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Incorporating Colour Information for Computer-Aided Diagnosis of Melanoma from Dermoscopy Images

机译:结合颜色信息,通过皮肤镜检查图像对黑色素瘤进行计算机辅助诊断

摘要

Cutaneous Melanoma is the most life-threatening form of skin cancer. Although advanced melanoma is often considered as incurable, if detected and excised early, the prognosis is promising. Today, clinician use Computer Vision in an increasing number of applications to aid early detection of melanoma through dermatological image analysis (dermoscopy images, in particular). Colour assessment is essential for the clinical diagnosis of skin cancers. Due to this diagnostic importance, many studies have either focused on or employed colour features as a constituent part of their skin lesion analysis systems. These studies range from using low-level colour features, such as simple statistical measures of colours occurring in the lesion, to availing themselves of high-level semantic features such as the presence of blue-white veil, globules or colour variegation in the lesion. This thesis provides a detailed exposition of my recent contributions in this research direction. In particular, it describes two novel approaches for utilizing colour both as low-level and high- level image feature. The first contribution describes a technique that employs the stochastic Latent Topic Models framework to allow quantification of melanin and hemoglobin content in dermoscopy images. Such information bears useful implications for the analysis of skin hyper-pigmentation, and for classification of skin diseases. The second contribution is a novel approach to identify one of the most significant dermoscopic criteria in the diagnosis of Cutaneous Melanoma: the Blue-whitish structure. This is achieved in a Multiple Instance Learning framework with only image-level labels of whether the feature is present or not. As the output, we predict the image label and also localize the feature in the image. Experiments are conducted on a challenging dataset with results outperforming state-of-the-art. Moreover, the thesis explores using physic-based photometric models to enhance dermoscopy image analysis. In particular, it proposes methods for colour-to-greyscale conversion, shading removal, and glare attenuation. The studies reported in this thesis provide an improvement on the scope of modelling for computerized image analysis of skin lesions.
机译:皮肤黑素瘤是最致命的皮肤癌形式。尽管晚期黑素瘤通常被认为是不可治愈的,但如果及早发现并切除,其预后是有希望的。如今,临床医生在越来越多的应用程序中使用计算机视觉,以通过皮肤病学图像分析(尤其是皮肤镜检查图像)帮助黑色素瘤的早期发现。颜色评估对于皮肤癌的临床诊断至关重要。由于这种诊断的重要性,许多研究都将色彩特征作为其皮肤病损分析系统的组成部分,或者将其作为其特征。这些研究的范围从使用低级颜色特征(例如病变中发生的颜色的简单统计度量)到利用高级语义特征(例如病变中存在蓝白色面纱,小球或颜色变化)。本文详细阐述了我在该研究方向上的最新贡献。特别地,它描述了两种利用颜色作为低级和高级图像特征的新颖方法。第一项贡献描述了一种技术,该技术采用随机潜在主题模型框架来量化皮肤镜检查图像中黑色素和血红蛋白的含量。这些信息对皮肤色素沉着的分析和皮肤疾病的分类具有有益的意义。第二个贡献是一种新颖的方法,可在皮肤黑色素瘤的诊断中确定最重要的皮肤镜检查标准之一:蓝白色结构。这是在多实例学习框架中实现的,该框架仅具有功能是否存在的图像级标签。作为输出,我们预测图像标签并在图像中定位特征。实验是在具有挑战性的数据集上进行的,其结果优于最新水平。此外,本文探索了使用基于物理的光度模型来增强皮肤镜图像分析。特别地,它提出了用于颜色到灰度转换,去除阴影和减少眩光的方法。本文报道的研究为皮肤病变的计算机图像分析建模范围提供了改进。

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    Madooei Ali;

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  • 年度 2016
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