从粒子位置的异质快照推断随机速率

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Christopher E Miles, Scott A McKinley, Fangyuan Ding, Richard B Lehoucq
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引用次数: 0

摘要

生物系统的许多成像技术(如细胞固定和荧光显微镜)在报告单个个体在某一时刻的位置时具有很高的空间分辨率,但同时也破坏了它们想要捕捉的动态信息。这些快照观测结果不包含个体轨迹信息,但仍能编码有关运动和人口动态的信息,尤其是在与一个动机明确的生物物理模型相结合时。通过偏微分方程(PDE)及其逆问题,可以很好地确定空间演化种群与其集体位置的单时刻表示之间的关系。然而,实验数据通常是一组位置,其数量不足以近似连续空间偏微分方程解。在此,我们以流行的亚细胞基因表达成像数据为动机,接受数据的随机性,研究从核或细胞域中经历出生、扩散和死亡的粒子快照推断人口统计率的参数数学基础。在推断过程中,我们严格推导出单个粒子路径与泊松空间过程之间的联系。利用这一框架,我们研究了由此产生的逆问题的特性,并研究了影响推理质量的因素。这种实验机制的一个普遍特征是存在细胞间的异质性。我们的研究表明,细胞间的几何异质性非但不会成为阻碍,反而会提高某些参数区的动态推断质量。总之,这些结果为更详细地研究 RNA 分子和其他随机演化种群的亚细胞空间模式奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Inferring Stochastic Rates from Heterogeneous Snapshots of Particle Positions.

Inferring Stochastic Rates from Heterogeneous Snapshots of Particle Positions.

Many imaging techniques for biological systems-like fixation of cells coupled with fluorescence microscopy-provide sharp spatial resolution in reporting locations of individuals at a single moment in time but also destroy the dynamics they intend to capture. These snapshot observations contain no information about individual trajectories, but still encode information about movement and demographic dynamics, especially when combined with a well-motivated biophysical model. The relationship between spatially evolving populations and single-moment representations of their collective locations is well-established with partial differential equations (PDEs) and their inverse problems. However, experimental data is commonly a set of locations whose number is insufficient to approximate a continuous-in-space PDE solution. Here, motivated by popular subcellular imaging data of gene expression, we embrace the stochastic nature of the data and investigate the mathematical foundations of parametrically inferring demographic rates from snapshots of particles undergoing birth, diffusion, and death in a nuclear or cellular domain. Toward inference, we rigorously derive a connection between individual particle paths and their presentation as a Poisson spatial process. Using this framework, we investigate the properties of the resulting inverse problem and study factors that affect quality of inference. One pervasive feature of this experimental regime is the presence of cell-to-cell heterogeneity. Rather than being a hindrance, we show that cell-to-cell geometric heterogeneity can increase the quality of inference on dynamics for certain parameter regimes. Altogether, the results serve as a basis for more detailed investigations of subcellular spatial patterns of RNA molecules and other stochastically evolving populations that can only be observed for single instants in their time evolution.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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