FedHarmony: unlearning scanner bias with distributed data
The ability to combine data across scanners and studies is vital for neuroimaging, to increase both statistical power and the representation of biological variability. However, combining datasets across sites leads to two challenges: first, an increase in undesirable non-biological variance due to s...
Main Authors: | Dinsdale, N, Jenkinson, M, Namburete, A |
---|---|
Format: | Conference item |
Language: | English |
Published: |
Springer
2022
|
Similar Items
-
Unlearning scanner bias for MRI harmonisation
by: Dinsdale, NK, et al.
Published: (2020) -
Unlearning scanner bias for MRI harmonisation in medical image segmentation
by: Dinsdale, NK, et al.
Published: (2020) -
Deep learning-based unlearning of dataset bias for MRI harmonisation and confound removal.
by: Dinsdale, NK, et al.
Published: (2020) -
Deep learning-based unlearning of dataset bias for MRI harmonisation and confound removal
by: Nicola K. Dinsdale, et al.
Published: (2021-03-01) -
SFHarmony: source free domain adaptation for distributed neuroimaging analysis
by: Dinsdale, NK, et al.
Published: (2024)