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Addressing the translational dilemma: Dynamic knowledge representation of inflammation using agent-based modeling

机译:解决翻译难题:使用基于代理的建模对炎症进行动态知识表示

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摘要

Given the panoply of system-level diseases that result from disordered inflammation, such as sepsis, atherosclerosis, cancer, and autoimmune disorders, understanding and characterizing the inflammatory response is a key target of biomedical research. Untangling the complex behavioral configurations associated with a process as ubiquitous as inflammation represents a prototype of the translational dilemma: the ability to translate mechanistic knowledge into effective therapeutics. A critical failure point in the current research environment is a throughput bottleneck at the level of evaluating hypotheses of mechanistic causality; these hypotheses represent the key step toward the application of knowledge for therapy development and design. Addressing the translational dilemma will require utilizing the ever-increasing power of computers and computational modeling to increase the efficiency of the scientific method in the identification and evaluation of hypotheses of mechanistic causality. More specifically, development needs to focus on facilitating the ability of non-computer trained biomedical researchers to utilize and instantiate their knowledge in dynamic computational models. This is termed dynamic knowledge representation. Agent-based modeling is an object-oriented, discrete-event, rule-based simulation method that is well suited for biomedical dynamic knowledge representation. Agent-based modeling has been used in the study of inflammation at multiple scales. The ability of agent-based modeling to encompass multiple scales of biological process as well as spatial considerations, coupled with an intuitive modeling paradigm, suggest that this modeling framework is well suited for addressing the translational dilemma. This review describes agent-based modeling, gives examples of its applications in the study of inflammation, and introduces a proposed general expansion of the use of modeling and simulation to augment the generation and evaluation of knowledge by the biomedical research community at large.
机译:鉴于由疾病紊乱引起的系统级疾病的泛滥,例如败血症,动脉粥样硬化,癌症和自身免疫性疾病,了解和表征炎症反应是生物医学研究的关键目标。解开与炎症无处不在的过程相关的复杂行为配置,代表了翻译难题的原型:将机械知识转化为有效疗法的能力。当前研究环境中的一个关键失败点是评估机械因果关系假设的吞吐量瓶颈。这些假设代表了将知识应用于治疗开发和设计的关键步骤。解决翻译难题将需要利用计算机和计算模型的不断增长的能力来提高科学方法在机械因果性假设的识别和评估中的效率。更具体地说,开发需要集中在促进未经计算机训练的生物医学研究人员利用和实例化他们在动态计算模型中的知识的能力。这被称为动态知识表示。基于代理的建模是一种面向对象,离散事件,基于规则的仿真方法,非常适合生物医学动态知识表示。基于代理的建模已用于多种规模的炎症研究。基于代理的建模能力涵盖了多个尺度的生物过程以及空间考虑因素,再加上直观的建模范例,表明该建模框架非常适合解决翻译难题。这篇综述描述了基于代理的建模,给出了其在炎症研究中的应用实例,并介绍了拟议的建模和仿真用途的一般扩展,以扩大整个生物医学研究界的知识生成和评估。

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