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Toward a combined tool to assist dermatologists in melanoma detection from dermoscopic images of pigmented skin lesions

机译:寻求一种可以帮助皮肤科医生从皮肤色素沉着的皮肤镜图像中发现黑色素瘤的组合工具

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摘要

In this paper we propose a machine learning approach to classify melanocytic lesions as malignant or benign, using dermoscopic images. The lesion features used in the classification framework are inspired on border, texture, color and structures used in popular dermoscopy algorithms performed by clinicians by visual inspection. The main weakness of dermoscopy algorithms is the selection of a set of weights and thresholds, that appear not to be robust or independent of population. The use of machine learning techniques allows to overcome this issue. The proposed method is designed and tested on an image database composed of 655 images of melanocytic lesions: 544 benign lesions and 111 malignant melanoma. After an image pre-processing stage that includes hair removal filtering, each image is automatically segmented using well known image segmentation algorithms. Then, each lesion is characterized by a feature vector that contains shape, color and texture information, as well as local and global parameters. The detection of particular dermoscopic patterns associated with melanoma is also addressed, and its inclusion in the classification framework is discussed. The learning and classification stage is performed using AdaBoost with C4.5 decision trees. For the automatically segmented database, classification delivered a specificity of 77% for a sensitivity of 90%. The same classification procedure applied to images manually segmented by an experienced dermatologist yielded a specificity of 85% for a sensitivity of 90%.
机译:在本文中,我们提出一种机器学习方法,使用皮肤镜检查图像将黑素细胞病变分类为恶性或良性。分类框架中使用的病变特征受临床医生通过目视检查执行的流行的皮肤镜检查算法中使用的边界,纹理,颜色和结构的启发。皮肤镜检查算法的主要缺点是选择了一组权重和阈值,这些权重和阈值似乎不可靠或与人口无关。机器学习技术的使用可以克服这个问题。该方法在包含655个黑色素细胞病变图像的图像数据库上进行了设计和测试:544个良性病变和111个恶性黑色素瘤。在包括脱毛过滤的图像预处理阶段之后,使用众所周知的图像分割算法自动分割每个图像。然后,每个病变的特征向量都包含形状,颜色和纹理信息以及局部和全局参数。还探讨了与黑素瘤相关的特殊皮肤镜检查的方法,并讨论了其在分类框架中的应用。使用带有C4.5决策树的AdaBoost执行学习和分类阶段。对于自动分段的数据库,分类的特异性为77%,灵敏度为90%。将相同的分类程序应用于经验丰富的皮肤科医生手动分割的图像,可得到85%的特异性,灵敏度为90%。

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