Appearance analysis for diagnosing malignant lung nodules

A. El-Baz, G. Gimel'farb, R. Falk, M. El-Ghar
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引用次数: 36

Abstract

An alternative method of diagnosing malignant lung nodules by their visual appearance rather than conventional growth rate is proposed. Spatial distribution of image intensities (or Hounsfield values) comprising the malignant nodule appearance is accurately modeled with a rotation invariant second-order Markov-Gibbs random field. Its neighborhood system and potentials are analytically learned from a training set of nodule images with normalized intensity ranges. Preliminary experiments on 109 lung nodules (51 malignant and 58 benign ones) resulted in the 96.3% correct classification (for the 95% confidence interval), showing the proposed method is a promising supplement to current technologies for early diagnostics of lung cancer.
诊断肺恶性结节的外观分析
一种替代方法诊断恶性肺结节的视觉外观,而不是传统的增长速度提出。包含恶性结节外观的图像强度(或Hounsfield值)的空间分布用旋转不变二阶Markov-Gibbs随机场精确建模。它的邻域系统和电位是从具有归一化强度范围的结节图像训练集中解析学习到的。对109个肺结节(51个为恶性结节,58个为良性结节)进行初步实验,准确率为96.3%(95%置信区间),表明该方法是对现有肺癌早期诊断技术的有益补充。
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