Department of Mathematics, University of California Riverside, Riverside, CA, USA.
Interdisciplinary Center for Quantitative Modeling in Biology, University of California Riverside, Riverside, CA, USA.
Math Biosci Eng. 2022 Jun 10;19(8):8505-8536. doi: 10.3934/mbe.2022395.
Single-cell sequencing technologies have revolutionized molecular and cellular biology and stimulated the development of computational tools to analyze the data generated from these technology platforms. However, despite the recent explosion of computational analysis tools, relatively few mathematical models have been developed to utilize these data. Here we compare and contrast two cell state geometries for building mathematical models of cell state-transitions with single-cell RNA-sequencing data with hematopoeisis as a model system; (i) by using partial differential equations on a graph representing intermediate cell states between known cell types, and (ii) by using the equations on a multi-dimensional continuous cell state-space. As an application of our approach, we demonstrate how the calibrated models may be used to mathematically perturb normal hematopoeisis to simulate, predict, and study the emergence of novel cell states during the pathogenesis of acute myeloid leukemia. We particularly focus on comparing the strength and weakness of the graph model and multi-dimensional model.
单细胞测序技术已经彻底改变了分子和细胞生物学,并刺激了计算工具的发展,以分析这些技术平台产生的数据。然而,尽管最近计算分析工具大量涌现,但相对较少的数学模型被开发出来以利用这些数据。在这里,我们比较和对比了两种细胞状态几何结构,以便使用单细胞 RNA 测序数据构建造血系统的细胞状态转变的数学模型;(i)通过在表示已知细胞类型之间中间细胞状态的图上使用偏微分方程,和(ii)通过在多维连续细胞状态空间上使用方程。作为我们方法的应用,我们展示了如何校准模型可用于对正常造血进行数学上的干扰,以模拟、预测和研究急性髓性白血病发病过程中新型细胞状态的出现。我们特别关注比较图模型和多维模型的优缺点。