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Unsupervised detection of density changes through principal component analysis for lung lesion classification

机译:通过主成分分析进行肺病变分类的无监督检测

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Lung cancer remains one of the most common cancers worldwide. Temporal evaluation is a useful tool for analyzing the malignant behavior of a lesion during treatment or that of indeterminate lesions which may be benign. Thereby, this work proposes a methodology for analysis, quantification and visualization of unsupervised changes in lung lesions, through principal component analysis. From change regions, we extracted texture features for lesion classification as benign or malignant. To reach this purpose, two databases with distinct behavior were used, one of which concerning malign under treatment and another indeterminate, but likely benign, lesions. The results have shown that the lesion's density changes in a public database of malignant lesions under treatment were greater than the private database of benign lung nodules. From the texture analysis of the regions where the density changes occurred, we were able to discriminate lung lesions with an accuracy of 98.41 %, showing that these changes could point out the nature of the lesion. Other contribution was visualization of changes occurring in the lesions over time. Besides, we quantified these changes and analyzed the entire set through volumetry, the most commonly used technique to evaluate progression of lung lesions.
机译:肺癌仍然是全球最常见的癌症之一。时间评估是一种有用的工具,可用于分析治疗期间病变的恶性行为或不确定的不确定病变的恶性行为。因此,这项工作提出了一种通过主成分分析来分析,定量和可视化肺部病变无监督变化的方法。从变化区域中,我们提取纹理特征以将病变分类为良性或恶性。为了达到这个目的,使用了两个具有不同行为的数据库,其中一个涉及正在接受治疗的恶性肿瘤,另一个涉及不确定但可能是良性的病变。结果表明,在接受治疗的恶性病变公共数据库中,病变的密度变化大于良性肺结节的私人数据库。通过对发生密度变化的区域进行纹理分析,我们能够以98.41%的准确度区分出肺部病变,表明这些变化可以指出病变的性质。其他贡献是可视化了病变随时间的变化。此外,我们量化了这些变化并通过容积法分析了整个装置,容积法是评估肺部病变进展的最常用技术。

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