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

Wulan, N., An, L., Zhang, C., Kong, R., Chen, P., Bzdok, D., Eickhoff, S. B., Holmes, A. J., Yeo, B. T. T.

biorxiv · 2024

Abstract

Individualized phenotypic prediction based on structural 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), Human Connectome Project Young Adults (HCP-YA) dataset (N = 1,017) and 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, as well as 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.

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Provenance

Source
bioRxiv
DOI
10.1101/2023.12.31.573801
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2026-05-31 MST

Cite this

APA
N., W., L., A., C., Z., R., K., P., C., D., B., B., E.S., J., H.A., &amp; T., Y.B.T. (2024). Translating phenotypic prediction models from big to small anatomical MRI data using meta-matching. <em>biorxiv</em>. https://doi.org/10.1101/2023.12.31.573801
Vancouver
N. W, L. A, C. Z, R. K, P. C, D. B, et al. Translating phenotypic prediction models from big to small anatomical MRI data using meta-matching. biorxiv. 2024. doi:10.1101/2023.12.31.573801.
BibTeX
@unpublished{wulan2024Transl, title = {Translating phenotypic prediction models from big to small anatomical MRI data using meta-matching}, author = {Wulan, N. and An, L. and Zhang, C. and Kong, R. and Chen, P. and Bzdok, D. and Eickhoff, S. B. and Holmes, A. J. and Yeo, B. T. T.}, journal = {biorxiv}, year = {2024}, doi = {10.1101/2023.12.31.573801}, }

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