Garnavi Rahil, Aldeen Mohammad, Bailey James
IEEE Trans Inf Technol Biomed. 2012 Nov;16(6):1239-52. doi: 10.1109/TITB.2012.2212282. Epub 2012 Aug 8.
This paper presents a novel computer-aided diagnosis system for melanoma. The novelty lies in the optimised selection and integration of features derived from textural, borderbased and geometrical properties of the melanoma lesion. The texture features are derived from using wavelet-decomposition, the border features are derived from constructing a boundaryseries model of the lesion border and analysing it in spatial and frequency domains, and the geometry features are derived from shape indexes. The optimised selection of features is achieved by using the Gain-Ratio method, which is shown to be computationally efficient for melanoma diagnosis application. Classification is done through the use of four classifiers; namely, Support Vector Machine, Random Forest, Logistic Model Tree and Hidden Naive Bayes. The proposed diagnostic system is applied on a set of 289 dermoscopy images (114 malignant, 175 benign) partitioned into train, validation and test image sets. The system achieves and accuracy of 91.26% and AUC value of 0.937, when 23 features are used. Other important findings include (i) the clear advantage gained in complementing texture with border and geometry features, compared to using texture information only, and (ii) higher contribution of texture features than border-based features in the optimised feature set.
本文提出了一种用于黑色素瘤的新型计算机辅助诊断系统。其新颖之处在于对源自黑色素瘤病变纹理、基于边界和几何特性的特征进行了优化选择和整合。纹理特征通过小波分解获得,边界特征通过构建病变边界的边界序列模型并在空间和频域中进行分析获得,几何特征通过形状指数获得。特征的优化选择通过使用增益比方法实现,该方法在黑色素瘤诊断应用中被证明具有计算效率。分类通过使用四种分类器进行,即支持向量机、随机森林、逻辑模型树和隐式朴素贝叶斯。所提出的诊断系统应用于一组289张皮肤镜图像(114张恶性,175张良性),这些图像被划分为训练、验证和测试图像集。当使用23个特征时,该系统的准确率达到91.26%,AUC值为0.937。其他重要发现包括:(i)与仅使用纹理信息相比,将边界和几何特征与纹理特征相结合具有明显优势;(ii)在优化特征集中,纹理特征的贡献高于基于边界的特征。