Improving Generalization of Deep Learning for Brain Metastases Segmentation Across Institutions
Yuchen Yang, Shuangyang Zhong, Haijun Yu, Langcuomu Suo, Hongbin Han, Florian Putz, Yixing Huang

TL;DR
This study introduces a VAE-MMD domain adaptation pipeline that significantly improves the cross-institutional generalization of deep learning models for brain metastases segmentation, reducing data heterogeneity effects.
Contribution
The paper presents a novel VAE-MMD preprocessing method combined with nnU-Net that enhances model robustness across different imaging centers without requiring target domain labels.
Findings
Reduced domain classifier accuracy from 0.91 to 0.50
Increased mean F1 score by 11.1%
Reduced Hausdorff distance by 65.5%
Abstract
Background: Deep learning has demonstrated significant potential for automated brain metastases (BM) segmentation; however, models trained at a singular institution often exhibit suboptimal performance at various sites due to disparities in scanner hardware, imaging protocols, and patient demographics. The goal of this work is to create a domain adaptation framework that will allow for BM segmentation to be used across multiple institutions. Methods: We propose a VAE-MMD preprocessing pipeline that combines variational autoencoders (VAE) with maximum mean discrepancy (MMD) loss, incorporating skip connections and self-attention mechanisms alongside nnU-Net segmentation. The method was tested on 740 patients from four public databases: Stanford, UCSF, UCLM, and PKG, evaluated by domain classifier's accuracy, sensitivity, precision, F1/F2 scores, surface Dice (sDice), and 95th…
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