{"title":"Understanding biology through logic","authors":"J. Fisher","doi":"10.1145/2603088.2603166","DOIUrl":null,"url":null,"abstract":"The complexity in biology is staggering. Biological processes involve many components performing complicated interactions. Moreover, they are organized in hierarchies spanning multiple levels going from individual genes and proteins to signalling pathways, through cells and tissues, to organisms and populations. All the levels in this hierarchy are subject to a multitude of interdisciplinary efforts to model, analyse and devise ways to make sense of all this complexity. Mathematical models (and using computers to simulate them) have been used for these purposes for many years. The abilities of modern computers and their increased availability have greatly advanced this kind of modelling. However, in the last decade (or so) computational and logical thinking have started to change the way biological models are constructed and analysed. The work of the logic-in-computer-science research community to formalize and enable analysis of computer systems inspired several pioneers to try and harness these capabilities to the design and analysis of computer models of biological systems. This approach, which we later termed \"executable biology\", calls for the construction of a program or another formal model that represents aspects of a biological process. By analysing and reasoning about such artefacts we gain additional insights into the mechanisms of the biological processes under study. Over the years, these efforts have demonstrated successfully how this logical perspective to biology can be beneficial for gaining new biological insights and directing new experimental avenues. In this tutorial, I will give an introduction to this approach. I will survey different modelling paradigms and how they are being used for biological modelling through models of cell fate decision-making, organism development, and molecular mechanisms underlying cancer. I will also highlight verification and the usage of formal methods to gain new biological insights. Time permitting, I will touch upon some of the challenges involved in applying synthesis to the development of models directly from experimental data and the efforts that are required to make the computational tools that we develop widely adopted by experimentalists and clinicians in the biological and medical research community.","PeriodicalId":20649,"journal":{"name":"Proceedings of the Joint Meeting of the Twenty-Third EACSL Annual Conference on Computer Science Logic (CSL) and the Twenty-Ninth Annual ACM/IEEE Symposium on Logic in Computer Science (LICS)","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2014-07-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Proceedings of the Joint Meeting of the Twenty-Third EACSL Annual Conference on Computer Science Logic (CSL) and the Twenty-Ninth Annual ACM/IEEE Symposium on Logic in Computer Science (LICS)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1145/2603088.2603166","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

The complexity in biology is staggering. Biological processes involve many components performing complicated interactions. Moreover, they are organized in hierarchies spanning multiple levels going from individual genes and proteins to signalling pathways, through cells and tissues, to organisms and populations. All the levels in this hierarchy are subject to a multitude of interdisciplinary efforts to model, analyse and devise ways to make sense of all this complexity. Mathematical models (and using computers to simulate them) have been used for these purposes for many years. The abilities of modern computers and their increased availability have greatly advanced this kind of modelling. However, in the last decade (or so) computational and logical thinking have started to change the way biological models are constructed and analysed. The work of the logic-in-computer-science research community to formalize and enable analysis of computer systems inspired several pioneers to try and harness these capabilities to the design and analysis of computer models of biological systems. This approach, which we later termed "executable biology", calls for the construction of a program or another formal model that represents aspects of a biological process. By analysing and reasoning about such artefacts we gain additional insights into the mechanisms of the biological processes under study. Over the years, these efforts have demonstrated successfully how this logical perspective to biology can be beneficial for gaining new biological insights and directing new experimental avenues. In this tutorial, I will give an introduction to this approach. I will survey different modelling paradigms and how they are being used for biological modelling through models of cell fate decision-making, organism development, and molecular mechanisms underlying cancer. I will also highlight verification and the usage of formal methods to gain new biological insights. Time permitting, I will touch upon some of the challenges involved in applying synthesis to the development of models directly from experimental data and the efforts that are required to make the computational tools that we develop widely adopted by experimentalists and clinicians in the biological and medical research community.
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通过逻辑理解生物学
生物学的复杂性是惊人的。生物过程涉及许多组分进行复杂的相互作用。此外,它们的组织层次跨越多个层次,从单个基因和蛋白质到信号通路,通过细胞和组织,再到生物体和群体。这一层次结构中的所有层次都受到众多跨学科努力的影响,以建模、分析和设计方法来理解所有这些复杂性。数学模型(以及使用计算机来模拟它们)已经用于这些目的很多年了。现代计算机的能力及其日益增加的可用性大大促进了这种建模。然而,在过去十年左右的时间里,计算和逻辑思维已经开始改变生物模型的构建和分析方式。计算机科学中的逻辑研究团体将计算机系统形式化并使其能够分析,这一工作启发了一些先驱,他们试图利用这些能力来设计和分析生物系统的计算机模型。这种方法,我们后来称之为“可执行生物学”,要求构建一个程序或另一个形式模型来表示生物过程的各个方面。通过对这些人工制品的分析和推理,我们对正在研究的生物过程的机制有了更多的了解。多年来,这些努力已经成功地证明了这种生物学的逻辑视角如何有助于获得新的生物学见解和指导新的实验途径。在本教程中,我将介绍这种方法。我将调查不同的建模范式,以及它们如何通过细胞命运决策、生物体发育和潜在癌症的分子机制模型用于生物建模。我还将强调验证和正式方法的使用,以获得新的生物学见解。在时间允许的情况下,我将涉及将合成直接应用于从实验数据开发模型所涉及的一些挑战,以及使我们开发的计算工具被生物学和医学研究界的实验学家和临床医生广泛采用所需要的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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