Endobronchial intervention is increasingly used as a minimally invasive means for the treatment of pulmonary diseases. In order to reduce the difficulty of manipulation in complex airway networks, robust lumen detection is essential for intraoperative guidance. However, these methods are sensitive to visual artifacts which are inevitable during the surgery. In this work, a cross domain feature interaction (CDFI) network is proposed to extract the structural features of lumens, as well as to provide artifact cues to characterize the visual features. To effectively extract the structural and artifact features, the Quadruple Feature Constraints (QFC) module is designed to constrain the intrinsic connections of samples with various imaging-quality. Furthermore, we design a Guided Feature Fusion (GFF) module to supervise the model for adaptive feature fusion based on different types of artifacts. Results show that the features extracted by the proposed method can preserve the structural information of lumen in the presence of large visual variations, bringing much-improved lumen detection accuracy.
翻译:内部支气管介入日益成为治疗肺部疾病的微创手段。为了减少在复杂气道网络中的操作难度,鲁班检测的强健性对于术中操作指导至关重要。然而,这些方法对不可避免出现的视觉伪迹非常敏感。本研究提出了一种交叉领域特征交互(CDFI)网络,用于提取管腔的结构特征,并提供一些表征视觉特征的伪迹线索。为了有效地提取结构特征和伪迹特征,设计了四元特征约束(QFC)模块,以限制样本与不同成像质量之间的内在连接。此外,我们设计了一个Guided Feature Fusion(GFF)模块,以对不同类型的伪迹进行自适应特征融合的监督。实验结果表明,所提出的方法提取的特征可以在大视角变化的情况下保持管腔的结构信息,从而显着提高了管腔检测的准确性。