Goreke Utku, Gonzales Ayesha, Shipley Brandon, Tincher Madeleine, Sharma Oshin, Wulftange William, Man Yuncheng, An Ran, Hinczewski Michael, Gurkan Umut A
Department of Mechanical and Aerospace Engineering, Case Western Reserve University, Cleveland, OH.
Department of Physics, Case Western Reserve University, Cleveland, OH.
bioRxiv. 2024 May 16:2023.10.08.561435. doi: 10.1101/2023.10.08.561435.
Imaging and characterizing the dynamics of cellular adhesion in blood samples is of fundamental importance in understanding biological function. microscopy methods are widely used for this task, but typically require diluting the blood with a buffer to allow for transmission of light. However whole blood provides crucial mechanical and chemical signaling cues that influence adhesion dynamics, which means that conventional approaches lack the full physiological complexity of living microvasculature. We propose to overcome this challenge by a new imaging method which we call motion blur microscopy (MBM). By decreasing the source light intensity and increasing the integration time during imaging, flowing cells are blurred, allowing us to identify adhered cells. Combined with an automated analysis using machine learning, we can for the first time reliably image cell interactions in microfluidic channels during whole blood flow. MBM provides a low cost, easy to implement alternative to intravital microscopy, the approach for studying how the whole blood environment shapes adhesion dynamics. We demonstrate the method's reproducibility and accuracy in two example systems where understanding cell interactions, adhesion, and motility is crucial-sickle red blood cells adhering to laminin, and CAR-T cells adhering to E-selectin. We illustrate the wide range of data types that can be extracted from this approach, including distributions of cell size and eccentricity, adhesion durations, trajectories and velocities of adhered cells moving on a functionalized surface, as well as correlations among these different features at the single cell level. In all cases MBM allows for rapid collection and processing of large data sets, ranging from thousands to hundreds of thousands of individual adhesion events. The method is generalizable to study adhesion mechanisms in a variety of diseases, including cancer, blood disorders, thrombosis, inflammatory and autoimmune diseases, as well as providing rich datasets for theoretical modeling of adhesion dynamics.
对血液样本中细胞黏附动力学进行成像和表征对于理解生物学功能至关重要。显微镜方法广泛用于此任务,但通常需要用缓冲液稀释血液以允许光的透射。然而,全血提供了影响黏附动力学的关键机械和化学信号线索,这意味着传统方法缺乏活体微血管的完整生理复杂性。我们提议通过一种新的成像方法来克服这一挑战,我们将其称为运动模糊显微镜(MBM)。通过在成像过程中降低光源强度并增加积分时间,流动的细胞会变得模糊,从而使我们能够识别黏附的细胞。结合使用机器学习的自动分析,我们首次能够在全血流过程中可靠地对微流控通道中的细胞相互作用进行成像。MBM提供了一种低成本、易于实施的替代活体显微镜的方法,活体显微镜是研究全血环境如何塑造黏附动力学的方法。我们在两个示例系统中证明了该方法的可重复性和准确性,在这两个系统中理解细胞相互作用、黏附和运动性至关重要——镰状红细胞黏附于层粘连蛋白,以及嵌合抗原受体T细胞(CAR-T细胞)黏附于E选择素。我们展示了可以从这种方法中提取的广泛数据类型,包括细胞大小和偏心率的分布、黏附持续时间、在功能化表面上移动的黏附细胞的轨迹和速度,以及单细胞水平上这些不同特征之间的相关性。在所有情况下,MBM都允许快速收集和处理从数千到数十万单个黏附事件的大数据集。该方法可推广用于研究多种疾病中的黏附机制,包括癌症、血液疾病、血栓形成、炎症和自身免疫性疾病,以及为黏附动力学的理论建模提供丰富的数据集。