Roeder Ingo
Institute for Medical Informatics, Statistics and Epidemiology, University of Leipzig, Leipzig, Germany.
Curr Opin Hematol. 2006 Jul;13(4):222-8. doi: 10.1097/01.moh.0000231418.08031.48.
This review is intended to provide an overview of recently published computational methods, including bioinformatic algorithms, mathematical models and simulation studies, applied to stem cell biology, with particular reference to the hematopoietic system.
The analysis of molecular data is making an increased contribution to identify dynamic system responses. Specifically, there are promising computational approaches to characterizing the functional interrelation of network components regulating the process of differentiation and lineage specification of hematopoietic stem cells. Furthermore, evidence is accumulating that stem cell organization should be regarded as a flexible, self-organizing process rather than as a predetermined sequence of events. A number of mathematical models relevant to the hematopoietic (stem cell) system are applied successfully to clinical situations, demonstrating the predictive power of theoretical methods.
Based on the advances in measurement technology, an increasing amount of cellular and molecular data is being generated within the field of stem cell biology. The complexity of the underlying systems, however, most often limits a direct interpretation of the data and makes computational methods indispensable. Mathematical models and simulation techniques are contributing considerably to the discovery of general regulatory principles of stem cell organization and are providing clinically relevant predictions.
本综述旨在概述最近发表的应用于干细胞生物学的计算方法,包括生物信息学算法、数学模型和模拟研究,尤其侧重于造血系统。
分子数据分析在识别动态系统反应方面的贡献日益增加。具体而言,有一些很有前景的计算方法可用于表征调节造血干细胞分化和谱系定向过程的网络组件之间的功能相互关系。此外,越来越多的证据表明,干细胞组织应被视为一个灵活的、自我组织的过程,而不是一个预定的事件序列。一些与造血(干细胞)系统相关的数学模型已成功应用于临床情况,证明了理论方法的预测能力。
基于测量技术的进步,干细胞生物学领域正在产生越来越多的细胞和分子数据。然而,基础系统的复杂性常常限制了对数据的直接解读,使得计算方法不可或缺。数学模型和模拟技术在发现干细胞组织的一般调节原则方面做出了重大贡献,并提供了与临床相关的预测。