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The input is assumed to be two time x vertices datasets, one is denoted as subject and second as target. It is highly recommened that the input is normalized to have unit varaince. If not, BrainSync will throw a warning and do the normalization internally. Before returning the outputs, the means for each time series will be added back and varaince rescaled back to its original value. However, we recommend doing the normalization using the function normalize_data.m. |
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The input | === Python === The matlab source code for BrainSync can be downloaded here. |
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Download | |
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1. AA Joshi, M Chong, RM Leahy, BrainSync: An Orthogonal Transformation for Synchronization of fMRI Data Across Subjects,, Proc. MICCAI 2017, in press. '''[[https://www.dropbox.com/s/tu4kuqqlg6r02kt/brainsync_miccai2017.pdf?dl=0|PDF]]''' | 1. AA Joshi, M Chong, RM Leahy, BrainSync: An Orthogonal Transformation for Synchronization of fMRI Data Across Subjects, Proc. MICCAI 2017, in press. '''[[https://www.dropbox.com/s/tu4kuqqlg6r02kt/brainsync_miccai2017.pdf?dl=0|PDF]]''' 1. AA Joshi, M Chong, RM Leahy, BrainSync: An Orthogonal Transformation for Synchronization of fMRI Data Across Subjects, OHBM 2017, '''[[https://ww5.aievolution.com/hbm1701/index.cfm?do=abs.viewAbs&abs=1650|Abstract]], [[https://files.aievolution.com/hbm1701/abstracts/38388/3966_Joshi.pdf|eposter]]''' |
BrainSync
Brief Description
BrainSync is an orthogonal transformation that allows direct comparison of resting fMRI (rfMRI) time series across subjects. For this purpose, we exploit the geometry of the rfMRI signal space to conjecture the existence of anorthogonal transformation that synchronizes fMRI time series across ses-sions and subjects. The method is based on the observation that rfMRIdata exhibit similar connectivity patterns across subjects, as reflected inthe pairwise correlations between different brain regions. The orthogonal transformation that performs the synchronization is unique, invertible, efficient to compute, and preserves the connectivity structure of theoriginal data for all subjects. Similarly to image registration, where wespatially align the anatomical brain images, this synchronization of brainsignals across a population or within subject across sessions facilitates longitudinal and cross-sectional studies of rfMRI data.
Software
The input is assumed to be two time x vertices datasets, one is denoted as subject and second as target. It is highly recommened that the input is normalized to have unit varaince. If not, BrainSync will throw a warning and do the normalization internally. Before returning the outputs, the means for each time series will be added back and varaince rescaled back to its original value. However, we recommend doing the normalization using the function normalize_data.m.
Matlab
The matlab source code for BrainSync can be downloaded here.
Download
Python
The matlab source code for BrainSync can be downloaded here.
Download