標準的なベンチマークの限界を克服するため、大規模で多様なデータセットと包括的な評価手法を用いた医療セグメンテーションAIのためのベンチマーク「Touchstone」を開発し、その有効性を示した。
AtlasSeg, a novel deep learning model, leverages gestational age-specific atlas priors and a dual-U-Net architecture with multi-scale attentive fusion to significantly improve the accuracy of cortical segmentation in fetal brain MRI, outperforming existing state-of-the-art methods.
本稿では、複雑な気道構造を正確にセグメント化するため、マルチスケールネスト型 Residual UNet(MNR-UNet)と重み付きBreakage-Aware Loss(wBAL)を組み合わせた新しい3段階セグメンテーション手法を提案する。
Strategically selecting a combination of synthetic tumor sizes and generating synthetic tumors with precise boundaries significantly improves the accuracy of deep learning-based pancreatic tumor segmentation models.
This research aims to investigate the relationships between microstructural and macrostructural features of the cervical spinal cord in a healthy population using quantitative MRI analysis, and to develop a deep learning-based segmentation framework for accurate measurement of macrostructural characteristics.
Leveraging diverse pathological clues, including segmented regions, entities, and report themes, to build fine-grained cross-modal representations and seamlessly transfer them to enhance the quality of generated brain CT reports.
A cascading refinement CNN model, MS-CaRe-CNN, can semantically segment the left and right ventricle, healthy and scarred myocardial tissue, as well as edema from multi-sequence cardiac MRI data, enabling accurate assessment of myocardial viability.
Incorporating both shape and topological priors into a unified latent representation improves the accuracy and anatomical consistency of automated liver vessel segmentation in medical images.
A novel deep learning approach that leverages scale-specific auxiliary tasks and contrastive learning to effectively capture the complex multi-scale geometry of the liver vascular tree.
A deep learning-powered toolbox, CartiMorph Toolbox (CMT), for automated quantification of knee cartilage shape and lesion from medical images.