Department of Informatics, Systems and Communication of the University of Milan-Bicocca.
Brief Bioinform. 2021 Jul 20;22(4). doi: 10.1093/bib/bbaa222.
The advancements of single-cell sequencing methods have paved the way for the characterization of cellular states at unprecedented resolution, revolutionizing the investigation on complex biological systems. Yet, single-cell sequencing experiments are hindered by several technical issues, which cause output data to be noisy, impacting the reliability of downstream analyses. Therefore, a growing number of data science methods has been proposed to recover lost or corrupted information from single-cell sequencing data. To date, however, no quantitative benchmarks have been proposed to evaluate such methods.
We present a comprehensive analysis of the state-of-the-art computational approaches for denoising and imputation of single-cell transcriptomic data, comparing their performance in different experimental scenarios. In detail, we compared 19 denoising and imputation methods, on both simulated and real-world datasets, with respect to several performance metrics related to imputation of dropout events, recovery of true expression profiles, characterization of cell similarity, identification of differentially expressed genes and computation time. The effectiveness and scalability of all methods were assessed with regard to distinct sequencing protocols, sample size and different levels of biological variability and technical noise. As a result, we identify a subset of versatile approaches exhibiting solid performances on most tests and show that certain algorithmic families prove effective on specific tasks but inefficient on others. Finally, most methods appear to benefit from the introduction of appropriate assumptions on noise distribution of biological processes.
单细胞测序方法的进步为以空前的分辨率描绘细胞状态铺平了道路,彻底改变了对复杂生物系统的研究。然而,单细胞测序实验受到几个技术问题的阻碍,这些问题导致输出数据存在噪声,影响下游分析的可靠性。因此,越来越多的数据科学方法被提出来从单细胞测序数据中恢复丢失或损坏的信息。然而,迄今为止,尚无定量基准来评估这些方法。
我们对用于单细胞转录组数据去噪和插补的最先进的计算方法进行了全面分析,比较了它们在不同实验场景下的性能。具体来说,我们比较了 19 种去噪和插补方法,包括模拟数据集和真实数据集,涉及与插补缺失事件、恢复真实表达谱、细胞相似性特征、差异表达基因识别和计算时间相关的几个性能指标。我们根据不同的测序方案、样本量以及不同水平的生物学变异性和技术噪声评估了所有方法的有效性和可扩展性。结果表明,我们确定了一组多功能方法,它们在大多数测试中表现出色,并表明某些算法族在特定任务上有效,但在其他任务上效率低下。最后,大多数方法似乎受益于对生物过程噪声分布的适当假设的引入。