Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: Medical images like MR scans often show domain shifts across imaging sites
due to scanner and protocol differences, which degrade machine learning
performance in tasks such as disease classification. Domain harmonization is
thus a critical research focus. Recent approaches encode brain images
$\boldsymbol{x}$ into a low-dimensional latent space $\boldsymbol{z}$, then
disentangle it into $\boldsymbol{z_u}$ (domain-invariant) and
$\boldsymbol{z_d}$ (domain-specific), achieving strong results. However, these
methods often lack interpretability$-$an essential requirement in medical
applications$-$leaving practical issues unresolved. We propose
Pseudo-Linear-Style Encoder Adversarial Domain Adaptation (PL-SE-ADA), a
general framework for domain harmonization and interpretable representation
learning that preserves disease-relevant information in brain MR images.
PL-SE-ADA includes two encoders $f_E$ and $f_{SE}$ to extract
$\boldsymbol{z_u}$ and $\boldsymbol{z_d}$, a decoder to reconstruct the image
$f_D$, and a domain predictor $g_D$. Beyond adversarial training between the
encoder and domain predictor, the model learns to reconstruct the input image
$\boldsymbol{x}$ by summing reconstructions from $\boldsymbol{z_u}$ and
$\boldsymbol{z_d}$, ensuring both harmonization and informativeness. Compared
to prior methods, PL-SE-ADA achieves equal or better performance in image
reconstruction, disease classification, and domain recognition. It also enables
visualization of both domain-independent brain features and domain-specific
components, offering high interpretability across the entire framework.
Authors (5)
Keima Abe
Hayato Muraki
Shuhei Tomoshige
Kenichi Oishi
Hitoshi Iyatomi
Submitted
October 16, 2025
Key Contributions
PL-SE-ADA is a novel framework for domain harmonization and interpretable representation learning in brain MR images. It disentangles domain-invariant and domain-specific features in the latent space using an adversarial approach, preserving disease-relevant information while addressing interpretability issues.
Business Value
Enables more reliable and trustworthy AI applications in healthcare by ensuring consistent performance across different imaging sites and providing interpretable insights.