CITL uses transfer learning with pseudo-labelling and comorbidity mechanisms in an encoder-decoder setup to reach 76.32% accuracy on ASD and 73.15% on ADHD from fMRI, outperforming prior transfer learning baselines.
The autism brain imaging data exchange: towards a large-scale evaluation of the intrinsic brain architecture in autism
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Comorbidity-Informed Transfer Learning for Neuro-developmental Disorder Diagnosis
CITL uses transfer learning with pseudo-labelling and comorbidity mechanisms in an encoder-decoder setup to reach 76.32% accuracy on ASD and 73.15% on ADHD from fMRI, outperforming prior transfer learning baselines.