稳健黑色素瘤筛查的统计学习方法

Michel Fornaciali, S. Avila, Micael Carvalho, Eduardo Valle
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引用次数: 14

摘要

根据美国癌症协会的数据,每57分钟就有一人死于黑色素瘤,尽管如果及早发现,它是最容易治愈的癌症。因此,计算机辅助诊断黑色素瘤筛查一直是一个活跃的研究课题。许多现有的艺术是基于视觉词袋(BoVW)模型,结合颜色和纹理描述符。然而,BoVW模型的最新进展,以及对影响BoVW模型的许多不同因素的重要性的评估还有待探索,因此激励了我们的工作。我们展示了一种基于最先进的BossaNova描述符的黑色素瘤筛查新方法,显示出非常有希望的筛查结果,AUC高达93.7%。这项工作的一个重要贡献是评估了影响双层BoVW模型性能的因素。我们的结果表明,低层对模型的准确性有主要影响,但中层的码本大小也很重要。这些结果可能会指导未来的黑色素瘤筛查工作。
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Statistical Learning Approach for Robust Melanoma Screening
According to the American Cancer Society, one person dies of melanoma every 57 minutes, although it is the most curable type of cancer if detected early. Thus, computeraided diagnosis for melanoma screening has been a topic of active research. Much of the existing art is based on the Bag-of-Visual-Words (BoVW) model, combined with color and texture descriptors. However, recent advances in the BoVW model, as well as the evaluation of the importance of the many different factors affecting the BoVW model were yet to be explored, thus motivating our work. We show that a new approach for melanoma screening, based upon the state-of-the-art BossaNova descriptors, shows very promising results for screening, reaching an AUC of up to 93.7%. An important contribution of this work is an evaluation of the factors that affect the performance of the two-layered BoVW model. Our results show that the low-level layer has a major impact on the accuracy of the model, but that the codebook size on the mid-level layer is also important. Those results may guide future works on melanoma screening.
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