2019
DOI: 10.1038/s41598-019-38798-y
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Cell Identity Codes: Understanding Cell Identity from Gene Expression Profiles using Deep Neural Networks

Abstract: Understanding cell identity is an important task in many biomedical areas. Expression patterns of specific marker genes have been used to characterize some limited cell types, but exclusive markers are not available for many cell types. A second approach is to use machine learning to discriminate cell types based on the whole gene expression profiles (GEPs). The accuracies of simple classification algorithms such as linear discriminators or support vector machines are limited due to the complexity of biologica… Show more

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Cited by 19 publications
(9 citation statements)
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“…Another approach is to use dimensionality reduction techniques to learn a low-dimension latent vector for each node. Various methods exist to find such embeddings, notably neural networks [ 46–48 ], diffusion component analysis [ 49 ] or simply matrix factorization [ 50 ]. This kind of method has been used to classify chemotherapeutic compounds with respect to their mechanism of action [ 51 ].…”
Section: Introductionmentioning
confidence: 99%
“…Another approach is to use dimensionality reduction techniques to learn a low-dimension latent vector for each node. Various methods exist to find such embeddings, notably neural networks [ 46–48 ], diffusion component analysis [ 49 ] or simply matrix factorization [ 50 ]. This kind of method has been used to classify chemotherapeutic compounds with respect to their mechanism of action [ 51 ].…”
Section: Introductionmentioning
confidence: 99%
“…One of the discriminating identification methods is gene expression profiling of cell types. Expression patterns of specific genes may be used as a selective tool to differentiate or identify similar cells ( Abdolhosseini et al, 2019 ). Gene expressions of mesenchymal stromal cells and fibroblasts have been investigated by looking at various numbers of genes.…”
Section: Comparison Of Gene Expressions and Epigenetic Patternsmentioning
confidence: 99%
“…They used drug structures, targets, related enzymes, and gene expression profiles for drug features obtained from DrugBank, PubChem, and CMap. They applied variational autoencoder [209] and stacked autoencoders [265] on drug structures, gene expression data, and ProtVec [266] on protein and enzyme sequences to embed drug-related features. Donner et al [267] also proposed a deep embedding method using LINCS [268] gene expression data.…”
Section: Deep Learning Approachesmentioning
confidence: 99%