Translating phenotypic prediction models from big to small anatomical MRI data using meta-matching

Author:

Wulan Naren123,An Lijun123,Zhang Chen123,Kong Ru123,Chen Pansheng123,Bzdok Danilo45,Eickhoff Simon B.67,Holmes Avram J.8,Yeo B.T. Thomas12391011

Affiliation:

1. Centre for Sleep & Cognition & Centre for Translational Magnetic Resonance Research, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore

2. Department of Electrical and Computer Engineering, National University of Singapore, Singapore, Singapore

3. N.1 Institute for Health, National University of Singapore, Singapore, Singapore

4. Department of Biomedical Engineering, McConnell Brain Imaging Centre (BIC), Montreal Neurological Institute (MNI), Faculty of Medicine, School of Computer Science, McGill University, Montreal QC, Canada

5. Mila – Quebec Artificial Intelligence Institute, Montreal, QC, Canada

6. Institute for Systems Neuroscience, Medical Faculty, Heinrich-Heine University Düsseldorf, Düsseldorf, Germany

7. Institute of Neuroscience and Medicine, Brain & Behavior (INM-7), Research Center Jülich, Jülich, Germany

8. Department of Psychiatry, Brain Health Institute, Rutgers University, Piscataway, NJ, United States

9. Integrative Sciences and Engineering Programme (ISEP), National University of Singapore, Singapore, Singapore

10. Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Charlestown, MA, United States

11. Department of Medicine, Human Potential Translational Research Programme & Institute for Digital Medicine (WisDM), Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore

Abstract

Abstract Individualized phenotypic prediction based on structural magnetic resonance imaging (MRI) is an important goal in neuroscience. Prediction performance increases with larger samples, but small-scale datasets with fewer than 200 participants are often unavoidable. We have previously proposed a “meta-matching” framework to translate models trained from large datasets to improve the prediction of new unseen phenotypes in small collection efforts. Meta-matching exploits correlations between phenotypes, yielding large improvement over classical machine learning when applied to prediction models using resting-state functional connectivity as input features. Here, we adapt the two best performing meta-matching variants (“meta-matching finetune” and “meta-matching stacking”) from our previous study to work with T1-weighted MRI data by changing the base neural network architecture to a 3D convolution neural network. We compare the two meta-matching variants with elastic net and classical transfer learning using the UK Biobank (N = 36,461), the Human Connectome Project Young Adults (HCP-YA) dataset (N = 1,017), and the HCP-Aging dataset (N = 656). We find that meta-matching outperforms elastic net and classical transfer learning by a large margin, both when translating models within the same dataset and when translating models across datasets with different MRI scanners, acquisition protocols, and demographics. For example, when translating a UK Biobank model to 100 HCP-YA participants, meta-matching finetune yielded a 136% improvement in variance explained over transfer learning, with an average absolute gain of 2.6% (minimum = –0.9%, maximum = 17.6%) across 35 phenotypes. Overall, our results highlight the versatility of the meta-matching framework.

Publisher

MIT Press

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