GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data

Abstract Background Single-cell RNA sequencing analysis faces critical challenges including high dimensionality, sparsity, and complex topological relationships between cells. Current methods struggle to simultaneously preserve global structure, model cellular dynamics, and handle technical noise ef...

Full description

Saved in:
Bibliographic Details
Main Authors: Zeyu Fu, Chunlin Chen, Song Wang, Junping Wang, Shilei Chen
Format: Article
Language:English
Published: BMC 2025-08-01
Series:BMC Genomics
Subjects:
Online Access:https://doi.org/10.1186/s12864-025-11946-7
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849226609976934400
author Zeyu Fu
Chunlin Chen
Song Wang
Junping Wang
Shilei Chen
author_facet Zeyu Fu
Chunlin Chen
Song Wang
Junping Wang
Shilei Chen
author_sort Zeyu Fu
collection DOAJ
description Abstract Background Single-cell RNA sequencing analysis faces critical challenges including high dimensionality, sparsity, and complex topological relationships between cells. Current methods struggle to simultaneously preserve global structure, model cellular dynamics, and handle technical noise effectively. Results We present GNODEVAE, a novel architecture integrating Graph Attention Networks (GAT), Neural Ordinary Differential Equations (NODE), and Variational Autoencoders (VAE) for comprehensive single-cell analysis. Through systematic evaluation across 10 graph convolutional layers, GAT demonstrated optimal performance, achieving average ARI advantages of 0.108 and 0.112 over alternative graph convolutional layers in VGAE and GNODEVAE architectures respectively, along with ASW advantages of 0.047 and 0.098. Extensive comparison across 50 diverse single cell datasets against 18 existing methods demonstrates that GNODEVAE consistently outperforms three major categories of benchmark methods: 8 machine learning dimensionality reduction techniques, 7 deep generative VAE variants, and 3 graph-based and contrastive learning deep predictive models. GNODEVAE achieved average advantages of 0.112 in reconstruction clustering quality (ARI) and 0.113 in clustering geometry quality (ASW) over standard VGAE, with an average ASW advantage of 0.286 over all benchmark methods in clustering geometry quality. In gene dynamics clustering evaluation, GNODEVAE outperformed Diffusion map and Palantir methods across all geometric metrics. Conclusions GNODEVAE establishes a robust computational framework that synergistically combines neighborhood-awareness, dynamic modeling, and probabilistic expressiveness for single-cell multi-omics analysis. The consistent superior performance across diverse datasets demonstrates its effectiveness as a versatile tool for cell clustering, dimensionality reduction, and pseudotime trajectory analysis in both scRNA-seq and scATAC-seq data mining.
format Article
id doaj-art-e02e430dd2cc4cf5a385ba4b16829290
institution Kabale University
issn 1471-2164
language English
publishDate 2025-08-01
publisher BMC
record_format Article
series BMC Genomics
spelling doaj-art-e02e430dd2cc4cf5a385ba4b168292902025-08-24T11:09:48ZengBMCBMC Genomics1471-21642025-08-0126112910.1186/s12864-025-11946-7GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell dataZeyu Fu0Chunlin Chen1Song Wang2Junping Wang3Shilei Chen4State Key Laboratory of Trauma and Chemical Poisoning, Institute of Combined Injury, Chongqing Engineering Research Center for Nanomedicine, College of Preventive Medicine, Army Medical UniversityDepartment of Rehabilitation Medicine, The First Affiliated Hospital, Sun Yat-sen UniversityState Key Laboratory of Trauma and Chemical Poisoning, Institute of Combined Injury, Chongqing Engineering Research Center for Nanomedicine, College of Preventive Medicine, Army Medical UniversityState Key Laboratory of Trauma and Chemical Poisoning, Institute of Combined Injury, Chongqing Engineering Research Center for Nanomedicine, College of Preventive Medicine, Army Medical UniversityState Key Laboratory of Trauma and Chemical Poisoning, Institute of Combined Injury, Chongqing Engineering Research Center for Nanomedicine, College of Preventive Medicine, Army Medical UniversityAbstract Background Single-cell RNA sequencing analysis faces critical challenges including high dimensionality, sparsity, and complex topological relationships between cells. Current methods struggle to simultaneously preserve global structure, model cellular dynamics, and handle technical noise effectively. Results We present GNODEVAE, a novel architecture integrating Graph Attention Networks (GAT), Neural Ordinary Differential Equations (NODE), and Variational Autoencoders (VAE) for comprehensive single-cell analysis. Through systematic evaluation across 10 graph convolutional layers, GAT demonstrated optimal performance, achieving average ARI advantages of 0.108 and 0.112 over alternative graph convolutional layers in VGAE and GNODEVAE architectures respectively, along with ASW advantages of 0.047 and 0.098. Extensive comparison across 50 diverse single cell datasets against 18 existing methods demonstrates that GNODEVAE consistently outperforms three major categories of benchmark methods: 8 machine learning dimensionality reduction techniques, 7 deep generative VAE variants, and 3 graph-based and contrastive learning deep predictive models. GNODEVAE achieved average advantages of 0.112 in reconstruction clustering quality (ARI) and 0.113 in clustering geometry quality (ASW) over standard VGAE, with an average ASW advantage of 0.286 over all benchmark methods in clustering geometry quality. In gene dynamics clustering evaluation, GNODEVAE outperformed Diffusion map and Palantir methods across all geometric metrics. Conclusions GNODEVAE establishes a robust computational framework that synergistically combines neighborhood-awareness, dynamic modeling, and probabilistic expressiveness for single-cell multi-omics analysis. The consistent superior performance across diverse datasets demonstrates its effectiveness as a versatile tool for cell clustering, dimensionality reduction, and pseudotime trajectory analysis in both scRNA-seq and scATAC-seq data mining.https://doi.org/10.1186/s12864-025-11946-7Graph attention networksNeural ordinary differential equationVariational autoencodersClusteringScRNA-seqScATAC-seq
spellingShingle Zeyu Fu
Chunlin Chen
Song Wang
Junping Wang
Shilei Chen
GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data
BMC Genomics
Graph attention networks
Neural ordinary differential equation
Variational autoencoders
Clustering
ScRNA-seq
ScATAC-seq
title GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data
title_full GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data
title_fullStr GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data
title_full_unstemmed GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data
title_short GNODEVAE: a graph-based ODE-VAE enhances clustering for single-cell data
title_sort gnodevae a graph based ode vae enhances clustering for single cell data
topic Graph attention networks
Neural ordinary differential equation
Variational autoencoders
Clustering
ScRNA-seq
ScATAC-seq
url https://doi.org/10.1186/s12864-025-11946-7
work_keys_str_mv AT zeyufu gnodevaeagraphbasedodevaeenhancesclusteringforsinglecelldata
AT chunlinchen gnodevaeagraphbasedodevaeenhancesclusteringforsinglecelldata
AT songwang gnodevaeagraphbasedodevaeenhancesclusteringforsinglecelldata
AT junpingwang gnodevaeagraphbasedodevaeenhancesclusteringforsinglecelldata
AT shileichen gnodevaeagraphbasedodevaeenhancesclusteringforsinglecelldata