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Dermatologist-like feature extraction from skin lesion for improved asymmetry classification in PH2 database

机译:皮肤病学特征提取从皮肤病处提取,以改善PH2数据库中的不对称分类

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Asymmetry is one of key characteristics for early diagnosis of melanoma according to medical algorithms such as (ABCD, CASH etc.). Besides shape information, cues such as irregular distribution of colors and structures within the lesion area are assessed by dermatologists to determine lesion asymmetry. Motivated by the clinical practices, we have used Kullback-Leibler divergence of color histogram and Structural Similarity metric as a measures of these irregularities. We have presented performance of several classifiers using these features on publicly available PH2 dataset. The obtained result shows better asymmetry classification than available literature. Besides being a new benchmark, the proposed technique can be used for early diagnosis of melanoma by both clinical experts and other automated diagnosis systems.
机译:不对称是根据医学算法的早期诊断黑素瘤的关键特征之一,例如(ABCD,CASH等)。除了形状信息外,皮肤科医生评估病变区域内的颜色和结构不规则分布等提示,以确定病变不对称。通过临床实践的动机,我们使用了kullback-leibler的颜色直方图和结构相似度量作为这些违规行为的措施。我们在公开可用的PH2数据集上呈现了多个分类器的性能。所获得的结果显示出比可用文献更好的不对称分类。除了作为一种新的基准,该技术可用于通过临床专家和其他自动诊断系统的黑素瘤早期诊断。

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