ROBUST QUANTIFICATION OF PERCENT EMPHYSEMA ON CT VIA DOMAIN ATTENTION: THE MULTI-ETHNIC STUDY OF ATHEROSCLEROSIS (MESA) LUNG STUDY.

Xuzhe Zhang, Elsa D Angelini, Eric A Hoffman, Karol E Watson, Benjamin M Smith, R Graham Barr, Andrew F Laine
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Abstract

Robust quantification of pulmonary emphysema on computed tomography (CT) remains challenging for large-scale research studies that involve scans from different scanner types and for translation to clinical scans. Although the domain shifts in different CT scanners are subtle compared to shifts existing in other modalities (e.g., MRI) or cross-modality, emphysema is highly sensitive to it. Such subtle difference limits the application of general domain adaptation methods, such as image translation-based methods, as the contrast difference is too subtle to be distinguished. Existing studies have explored several directions to tackle this challenge, including density correction, noise filtering, regression, hidden Markov measure field (HMMF) model-based segmentation, and volume-adjusted lung density. Despite some promising results, previous studies either required a tedious workflow or eliminated opportunities for downstream emphysema subtyping, limiting efficient adaptation on a large-scale study. To alleviate this dilemma, we developed an end-to-end deep learning framework based on an existing HMMF segmentation framework. We first demonstrate that a regular UNet cannot replicate the existing HMMF results because of the lack of scanner priors. We then design a novel domain attention block, a simple yet efficient cross-modal block to fuse image visual features with quantitative scanner priors (a sequence), which significantly improves the results.

通过域注意力对 CT 上肺气肿百分比进行稳健量化:动脉粥样硬化多种族研究(MESA)肺研究。
计算机断层扫描(CT)上肺气肿的可靠定量对于涉及不同类型扫描仪扫描的大规模研究以及转化为临床扫描仍具有挑战性。虽然与其他模式(如核磁共振成像)或跨模式相比,不同 CT 扫描仪的域偏移是微妙的,但肺气肿对其高度敏感。这种微妙的差异限制了一般域适应方法(如基于图像平移的方法)的应用,因为对比度差异过于微妙,难以区分。现有研究已经探索了多个方向来应对这一挑战,包括密度校正、噪声过滤、回归、基于隐马尔可夫测量场(HMMF)模型的分割以及体积调整肺密度。尽管取得了一些有希望的结果,但之前的研究要么需要繁琐的工作流程,要么消除了下游肺气肿亚型的机会,限制了大规模研究的高效适应性。为了缓解这一困境,我们基于现有的 HMMF 细分框架开发了端到端的深度学习框架。我们首先证明,由于缺乏扫描仪先验,常规的 UNet 无法复制现有的 HMMF 结果。然后,我们设计了一个新颖的领域关注区块,这是一个简单而高效的跨模态区块,用于将图像视觉特征与定量扫描仪前验(序列)融合在一起,从而显著改善了结果。
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