Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging
data using 3D Convolutional Neural Networks
- URL: http://arxiv.org/abs/2103.11695v1
- Date: Mon, 22 Mar 2021 09:48:34 GMT
- Title: Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging
data using 3D Convolutional Neural Networks
- Authors: Lukas Fisch, Jan Ernsting, Nils R. Winter, Vincent Holstein, Ramona
Leenings, Marie Beisemann, Kelvin Sarink, Daniel Emden, Nils Opel, Ronny
Redlich, Jonathan Repple, Dominik Grotegerd, Susanne Meinert, Niklas Wulms,
Heike Minnerup, Jochen G. Hirsch, Thoralf Niendorf, Beate Endemann, Fabian
Bamberg, Thomas Kr\"oncke, Annette Peters, Robin B\"ulow, Henry V\"olzke,
Oyunbileg von Stackelberg, Ramona Felizitas Sowade, Lale Umutlu, B\"orge
Schmidt, Svenja Caspers, German National Cohort Study Center Consortium,
Harald Kugel, Bernhard T. Baune, Tilo Kircher, Benjamin Risse, Udo
Dannlowski, Klaus Berger, Tim Hahn
- Abstract summary: Age prediction based on Magnetic Resonance Imaging (MRI) data of the brain is a biomarker to quantify the progress of brain diseases and aging.
Current approaches rely on preparing the data with multiple preprocessing steps, such as registering voxels to a standardized brain atlas.
Here we describe a 3D Convolutional Neural Network (CNN) based on the ResNet architecture being trained on raw, non-registered T 1 -weighted MRI data.
- Score: 0.45077088620792216
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Age prediction based on Magnetic Resonance Imaging (MRI) data of the brain is
a biomarker to quantify the progress of brain diseases and aging. Current
approaches rely on preparing the data with multiple preprocessing steps, such
as registering voxels to a standardized brain atlas, which yields a significant
computational overhead, hampers widespread usage and results in the predicted
brain-age to be sensitive to preprocessing parameters. Here we describe a 3D
Convolutional Neural Network (CNN) based on the ResNet architecture being
trained on raw, non-registered T 1 -weighted MRI data of N=10,691 samples from
the German National Cohort and additionally applied and validated in N=2,173
samples from three independent studies using transfer learning. For comparison,
state-of-the-art models using preprocessed neuroimaging data are trained and
validated on the same samples. The 3D CNN using raw neuroimaging data predicts
age with a mean average deviation of 2.84 years, outperforming the
state-of-the-art brain-age models using preprocessed data. Since our approach
is invariant to preprocessing software and parameter choices, it enables
faster, more robust and more accurate brain-age modeling.
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