Robust brain age estimation from structural MRI with contrastive learning
- URL: http://arxiv.org/abs/2507.01794v1
- Date: Wed, 02 Jul 2025 15:18:03 GMT
- Title: Robust brain age estimation from structural MRI with contrastive learning
- Authors: Carlo Alberto Barbano, Benoit Dufumier, Edouard Duchesnay, Marco Grangetto, Pietro Gori,
- Abstract summary: Estimating brain age from structural MRI has emerged as a powerful tool for characterizing normative and pathological aging.<n>We introduce a novel contrastive loss function, $mathcalLexp$, and evaluate it across multiple public neuroimaging datasets.
- Score: 8.439245091011358
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Estimating brain age from structural MRI has emerged as a powerful tool for characterizing normative and pathological aging. In this work, we explore contrastive learning as a scalable and robust alternative to supervised approaches for brain age estimation. We introduce a novel contrastive loss function, $\mathcal{L}^{exp}$, and evaluate it across multiple public neuroimaging datasets comprising over 20,000 scans. Our experiments reveal four key findings. First, scaling pre-training on diverse, multi-site data consistently improves generalization performance, cutting external mean absolute error (MAE) nearly in half. Second, $\mathcal{L}^{exp}$ is robust to site-related confounds, maintaining low scanner-predictability as training size increases. Third, contrastive models reliably capture accelerated aging in patients with cognitive impairment and Alzheimer's disease, as shown through brain age gap analysis, ROC curves, and longitudinal trends. Lastly, unlike supervised baselines, $\mathcal{L}^{exp}$ maintains a strong correlation between brain age accuracy and downstream diagnostic performance, supporting its potential as a foundation model for neuroimaging. These results position contrastive learning as a promising direction for building generalizable and clinically meaningful brain representations.
Related papers
- Explainable Brain Age Gap Prediction in Neurodegenerative Conditions using coVariance Neural Networks [94.06526659234756]
Black-box machine learning approaches to brain age gap prediction have limited practical utility.<n>We apply the VNN-based approach to study brain age gap using cortical thickness features for various prevalent neurodegenerative conditions.<n>Our results reveal distinct anatomic patterns for brain age gap in Alzheimer's disease, frontotemporal dementia, and atypical Parkinsonian disorders.
arXiv Detail & Related papers (2025-01-02T19:37:09Z) - Enhancing Brain Age Estimation with a Multimodal 3D CNN Approach Combining Structural MRI and AI-Synthesized Cerebral Blood Volume Data [14.815462507141163]
Brain Age Gap Estimation (BrainAGE) offers a neuroimaging biomarker for understanding brain age.<n>Current approaches primarily use T1-weighted magnetic resonance imaging (T1w MRI) data, capturing only structural brain information.<n>We developed a deep learning model using a VGG-based architecture for both modalities and combined their predictions using linear regression.<n>Our model achieved a mean absolute error (MAE) of 3.95 years and an $R2$ of 0.943 on the test set, outperforming existing models trained on similar data.
arXiv Detail & Related papers (2024-12-01T21:54:08Z) - SynthBA: Reliable Brain Age Estimation Across Multiple MRI Sequences and Resolutions [4.543154658281538]
The gap between brain age and chronological age, referred to as brain PAD (Predicted Age Difference), has been utilized to investigate neurodegenerative conditions.
Brain age can be predicted using MRIs and machine learning techniques.
We introduce Synthetic Brain Age ( SynthBA), a robust deep-learning model designed for predicting brain age.
arXiv Detail & Related papers (2024-06-01T08:58:40Z) - Dual Graph Attention based Disentanglement Multiple Instance Learning for Brain Age Estimation [24.548441213107566]
We propose a Dual Graph Attention based Disentanglement Multi-instance Learning (DGA-DMIL) framework for improving brain age estimation.
A dual graph attention aggregator is then proposed to learn the backbone features by exploiting the intra- and inter-instance relationships.
Our proposed model demonstrates exceptional accuracy in estimating brain age, achieving a remarkable mean absolute error of 2.12 years in the UK Biobank.
arXiv Detail & Related papers (2024-03-02T16:13:06Z) - Towards a Foundation Model for Brain Age Prediction using coVariance
Neural Networks [102.75954614946258]
Increasing brain age with respect to chronological age can reflect increased vulnerability to neurodegeneration and cognitive decline.
NeuroVNN is pre-trained as a regression model on healthy population to predict chronological age.
NeuroVNN adds anatomical interpretability to brain age and has a scale-free' characteristic that allows its transference to datasets curated according to any arbitrary brain atlas.
arXiv Detail & Related papers (2024-02-12T14:46:31Z) - Explainable Brain Age Prediction using coVariance Neural Networks [94.81523881951397]
We propose an explanation-driven and anatomically interpretable framework for brain age prediction using cortical thickness features.
Specifically, our brain age prediction framework extends beyond the coarse metric of brain age gap in Alzheimer's disease (AD)
We make two important observations: VNNs can assign anatomical interpretability to elevated brain age gap in AD by identifying contributing brain regions.
arXiv Detail & Related papers (2023-05-27T22:28:25Z) - Unsupervised Anomaly Detection in 3D Brain MRI using Deep Learning with
Multi-Task Brain Age Prediction [53.122045119395594]
Unsupervised anomaly detection (UAD) in brain MRI with deep learning has shown promising results.
We propose deep learning for UAD in 3D brain MRI considering additional age information.
Based on our analysis, we propose a novel deep learning approach for UAD with multi-task age prediction.
arXiv Detail & Related papers (2022-01-31T09:39:52Z) - Brain Age Estimation From MRI Using Cascade Networks with Ranking Loss [75.03117866578913]
A novel 3D convolutional network, called two-stage-age-network (TSAN), is proposed to estimate brain age from T1-weighted MRI data.
Experiments with $6586$ MRIs showed that TSAN could provide accurate brain age estimation.
arXiv Detail & Related papers (2021-06-06T07:11:25Z) - Patch-based Brain Age Estimation from MR Images [64.66978138243083]
Brain age estimation from Magnetic Resonance Images (MRI) derives the difference between a subject's biological brain age and their chronological age.
Early detection of neurodegeneration manifesting as a higher brain age can potentially facilitate better medical care and planning for affected individuals.
We develop a new deep learning approach that uses 3D patches of the brain as well as convolutional neural networks (CNNs) to develop a localised brain age estimator.
arXiv Detail & Related papers (2020-08-29T11:50:37Z)
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.