Semi-automated measurement of pulmonary nodule growth without explicit segmentation

ISBI(2009)

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摘要
Many nodule measurement methods rely on accurate segmentation of the nodule and may fail with complex nodule morphologies; often slight variations in segmentation result in large volume differences. A method, growth analysis from density (GAD), is presented that measures nodule growth without explicit segmentation through the application of a Gaussian weighting function to a region around the nodule, avoiding the drawbacks of segmentation-based methods. The resulting mean density is used as a surrogate for volume when computing growth. A zero-change nodule dataset was used to establish the variability of the method, followed by testing on datasets of stable, malignant, and complex nodules. There was no significant difference in percent volume change between the methods (p=0.55), and while GAD showed similar measurement variability and discriminative performance as a segmentation-based method (GAS), it was able to successfully measure growth on complex nodules where GAS failed.
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关键词
pulmonary nodule growth,growth analysis,complex nodule morphology,complex nodule,explicit segmentation,computing growth,accurate segmentation,segmentation-based method,measures nodule growth,semi-automated measurement,zero-change nodule dataset,nodule measurement method,indexing terms,cancer,image segmentation,biomedical imaging,data mining,computed tomography,indexes,weight function
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