Department of Civil and Environmental Engineering, Auburn University, 238 Harbert Engineering Center Auburn, AL 36849, USA.
Department of Biological Sciences, The University of Alabama, Tuscaloosa, AL 35487, USA.
Integr Comp Biol. 2022 Feb 5;61(6):2154-2162. doi: 10.1093/icb/icab170.
Robustness and resilience are widely used in the biological sciences and related disciplines to describe how systems respond to change. Robustness is the ability to tolerate change without adapting or moving to another state. Resilience refers to the ability for a system to sustain a perturbation and maintain critical functions. Robustness and resilience transcend levels of biological organization, though they do not scale directly across levels. We live in an era of novel stressors and unprecedented change, including climate change, emerging environmental contaminants, and changes to the Earth's biogeochemical and hydrological cycles. We envision a common framework for developing models to predict the robustness and resilience of biological functions associated with complex systems that can transcend disciplinary boundaries. Conceptual and quantitative models of robustness and resilience must consider cross-scale interactions of potentially infinite complexity, but it is impossible to capture everything within a single model. Here, we discuss the need to balance accuracy and complexity when designing models, data collection, and downstream analyses to study robustness and resilience. We also consider the difficulties in defining the spatiotemporal domain when studying robustness and resilience as an emergent property of a complex system. We suggest a framework for implementing transdisciplinary research on robustness and resilience of biological systems that draws on participatory stakeholder engagement methods from the fields of conservation and natural resources management. Further, we suggest that a common, simplified model development framework for describing complex biological systems will provide new, broadly relevant educational tools. Efficient interdisciplinary collaboration to accurately develop a model of robustness and resilience would enable rapid, context-specific assessment of complex biological systems with benefits for a broad range of societally relevant problems.
稳健性和弹性在生物科学及相关学科中被广泛用于描述系统如何应对变化。稳健性是指在不适应或转变为另一种状态的情况下,系统能够容忍变化的能力。弹性是指系统在承受干扰时维持关键功能的能力。稳健性和弹性超越了生物组织的层次,但它们不会直接跨越层次进行扩展。我们生活在一个充满新的压力源和前所未有的变化的时代,包括气候变化、新出现的环境污染物以及地球生物地球化学和水文循环的变化。我们设想了一个共同的框架,用于开发预测与复杂系统相关的生物功能稳健性和弹性的模型,该框架可以超越学科界限。稳健性和弹性的概念和定量模型必须考虑潜在无限复杂性的跨尺度相互作用,但不可能在单个模型中捕捉到所有内容。在这里,我们讨论了在设计模型、数据收集和下游分析以研究稳健性和弹性时需要平衡准确性和复杂性的必要性。我们还考虑了当研究稳健性和弹性作为复杂系统的涌现特性时,定义时空域的困难。我们建议实施生物系统稳健性和弹性跨学科研究的框架,该框架借鉴了保护和自然资源管理领域的参与式利益相关者参与方法。此外,我们建议一个用于描述复杂生物系统的通用简化模型开发框架将提供新的、广泛相关的教育工具。高效的跨学科合作来准确地开发稳健性和弹性模型,将能够快速、具体情境地评估复杂的生物系统,从而为广泛的与社会相关的问题带来益处。