During the last years, computer vision-based diagnosis systems have been widely used in several hospitals and dermatology clinics, aiming at the early detection of malignant melanoma tumor, which is among the most frequent types of skin cancer. In this work, we present an automated diagnosis system based on the ABCD rule used in clinical diagnosis in order to discriminate benign from malignant skin lesions. First, to reduce the influence of small structures, a preprocessing step based on morphological and fast marching schemes is used. In the second step, an unsupervised approach for lesion segmentation is proposed. Iterative thresholding is applied to initialize level set automatically. As the detection of an automated border is an important step for the correctness of subsequent phases in the computerized melanoma recognition systems, we compare its accuracy with growcut and mean shift algorithms, and discuss how these results may influence in the following steps: the feature extraction and the final lesion classification. Relying on visual diagnosis four features: Asymmetry (A), Border (B), Color (C) and Diversity (D) are computed and used to construct a classification module based on artificial neural network for the recognition of malignant melanoma. This framework has been tested on a dermoscopic database [16] of 320 images. The classification results show an increasing true detection rate and a decreasing false positive rate.
翻译:在过去几年里,一些医院和皮肤诊所广泛采用了基于计算机的视觉诊断系统,目的是及早发现恶性黑瘤肿瘤,这是最常见的皮肤癌类型之一。在这项工作中,我们展示了基于临床诊断中使用的ABCD规则的自动诊断系统,以区别恶性皮肤损伤的良性。首先,为了减少小结构的影响,采用了基于形态学和快速行进方法的预处理步骤。在第二步中,提议了一种不受监督的腐蚀分化方法。在初始化水平设置时自动采用了循环阈值。由于自动边界的检测是计算机化黑瘤识别系统随后各阶段正确性的一个重要步骤,我们将其精确性与生长器和意味着转变算法进行比较,并讨论这些结果对以下步骤的影响:地貌提取和最终腐蚀分类。在视觉诊断的四方面,提出了一种不可靠的方法。 正在计算并使用迭代值阈值阈值阈值阈值阈值值值来构建一个基于人造色素识别系统(ASIRA)测算结果的正性测试模型。