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Training data distribution significantly impacts the estimation of tissue microstructure with machine learning.

Noemi G GyoriMarco PalomboChristopher A ClarkHui ZhangDaniel C Alexander
Published in: Magnetic resonance in medicine (2021)
This work highlights that estimation of model parameters using supervised ML depends strongly on the training-set distribution. We show that high precision obtained using ML may mask strong bias, and visual assessment of the parameter maps is not sufficient for evaluating the quality of the estimates.
Keyphrases
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