Suppr超能文献

整合多源数据以洞察人口过程:分层比率变化模型的模拟研究和概念验证。

Integrating data from multiple sources for insights into demographic processes: Simulation studies and proof of concept for hierarchical change-in-ratio models.

机构信息

Norwegian Institute for Nature Research, Torgarden, Trondheim, Norway.

出版信息

PLoS One. 2018 Mar 29;13(3):e0194566. doi: 10.1371/journal.pone.0194566. eCollection 2018.

Abstract

We developed a model for estimating demographic rates and population abundance based on multiple data sets revealing information about population age- and sex structure. Such models have previously been described in the literature as change-in-ratio models, but we extend the applicability of the models by i) using time series data allowing the full temporal dynamics to be modelled, by ii) casting the model in an explicit hierarchical modelling framework, and by iii) estimating parameters based on Bayesian inference. Based on sensitivity analyses we conclude that the approach developed here is able to obtain estimates of demographic rate with high precision whenever unbiased data of population structure are available. Our simulations revealed that this was true also when data on population abundance are not available or not included in the modelling framework. Nevertheless, when data on population structure are biased due to different observability of different age- and sex categories this will affect estimates of all demographic rates. Estimates of population size is particularly sensitive to such biases, whereas demographic rates can be relatively precisely estimated even with biased observation data as long as the bias is not severe. We then use the models to estimate demographic rates and population abundance for two Norwegian reindeer (Rangifer tarandus) populations where age-sex data were available for all harvested animals, and where population structure surveys were carried out in early summer (after calving) and late fall (after hunting season), and population size is counted in winter. We found that demographic rates were similar regardless whether we include population count data in the modelling, but that the estimated population size is affected by this decision. This suggest that monitoring programs that focus on population age- and sex structure will benefit from collecting additional data that allow estimation of observability for different age- and sex classes. In addition, our sensitivity analysis suggests that focusing monitoring towards changes in demographic rates might be more feasible than monitoring abundance in many situations where data on population age- and sex structure can be collected.

摘要

我们开发了一种基于多组数据估算种群数量和出生率的模型,这些数据揭示了种群的年龄和性别结构信息。此类模型先前已在文献中被描述为“比例变化模型”,但我们通过以下方式扩展了模型的适用性:i)使用时间序列数据,从而可以对完整的时间动态进行建模;ii)将模型构建在明确的分层建模框架中;iii)通过贝叶斯推理估算参数。基于敏感性分析,我们得出的结论是,只要能够获得无偏的种群结构数据,我们所开发的方法就能够以高精度估算出生率。我们的模拟结果表明,即使在无法获取或未将种群数量数据纳入建模框架的情况下,这也是成立的。然而,当由于不同年龄和性别类别的不同可观测性导致种群结构数据存在偏差时,这将影响所有出生率的估算。种群数量的估算特别容易受到此类偏差的影响,而即使观测数据存在偏差,只要偏差不严重,出生率仍可以相对精确地估算。然后,我们使用这些模型估算了两个挪威驯鹿(Rangifer tarandus)种群的出生率和种群数量,这两个种群都可以获取所有被捕猎动物的年龄和性别数据,并且在初夏(产犊后)和晚秋(狩猎季后)进行了种群结构调查,冬季则对种群数量进行计数。我们发现,无论我们是否将种群数量数据纳入建模,出生率都是相似的,但估计的种群数量会受到这一决策的影响。这表明,专注于种群年龄和性别结构的监测计划将受益于收集额外的数据,这些数据可以对不同年龄和性别类别的可观测性进行估算。此外,我们的敏感性分析表明,在许多可以收集种群年龄和性别结构数据的情况下,专注于监测出生率变化可能比监测数量更为可行。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1c60/5875752/699b6e9cb7ee/pone.0194566.g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验