Department of Chemical and Biomolecular Engineering, The Johns Hopkins University, Baltimore, Maryland, United States of America.
Department of Oncology, The Sidney Kimmel Comprehensive Cancer Center, The Johns Hopkins University School of Medicine, Baltimore, Maryland, United States of America.
PLoS One. 2018 Dec 27;13(12):e0209591. doi: 10.1371/journal.pone.0209591. eCollection 2018.
The majority of cancer-related deaths are due to metastasis, hence improved methods to biologically and computationally model metastasis are required. Computational models rely on robust data that is machine-readable. The current methods used to model metastasis in mice involve generating primary tumors by injecting human cells into immune-compromised mice, or by examining genetically engineered mice that are pre-disposed to tumor development and that eventually metastasize. The degree of metastasis can be measured using flow cytometry, bioluminescence imaging, quantitative PCR, and/or by manually counting individual lesions from metastatic tissue sections. The aforementioned methods are time-consuming and do not provide information on size distribution or spatial localization of individual metastatic lesions. In this work, we describe and provide a MATLAB script for an image-processing based method designed to obtain quantitative data from tissue sections comprised of multiple subpopulations of disseminated cells localized at metastatic sites in vivo. We further show that this method can be easily adapted for high throughput imaging of live or fixed cells in vitro under a multitude of conditions in order to assess clonal fitness and evolution. The inherent variation in mouse studies, increasing complexity in experimental design which incorporate fate-mapping of individual cells, result in the need for a large cohort of mice to generate a robust dataset. High-throughput imaging techniques such as the one that we describe will enhance the data that can be used as input for the development of computational models aimed at modeling the metastatic process.
大多数癌症相关的死亡是由于转移,因此需要改进生物学和计算方法来模拟转移。计算模型依赖于可机器读取的强大数据。目前用于在小鼠中模拟转移的方法涉及通过将人类细胞注射到免疫功能低下的小鼠中,或通过检查易发生肿瘤发展并最终转移的基因工程小鼠来生成原发性肿瘤。可以使用流式细胞术、生物发光成像、定量 PCR 和/或通过手动计数来自转移组织切片的单个病变来测量转移的程度。上述方法既耗时又无法提供关于单个转移病变的大小分布或空间定位的信息。在这项工作中,我们描述并提供了一种基于图像处理的方法,该方法旨在从体内转移部位定位的多个播散细胞亚群组成的组织切片中获得定量数据。我们进一步表明,该方法可以很容易地适应在多种条件下对活细胞或固定细胞进行高通量成像,以评估克隆适应性和进化。由于小鼠研究中的固有变异性、包含个体细胞命运映射的实验设计的日益复杂性,需要大量的小鼠来生成稳健的数据集。我们描述的高通量成像技术将增强可用于开发旨在模拟转移过程的计算模型的输入数据。