BrainATCL: Adaptive Temporal Brain Connectivity Learning for Functional Link Prediction and Age Estimation
- URL: http://arxiv.org/abs/2508.07106v1
- Date: Sat, 09 Aug 2025 21:18:25 GMT
- Title: BrainATCL: Adaptive Temporal Brain Connectivity Learning for Functional Link Prediction and Age Estimation
- Authors: Yiran Huang, Amirhossein Nouranizadeh, Christine Ahrends, Mengjia Xu,
- Abstract summary: We propose BrainATCL, an unsupervised, nonparametric framework for adaptive temporal brain connectivity learning.<n>Our method dynamically adjusts the lookback window for each snapshot based on the rate of newly added edges.<n>Graph sequences are encoded using a GINE-Mamba2 backbone to learn spatial-temporal representations of dynamic functional connectivity in resting-state fMRI data.
- Score: 0.33748750222488655
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Functional Magnetic Resonance Imaging (fMRI) is an imaging technique widely used to study human brain activity. fMRI signals in areas across the brain transiently synchronise and desynchronise their activity in a highly structured manner, even when an individual is at rest. These functional connectivity dynamics may be related to behaviour and neuropsychiatric disease. To model these dynamics, temporal brain connectivity representations are essential, as they reflect evolving interactions between brain regions and provide insight into transient neural states and network reconfigurations. However, conventional graph neural networks (GNNs) often struggle to capture long-range temporal dependencies in dynamic fMRI data. To address this challenge, we propose BrainATCL, an unsupervised, nonparametric framework for adaptive temporal brain connectivity learning, enabling functional link prediction and age estimation. Our method dynamically adjusts the lookback window for each snapshot based on the rate of newly added edges. Graph sequences are subsequently encoded using a GINE-Mamba2 backbone to learn spatial-temporal representations of dynamic functional connectivity in resting-state fMRI data of 1,000 participants from the Human Connectome Project. To further improve spatial modeling, we incorporate brain structure and function-informed edge attributes, i.e., the left/right hemispheric identity and subnetwork membership of brain regions, enabling the model to capture biologically meaningful topological patterns. We evaluate our BrainATCL on two tasks: functional link prediction and age estimation. The experimental results demonstrate superior performance and strong generalization, including in cross-session prediction scenarios.
Related papers
- Voxel-Level Brain States Prediction Using Swin Transformer [65.9194533414066]
We propose a novel architecture which employs a 4D Shifted Window (Swin) Transformer as encoder to efficiently learn-temporal information and a convolutional decoder to enable brain state prediction at the same spatial and temporal resolution as the input fMRI data.<n>Our model has shown high accuracy when predicting 7.2s resting-state brain activities based on the prior 23.04s fMRI time series.<n>This shows promising evidence that thetemporal organization of the human brain can be learned by a Swin Transformer model, at high resolution, which provides a potential for reducing fMRI scan time and the development of brain-computer interfaces
arXiv Detail & Related papers (2025-06-13T04:14:38Z) - BrainMAP: Learning Multiple Activation Pathways in Brain Networks [77.15180533984947]
We introduce a novel framework BrainMAP to learn Multiple Activation Pathways in Brain networks.<n>Our framework enables explanatory analyses of crucial brain regions involved in tasks.
arXiv Detail & Related papers (2024-12-23T09:13:35Z) - BrainMAE: A Region-aware Self-supervised Learning Framework for Brain Signals [11.030708270737964]
We propose Brain Masked Auto-Encoder (BrainMAE) for learning representations directly from fMRI time-series data.
BrainMAE consistently outperforms established baseline methods by significant margins in four distinct downstream tasks.
arXiv Detail & Related papers (2024-06-24T19:16:24Z) - Interpretable Spatio-Temporal Embedding for Brain Structural-Effective Network with Ordinary Differential Equation [56.34634121544929]
In this study, we first construct the brain-effective network via the dynamic causal model.
We then introduce an interpretable graph learning framework termed Spatio-Temporal Embedding ODE (STE-ODE)
This framework incorporates specifically designed directed node embedding layers, aiming at capturing the dynamic interplay between structural and effective networks.
arXiv Detail & Related papers (2024-05-21T20:37:07Z) - DSAM: A Deep Learning Framework for Analyzing Temporal and Spatial Dynamics in Brain Networks [4.041732967881764]
Most rs-fMRI studies compute a single static functional connectivity matrix across brain regions of interest.
These approaches are at risk of oversimplifying brain dynamics and lack proper consideration of the goal at hand.
We propose a novel interpretable deep learning framework that learns goal-specific functional connectivity matrix directly from time series.
arXiv Detail & Related papers (2024-05-19T23:35:06Z) - Joint fMRI Decoding and Encoding with Latent Embedding Alignment [77.66508125297754]
We introduce a unified framework that addresses both fMRI decoding and encoding.
Our model concurrently recovers visual stimuli from fMRI signals and predicts brain activity from images within a unified framework.
arXiv Detail & Related papers (2023-03-26T14:14:58Z) - 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) - Deep Representations for Time-varying Brain Datasets [4.129225533930966]
This paper builds an efficient graph neural network model that incorporates both region-mapped fMRI sequences and structural connectivities as inputs.
We find good representations of the latent brain dynamics through learning sample-level adaptive adjacency matrices.
These modules can be easily adapted to and are potentially useful for other applications outside the neuroscience domain.
arXiv Detail & Related papers (2022-05-23T21:57:31Z) - Functional2Structural: Cross-Modality Brain Networks Representation
Learning [55.24969686433101]
Graph mining on brain networks may facilitate the discovery of novel biomarkers for clinical phenotypes and neurodegenerative diseases.
We propose a novel graph learning framework, known as Deep Signed Brain Networks (DSBN), with a signed graph encoder.
We validate our framework on clinical phenotype and neurodegenerative disease prediction tasks using two independent, publicly available datasets.
arXiv Detail & Related papers (2022-05-06T03:45:36Z) - Learning Dynamic Graph Representation of Brain Connectome with
Spatio-Temporal Attention [33.049423523704824]
We propose STAGIN, a method for learning dynamic graph representation of the brain connectome with temporal attention.
Experiments on the HCP-Rest and the HCP-Task datasets demonstrate exceptional performance of our proposed method.
arXiv Detail & Related papers (2021-05-27T23:06:50Z) - Spatio-Temporal Graph Convolution for Resting-State fMRI Analysis [11.85489505372321]
We train a-temporal graph convolutional network (ST-GCN) on short sub-sequences of the BOLD time series to model the non-stationary nature of functional connectivity.
St-GCN is significantly more accurate than common approaches in predicting gender and age based on BOLD signals.
arXiv Detail & Related papers (2020-03-24T01:56:50Z)
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.