| Literature DB >> 33652418 |
U-Wai Lok1, Chengwu Huang1, Ping Gong1, Shanshan Tang1, Lulu Yang1,2, Wei Zhang3, Yohan Kim4, Panagiotis Korfiatis1, Daniel J Blezek1, Fabrice Lucien4, Rongqin Zheng3, Joshua D Trzasko1, Shigao Chen1.
Abstract
Ultrasound localization microscopy (ULM) has been proposed to image microvasculature beyond the ultrasound diffraction limit. Although ULM can attain microvascular images with a sub-diffraction resolution, long data acquisition time and processing time are the critical limitations. Deep learning-based ULM (deep-ULM) has been proposed to mitigate these limitations. However, microbubble (MB) localization used in deep-ULMs is currently based on spatial information without the use of temporal information. The highly spatiotemporally coherent MB signals provide a strong feature that can be used to differentiate MB signals from background artifacts. In this study, a deep neural network was employed and trained with spatiotemporal ultrasound datasets to better identify the MB signals by leveraging both the spatial and temporal information of the MB signals. Training, validation and testing datasets were acquired from MB suspension to mimic the realistic intensity-varying and moving MB signals. The performance of the proposed network was first demonstrated in the chicken embryo chorioallantoic membrane dataset with an optical microscopic image as the reference standard. Substantial improvement in spatial resolution was shown for the reconstructed super-resolved images compared with power Doppler images. The full-width-half-maximum (FWHM) of a microvessel was improved from 133μm to 35μm, which is smaller than the ultrasound wavelength (73μm). The proposed method was further tested in anin vivohuman liver data. Results showed the reconstructed super-resolved images could resolve a microvessel of nearly 170μm (FWHM). Adjacent microvessels with a distance of 670μm, which cannot be resolved with power Doppler imaging, can be well-separated with the proposed method. Improved contrast ratios using the proposed method were shown compared with that of the conventional deep-ULM method. Additionally, the processing time to reconstruct a high-resolution ultrasound frame with an image size of 1024 × 512 pixels was around 16 ms, comparable to state-of-the-art deep-ULMs.Entities:
Keywords: deep learning-based ULM; fully convolutional neural network; spatiotemporal MB signals; ultrasound microvessel imaging
Mesh:
Year: 2021 PMID: 33652418 PMCID: PMC8483593 DOI: 10.1088/1361-6560/abeb31
Source DB: PubMed Journal: Phys Med Biol ISSN: 0031-9155 Impact factor: 3.609