肿瘤免疫相互作用和动力学的拓扑分类。

IF 2.3 4区 数学 Q2 BIOLOGY
Jingjie Yang, Heidi Fang, Jagdeep Dhesi, Iris H R Yoon, Joshua A Bull, Helen M Byrne, Heather A Harrington, Gillian Grindstaff
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引用次数: 0

摘要

肿瘤和免疫细胞之间复杂而动态的串扰导致肿瘤可以表现出不同的定性行为——消除、平衡和逃逸——以及复杂的空间模式,但在早期阶段具有相似的细胞结构。我们提供了一种拓扑方法来分析细胞位置(包括肿瘤细胞和巨噬细胞)的空间数据的时间序列,以预测恶性行为。我们提出了四种专门用于此类细胞数据的拓扑矢量化:静态时间点的Vietoris-Rips和径向过滤的持久性图像,以及随时间变化的锯齿过滤和持久性葡萄园的持久性图像。为了演示该方法,从具有不同参数的基于代理的模型生成合成数据。我们比较了拓扑摘要在预测中的性能-在不同时间步的逻辑回归-是否血管周围的肿瘤龛在模拟结束时存在,作为转移(即肿瘤逃逸)的代理。我们发现静态和时间依赖的方法都能准确地识别血管周围生态位的形成,明显早于简单的标记,如肿瘤细胞数量和巨噬细胞表型比率。此外,我们发现,应用于巨噬细胞数据的维0持久性,代表巨噬细胞空间排列的多尺度集群,在早期时间步骤中,在肿瘤完全发展之前,在此分类任务中表现最佳,并且当包含时间依赖性数据时表现更好;相比之下,捕获肿瘤形状的拓扑测量,如细胞排列中的扭曲和穿刺,在中晚期表现最好。我们分析了每种方法的逻辑回归系数,以识别类之间的详细形状差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Topological classification of tumour-immune interactions and dynamics.

Topological classification of tumour-immune interactions and dynamics.

Topological classification of tumour-immune interactions and dynamics.

Topological classification of tumour-immune interactions and dynamics.

Topological classification of tumour-immune interactions and dynamics.

Topological classification of tumour-immune interactions and dynamics.

Topological classification of tumour-immune interactions and dynamics.

The complex and dynamic crosstalk between tumour and immune cells results in tumours that can exhibit distinct qualitative behaviours-elimination, equilibrium, and escape-and intricate spatial patterns, yet share similar cell configurations in the early stages. We offer a topological approach to analyse time series of spatial data of cell locations (including tumour cells and macrophages) in order to predict malignant behaviour. We propose four topological vectorisations specialised to such cell data: persistence images of Vietoris-Rips and radial filtrations at static time points, and persistence images for zigzag filtrations and persistence vineyards varying in time. To demonstrate the approach, synthetic data are generated from an agent-based model with varying parameters. We compare the performance of topological summaries in predicting-with logistic regression at various time steps-whether tumour niches surrounding blood vessels are present at the end of the simulation, as a proxy for metastasis (i.e., tumour escape). We find that both static and time-dependent methods accurately identify perivascular niche formation, significantly earlier than simpler markers such as the number of tumour cells and the macrophage phenotype ratio. We find additionally that dimension 0 persistence applied to macrophage data, representing multi-scale clusters of the spatial arrangement of macrophages, performs best at this classification task at early time steps, prior to full tumour development, and performs even better when time-dependent data are included; in contrast, topological measures capturing the shape of the tumour, such as tortuosity and punctures in the cell arrangement, perform best at intermediate and later stages. We analyse the logistic regression coefficients for each method to identify detailed shape differences between the classes.

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来源期刊
CiteScore
3.30
自引率
5.30%
发文量
120
审稿时长
6 months
期刊介绍: The Journal of Mathematical Biology focuses on mathematical biology - work that uses mathematical approaches to gain biological understanding or explain biological phenomena. Areas of biology covered include, but are not restricted to, cell biology, physiology, development, neurobiology, genetics and population genetics, population biology, ecology, behavioural biology, evolution, epidemiology, immunology, molecular biology, biofluids, DNA and protein structure and function. All mathematical approaches including computational and visualization approaches are appropriate.
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