肿瘤中生态相互作用的地理统计学可视化。

Hunter Bryan Boyce, Parag Mallick
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引用次数: 0

摘要

最近我们对癌症进展的理解突出了分子异质性和肿瘤微环境在驱动耐药和转移中的作用。单细胞测量技术与算法(如t-sne和SPADE)的耦合使得深入研究肿瘤异质性成为可能。然而,这种技术只能捕获分子异质性,不能对细胞间相互作用进行量化和可视化。此外,它们不允许可视化生态位,这是理解肿瘤行为的关键。迫切需要新的计算工具来量化和可视化肿瘤微环境中的空间模式。在这里,我们从肿瘤生态学的角度来研究捕食、互惠、共生和寄生如何影响肿瘤的发展和空间格局。此外,我们还利用地质统计学量化了模型的局部空间异质性和紧急的全球空间行为。通过可视化突发空间模式,我们展示了地理统计分析在肿瘤微环境中区分细胞-细胞相互作用方面的潜在效用。这些研究引入了表征癌症细胞间相互作用的生态框架和一种量化和可视化癌症空间模式的新方法。
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Geostatistical visualization of ecological interactions in tumors.

Recent advances in our understanding of cancer progression have highlighted the roles played by molecular heterogeneity and by the tumor microenvironment in driving drug resistance and metastasis. The coupling of single-cell measurement technologies with algorithms, such as t-sne and SPADE, have enabled deep investigation of tumor heterogeneity. However, such techniques only capture molecular heterogeneity and do not enable the quantification nor visualization of intercellular interactions. They additionally do not allow the visualization of ecological niches that are critical to understanding tumor behavior. Novel computational tools to quantify and visualize spatial patterns in the tumor microenvironment are critically needed. Here, we take a tumor ecology perspective to examine how predation, mutualism, commensalism, and parasitism may impact tumor development and spatial patterning. We additionally quantify local spatial heterogeneity and the emergent global spatial behavior of the models using geostatistics. By visualizing emergent spatial patterns we demonstrate the potential utility of a geostatistical analysis in differentiating amongst cell-cell interactions in the tumor microenvironment. These studies introduce both an ecological framework for characterizing intercellular interactions in cancer and a novel way of quantifying and visualizing spatial patterns in cancer.

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