转录组
斑马鱼
假阳性悖论
计算生物学
胚胎
错误发现率
二甲基亚砜
生物
水准点(测量)
样本量测定
基因
男科
毒理
遗传学
计算机科学
化学
基因表达
统计
数学
医学
大地测量学
地理
有机化学
机器学习
作者
Hyojin Lee,John D. H. Stead,Andrew Williams,Sergio A. Cortés-Ramírez,Ella Atlas,Jan A. Mennigen,Jason M. O’Brien,Carole L. Yauk
标识
DOI:10.1021/acs.est.3c10543
摘要
High-throughput transcriptomics (HTTr) is increasingly applied to zebrafish embryos to survey the toxicological effects of environmental chemicals. Before the adoption of this approach in regulatory testing, it is essential to characterize background noise in order to guide experimental designs. We thus empirically quantified the HTTr false discovery rate (FDR) across different embryo pool sizes, sample sizes, and concentration groups for toxicology studies. We exposed zebrafish embryos to 0.1% dimethyl sulfoxide (DMSO) for 5 days. Pools of 1, 5, 10, and 20 embryos were created (n = 24 samples for each pool size). Samples were sequenced on the TempO-Seq platform and then randomly assigned to mock treatment groups before differentially expressed gene (DEG), pathway, and benchmark concentration (BMC) analyses. Given that all samples were treated with DMSO, any significant DEGs, pathways, or BMCs are false positives. As expected, we found decreasing FDRs for DEG and pathway analyses with increasing pool and sample sizes. Similarly, FDRs for BMC analyses decreased with increasing pool size and concentration groups, with more stringent BMC premodel filtering reducing BMC FDRs. Our study provides foundational data for determining appropriate experiment designs for regulatory toxicity testing with HTTr in zebrafish embryos.
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