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2024 年 11 月 11 日
Curriculum Learning for FewShot Domain Adaptation in CTbased Airway Tree Segmentation
title: Curriculum Learning for FewShot Domain Adaptation in CTbased Airway Tree Segmentation
publish date:
2024-11-08
authors:
Maxime Jacovella et.al.
paper id
2411.05779v1
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abstracts:
Despite advances with deep learning (DL), automated airway segmentation from chest CT scans continues to face challenges in segmentation quality and generalization across cohorts. To address these, we propose integrating Curriculum Learning (CL) into airway segmentation networks, distributing the training set into batches according to ad-hoc complexity scores derived from CT scans and corresponding ground-truth tree features. We specifically investigate few-shot domain adaptation, targeting scenarios where manual annotation of a full fine-tuning dataset is prohibitively expensive. Results are reported on two large open-cohorts (ATM22 and AIIB23) with high performance using CL for full training (Source domain) and few-shot fine-tuning (Target domain), but with also some insights on potential detrimental effects if using a classic Bootstrapping scoring function or if not using proper scan sequencing.
QA:
coming soon
编辑整理: wanghaisheng 更新日期:2024 年 11 月 11 日