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Regression forests for efficient anatomy detection and localization in computed tomography scans

机译:回归森林用于计算断层扫描扫描中有效解剖检测和定位

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摘要

This paper proposes a new algorithm for the efficient, automatic detection and localization of multiple anatomical structures within three-dimensional computed tomography (CT) scans. Applications include selective retrieval of patients images from PACS systems, semantic visual navigation and tracking radiation dose over time.The main contribution of this work is a new, continuous parametrization of the anatomy localization problem, which allows it to be addressed effectively by multi-class random regression forests. Regression forests are similar to the more popular classification forests, but trained to predict continuous, multi-variate outputs, where the training focuses on maximizing the confidence of output predictions. A single pass of our probabilistic algorithm enables the direct mapping from voxels to organ location and size.Quantitative validation is performed on a database of 400 highly variable CT scans. We show that the proposed method is more accurate and robust than techniques based on efficient multi-atlas registration and template-based nearest-neighbor detection. Due to the simplicity of the regressor's context-rich visual features and the algorithm's parallelism, these results are achieved in typical run-times of only ~4 s on a conventional single-core machine.
机译:本文提出了一种新的算法,用于三维计算断层扫描(CT)扫描内的多重解剖结构的高效,自动检测和定位。应用包括从PACS系统,语义视觉导航和跟踪辐射剂量的患者图像的选择性检索。这项工作的主要贡献是解剖本地化问题的新的,连续参数化,这使得它可以通过多级解决它得到解决随机回归森林。回归森林与更受欢迎的分类森林相似,但训练有素以预测连续,多变化的产出,培训侧重于最大化输出预测的置信度。我们的概率算法的单一通过使得从体素直接映射到器官位置和大小。在400个高度变量CT扫描的数据库上执行正常验证。我们表明该方法比基于有效的多标准登记和基于模板的最近邻检测的技术更准确和坚固。由于回归的上下文的视觉特征和算法的并行性的简单性,这些结果在传统的单芯机器上仅〜4秒的典型运行时间实现。

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