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Probabilistic nodule filtering in thoracic CT scans

机译:胸部CT扫描中的概率性结节过滤

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摘要

Automated detection of lung nodules in thoracic CT scans is an important clinical challenge. Blood vessels form a major source of false positives in automated nodule detection systems. Hence, the performance of such systems may be improved by enhancing nodules while suppressing blood vessels. Ideally, nodule enhancement filters should enhance nodules while suppressing vessels and lung tissue. A distinction between vessels and nodules is normally obtained through eigenvalue analysis of the Hessian matrix. The Hessian matrix is a second order differential quantity and so is sensitive to noise. Furthermore, by relying on principal curvatures alone, existing filters are incapable of distinguishing between nodules and vessel junctions, and are incapable of handling cases in which nodules touch vessels. In this paper we develop novel nodule enhancement filters that are capable of suppressing junctions and are capable of handling cases in which nodules appear to touch or even overlap with vessels. The proposed filters are based on optimized probabilistic models derived from eigenvalue analysis of the gradient correlation matrix which is a first order differential quantity and so are less sensitive to noise compared with known vessel enhancement filters. The proposed filters are evaluated and compared to known techniques both qualitatively, quantitatively. The evaluation includes both synthetic and actual clinical data.
机译:胸部CT扫描中肺结节的自动检测是一项重要的临床挑战。在自动结节检测系统中,血管是假阳性的主要来源。因此,可以通过在抑制血管的同时增强结节来改善这种系统的性能。理想情况下,结节增强过滤器应在抑制血管和肺组织的同时增强结节。通常通过Hessian矩阵的特征值分析获得血管和结节之间的区别。 Hessian矩阵是二阶微分量,因此对噪声敏感。此外,仅依靠主曲率,现有的过滤器就无法区分结节和血管交界处,并且不能处理结节接触血管的情况。在本文中,我们开发了新颖的结节增强过滤器,该过滤器能够抑制结点并能够处理结节似乎与血管接触甚至重叠的情况。所提出的滤波器基于优化的概率模型,该概率模型是从梯度相关矩阵的特征值分析得出的,概率模型是一阶微分量,因此与已知的血管增强滤波器相比,对噪声的敏感性较低。对提出的过滤器进行评估,并在质量,数量上与已知技术进行比较。评估包括综合和实际临床数据。

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