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Joint embedding: A scalable alignment to compare individuals in a connectivity space
Author(s) -
KarlHeinz Nenning,
Ting Xu,
Ernst Schwartz,
Jesús Arroyo,
Adelheid Wöehrer,
Alexandre R. Franco,
Joshua T. Vogelstein,
Daniel S. Margulies,
Hesheng Liu,
Jonathan Smallwood,
Michael P. Milham,
Georg Langs
Publication year - 2020
Publication title -
neuroimage
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.259
H-Index - 364
eISSN - 1095-9572
pISSN - 1053-8119
DOI - 10.1016/j.neuroimage.2020.117232
Subject(s) - embedding , human connectome project , computer science , connectome , dimensionality reduction , artificial intelligence , scalability , space (punctuation) , resting state fmri , joint (building) , functional connectivity , pattern recognition (psychology) , machine learning , neuroscience , psychology , architectural engineering , database , engineering , operating system
A common coordinate space enabling comparison across individuals is vital to understanding human brain organization and individual differences. By leveraging dimensionality reduction algorithms, high-dimensional fMRI data can be represented in a low-dimensional space to characterize individual features. Such a representative space encodes the functional architecture of individuals and enables the observation of functional changes across time. However, determining comparable functional features across individuals in resting-state fMRI in a way that simultaneously preserves individual-specific connectivity structure can be challenging. In this work we propose scalable joint embedding to simultaneously embed multiple individual brain connectomes within a common space that allows individual representations across datasets to be aligned. Using Human Connectome Project data, we evaluated the joint embedding approach by comparing it to the previously established orthonormal alignment model. Alignment using joint embedding substantially increased the similarity of functional representations across individuals while simultaneously capturing their distinct profiles, allowing individuals to be more discriminable from each other. Additionally, we demonstrated that the common space established using resting-state fMRI provides a better overlap of task-activation across participants. Finally, in a more challenging scenario - alignment across a lifespan cohort aged from 6 to 85 - joint embedding provided a better prediction of age (r2 = 0.65) than the prior alignment model. It facilitated the characterization of functional trajectories across lifespan. Overall, these analyses establish that joint embedding can simultaneously capture individual neural representations in a common connectivity space aligning functional data across participants and populations and preserve individual specificity.

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