Voxel-level Importance Maps for Interpretable Brain Age Estimation
- URL: http://arxiv.org/abs/2108.05388v1
- Date: Wed, 11 Aug 2021 18:08:09 GMT
- Title: Voxel-level Importance Maps for Interpretable Brain Age Estimation
- Authors: Kyriaki-Margarita Bintsi, Vasileios Baltatzis, Alexander Hammers,
Daniel Rueckert
- Abstract summary: We focus on the task of brain age regression from 3D brain Magnetic Resonance (MR) images using a Convolutional Neural Network, termed prediction model.
We implement a noise model which aims to add as much noise as possible to the input without harming the performance of the prediction model.
We test our method on 13,750 3D brain MR images from the UK Biobank, and our findings are consistent with the existing neuropathology literature.
- Score: 70.5330922395729
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Brain aging, and more specifically the difference between the chronological
and the biological age of a person, may be a promising biomarker for
identifying neurodegenerative diseases. For this purpose accurate prediction is
important but the localisation of the areas that play a significant role in the
prediction is also crucial, in order to gain clinicians' trust and reassurance
about the performance of a prediction model. Most interpretability methods are
focused on classification tasks and cannot be directly transferred to
regression tasks. In this study, we focus on the task of brain age regression
from 3D brain Magnetic Resonance (MR) images using a Convolutional Neural
Network, termed prediction model. We interpret its predictions by extracting
importance maps, which discover the parts of the brain that are the most
important for brain age. In order to do so, we assume that voxels that are not
useful for the regression are resilient to noise addition. We implement a noise
model which aims to add as much noise as possible to the input without harming
the performance of the prediction model. We average the importance maps of the
subjects and end up with a population-based importance map, which displays the
regions of the brain that are influential for the task. We test our method on
13,750 3D brain MR images from the UK Biobank, and our findings are consistent
with the existing neuropathology literature, highlighting that the hippocampus
and the ventricles are the most relevant regions for brain aging.
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