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Prediction of Dermoscopy Patterns for Recognition of both Melanocytic and Non-Melanocytic Skin Lesions

机译:皮肤镜模式的预测,以识别黑素细胞和非黑素细胞皮肤病变

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A differentiation between all types of melanocytic and non-melanocytic skin lesions (MnM?¢????SK) is a challenging task for both computer-aided diagnosis (CAD) and dermatologists due to the complex structure of patterns. The dermatologists are widely using pattern analysis as a first step with clinical attributes to recognize all categories of pigmented skin lesions (PSLs). To increase the diagnostic accuracy of CAD systems, a new pattern classification algorithm is proposed to predict skin lesions patterns by integrating the majority voting (MV?¢????SVM) scheme with multi-class support vector machine (SVM). The optimal color and texture features are also extracted from each region-of-interest (ROI) dermoscopy image and then these normalized features are fed into an MV?¢????SVM classifier to recognize seven classes. The overall system is evaluated using a dataset of 350 dermoscopy images (50 ROIs per class). On average, the sensitivity of 94%, specificity of 84%, 93% of accuracy and area under the receiver operating curve (AUC) of 0.94 are achieved by the proposed MnM?¢????SK system compared to state-of-the-art methods. The obtained result indicates that the MnM?¢????SK system is successful for obtaining the high level of diagnostic accuracy. Thus, it can be used as an alternative pattern classification system to differentiate among all types of pigmented skin lesions (PSLs).
机译:由于模式结构复杂,因此对于计算机辅助诊断(CAD)和皮肤科医生而言,区分所有类型的黑素细胞性皮肤病变和非黑素细胞性皮肤病变(MnM ??????? SK)都是一项艰巨的任务。皮肤科医生广泛使用模式分析作为具有临床属性的第一步,以识别所有类别的色素性皮肤病变(PSL)。为了提高CAD系统的诊断准确性,提出了一种新的模式分类算法,该算法通过将多数投票(MV→SVM)方案与多类支持向量机(SVM)集成来预测皮肤病变模式。还从每个关注区域(ROI)皮肤镜检查图像中提取了最佳的颜色和纹理特征,然后将这些归一化的特征输入到MV-SVM分类器中,以识别七个类别。使用350幅皮肤镜检查图像(每类50个ROI)的数据集评估整个系统。与提出的MnM?s?SK系统相比,平均而言,拟议的MnMα-β-SK体系可实现94%的灵敏度,84%的特异性,93%的准确度和0.94的接收器工作曲线下面积。最先进的方法。所获得的结果表明,MnMα-β-SK系统成功地获得了高水平的诊断准确性。因此,它可用作替代模式分类系统,以区分所有类型的色素性皮肤病变(PSL)。

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