Single-cell classification using graph convolutional networks

Abstract Background Analyzing single-cell RNA sequencing (scRNAseq) data plays an important role in understanding the intrinsic and extrinsic cellular processes in biological and biomedical research. One significant effort in this area is the identification of cell types. With the availability of a...

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Main Authors: Tianyu Wang, Jun Bai, Sheida Nabavi
Format: Article
Language:English
Published: BMC 2021-07-01
Series:BMC Bioinformatics
Subjects:
Online Access:https://doi.org/10.1186/s12859-021-04278-2
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spelling doaj-5809dcb01fc1426cbd5411359c38c23e2021-07-11T11:14:46ZengBMCBMC Bioinformatics1471-21052021-07-0122112310.1186/s12859-021-04278-2Single-cell classification using graph convolutional networksTianyu Wang0Jun Bai1Sheida Nabavi2Computer Science and Engineering Department, University of ConnecticutComputer Science and Engineering Department, University of ConnecticutComputer Science and Engineering Department, University of ConnecticutAbstract Background Analyzing single-cell RNA sequencing (scRNAseq) data plays an important role in understanding the intrinsic and extrinsic cellular processes in biological and biomedical research. One significant effort in this area is the identification of cell types. With the availability of a huge amount of single cell sequencing data and discovering more and more cell types, classifying cells into known cell types has become a priority nowadays. Several methods have been introduced to classify cells utilizing gene expression data. However, incorporating biological gene interaction networks has been proved valuable in cell classification procedures. Results In this study, we propose a multimodal end-to-end deep learning model, named sigGCN, for cell classification that combines a graph convolutional network (GCN) and a neural network to exploit gene interaction networks. We used standard classification metrics to evaluate the performance of the proposed method on the within-dataset classification and the cross-dataset classification. We compared the performance of the proposed method with those of the existing cell classification tools and traditional machine learning classification methods. Conclusions Results indicate that the proposed method outperforms other commonly used methods in terms of classification accuracy and F1 scores. This study shows that the integration of prior knowledge about gene interactions with gene expressions using GCN methodologies can extract effective features improving the performance of cell classification.https://doi.org/10.1186/s12859-021-04278-2Single cell RNA sequencingCell classificationDeep learningGraph convolutional neural networkConvolutional neural network
collection DOAJ
language English
format Article
sources DOAJ
author Tianyu Wang
Jun Bai
Sheida Nabavi
spellingShingle Tianyu Wang
Jun Bai
Sheida Nabavi
Single-cell classification using graph convolutional networks
BMC Bioinformatics
Single cell RNA sequencing
Cell classification
Deep learning
Graph convolutional neural network
Convolutional neural network
author_facet Tianyu Wang
Jun Bai
Sheida Nabavi
author_sort Tianyu Wang
title Single-cell classification using graph convolutional networks
title_short Single-cell classification using graph convolutional networks
title_full Single-cell classification using graph convolutional networks
title_fullStr Single-cell classification using graph convolutional networks
title_full_unstemmed Single-cell classification using graph convolutional networks
title_sort single-cell classification using graph convolutional networks
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2021-07-01
description Abstract Background Analyzing single-cell RNA sequencing (scRNAseq) data plays an important role in understanding the intrinsic and extrinsic cellular processes in biological and biomedical research. One significant effort in this area is the identification of cell types. With the availability of a huge amount of single cell sequencing data and discovering more and more cell types, classifying cells into known cell types has become a priority nowadays. Several methods have been introduced to classify cells utilizing gene expression data. However, incorporating biological gene interaction networks has been proved valuable in cell classification procedures. Results In this study, we propose a multimodal end-to-end deep learning model, named sigGCN, for cell classification that combines a graph convolutional network (GCN) and a neural network to exploit gene interaction networks. We used standard classification metrics to evaluate the performance of the proposed method on the within-dataset classification and the cross-dataset classification. We compared the performance of the proposed method with those of the existing cell classification tools and traditional machine learning classification methods. Conclusions Results indicate that the proposed method outperforms other commonly used methods in terms of classification accuracy and F1 scores. This study shows that the integration of prior knowledge about gene interactions with gene expressions using GCN methodologies can extract effective features improving the performance of cell classification.
topic Single cell RNA sequencing
Cell classification
Deep learning
Graph convolutional neural network
Convolutional neural network
url https://doi.org/10.1186/s12859-021-04278-2
work_keys_str_mv AT tianyuwang singlecellclassificationusinggraphconvolutionalnetworks
AT junbai singlecellclassificationusinggraphconvolutionalnetworks
AT sheidanabavi singlecellclassificationusinggraphconvolutionalnetworks
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