基因
RNA序列
计算生物学
R包
核糖核酸
基因表达
DNA测序
计算机科学
生物
遗传学
转录组
计算科学
作者
Jiawei Zou,Fulan Deng,Miaochen Wang,Zhen Zhang,Zheqi Liu,Xiaobin Zhang,Rong Hua,Ke Chen,Xin Zou,Jie Hao
摘要
Abstract Differential expression (DE) gene detection in single-cell ribonucleic acid (RNA)-sequencing (scRNA-seq) data is a key step to understand the biological question investigated. Filtering genes is suggested to improve the performance of DE methods, but the influence of filtering genes has not been demonstrated. Furthermore, the optimal methods for different scRNA-seq datasets are divergent, and different datasets should benefit from data-specific DE gene detection strategies. However, existing tools did not take gene filtering into consideration. There is a lack of metrics for evaluating the optimal method on experimental datasets. Based on two new metrics, we propose single-cell Consensus Optimization of Differentially Expressed gene detection, an R package to automatically optimize DE gene detection for each experimental scRNA-seq dataset.
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