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首页> 外文期刊>Hydrobiologia >Reducing the cost of benthic sample processing by using sieve retention probability models
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Reducing the cost of benthic sample processing by using sieve retention probability models

机译:使用筛子保留概率模型降低底栖样品处理成本

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摘要

Estimation of abundance or biomass of benthic invertebrates requires considerable effort to process samples. Consequently, it has been suggested to process only organisms retained by a relatively coarse meshed sieve and apply size-specific correction factors based on the probability that a sieve retains individual organisms. Benthic samples were collected from 10 sites in 2 regions and processed to validate an existing empirical model predicting sieve retention probabilities, to test whether periphyton biomass affects probability of retention, and to determine the optimal strategy that minimizes both cost and variability of estimates. The existing model predicting sieve retention probabilities corrected for organisms lost through sieves and mostly corrected for underestimation of biomass, but this model lead to overestimates of the frequency of the smallest organisms. Inclusion of algal biomass improved slightly the proportion of correct predictions (whether an organism is retained or not by a sieve) by 0.6% relative to the existing model (from 90.8% to 91.4%), and removed the bias. Density and biomass estimates obtained by only processing organisms retained by 1- or 2-mm sieves and applying correction factors derived from the predicted retention probabilities were accurate and only marginally less precise than estimates obtained by processing all organisms. The reduced precision of estimates from subsets of organisms could be compensated by increasing sample size and still lead to a reduction of 40–60% of the number of organisms processed. Even though the use of subsets introduces additional analytical variability, this variability is relatively small compared to the natural spatial variability among replicates.
机译:估计底栖无脊椎动物的丰度或生物量需要花费大量精力来处理样品。因此,已经建议仅处理被相对粗糙的筛子保留的生物,并根据筛子保留单个生物的可能性应用特定于尺寸的校正因子。从2个区域的10个地点收集了底栖动物样品,并进行了处理,以验证现有的预测筛子滞留概率的经验模型,以测试浮游生物量是否会影响滞留概率,并确定使成本和估计差异最小化的最佳策略。现有的预测筛子保留概率的模型已针对通过筛子损失的生物进行了校正,并且大部分针对生物质的低估进行了校正,但是该模型导致最小生物的频率被高估了。与现有模型(从90.8%到91.4%)相比,包含藻类生物量使正确预测(无论有机体是否被筛子保留)的比例略微提高了0.6%,并且消除了偏差。仅通过处理1-mm或2-mm筛子保留的生物并应用从预测的保留概率得出的校正因子获得的密度和生物量估计值是准确的,并且仅比通过处理所有生物获得的估计值稍差。通过增加样本量可以弥补来自生物体子集的估计精度下降,但仍导致所处理生物体数量减少40-60%。即使使用子集会带来额外的分析变异性,但与重复样本之间的自然空间变异性相比,该变异性相对较小。

著录项

  • 来源
    《Hydrobiologia 》 |2007年第1期| 79-90| 共12页
  • 作者单位

    Ottawa-Carleton Institute of Biology Department of Biology University of Ottawa 30 Marie Curie K1N 6N5 Ottawa ON Canada;

    Ottawa-Carleton Institute of Biology Department of Biology University of Ottawa 30 Marie Curie K1N 6N5 Ottawa ON Canada;

    Ottawa-Carleton Institute of Biology Department of Biology University of Ottawa 30 Marie Curie K1N 6N5 Ottawa ON Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Benthos; Sieve; Cost; Retention; Optimization;

    机译:Benthos;Sieve;成本;保留率;优化;

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