轻量级和可扩展的粒子跟踪和3D细胞轨迹的运动聚类

Mojtaba Sedigh Fazli, Rachel V. Stadler, BahaaEddin AlAila, S. Vella, S. Moreno, G. Ward, Shannon P. Quinn
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引用次数: 3

摘要

在三维显微镜视频中跟踪细胞粒子是一项具有挑战性的任务,但对细胞运动建模具有重要意义。正确描述细胞的形状、进化及其随时间的运动对于理解和模拟许多疾病中细胞迁移的机械生物学至关重要。特别是,弓形虫病是由弓形虫寄生虫引起的疾病。大约有三分之一的世界人口弓形虫检测呈阳性。它的毒性与它的分解周期有关,这取决于它的运动性和进入和离开有核细胞的能力;因此,阐明其运动模式的研究对治疗策略的最终发展至关重要。在这里,我们提出了一个计算框架,用于以完全无监督的方式快速和可扩展地检测、跟踪和识别3D视频中的弓形虫运动表型。我们的流水线由几个不同的模块组成,包括预处理、稀疏化、细胞检测、细胞跟踪、轨迹提取、轨迹参数化;最后是聚类步骤。此外,我们确定了计算瓶颈,并通过任务分布和并行性的组合开发了一个轻量级和高度可伸缩的管道。实验结果证明了该方法的准确性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lightweight and Scalable Particle Tracking and Motion Clustering of 3D Cell Trajectories
Tracking cell particles in 3D microscopy videos is a challenging task but is of great significance for modeling the motion of cells. Proper characterization of the cell's shape, evolution, and their movement over time is crucial to understanding and modeling the mechanobiology of cell migration in many diseases. One in particular, toxoplasmosis is the disease caused by the parasite Toxoplasma gondii. Roughly, one-third of the world's population tests positive for T. gondii. Its virulence is linked to its lytic cycle, predicated on its motility and ability to enter and exit nucleated cells; therefore, studies elucidating its motility patterns are critical to the eventual development of therapeutic strategies. Here, we present a computational framework for fast and scalable detection, tracking, and identification of T. gondii motion phenotypes in 3D videos, in a completely unsupervised fashion. Our pipeline consists of several different modules including preprocessing, sparsification, cell detection, cell tracking, trajectories extraction, parametrization of the trajectories; and finally, a clustering step. Additionally, we identified the computational bottlenecks, and developed a lightweight and highly scalable pipeline through a combination of task distribution and parallelism. Our results prove both the accuracy and performance of our method.
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