TL;DR
This paper introduces a novel two-stage cascade 3D CNN with ranking loss for brain age estimation from MRI, achieving high accuracy and demonstrating its potential as a biomarker for dementia risk screening.
Contribution
The paper proposes TSAN, a two-stage cascade network with ranking loss for improved brain age estimation from MRI data, a novel approach in this domain.
Findings
Achieved MAE of 2.428 years in brain age estimation.
High correlation coefficient of 0.985 between estimated and actual age.
Effective in distinguishing AD and MCI from healthy controls using brain age gap.
Abstract
Chronological age of healthy people is able to be predicted accurately using deep neural networks from neuroimaging data, and the predicted brain age could serve as a biomarker for detecting aging-related diseases. In this paper, a novel 3D convolutional network, called two-stage-age-network (TSAN), is proposed to estimate brain age from T1-weighted MRI data. Compared with existing methods, TSAN has the following improvements. First, TSAN uses a two-stage cascade network architecture, where the first-stage network estimates a rough brain age, then the second-stage network estimates the brain age more accurately from the discretized brain age by the first-stage network. Second, to our knowledge, TSAN is the first work to apply novel ranking losses in brain age estimation, together with the traditional mean square error (MSE) loss. Third, densely connected paths are used to combine…
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