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Machine learning–based diagnosis of melanoma using macro images

机译:使用宏图像基于机器学习的黑色素瘤诊断

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摘要

Cancer bears a poisoning threat to human society. Melanoma, the skin cancer, originates from skin layers and penetrates deep into subcutaneous layers. There exists an extensive research in melanoma diagnosis using dermatoscopic images captured through a dermatoscope. While designing a diagnostic model for general handheld imaging systems is an emerging trend, this article proposes a computer-aided decision support system for macro images captured by a general-purpose camera. General imaging conditions are adversely affected by nonuniform illumination, which further affects the extraction of relevant information. To mitigate it, we process an image to define a smooth illumination surface using the multistage illumination compensation approach, and the infected region is extracted using the proposed multimode segmentation method. The lesion information is numerated as a feature set comprising geometry, photometry, border series, and texture measures. The redundancy in feature set is reduced using information theory methods, and a classification boundary is modeled to distinguish benign and malignant samples using support vector machine, random forest, neural network, and fast discriminative mixed-membership-based naive Bayesian classifiers. Moreover, the experimental outcome is supported by hypothesis testing and boxplot representation for classification losses. The simulation results prove the significance of the proposed model that shows an improved performance as compared with competing arts.
机译:癌症对人类社会构成了中毒威胁。黑色素瘤是一种皮肤癌,起源于皮肤层并深入皮下层。在使用通过皮肤镜捕获的皮肤镜图像的黑色素瘤诊断中,存在广泛的研究。尽管为通用手持式成像系统设计诊断模型是一种新兴趋势,但本文提出了一种计算机辅助决策支持系统,用于由通用相机捕获的宏图像。通用成像条件受照明不均匀的不利影响,这进一步影响了相关信息的提取。为了缓解这种情况,我们使用多级照明补偿方法处理图像以定义平滑的照明表面,并使用提出的多模式分割方法提取感染区域。将病变信息编号为一个特征集,包括几何,测光,边界序列和纹理量度。使用信息论方法减少了特征集中的冗余,并使用支持向量机,随机森林,神经网络和基于快速区分混合成员的朴素贝叶斯分类器对分类边界进行建模,以区分良性和恶性样本。而且,实验结果得到假设检验和分类损失的箱线图表示的支持。仿真结果证明了所提出模型的重要性,与竞争技术相比,该模型具有更高的性能。

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