Maglogiannis Ilias G, Zafiropoulos Elias P
University of the Aegean, Dept of Information and Communication Systems Engineering, Karlovasi, Greece.
BMC Med Inform Decis Mak. 2004 Mar 10;4:4. doi: 10.1186/1472-6947-4-4.
In this paper we discuss an efficient methodology for the image analysis and characterization of digital images containing skin lesions using Support Vector Machines and present the results of a preliminary study.
The methodology is based on the support vector machines algorithm for data classification and it has been applied to the problem of the recognition of malignant melanoma versus dysplastic naevus. Border and colour based features were extracted from digital images of skin lesions acquired under reproducible conditions, using basic image processing techniques. Two alternative classification methods, the statistical discriminant analysis and the application of neural networks were also applied to the same problem and the results are compared.
The SVM (Support Vector Machines) algorithm performed quite well achieving 94.1% correct classification, which is better than the performance of the other two classification methodologies. The method of discriminant analysis classified correctly 88% of cases (71% of Malignant Melanoma and 100% of Dysplastic Naevi), while the neural networks performed approximately the same.
The use of a computer-based system, like the one described in this paper, is intended to avoid human subjectivity and to perform specific tasks according to a number of criteria. However the presence of an expert dermatologist is considered necessary for the overall visual assessment of the skin lesion and the final diagnosis.
在本文中,我们讨论一种利用支持向量机对包含皮肤病变的数字图像进行图像分析和特征描述的有效方法,并展示一项初步研究的结果。
该方法基于支持向量机算法进行数据分类,并已应用于恶性黑色素瘤与发育异常痣的识别问题。使用基本图像处理技术,从在可重复条件下获取的皮肤病变数字图像中提取基于边界和颜色的特征。还将另外两种分类方法,即统计判别分析和神经网络的应用,应用于同一问题并比较结果。
支持向量机(SVM)算法表现良好,实现了94.1%的正确分类,优于其他两种分类方法的性能。判别分析方法正确分类了88%的病例(71%的恶性黑色素瘤和100%的发育异常痣),而神经网络的表现大致相同。
使用如本文所述的基于计算机的系统旨在避免人为主观性,并根据若干标准执行特定任务。然而,对于皮肤病变的整体视觉评估和最终诊断,专家皮肤科医生的存在被认为是必要的。