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Lung nodule growth measurement and prediction using auto cluster seed K-means morphological segmentation and shape variance analysis

机译:肺结节生长测量和使用自动簇种子K-Meary形态分割和形状方差分析

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A quantitative model is developed in this work to predict the lung nodules which have the potential to grow in future. An Auto Cluster Seed K-means Morphological segmentation (ACSKMM) algorithm was implemented in this work to segment all the possible lung nodule candidates. An average of around 600 nodule candidates of size >3mm were segmented from each CT scan series of 34 patients. Finally, in total 34 real nodules were remained after eliminating the vessels, non-nodules and calcifications using centroid shift and 3D shape variance analysis. The rate of nodule growth (RNG) was computed on real nodules in terms of 3D-volume change. Out of the 34 real nodules, 3 nodules had RNG value>l, confirming their malignant nature. The nodule growth predictive measure was modelled through compactness, mass deficit, mass excess and isotropic factor.
机译:在这项工作中开发了定量模型,以预测具有未来增长的潜力的肺结节。 在这项工作中实施了自动簇种子K-Meary形态分割(ACSKMM)算法,以分割所有可能的肺结节候选者。 平均大约600个尺寸的结节候选物尺寸> 3mm的每个CT扫描系列34例患者分段。 最后,在使用质心移位和3D形方差分析中消除血管,非结节和钙化后,保持34种真正的结节。 在3D体积变化方面,在真实结节上计算结节生长(RNG)。 在34个真正的结节中,3个结节有RNG值> L,确认他们的恶性性质。 通过紧凑性,质量缺损,质量过量和各向同性因子建模结节生长预测措施。

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