一个数据驱动的框架,用于对生物-环境系统进行建模。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Lisandro Milocco, Tobias Uller
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引用次数: 2

摘要

生物体根据环境改变其发育和功能。同时,环境被生物体的活动所改变。尽管这种动态相互作用在自然界中无处不在,但开发准确表示它们的模型仍然具有挑战性,并且可以使用数据进行拟合。当对表型可塑性等现象进行建模时,这些特征是理想的,以便对系统如何响应不同量级或不同时间的环境信号(例如,在个体发育期间)进行定量预测。在这里,我们解释了一个建模框架,该框架将生物体和环境表示为输入和输出方面的单个耦合动力系统。输入是外部信号,输出是系统在时间上的测量。该框架使用输入和输出的时间序列数据来拟合非线性黑箱模型,该模型允许预测系统如何响应新的输入信号。该框架有三个关键属性:它捕捉了生物体-环境系统的动态特性,它可以与数据相匹配,它可以在没有系统详细知识的情况下应用。我们使用硅实验研究表型可塑性,并证明该框架可以预测对新环境信号的反应。该框架允许我们将可塑性建模为个体发育过程中随时间变化的动态特性,反映出生物体在不同发育阶段或多或少具有可塑性这一众所周知的事实。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A data-driven framework to model the organism–environment system

A data-driven framework to model the organism–environment system

Organisms modify their development and function in response to the environment. At the same time, the environment is modified by the activities of the organism. Despite the ubiquity of such dynamical interactions in nature, it remains challenging to develop models that accurately represent them, and that can be fitted using data. These features are desirable when modeling phenomena such as phenotypic plasticity, to generate quantitative predictions of how the system will respond to environmental signals of different magnitude or at different times, for example, during ontogeny. Here, we explain a modeling framework that represents the organism and environment as a single coupled dynamical system in terms of inputs and outputs. Inputs are external signals, and outputs are measurements of the system in time. The framework uses time-series data of inputs and outputs to fit a nonlinear black-box model that allows to predict how the system will respond to novel input signals. The framework has three key properties: it captures the dynamical nature of the organism–environment system, it can be fitted with data, and it can be applied without detailed knowledge of the system. We study phenotypic plasticity using in silico experiments and demonstrate that the framework predicts the response to novel environmental signals. The framework allows us to model plasticity as a dynamical property that changes in time during ontogeny, reflecting the well-known fact that organisms are more or less plastic at different developmental stages.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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