Himanish Basu, Thomas L. Schwarz
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Abstract
Trafficking of intracellular cargo is essential to cellular function and can be defective in pathological states including cancer and neurodegeneration. Tools to quantify intracellular traffic are thus necessary for understanding this fundamental cellular process, studying disease mechanisms, and testing the effects of therapeutic pharmaceuticals. In this article we introduce an algorithm called QuoVadoPro that autonomously quantifies the movement of fluorescently tagged intracellular cargo. QuoVadoPro infers the extent of intracellular motility based on the variance of pixel illumination in a series of time-lapse images. The algorithm is an unconventional approach to the automatic measurement of intracellular traffic and is suitable for quantifying movements of intracellular cargo under diverse experimental paradigms. QuoVadoPro is particularly useful to measure intracellular cargo movement in non-neuronal cells, where cargo trafficking occurs as short movements in mixed directions. The algorithm can be applied to images with low temporal or spatial resolutions and to intracellular cargo with varying shapes or sizes, like mitochondria or endoplasmic reticulum: situations in which conventional methods such as kymography and particle tracking cannot be applied. In this article we present a stepwise protocol for using the QuoVadoPro software, illustrate its methodology with common examples, discuss critical parameters for reliable data analysis, and demonstrate its use with a previously published example. © 2020 Wiley Periodicals LLC.
Basic Protocol : QuoVadoPro, an autonomous tool for measuring intracellular dynamics using temporal variance
QuoVadoPro,一个使用时间方差测量细胞内动态的自主工具
细胞内货物的运输对细胞功能至关重要,在包括癌症和神经变性在内的病理状态下可能存在缺陷。因此,量化细胞内交通的工具对于理解这一基本细胞过程、研究疾病机制和测试治疗药物的效果是必要的。在本文中,我们介绍了一种称为QuoVadoPro的算法,该算法可以自动量化荧光标记的细胞内货物的运动。QuoVadoPro根据一系列延时图像中像素光照的方差推断细胞内运动的程度。该算法是一种非常规的细胞内流量自动测量方法,适用于多种实验范式下的细胞内货物运动的量化。QuoVadoPro在测量非神经元细胞的细胞内货物运动方面特别有用,其中货物运输发生在混合方向的短运动中。该算法可以应用于低时间或空间分辨率的图像,以及具有不同形状或大小的细胞内货物,如线粒体或内质网:在这些情况下,传统的方法,如血象和粒子跟踪无法应用。在本文中,我们提供了一个用于使用QuoVadoPro软件的逐步协议,通过常见示例说明其方法,讨论可靠数据分析的关键参数,并通过先前发布的示例演示其使用。©2020 Wiley期刊有限公司基本协议:QuoVadoPro,一个使用时间方差测量细胞内动力学的自主工具
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