Multilayer meta-matching: Translating phenotypic prediction models from multiple datasets to small data

Author:

Chen Pansheng1234,An Lijun1234,Wulan Naren1234,Zhang Chen1234,Zhang Shaoshi12345,Ooi Leon Qi Rong12345,Kong Ru1234,Chen Jianzhong1234,Wu Jianxiao67,Chopra Sidhant8,Bzdok Danilo910,Eickhoff Simon B.67,Holmes Avram J.11,Yeo B.T. Thomas1234512

Affiliation:

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

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

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

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

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

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 Psychology, Yale University, New Haven, CT, United States

9. 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

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

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

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

Abstract

Abstract Resting-state functional connectivity (RSFC) is widely used to predict phenotypic traits in individuals. Large sample sizes can significantly improve prediction accuracies. However, for studies of certain clinical populations or focused neuroscience inquiries, small-scale datasets often remain a necessity. We have previously proposed a “meta-matching” approach to translate prediction models from large datasets to predict new phenotypes in small datasets. We demonstrated a large improvement over classical kernel ridge regression (KRR) when translating models from a single source dataset (UK Biobank) to the Human Connectome Project Young Adults (HCP-YA) dataset. In the current study, we propose two meta-matching variants (“meta-matching with dataset stacking” and “multilayer meta-matching”) to translate models from multiple source datasets across disparate sample sizes to predict new phenotypes in small target datasets. We evaluate both approaches by translating models trained from five source datasets (with sample sizes ranging from 862 participants to 36,834 participants) to predict phenotypes in the HCP-YA and HCP-Aging datasets. We find that multilayer meta-matching modestly outperforms meta-matching with dataset stacking. Both meta-matching variants perform better than the original “meta-matching with stacking” approach trained only on the UK Biobank. All meta-matching variants outperform classical KRR and transfer learning by a large margin. In fact, KRR is better than classical transfer learning when less than 50 participants are available for finetuning, suggesting the difficulty of classical transfer learning in the very small sample regime. The multilayer meta-matching model is publicly available at https://github.com/ThomasYeoLab/Meta_matching_models/tree/main/rs-fMRI/v2.0.

Publisher

MIT Press

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