Marsden Mark, Fukazawa Takanori, Deng Yu-Cheng, Weyers Brent W, Bec Julien, Gregory Farwell D, Marcu Laura
Department of Biomedical Engineering, University of California, Davis, CA 95616, USA.
Equal Contribution.
Biomed Opt Express. 2020 Aug 20;11(9):5166-5180. doi: 10.1364/BOE.398357. eCollection 2020 Sep 1.
A free-hand scanning approach to medical imaging allows for flexible, lightweight probes to image intricate anatomies for modalities such as fluorescence lifetime imaging (FLIm), optical coherence tomography (OCT) and ultrasound. While very promising, this approach faces several key challenges including tissue motion during imaging, varying lighting conditions in the surgical field, and sparse sampling of the tissue surface. These challenges limit the coregistration accuracy and interpretability of the acquired imaging data. Here we report FLImBrush as a robust method for the localization and visualization of intraoperative free-hand fiber optic fluorescence lifetime imaging (FLIm). FLImBrush builds upon an existing method while employing deep learning-based image segmentation, block-matching based motion correction, and interpolation-based visualization to address the aforementioned challenges. Current results demonstrate that FLImBrush can provide accurate localization of FLIm point-measurements while producing interpretable and complete visualizations of FLIm data acquired from a tissue surface. Each of the main processing steps was shown to be capable of real-time processing (> 30 frames per second), highlighting the feasibility of FLImBrush for intraoperative imaging and surgical guidance. Current findings show the feasibility of integrating FLImBrush into a range of surgical applications including cancer margins assessment during head and neck surgery.
一种用于医学成像的徒手扫描方法允许使用灵活、轻便的探头对诸如荧光寿命成像(FLIm)、光学相干断层扫描(OCT)和超声等模态的复杂解剖结构进行成像。尽管这种方法非常有前景,但它面临着几个关键挑战,包括成像过程中的组织运动、手术区域变化的光照条件以及组织表面的稀疏采样。这些挑战限制了所获取成像数据的配准精度和可解释性。在此,我们报告了FLImBrush,它是一种用于术中徒手光纤荧光寿命成像(FLIm)的定位和可视化的稳健方法。FLImBrush在现有方法的基础上,采用基于深度学习的图像分割、基于块匹配的运动校正和基于插值的可视化来应对上述挑战。当前结果表明,FLImBrush能够提供FLIm点测量的精确定位,同时生成从组织表面获取的FLIm数据的可解释且完整的可视化结果。每个主要处理步骤都被证明能够进行实时处理(每秒>30帧),突出了FLImBrush用于术中成像和手术引导的可行性。当前研究结果表明,将FLImBrush集成到一系列手术应用中是可行的,包括头颈外科手术中的癌症边缘评估。