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Assessing impact of exogenous features on biotic phenomena in the presence of strong spatial dependence: A lake sturgeon case study in natural stream settings

机译:在强烈的空间依赖性的情况下评估外源性特征对生物现象的影响:自然溪流环境中的lake鱼案例研究

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摘要

Modeling spatially explicit data provides a powerful approach to identify the effects of exogenous features associated with biological processes, including recruitment of stream fishes. However, the complex spatial and temporal dynamics of the stream and the species’ reproductive and early life stage behaviors present challenges to drawing valid inference using traditional regression models. In these settings it is often difficult to ensure the spatial independence among model residuals—a key assumption that must be met to ensure valid inference. We present statistical models capable of capturing complex residual anisotropic patterns through the addition of spatial random effects within an inferential framework that acknowledges uncertainty in the data and parameters. Proposed models are used to explore the impact of environmental variables on Lake sturgeon (Acipenser fulvescens) reproduction, particularly questions about patterns in egg deposition. Our results demonstrate the need to apply valid statistical methods to identify relationships between response variables, e.g., egg counts, across locations, and environmental covariates in the presence of strong and anisotropic autocorrelation in stream systems. The models may be applied to other settings where gamete distribution or, more generally, other biotic phenomena may be associated with spatially dynamic and anisotropic processes.
机译:对空间显式数据进行建模提供了一种强大的方法,可以识别与生物过程(包括河豚的募集)相关的外源特征的影响。但是,河流的复杂时空动态以及该物种的生殖和生命早期行为对使用传统回归模型得出有效推断提出了挑战。在这些设置中,通常很难确保模型残差之间的空间独立性,这是确保有效推论必须满足的关键假设。我们提出了统计模型,该模型能够通过推断数据和参数不确定性的推理框架内的空间随机效应来捕获复杂的剩余各向异性模式。建议的模型用于探索环境变量对Lake鱼(Acipenser fulvescens)繁殖的影响,尤其是有关卵沉积模式的问题。我们的结果表明,在流系统中存在强各向异性各向异性的情况下,有必要应用有效的统计方法来识别响应变量(例如蛋数),跨位置和环境协变量之间的关系。该模型可以应用于配子分布或更一般地说其他生物现象可能与空间动态和各向异性过程相关的其他设置。

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