Literature DB >> 31591579

Exploring single-cell data with deep multitasking neural networks.

Matthew Amodio1, David van Dijk1,2, Krishnan Srinivasan1, Guy Wolf3,4, Smita Krishnaswamy5,6, William S Chen7, Hussein Mohsen8, Kevin R Moon9, Allison Campbell7, Yujiao Zhao10, Xiaomei Wang10, Manjunatha Venkataswamy11, Anita Desai11, V Ravi11, Priti Kumar12, Ruth Montgomery10.   

Abstract

It is currently challenging to analyze single-cell data consisting of many cells and samples, and to address variations arising from batch effects and different sample preparations. For this purpose, we present SAUCIE, a deep neural network that combines parallelization and scalability offered by neural networks, with the deep representation of data that can be learned by them to perform many single-cell data analysis tasks. Our regularizations (penalties) render features learned in hidden layers of the neural network interpretable. On large, multi-patient datasets, SAUCIE's various hidden layers contain denoised and batch-corrected data, a low-dimensional visualization and unsupervised clustering, as well as other information that can be used to explore the data. We analyze a 180-sample dataset consisting of 11 million T cells from dengue patients in India, measured with mass cytometry. SAUCIE can batch correct and identify cluster-based signatures of acute dengue infection and create a patient manifold, stratifying immune response to dengue.

Entities:  

Mesh:

Year:  2019        PMID: 31591579     DOI: 10.1038/s41592-019-0576-7

Source DB:  PubMed          Journal:  Nat Methods        ISSN: 1548-7091            Impact factor:   28.547


  53 in total

1.  Harmonic Alignment.

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3.  MARS: discovering novel cell types across heterogeneous single-cell experiments.

Authors:  Maria Brbić; Marinka Zitnik; Sheng Wang; Angela O Pisco; Russ B Altman; Spyros Darmanis; Jure Leskovec
Journal:  Nat Methods       Date:  2020-10-19       Impact factor: 28.547

4.  Deep learning for inferring gene relationships from single-cell expression data.

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Journal:  Proc Natl Acad Sci U S A       Date:  2019-12-10       Impact factor: 11.205

Review 5.  Machine learning: its challenges and opportunities in plant system biology.

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Journal:  Appl Microbiol Biotechnol       Date:  2022-05-16       Impact factor: 4.813

Review 6.  Use of Single-Cell -Omic Technologies to Study the Gastrointestinal Tract and Diseases, From Single Cell Identities to Patient Features.

Authors:  Mirazul Islam; Bob Chen; Jeffrey M Spraggins; Ryan T Kelly; Ken S Lau
Journal:  Gastroenterology       Date:  2020-05-14       Impact factor: 22.682

7.  Deep generative model embedding of single-cell RNA-Seq profiles on hyperspheres and hyperbolic spaces.

Authors:  Jiarui Ding; Aviv Regev
Journal:  Nat Commun       Date:  2021-05-05       Impact factor: 14.919

8.  G2S3: A gene graph-based imputation method for single-cell RNA sequencing data.

Authors:  Weimiao Wu; Yunqing Liu; Qile Dai; Xiting Yan; Zuoheng Wang
Journal:  PLoS Comput Biol       Date:  2021-05-18       Impact factor: 4.475

Review 9.  Single-Cell RNA-Seq Technologies and Computational Analysis Tools: Application in Cancer Research.

Authors:  Qianqian Song; Liang Liu
Journal:  Methods Mol Biol       Date:  2022

10.  Adversarial deconfounding autoencoder for learning robust gene expression embeddings.

Authors:  Ayse B Dincer; Joseph D Janizek; Su-In Lee
Journal:  Bioinformatics       Date:  2020-12-30       Impact factor: 6.937

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