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Genetic fingerprinting proves cross-correlated automatic photo-identification of individuals as highly efficient in large capture–mark–recapture studies

机译:遗传指纹图谱证明在大型捕获-标记-捕获研究中个体的交叉相关自动照片识别非常有效

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摘要

Capture–mark–recapture (CMR) approaches are the backbone of many studies in population ecology to gain insight on the life cycle, migration, habitat use, and demography of target species. The reliable and repeatable recognition of an individual throughout its lifetime is the basic requirement of a CMR study. Although invasive techniques are available to mark individuals permanently, noninvasive methods for individual recognition mainly rest on photographic identification of external body markings, which are unique at the individual level. The re-identification of an individual based on comparing shape patterns of photographs by eye is commonly used. Automated processes for photographic re-identification have been recently established, but their performance in large datasets (i.e., > 1000 individuals) has rarely been tested thoroughly. Here, we evaluated the performance of the program AMPHIDENT, an automatic algorithm to identify individuals on the basis of ventral spot patterns in the great crested newt (Triturus cristatus) versus the genotypic fingerprint of individuals based on highly polymorphic microsatellite loci using GENECAP. Between 2008 and 2010, we captured, sampled and photographed adult newts and calculated for 1648 samples/photographs recapture rates for both approaches. Recapture rates differed slightly with 8.34% for GENECAP and 9.83% for AMPHIDENT. With an estimated rate of 2% false rejections (FRR) and 0.00% false acceptances (FAR), AMPHIDENT proved to be a highly reliable algorithm for CMR studies of large datasets. We conclude that the application of automatic recognition software of individual photographs can be a rather powerful and reliable tool in noninvasive CMR studies for a large number of individuals. Because the cross-correlation of standardized shape patterns is generally applicable to any pattern that provides enough information, this algorithm is capable of becoming a single application with broad use in CMR studies for many species.
机译:捕获标记再捕获(CMR)方法是许多种群生态学研究的基础,旨在深入了解目标物种的生命周期,迁移,栖息地使用和人口统计。 CMR研究的基本要求是在个人一生中对其进行可靠且可重复的识别。尽管侵入性技术可用于永久标记个人,但用于个体识别的非侵入性方法主要取决于对外部标记的照片识别,这在个体水平上是唯一的。通常使用基于通过眼睛比较照片的形状图案来重新识别个人的方法。最近已经建立了用于照相重新识别的自动过程,但是很少在大型数据集中(即,> 1000个人)对它们的性能进行彻底的测试。在这里,我们评估了程序AMPHIDENT的性能,该程序是一种自动算法,可基于大c(Triturus cristatus)的腹点模式与使用GENECAP基于高度多态性微卫星基因座的个体的基因型指纹进行识别。在2008年至2010年之间,我们捕获,采样并拍照了成年new,并针对这两种方法对1648个样本/照片的重新捕获率进行了计算。捕获率略有不同,GENECAP为8.34%,AMPHIDENT为9.83%。据估计,AMPHIDENT具有2%的错误拒绝率(FRR)和0.00%的错误接受率(FAR),是对大型数据集进行CMR研究的高度可靠的算法。我们得出的结论是,在对大量个人进行无创CMR研究中,单个照片的自动识别软件的应用可能是一种功能强大且可靠的工具。由于标准化形状图案的互相关通常适用于提供足够信息的任何图案,因此该算法能够成为单个应用程序,并广泛用于许多物种的CMR研究中。

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