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Sieve retention probabilities of stream benthic invertebrates

机译:流底栖无脊椎动物的筛分保留概率

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Replicate samples of cobbles and loose inorganic and organic matter collected from 3 stream-riffle sites with different periphyton communities were passed through a geometric series of 9 sieves (0.063–16 mm mesh) to quantify sieve retention probabilities of benthic invertebrates. Sieves retained all organisms with a body length >10× the mesh size. Logistic regression models were estimated to describe retention probabilities as functions of body length and mesh size. Retention probability functions differed slightly but significantly among sites, operators, and taxa. Retention probabilities were higher for samples containing filamentous algae, which entangled invertebrates. Size distributions of straight, elongate invertebrates (e.g., oligochaetes, midge larvae) retained by sieves were more variable than distributions of more spherical organisms (e.g., gastropods). On average, the 1-mm sieve retained >90% of invertebrate biomass but <33% of individuals retained by a 63-μm sieve. Size distribution of organisms retained by coarse sieves (≥1 mm), combined with logistic functions predicting retention probability, can be used to describe abundance, biomass, and size distribution of organisms retained by fine sieves. These results suggest that unbiased descriptions of benthic communities can be obtained with relatively little effort by using a minimum sieve mesh size of 1 mm.
机译:从3个具有不同围生生物群落的河溪流场收集的鹅卵石和松散的无机物和有机物的复制样品通过9个几何筛网(0.063-16 mm目)的几何系列,以量化底栖无脊椎动物的筛子保留概率。筛子保留了体长大于网眼尺寸10倍的所有生物。估计逻辑回归模型以将保留概率描述为体长和网格大小的函数。保留概率函数在站点,运营商和分类单元之间略有不同,但差异很大。含有缠绕无脊椎动物的丝状藻类的样品的保留概率更高。筛子所保留的直的,细长的无脊椎动物(例如,低聚类,mid类幼虫)的大小分布比球形的生物(例如,腹足类动物)的分布更易变。平均而言,1毫米的筛子保留了90%以上的无脊椎动物生物量,但63微米的筛子却保留了33%的个体。粗筛(≥1mm)保留的生物的尺寸分布,结合预测保留概率的逻辑函数,可用于描述细筛保留的生物的丰度,生物量和尺寸分布。这些结果表明,通过使用1 mm的最小筛孔尺寸,可以相对较少的工作量获得对底栖生物群落的无偏见描述。

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