Brain Multigraph Prediction using Topology-Aware Adversarial Graph
Neural Network
- URL: http://arxiv.org/abs/2105.02565v1
- Date: Thu, 6 May 2021 10:20:45 GMT
- Title: Brain Multigraph Prediction using Topology-Aware Adversarial Graph
Neural Network
- Authors: Alaa Bessadok and Mohamed Ali Mahjoub and Islem Rekik
- Abstract summary: We introduce topoGAN architecture, which jointly predicts multiple brain graphs from a single brain graph.
Our three key innovations are: (i) designing a novel graph adversarial auto-encoder for predicting multiple brain graphs from a single one, (ii) clustering the encoded source graphs in order to handle the mode collapse issue of GAN and (iii) introducing a topological loss to force the prediction of topologically sound target brain graphs.
- Score: 1.6114012813668934
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Brain graphs (i.e, connectomes) constructed from medical scans such as
magnetic resonance imaging (MRI) have become increasingly important tools to
characterize the abnormal changes in the human brain. Due to the high
acquisition cost and processing time of multimodal MRI, existing deep learning
frameworks based on Generative Adversarial Network (GAN) focused on predicting
the missing multimodal medical images from a few existing modalities. While
brain graphs help better understand how a particular disorder can change the
connectional facets of the brain, synthesizing a target brain multigraph (i.e,
multiple brain graphs) from a single source brain graph is strikingly lacking.
Additionally, existing graph generation works mainly learn one model for each
target domain which limits their scalability in jointly predicting multiple
target domains. Besides, while they consider the global topological scale of a
graph (i.e., graph connectivity structure), they overlook the local topology at
the node scale (e.g., how central a node is in the graph). To address these
limitations, we introduce topology-aware graph GAN architecture (topoGAN),
which jointly predicts multiple brain graphs from a single brain graph while
preserving the topological structure of each target graph. Its three key
innovations are: (i) designing a novel graph adversarial auto-encoder for
predicting multiple brain graphs from a single one, (ii) clustering the encoded
source graphs in order to handle the mode collapse issue of GAN and proposing a
cluster-specific decoder, (iii) introducing a topological loss to force the
prediction of topologically sound target brain graphs. The experimental results
using five target domains demonstrated the outperformance of our method in
brain multigraph prediction from a single graph in comparison with baseline
approaches.
Related papers
- Topology-Aware Graph Augmentation for Predicting Clinical Trajectories in Neurocognitive Disorders [27.280927277680515]
We propose a topology-aware graph augmentation (TGA) framework, comprising a pretext model to train a generalizable encoder and a task-specific model to perform downstream tasks.
Experiments on 1, 688 fMRI scans suggest that TGA outperforms several state-of-the-art methods.
arXiv Detail & Related papers (2024-10-31T19:37:20Z) - Graph Residual Noise Learner Network for Brain Connectivity Graph Prediction [1.9116784879310031]
A morphological brain graph depicting a connectional fingerprint is of paramount importance for charting brain dysconnectivity patterns.
We propose the Graph Residual Noise Learner Network (Grenol-Net), the first graph diffusion model for predicting a target graph from a source graph.
arXiv Detail & Related papers (2024-09-30T17:28:38Z) - Graph Neural Networks for Brain Graph Learning: A Survey [53.74244221027981]
Graph neural networks (GNNs) have demonstrated a significant advantage in mining graph-structured data.
GNNs to learn brain graph representations for brain disorder analysis has recently gained increasing attention.
In this paper, we aim to bridge this gap by reviewing brain graph learning works that utilize GNNs.
arXiv Detail & Related papers (2024-06-01T02:47:39Z) - A Comparative Study of Population-Graph Construction Methods and Graph
Neural Networks for Brain Age Regression [48.97251676778599]
In medical imaging, population graphs have demonstrated promising results, mostly for classification tasks.
extracting population graphs is a non-trivial task and can significantly impact the performance of Graph Neural Networks (GNNs)
In this work, we highlight the importance of a meaningful graph construction and experiment with different population-graph construction methods.
arXiv Detail & Related papers (2023-09-26T10:30:45Z) - DBGDGM: Dynamic Brain Graph Deep Generative Model [63.23390833353625]
Graphs are a natural representation of brain activity derived from functional magnetic imaging (fMRI) data.
It is well known that clusters of anatomical brain regions, known as functional connectivity networks (FCNs), encode temporal relationships which can serve as useful biomarkers for understanding brain function and dysfunction.
Previous works, however, ignore the temporal dynamics of the brain and focus on static graphs.
We propose a dynamic brain graph deep generative model (DBGDGM) which simultaneously clusters brain regions into temporally evolving communities and learns dynamic unsupervised node embeddings.
arXiv Detail & Related papers (2023-01-26T20:45:30Z) - DynDepNet: Learning Time-Varying Dependency Structures from fMRI Data
via Dynamic Graph Structure Learning [58.94034282469377]
We propose DynDepNet, a novel method for learning the optimal time-varying dependency structure of fMRI data induced by downstream prediction tasks.
Experiments on real-world fMRI datasets, for the task of sex classification, demonstrate that DynDepNet achieves state-of-the-art results.
arXiv Detail & Related papers (2022-09-27T16:32:11Z) - Contrastive Brain Network Learning via Hierarchical Signed Graph Pooling
Model [64.29487107585665]
Graph representation learning techniques on brain functional networks can facilitate the discovery of novel biomarkers for clinical phenotypes and neurodegenerative diseases.
Here, we propose an interpretable hierarchical signed graph representation learning model to extract graph-level representations from brain functional networks.
In order to further improve the model performance, we also propose a new strategy to augment functional brain network data for contrastive learning.
arXiv Detail & Related papers (2022-07-14T20:03:52Z) - Self-Supervised Graph Representation Learning for Neuronal Morphologies [75.38832711445421]
We present GraphDINO, a data-driven approach to learn low-dimensional representations of 3D neuronal morphologies from unlabeled datasets.
We show, in two different species and across multiple brain areas, that this method yields morphological cell type clusterings on par with manual feature-based classification by experts.
Our method could potentially enable data-driven discovery of novel morphological features and cell types in large-scale datasets.
arXiv Detail & Related papers (2021-12-23T12:17:47Z) - StairwayGraphNet for Inter- and Intra-modality Multi-resolution Brain
Graph Alignment and Synthesis [1.6114012813668934]
We propose a multi-resolution StairwayGraphNet (SG-Net) framework to infer a target graph modality based on a given modality and super-resolve brain graphs in both inter and intra domains.
Our SG-Net is grounded in three main contributions: (i) predicting a target graph from a source one based on a novel graph generative adversarial network in both inter and intra domains, (ii) generating high-resolution brain graphs without resorting to the time consuming and expensive MRI processing steps, and (iii) enforcing the source distribution to match that of the ground truth graphs.
arXiv Detail & Related papers (2021-10-06T09:49:38Z) - Non-isomorphic Inter-modality Graph Alignment and Synthesis for Holistic
Brain Mapping [1.433758865948252]
We propose an inter-modality aligner of non-isomorphic graphs (IMANGraphNet) framework to infer a target graph modality based on a given modality.
Our three core contributions lie in (i) predicting a target graph (e.g., functional) from a source graph (e.g., morphological) based on a novel graph generative adversarial network (gGAN)
Our comprehensive experiments on predicting functional from morphological graphs demonstrate the outperformance of IMANGraphNet in comparison with its variants.
arXiv Detail & Related papers (2021-06-30T08:59:55Z) - Topology-Aware Generative Adversarial Network for Joint Prediction of
Multiple Brain Graphs from a Single Brain Graph [1.2891210250935146]
We introduce MultiGraphGAN architecture, which predicts multiple brain graphs from a single brain graph.
Its three core contributions lie in: (i) designing a graph adversarial auto-encoder for jointly predicting brain graphs from a single one, (ii) handling the mode collapse problem of GAN by clustering the encoded source graphs and proposing a cluster-specific decoder.
arXiv Detail & Related papers (2020-09-23T11:23:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.