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一种用于在使用斑马鱼的高通量研究中表征化学诱导行为效应的新统计方法。

A New Statistical Approach to Characterize Chemical-Elicited Behavioral Effects in High-Throughput Studies Using Zebrafish.

作者信息

Zhang Guozhu, Truong Lisa, Tanguay Robert L, Reif David M

机构信息

Bioinformatics Research Center, North Carolina State University, Raleigh, North Carolina, United States of America.

Department of Environmental and Molecular Toxicology, Sinnhuber Aquatic Research Laboratory, Oregon State University, Corvallis, Oregon, United States of America.

出版信息

PLoS One. 2017 Jan 18;12(1):e0169408. doi: 10.1371/journal.pone.0169408. eCollection 2017.

Abstract

Zebrafish have become an important alternative model for characterizing chemical bioactivity, partly due to the efficiency at which systematic, high-dimensional data can be generated. However, these new data present analytical challenges associated with scale and diversity. We developed a novel, robust statistical approach to characterize chemical-elicited effects in behavioral data from high-throughput screening (HTS) of all 1,060 Toxicity Forecaster (ToxCast™) chemicals across 5 concentrations at 120 hours post-fertilization (hpf). Taking advantage of the immense scale of data for a global view, we show that this new approach reduces bias introduced by extreme values yet allows for diverse response patterns that confound the application of traditional statistics. We have also shown that, as a summary measure of response for local tests of chemical-associated behavioral effects, it achieves a significant reduction in coefficient of variation compared to many traditional statistical modeling methods. This effective increase in signal-to-noise ratio augments statistical power and is observed across experimental periods (light/dark conditions) that display varied distributional response patterns. Finally, we integrated results with data from concomitant developmental endpoint measurements to show that appropriate statistical handling of HTS behavioral data can add important biological context that informs mechanistic hypotheses.

摘要

斑马鱼已成为表征化学生物活性的重要替代模型,部分原因在于其能够高效地生成系统的高维数据。然而,这些新数据带来了与规模和多样性相关的分析挑战。我们开发了一种新颖、稳健的统计方法,用于表征在受精后120小时(hpf)对1060种毒性预测器(ToxCast™)化学品进行5种浓度的高通量筛选(HTS)行为数据中的化学诱导效应。利用海量数据进行全局观察,我们表明这种新方法减少了极值引入的偏差,同时允许存在使传统统计方法应用复杂化的多样响应模式。我们还表明,作为化学相关行为效应局部测试响应的汇总度量,与许多传统统计建模方法相比,它实现了变异系数的显著降低。这种信噪比的有效提高增强了统计功效,并且在显示不同分布响应模式的实验周期(光照/黑暗条件)中均能观察到。最后,我们将结果与来自伴随发育终点测量的数据相结合,以表明对HTS行为数据进行适当的统计处理可以添加重要的生物学背景信息,为机制假说提供依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ce6/5242475/f51882ff98d3/pone.0169408.g001.jpg

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