论文标题

使用SVM和神经分类器进行皮肤癌分类的自动病变检测系统(ALDS)

Automatic Lesion Detection System (ALDS) for Skin Cancer Classification Using SVM and Neural Classifiers

论文作者

Farooq, Muhammad Ali, Azhar, Muhammad Aatif Mobeen, Raza, Rana Hammad

论文摘要

如今,技术辅助平台几乎在几乎每个领域都提供可靠的工具。这些由计算能力支持的工具对于需要敏感和精确的数据分析的应用非常重要。在医疗领域中的重要应用是用于皮肤癌分类的自动病变检测系统(ALDS)。计算机辅助诊断可帮助医师和皮肤科医生获得第二种意见,以适当分析和治疗皮肤癌。癌变痣以及周围区域的精确分割对于正确的分析和诊断至关重要。本文集中于基于概率方法的改进ALDS框架的发展,该方法最初利用活跃的轮廓和流域合并面罩来分割痣,然后将SVM和神经分类器用于分割摩尔的分类。病变分割后,将选定的特征分类以确定所考虑的病例是黑色素瘤还是非黑色素瘤。测试了该方法的不同数据集,并进行了比较分析,以反映所提出的系统的有效性。

Technology aided platforms provide reliable tools in almost every field these days. These tools being supported by computational power are significant for applications that need sensitive and precise data analysis. One such important application in the medical field is Automatic Lesion Detection System (ALDS) for skin cancer classification. Computer aided diagnosis helps physicians and dermatologists to obtain a second opinion for proper analysis and treatment of skin cancer. Precise segmentation of the cancerous mole along with surrounding area is essential for proper analysis and diagnosis. This paper is focused towards the development of improved ALDS framework based on probabilistic approach that initially utilizes active contours and watershed merged mask for segmenting out the mole and later SVM and Neural Classifier are applied for the classification of the segmented mole. After lesion segmentation, the selected features are classified to ascertain that whether the case under consideration is melanoma or non-melanoma. The approach is tested for varying datasets and comparative analysis is performed that reflects the effectiveness of the proposed system.

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