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%.
The importance of study design for detecting differentially abundant features in high-throughput experiments.
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作者:Luo Huaien, Li Juntao, Chia Burton Kuan Hui, Robson Paul, Nagarajan Niranjan
| 期刊: | Genome Biology | 影响因子: | 9.400 |
| 时间: | 2014 | 起止号: | 2014 Dec 3; 15(12):527 |
| doi: | 10.1186/s13059-014-0527-7 | ||
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