You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
Harmonizing MRI data that acquired from multi-scanners may help reduce non-biological bias. ComBat (named for \combining batches") is an empirical Bayesian method for data harmonization that was originallydesigned for genomics (Johnson et al., 2007). It has recently been adapted to neuroimaging studies and applied to diverse data types including diffusion tensor imaging (DTI) (Fortin et al., 2017), cortical thicknesses (Fortinet al., 2018), functional connectivity measurements (Yu et al., 2018), and radiomic features derived from positron emission tomography (PET) imaging (Orlhac et al., 2018).
Details
Programming languages:
Matlab, R
A list of requirements for taking part in the project (education level / English level /all the informat on you consider important for participants)
Chinese: Good 2. Programming languages: R 3. Knowledge related Freesurfer thickness analysis will be good
What participants gain/learn from this project
Hands on MRI morphimical analysis 2. Using R to handle repeated measurement data.
Preferred maximal number of participants:
4
How many non-programming participants can join you during your project, what profession can they be?
2
The text was updated successfully, but these errors were encountered:
Added as an issue for book keeping
Source:
https://brainhack.live/
Leader:
Yinshan Wang
Harmonizing MRI data that acquired from multi-scanners may help reduce non-biological bias. ComBat (named for \combining batches") is an empirical Bayesian method for data harmonization that was originallydesigned for genomics (Johnson et al., 2007). It has recently been adapted to neuroimaging studies and applied to diverse data types including diffusion tensor imaging (DTI) (Fortin et al., 2017), cortical thicknesses (Fortinet al., 2018), functional connectivity measurements (Yu et al., 2018), and radiomic features derived from positron emission tomography (PET) imaging (Orlhac et al., 2018).
Details
Programming languages:
Matlab, R
A list of requirements for taking part in the project (education level / English level /all the informat on you consider important for participants)
What participants gain/learn from this project
Preferred maximal number of participants:
4
How many non-programming participants can join you during your project, what profession can they be?
2
The text was updated successfully, but these errors were encountered: