NCLGIVJan 12, 2022

Brain Structural Saliency Over The Ages

arXiv:2202.11690v3
Originality Synthesis-oriented
AI Analysis

This work provides clinically relevant insights into normal brain ageing trajectories, though it is incremental as it applies existing saliency mapping techniques to a specific domain.

The study tackled the problem of interpreting brain age estimation models by analyzing saliency maps from a ResNet trained on MRI data of 524 individuals, revealing a tripartite pattern of relevance attribution to brain regions across ages and examining the effect of the Brain Age Gap on relevance distribution.

Brain Age (BA) estimation via Deep Learning has become a strong and reliable bio-marker for brain health, but the black-box nature of Neural Networks does not easily allow insight into the features of brain ageing.We trained a ResNet model as a BA regressor on T1 structural MRI volumes from a small cross-sectional cohort of 524 individuals. Using Layer-wise Relevance Propagation (LRP) and DeepLIFT saliency mapping techniques, we analysed the trained model to determine the most relevant structures for brain ageing for the network, and compare these between the saliency mapping techniques. We show the change in attribution of relevance to different brain regions through the course of ageing. A tripartite pattern of relevance attribution to brain regions emerges. Some regions increase in relevance with age (e.g. the right Transverse Temporal Gyrus); some decrease in relevance with age (e.g. the right Fourth Ventricle); and others are consistently relevant across ages. We also examine the effect of the Brain Age Gap (BAG) on the distribution of relevance within the brain volume. It is hoped that these findings will provide clinically relevant region-wise trajectories for normal brain ageing, and a baseline against which to compare brain ageing trajectories.

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