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系统生物医学报告:推动系统生物学在医学应用中的发展。

SysBioMed report: advancing systems biology for medical applications.

作者信息

Wolkenhauer O, Fell D, De Meyts P, Blüthgen N, Herzel H, Le Novère N, Höfer T, Schürrle K, van Leeuwen I

机构信息

University of Rostock, Rostock, Germany.

出版信息

IET Syst Biol. 2009 May;3(3):131-6. doi: 10.1049/iet-syb.2009.0005.

Abstract

The following report selects and summarises some of the conclusions and recommendations generated throughout a series of workshops and discussions that have lead to the publication of the Science Policy Briefing (SPB) Nr. 35, published by the European Science Foundation. (Large parts of the present text are directly based on the ESF SPB. Detailed recommendations with regard to specific application areas are not given here but can be found in the SPB. Issues related to mathematical modelling, including training and the need for an infrastructure supporting modelling are discussed in greater detail in the present text.)The numerous reports and publications about the advances within the rapidly growing field of systems biology have led to a plethora of alternative definitions for key concepts. Here, with 'mathematical modelling' the authors refer to the modelling and simulation of subcellular, cellular and macro-scale phenomena, using primarily methods from dynamical systems theory. The aim of such models is encoding and testing hypotheses about mechanisms underlying the functioning of cells. Typical examples are models for molecular networks, where the behaviour of cells is expressed in terms of quantitative changes in the levels of transcripts and gene products. Bioinformatics provides essential complementary tools, including procedures for pattern recognition, machine learning, statistical modelling (testing for differences, searching for associations and correlations) and secondary data extracted from databases.Dynamical systems theory is the natural language to investigate complex biological systems demonstrating nonlinear spatio-temporal behaviour. However, the generation of experimental data suitable to parameterise, calibrate and validate such models is often time consuming and expensive or not even possible with the technology available today. In our report, we use the term 'computational model' when mathematical models are complemented with information generated from bioinformatics resources. Hence, 'the model' is, in reality, an integrated collection of data and models from various (possibly heterogeneous) sources. The present report focuses on a selection of topics, which were identified as appropriate case studies for medical systems biology, and adopts a particular perspective which the authors consider important. We strongly believe that mathematical modelling represents a natural language with which to integrate data at various levels and, in doing so, to provide insight into complex diseases: 1. Modelling necessitates the statement of explicit hypotheses, a process which often enhances comprehension of the biological system and can uncover critical points where understanding is lacking. 2. Simulations can reveal hidden patterns and/or counter-intuitive mechanisms in complex systems. 3. Theoretical thinking and mathematical modelling constitute powerful tools to integrate and make sense of the biological and clinical information being generated and, more importantly, to generate new hypotheses that can then be tested in the laboratory.Medical Systems Biology projects carried out recently across Europe have revealed a need for action: 4. While the need for mathematical modelling and interdisciplinary collaborations is becoming widely recognised in the biological sciences, with substantial implications for the training and research funding mechanisms within this area, the medical sciences have yet to follow this lead. 5. To achieve major breakthroughs in Medical Systems Biology, existing academic funding schemes for large-scale projects need to be reconsidered. 6. The hesitant stance of the pharmaceutical industry towards major investment in systems biology research has to be addressed. 7. Leading medical journals should be encouraged to promote mathematical modelling.

摘要

以下报告选取并总结了一系列研讨会和讨论得出的部分结论与建议,这些研讨会和讨论促成了欧洲科学基金会发布的第35号科学政策简报(SPB)。(本文大部分内容直接基于ESF的SPB。此处未给出针对特定应用领域的详细建议,可在SPB中找到。本文更详细地讨论了与数学建模相关的问题,包括培训以及支持建模的基础设施需求。)众多关于快速发展的系统生物学领域进展的报告和出版物导致了关键概念的大量替代定义。在此,作者所说的“数学建模”是指主要使用动力系统理论方法对亚细胞、细胞和宏观尺度现象进行建模和模拟。此类模型的目的是对有关细胞功能机制的假设进行编码和测试。典型例子是分子网络模型,其中细胞行为通过转录本和基因产物水平的定量变化来表示。生物信息学提供了重要的补充工具,包括模式识别、机器学习、统计建模(差异测试、寻找关联和相关性)以及从数据库中提取的二次数据等程序。

动力系统理论是研究表现出非线性时空行为的复杂生物系统的自然语言。然而,生成适合对这类模型进行参数化、校准和验证的实验数据通常既耗时又昂贵,甚至利用当今可用技术根本无法实现。在我们的报告中,当数学模型辅以生物信息学资源生成的信息时,我们使用“计算模型”这一术语。因此,“模型”实际上是来自各种(可能异构)来源的数据和模型的集成集合。本报告聚焦于一系列被确定为医学系统生物学合适案例研究的主题,并采用了作者认为重要的特定视角。我们坚信数学建模是一种自然语言,可用于整合各级数据,并借此深入了解复杂疾病:1. 建模需要陈述明确的假设,这一过程通常会增强对生物系统的理解,并能揭示理解不足的关键点。2. 模拟可以揭示复杂系统中隐藏的模式和/或违反直觉的机制。3. 理论思维和数学建模是整合和理解所生成的生物和临床信息的有力工具,更重要的是,能生成可在实验室中进行测试的新假设。

近期在欧洲开展的医学系统生物学项目揭示了采取行动的必要性

  1. 虽然在生物科学领域,数学建模和跨学科合作的需求正得到广泛认可,这对该领域的培训和研究资助机制有重大影响,但医学科学尚未跟上这一步伐。5. 为在医学系统生物学领域取得重大突破,需要重新考虑现有的大规模项目学术资助计划。6. 必须解决制药行业对系统生物学研究重大投资的犹豫态度。7. 应鼓励领先的医学期刊推广数学建模。

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