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Early assessment of malignant lung nodules based on the spatial analysis of detected lung nodules

机译:基于检测到的肺结节的空间分析早期评估恶性肺结节

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We propose a novel approach for diagnosing malignant lung nodules based on analyzing the spatial distribution of Hounsfield values for the detected lung nodules. Spatial distribution of image intensities (or Hounsfield values) comprising the malignant nodule appearance is accurately modeled with a new rotationally invariant second-order Markov-Gibbs Random Field (MGRF). In this paper, we introduce a new maximum likelihood estimation approach to estimate the neighborhood system of the proposed rotation invariant MGRF and its potentials from a training set of nodule images with normalized intensity ranges. Preliminary experiments on 327 lung nodules (153 malignant and 174 benign) resulted in the 91.1% correct classification (for the 95% confidence interval), showing the proposed method is a promising supplement to current technologies (biopsy-based diagnostic systems) for the early diagnosis of lung cancer.
机译:我们基于分析检测到的肺结节的Hounsfield值的空间分布,提出了一种诊断恶性肺结节的新方法。使用新的旋转不变的二阶Markov-Gibbs随机场(MGRF)可以精确地建模包括恶性结节外观的图像强度(或Hounsfield值)的空间分布。在本文中,我们介绍了一种新的最大似然估计方法,可以从带有标准化强度范围的根瘤图像训练集中估计提议的旋转不变MGRF的邻域系统及其电势。对327个肺结节(153个恶性和174个良性)的初步实验得出91.1%的正确分类(对于95%的置信区间),表明该方法是早期对当前技术(基于活检的诊断系统)的有希望的补充诊断肺癌。

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