Department of Animal Sciences, Livestock Systems, University of Göttingen, 37077 Göttingen, Germany.
Campus Institute Data Science, 37077 Göttingen, Germany.
Sensors (Basel). 2021 Nov 15;21(22):7585. doi: 10.3390/s21227585.
Sensor technologies, such as the Global Navigation Satellite System (GNSS), produce huge amounts of data by tracking animal locations with high temporal resolution. Due to this high resolution, all animals show at least some co-occurrences, and the pure presence or absence of co-occurrences is not satisfactory for social network construction. Further, tracked animal contacts contain noise due to measurement errors or random co-occurrences. To identify significant associations, null models are commonly used, but the determination of an appropriate null model for GNSS data by maintaining the autocorrelation of tracks is challenging, and the construction is time and memory consuming. Bioinformaticians encounter phylogenetic background and random noise on sequencing data. They estimate this noise directly on the data by using the average product correction procedure, a method applied to information-theoretic measures. Using Global Positioning System (GPS) data of heifers in a pasture, we performed a proof of concept that this approach can be transferred to animal science for social network construction. The approach outputs stable results for up to 30% missing data points, and the predicted associations were in line with those of the null models. The effect of different distance thresholds for contact definition was marginal, but animal activity strongly affected the network structure.
传感器技术,如全球导航卫星系统(GNSS),通过以高时间分辨率跟踪动物位置来产生大量数据。由于这种高分辨率,所有动物至少都会有一些共同出现,而仅仅存在或不存在共同出现对于社交网络构建来说并不令人满意。此外,由于测量误差或随机共同出现,跟踪动物接触会包含噪声。为了识别显著的关联,通常使用零模型,但通过保持轨迹的自相关性来确定适合 GNSS 数据的零模型具有挑战性,并且构建过程既耗时又耗内存。生物信息学家在测序数据中遇到系统发育背景和随机噪声。他们通过使用平均乘积校正程序直接在数据上估计这种噪声,这是一种应用于信息论度量的方法。使用牧场中小母牛的全球定位系统(GPS)数据,我们进行了概念验证,证明该方法可以转移到动物科学领域,用于构建社交网络。该方法在高达 30%的数据缺失点的情况下仍能输出稳定的结果,并且预测的关联与零模型的关联一致。接触定义的不同距离阈值的影响微不足道,但动物活动强烈影响网络结构。