Malignant melanoma detection using multi layer preceptron with visually imperceptible features and PCA components from MED-NODE dataset

Soumen Mukherjee, A. Adhikari, M. Roy
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引用次数: 7

Abstract

In this paper, a scheme is worked out for classification of images belonging to malignant melanoma and nevus class by multi layer neural network architecture with different trainings and cost functions. Total 1,875 shape, colour and texture features are extracted from 170 images from MED-NODE dataset. With the total 1,875 features an accuracy of 82.05% is achieved. Feature ranking algorithm ReliefF is used for ranking these features. MLP is run with varying number of best ranked features. With 10 best features an accuracy of 83.33%, sensitivity of 86.77% and specificity of 72.78% are achieved with 3 fold cross-validation. Effect of pre-processing the features with principal component analysis is explored and found that the optimal number of principal components is 25, which yields a maximum accuracy of 87.18% which is much higher than the previously reported accuracy level with this dataset.
基于视觉难以察觉特征的多层感知器和MED-NODE数据集PCA成分的恶性黑色素瘤检测
本文提出了一种利用多层神经网络架构,采用不同训练量和代价函数对恶性黑色素瘤和痣类图像进行分类的方案。从MED-NODE数据集中的170幅图像中提取了1875个形状、颜色和纹理特征。总共1875个特征,准确率达到82.05%。特征排序算法ReliefF用于对这些特征进行排序。MLP使用不同数量的最佳排名特性运行。10个最佳特征经3次交叉验证,准确率为83.33%,灵敏度为86.77%,特异性为72.78%。研究了主成分分析对特征进行预处理的效果,发现主成分的最优数量为25个,最大准确率为87.18%,大大高于该数据集的精度水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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