计算机科学
可扩展性
笔记本电脑
数据挖掘
数据库
操作系统
作者
Chao Gao,Jialin Liu,April R. Kriebel,Sebastian Preißl,Chongyuan Luo,Rosa Castanon,Justin P. Sandoval,Angeline Rivkin,Joseph R. Nery,M. Margarita Behrens,Joseph R. Ecker,Bing Ren,Joshua D. Welch
标识
DOI:10.1038/s41587-021-00867-x
摘要
Integrating large single-cell gene expression, chromatin accessibility and DNA methylation datasets requires general and scalable computational approaches. Here we describe online integrative non-negative matrix factorization (iNMF), an algorithm for integrating large, diverse and continually arriving single-cell datasets. Our approach scales to arbitrarily large numbers of cells using fixed memory, iteratively incorporates new datasets as they are generated and allows many users to simultaneously analyze a single copy of a large dataset by streaming it over the internet. Iterative data addition can also be used to map new data to a reference dataset. Comparisons with previous methods indicate that the improvements in efficiency do not sacrifice dataset alignment and cluster preservation performance. We demonstrate the effectiveness of online iNMF by integrating more than 1 million cells on a standard laptop, integrating large single-cell RNA sequencing and spatial transcriptomic datasets, and iteratively constructing a single-cell multi-omic atlas of the mouse motor cortex. A new algorithm enables scalable and iterative integration of single-cell datasets.
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