Luo Huaien, Li Juntao, Chia Burton Kuan Hui, Robson Paul, Nagarajan Niranjan
Genome Biol. 2014 Dec 3;15(12):527. doi: 10.1186/s13059-014-0527-7.
High-throughput assays, such as RNA-seq, to detect differential abundance are widely used. Variable performance across statistical tests, normalizations, and conditions leads to resource wastage and reduced sensitivity. EDDA represents a first, general design tool for RNA-seq, Nanostring, and metagenomic analysis, that rationally selects tests, predicts performance, and plans experiments to minimize resource wastage. Case studies highlight EDDA's ability to model single-cell RNA-seq, suggesting ways to reduce sequencing costs up to five-fold and improving metagenomic biomarker detection through improved test selection. EDDA's novel mode-based normalization for detecting differential abundance improves robustness by 10% to 20% and precision by up to 140%.
用于检测差异丰度的高通量分析方法,如RNA测序,被广泛应用。统计检验、标准化和条件之间的性能差异会导致资源浪费和灵敏度降低。EDDA是一种用于RNA测序、纳米串分析和宏基因组分析的首个通用设计工具,它能合理选择检验方法、预测性能并规划实验,以尽量减少资源浪费。案例研究突出了EDDA对单细胞RNA测序进行建模的能力,提出了将测序成本降低多达五倍的方法,并通过改进检验选择提高宏基因组生物标志物检测水平。EDDA用于检测差异丰度的基于模式的新型标准化方法将稳健性提高了10%至20%,将精度提高了多达140%。