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Automated anatomical labeling of bronchial branches using multiple classifiers and its application to bronchoscopy guidance based on fusion of virtual and real bronchoscopy

机译:基于多个分类器的支气管分支自动解剖标记及其在基于虚拟和真实支气管镜融合的支气管镜指导中的应用

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This paper presents a method for automated anatomical labeling of bronchial branches (ALBB) extracted from 3D CT datasets. The proposed method constructs classifiers that output anatomical names of bronchial branches by employing the machine-learning approach. We also present its application to a bronchoscopy guidance system. Since the bronchus has a complex tree structure, bronchoscopists easily tend to get disoriented and lose the way to a target location. A bronchoscopy guidance system is strongly expected to be developed to assist bronchoscopists. In such guidance system, automated presentation of anatomical names is quite useful information for bronchoscopy. Although several methods for automated ALBB were reported, most of them constructed models taking only variations of branching patterns into account and did not consider those of running directions. Since the running directions of bronchial branches differ greatly in individuals, they could not perform ALBB accurately when running directions of bronchial branches were different from those of models. Our method tries to solve such problems by utilizing the machine-learning approach. Actual procedure consists of three steps: (a) extraction of bronchial tree structures from 3D CT datasets, (b) construction of classifiers using the multi-class AdaBoost technique, and (c) automated classification of bronchial branches by using the constructed classifiers. We applied the proposed method to 51 cases of 3D CT datasets. The constructed classifiers were evaluated by leave-one-out scheme. The experimental results showed that the proposed method could assign correct anatomical names to bronchial branches of 89.1% up to segmental lobe branches. Also, we confirmed that it was quite useful to assist the bronchoscopy by presenting anatomical names of bronchial branches on real bronchoscopic views.
机译:本文提出了一种从3D CT数据集中提取的支气管分支(ALBB)的自动解剖标记方法。所提出的方法构造了通过使用机器学习方法来输出支气管分支的解剖学名称的分类器。我们还介绍了其在支气管镜引导系统中的应用。由于支气管具有复杂的树状结构,因此支气管镜医师很容易迷失方向,并迷失了方向。强烈期望开发一种可协助支气管镜医师的支气管镜引导系统。在这样的引导系统中,解剖学名称的自动呈现对于支气管镜检查是非常有用的信息。尽管报告了几种用于自动ALBB的方法,但大多数方法仅在考虑分支模式变化的情况下构建模型,而未考虑运行方向的模型。由于个体中支气管分支的行进方向差异很大,因此当支气管分支的行进方向与模型的行进方向不同时,它们无法准确执行ALBB。我们的方法试图通过利用机器学习方法来解决此类问题。实际过程包括三个步骤:(a)从3D CT数据集中提取支气管树结构,(b)使用多类AdaBoost技术构造分类器,以及(c)使用构造的分类器对支气管分支进行自动分类。我们将提出的方法应用于51个3D CT数据集案例。构造的分类器通过留一法的方案进行评估。实验结果表明,所提出的方法可以为支气管分支的正确的解剖学名称分配高达89.1%的节段性叶分支。此外,我们证实通过在实际的支气管镜视图上显示支气管分支的解剖学名称来辅助支气管镜非常有用。

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