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Band selection in spectral imaging for non-invasive melanoma diagnosis

机译:光谱成像中的波段选择用于非侵入性黑色素瘤诊断

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A method consisting of the combination of the Synthetic Minority Over-Sampling TEchnique (SMOTE) and the Sequential Forward Floating Selection (SFFS) technique is used to do band selection in a highly imbalanced, small size, two-class multispectral dataset of melanoma and non-melanoma lesions. The aim is to improve classification rate and help to identify those spectral bands that have a more important role in melanoma detection. All the processing steps were designed taking into account the low number of samples in the dataset, situation that is quite common in medical cases. The training/test sets are built using a Leave-One-Out strategy. SMOTE is applied in order to deal with the imbalance problem, together with the Qualified Majority Voting scheme (QMV). Support Vector Machines (SVM) is the classification method applied over each balanced set. Results indicate that all melanoma lesions are correctly classified, using a low number of bands, reaching 100% sensitivity and 72% specificity when considering nine (out of a total of 55) spectral bands.
机译:黑色素瘤和非黑色素瘤的高度不平衡,小尺寸,两类多光谱数据集的合成方法是使用综合少数族裔过采样技术(SMOTE)和顺序正向浮动选择(SFFS)技术的组合来进行波段选择。 -黑色素瘤病变。目的是提高分类率并帮助识别在黑素瘤检测中具有更重要作用的那些光谱带。设计所有处理步骤时都考虑到数据集中的样本数量较少,这种情况在医疗案例中非常普遍。训练/测试集使用“留一法”策略构建。为了解决不平衡问题,应用了SMOTE以及合格多数投票方案(QMV)。支持向量机(SVM)是应用于每个平衡集的分类方法。结果表明,考虑到九个(总共55个)光谱带,所有黑色素瘤病变均已使用少量谱带正确分类,达到100%的敏感性和72%的特异性。

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