Vincent (2023-04-30 15:13):
#paper doi: https://www.nature.com/articles/s41576-023-00586-w Best practices for single-cell analysis across modalities. Nature review genetics,2023. 这篇综述文章来自Fabian Theis组, 是一篇极好的单细胞分析指导文章。文章涵盖了几种不同的技术(scRNA-seq, scATAC-seq, scTCR/BCR, spatial transcriptomics), 对于每一种技术路线,介绍了完整的分析流程和目前最好的处理方法,例如scRNA, 介绍了原始数据处理、数据过滤和去杂,标准化和批次效应去除,降维聚类分型,拟时序分析和RNA速率分析,差异基因分析,细胞组成分析和细胞通讯分析等等。对于每一个步骤,文章会总结当前的最佳实践(如果有其他文章做过基准测试)或者给出分析建议(如果目前还没有基准测试的工作)。鉴于当前单细胞分析领域各种方法层出不穷,这篇文章提供了一个很好的指导总结,非常推荐做单细胞分析的朋友阅读。
Best practices for single-cell analysis across modalities
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Abstract:
Recent advances in single-cell technologies have enabled high-throughput molecular profiling of cells across modalities and locations. Single-cell transcriptomics data can now be complemented by chromatin accessibility, surface protein expression, adaptive immune receptor repertoire profiling and spatial information. The increasing availability of single-cell data across modalities has motivated the development of novel computational methods to help analysts derive biological insights. As the field grows, it becomes increasingly difficult to navigate the vast landscape of tools and analysis steps. Here, we summarize independent benchmarking studies of unimodal and multimodal single-cell analysis across modalities to suggest comprehensive best-practice workflows for the most common analysis steps. Where independent benchmarks are not available, we review and contrast popular methods. Our article serves as an entry point for novices in the field of single-cell (multi-)omic analysis and guides advanced users to the most recent best practices.
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