Department of Pathology, Tenovus Building, School of Medicine, Cardiff University, Heath Park, Cardiff, United Kingdom.
Cytometry A. 2011 Mar;79(3):214-26. doi: 10.1002/cyto.a.21023. Epub 2011 Feb 18.
The cell cycle, with its highly conserved features, is a fundamental driver for the temporal control of cell proliferation-while abnormal control and modulation of the cell cycle are characteristic of tumor cells. The principal aim in cancer biology is to seek an understanding of the origin and nature of innate and acquired heterogeneity at the cellular level, driven principally by temporal and functional asynchrony. A major bottleneck when mathematically modeling these biological systems is the lack of interlinked structured experimental data. This often results in the in silico models failing to translate the specific hypothesis into parameterized terms that enable robust validation and hence would produce suitable prediction tools rather than just simulation tools. The focus has been on linking data originating from different cytometric platforms and cell-based event analysis to inform and constrain the input parameters of a compartmental cell cycle model, hence partly measuring and deconvolving cell cycle heterogeneity within a tumor population. Our work has addressed the concept that the interoperability of cytometric data, derived from different cytometry platforms, can complement as well as enhance cellular parameters space, thus providing a more broader and in-depth view of the cellular systems. The initial aim was to enable the cell cycle model to deliver an improved integrated simulation of the well-defined and constrained biological system. From a modeling perspective, such a cross platform approach has provided a paradigm shift from conventional cross-validation approaches, and from a bioinformatics perspective, novel computational methodology has been introduced for integrating and mapping continuous data with cross-sectional data. This establishes the foundation for developing predictive models and in silico tracking and prediction of tumor progression
细胞周期具有高度保守的特征,是细胞增殖时间控制的基本驱动因素——而细胞周期的异常控制和调节是肿瘤细胞的特征。癌症生物学的主要目标是寻求对细胞水平固有和获得异质性的起源和性质的理解,主要由时间和功能的不同步驱动。在对这些生物系统进行数学建模时,一个主要的瓶颈是缺乏相互关联的结构化实验数据。这往往导致计算机模型无法将特定的假设转化为参数化的术语,从而无法进行稳健的验证,因此无法产生合适的预测工具,而不仅仅是模拟工具。研究的重点一直是将来自不同细胞仪平台的数据和基于细胞的事件分析联系起来,为区室细胞周期模型的输入参数提供信息和约束,从而在一定程度上测量和解卷积肿瘤群体中的细胞周期异质性。我们的工作提出了一个概念,即来自不同细胞仪平台的细胞仪数据的互操作性不仅可以补充,还可以增强细胞参数空间,从而更广泛和深入地了解细胞系统。最初的目标是使细胞周期模型能够对定义明确且受约束的生物系统进行改进的综合模拟。从建模的角度来看,这种跨平台方法提供了一种从传统交叉验证方法转变的范例,从生物信息学的角度来看,已经引入了新的计算方法来整合和映射连续数据和横截面数据。这为开发预测模型以及肿瘤进展的计算机模拟跟踪和预测奠定了基础。