-gu, Pohang 37679, Republic of Korea.
Ultrasonics. 2022 Mar;120:106636. doi: 10.1016/j.ultras.2021.106636. Epub 2021 Nov 9.
Several arterial diseases are closely related with mechanical properties of the blood vessel and interactions of flow-vessel dynamics such as mean flow velocity, wall shear stress (WSS) and vascular strain. However, there is an opportunity to improve the measurement accuracy of vascular properties and hemodynamics by adopting deep learning-based ultrasound imaging for flow-vessel dynamics (DL-UFV). In this study, the DL-UFV is proposed by devising an integrated neural network for super-resolved localization and vessel wall segmentation, and it is also combined with tissue motion estimation and flow measurement techniques such as speckle image velocimetry and speckle tracking velocimetry for measuring velocity field information of blood flow. Performance of the DL-UFV is verified by comparing with other conventional techniques in tissue-mimicking phantoms. After the performance verification, in vivo feasibility is demonstrated in the murine carotid artery with different pathologies: aging and diabetes mellitus (DM). The mutual comparison of flow-vessel dynamics and histological analyses shows correlations between the immunoreactive region and abnormal flow-vessel dynamics interactions. The DL-UFV improves biases in measurements of velocity, WSS, and strain with up to 4.6-fold, 15.1-fold, and 22.2-fold in the tissue-mimicking phantom, respectively. Mean flow velocities and WSS values of the DM group decrease by 30% and 20% of those of the control group, respectively. Mean flow velocities and WSS values of the aging group (34.11 cm/s and 13.17 dyne/cm) are slightly smaller than those of the control group (36.22 cm/s and 14.25 dyne/cm). However, the strain values of the aging and DM groups are much smaller than those of the control group (p < 0.05). This study shows that the DL-UFV performs better than the conventional ultrasound-based flow and strain measurement techniques for measuring vascular stiffness and complicated flow-vessel dynamics. Furthermore, the DL-UFV demonstrates its excellent performance in the analysis of the hemodynamic and hemorheological effects of DM and aging on the flow and vascular characteristics. This work provides useful hemodynamic information, including mean flow velocity, WSS and strain with high-resolution for diagnosing the pathogenesis of arterial diseases. This information can be used for monitoring progression and regression of atherosclerotic diseases in clinical practice.
几种动脉疾病与血管的力学特性以及血流-血管动力学的相互作用密切相关,如平均流速、壁切应力 (WSS) 和血管应变。然而,通过采用基于深度学习的超声成像进行血流-血管动力学(DL-UFV),可以提高血管特性和血液动力学的测量精度。在这项研究中,通过设计一个用于超分辨率定位和血管壁分割的集成神经网络,提出了 DL-UFV,它还结合了组织运动估计和血流测量技术,如散斑图像测速和散斑跟踪测速,用于测量血流速度场信息。通过与其他传统技术在组织模拟体模中的比较验证了 DL-UFV 的性能。在具有不同病变的小鼠颈动脉中进行体内可行性验证后:衰老和糖尿病 (DM)。血流-血管动力学的相互比较和组织学分析表明,免疫反应区与异常血流-血管动力学相互作用之间存在相关性。DL-UFV 可将速度、WSS 和应变的测量偏差分别提高 4.6 倍、15.1 倍和 22.2 倍。DM 组的平均流速和 WSS 值分别比对照组低 30%和 20%。与对照组(36.22cm/s 和 14.25dyne/cm)相比,衰老组的平均流速和 WSS 值(34.11cm/s 和 13.17dyne/cm)略小。然而,衰老和 DM 组的应变值明显小于对照组(p<0.05)。这项研究表明,DL-UFV 在测量血管硬度和复杂血流-血管动力学方面优于传统的基于超声的血流和应变测量技术。此外,DL-UFV 在分析 DM 和衰老对血流和血管特征的血液动力学和血液流变学影响方面表现出优异的性能。这项工作为诊断动脉疾病的发病机制提供了有用的血流动力学信息,包括高分辨率的平均流速、WSS 和应变。这些信息可用于在临床实践中监测动脉粥样硬化疾病的进展和消退。