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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Automatic Craniomaxillofacial Landmark Digitization via Segmentation-Guided Partially-Joint Regression Forest Model and Multiscale Statistical Features
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Automatic Craniomaxillofacial Landmark Digitization via Segmentation-Guided Partially-Joint Regression Forest Model and Multiscale Statistical Features

机译:通过分段引导的部分联合回归森林模型和多尺度统计特征自动进行颅颌面地标数字化

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Objective: The goal of this paper is to automatically digitize craniomaxillofacial (CMF) landmarks efficiently and accurately from cone-beam computed tomography (CBCT) images, by addressing the challenge caused by large morphological variations across patients and image artifacts of CBCT images. Methods: We propose a segmentation-guided partially-joint regression forest (S-PRF) model to automatically digitize CMF landmarks. In this model, a regression voting strategy is first adopted to localize each landmark by aggregating evidences from context locations, thus potentially relieving the problem caused by image artifacts near the landmark. Second, CBCT image segmentation is utilized to remove uninformative voxels caused by morphological variations across patients. Third, a partially-joint model is further proposed to separately localize landmarks based on the coherence of landmark positions to improve the digitization reliability. In addition, we propose a fast vector quantization method to extract high-level multiscale statistical features to describe a voxel's appearance, which has low dimensionality, high efficiency, and is also invariant to the local inhomogeneity caused by artifacts. Results: Mean digitization errors for 15 landmarks, in comparison to the ground truth, are all less than 2 mm. Conclusion: Our model has addressed challenges of both interpatient morphological variations and imaging artifacts. Experiments on a CBCT dataset show that our approach achieves clinically acceptable accuracy for landmark digitalization. Significance: Our automatic landmark digitization method can be used clinically to reduce the labor cost and also improve digitalization consistency.
机译:目的:本文的目的是通过解决患者之间的巨大形态变化和CBCT图像伪影所带来的挑战,从锥束计算机断层扫描(CBCT)图像中自动高效,准确地自动数字化颅颌面(CMF)界标。方法:我们提出了一种分割指导的部分联合回归森林(S-PRF)模型来自动数字化CMF界标。在此模型中,首先采用回归投票策略通过聚集来自上下文位置的证据来对每个地标进行定位,从而有可能缓解由地标附近的图像伪影引起的问题。其次,利用CBCT图像分割来消除由于患者之间的形态变化所引起的非信息性体素。第三,进一步提出了部分联合模型,基于地标位置的相干性来分别定位地标,以提高数字化的可靠性。此外,我们提出了一种快速的矢量量化方法来提取高级多尺度统计特征来描述体素的外观,该体素的维数低,效率高,并且对于由伪像引起的局部不均匀性也不变。结果:与地面真相相比,15个地标的平均数字化误差均小于2 mm。结论:我们的模型已经解决了患者间形态变化和成像伪影的挑战。在CBCT数据集上进行的实验表明,我们的方法可实现具有里程碑意义的数字化临床可接受的准确性。启示:我们的自动地标数字化方法可在临床上用于减少人工成本并提高数字化一致性。

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