Deep learning tackles single-cell analysis A survey of deep learning for scRNA-seq analysis
Mario Flores, Zhentao Liu, Ting-He Zhang, Md Musaddaqui Hasib,, Yu-Chiao Chiu, Zhenqing Ye, Karla Paniagua, Sumin Jo, Jianqiu Zhang,, Shou-Jiang Gao, Yu-Fang Jin, Yidong Chen, and Yufei Huang

TL;DR
This survey reviews 25 deep learning algorithms applied to single-cell RNA sequencing data, providing a unified framework and comparison to guide researchers in selecting suitable methods for various analysis steps.
Contribution
It offers a comprehensive comparison and unified mathematical representation of DL models for scRNA-seq analysis, aiding method selection and inspiring future innovations.
Findings
Unified framework for VAEs, autoencoders, GANs in scRNA-seq
Comparison of training strategies and loss functions
Guidelines for choosing algorithms per analysis step
Abstract
Since its selection as the method of the year in 2013, single-cell technologies have become mature enough to provide answers to complex research questions. With the growth of single-cell profiling technologies, there has also been a significant increase in data collected from single-cell profilings, resulting in computational challenges to process these massive and complicated datasets. To address these challenges, deep learning (DL) is positioning as a competitive alternative for single-cell analyses besides the traditional machine learning approaches. Here we present a processing pipeline of single-cell RNA-seq data, survey a total of 25 DL algorithms and their applicability for a specific step in the processing pipeline. Specifically, we establish a unified mathematical representation of all variational autoencoder, autoencoder, and generative adversarial network models, compare the…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Extracellular vesicles in disease · Cell Image Analysis Techniques
