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首页> 外文期刊>Knowledge-Based Systems >Dermoscopic assisted diagnosis in melanoma: Reviewing results, optimizing methodologies and quantifying empirical guidelines
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Dermoscopic assisted diagnosis in melanoma: Reviewing results, optimizing methodologies and quantifying empirical guidelines

机译:皮肤镜辅助诊断黑色素瘤:评估结果,优化方法并量化经验指南

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摘要

Early diagnosis is still the most important factor to deal with skin cancer, a disease that challenges physicians and researchers. It has benefited from computer-aided diagnosis methods that successfully combine dermoscopy, Digital Image Processing, and Machine Learning techniques. This paper aims to approximate medical professionals working with dermoscopy to these methods, to join the challenge of melanoma early detection. Accordingly, a proposal for extracting, selecting and combining texture and shape features from dermoscopic images is presented. The Feature Selection task is added to the learning process to potentiate the quality of classification models. Three classical Machine Learning algorithms were applied to differentiate melanoma from non-melanoma images. The models are evaluated by standard performance measures and a multi-criteria decision analysis method. This is the first time such method is used in melanoma diagnosis. As a result, we found a decision tree that performs well and allows the explicit representation and analysis of the knowledge learned from the images. In addition, the competitiveness of our decision models in comparison with literature approaches reviewed in this work encourages further applications of Machine Learning and Feature Selection to assist computer-aided diagnosis.
机译:早期诊断仍然是应对皮肤癌的最重要因素,而皮肤癌是一种挑战医生和研究人员的疾病。它受益于计算机辅助诊断方法,该方法成功地结合了皮肤镜检查,数字图像处理和机器学习技术。本文旨在使从事皮肤镜检查的医学专业人员对这些方法有所了解,以应对黑色素瘤早期发现的挑战。因此,提出了用于从皮肤镜图像提取,选择和组合纹理和形状特征的提议。将“特征选择”任务添加到学习过程中,以增强分类模型的质量。三种经典的机器学习算法被应用于区分黑色素瘤和非黑色素瘤图像。通过标准性能度量和多准则决策分析方法对模型进行评估。这是这种方法首次用于黑色素瘤诊断。结果,我们发现了一个性能良好的决策树,并允许对从图像中学到的知识进行显式表示和分析。此外,我们的决策模型与本文所研究的文献方法相比具有竞争力,这鼓励了机器学习和特征选择在计算机辅助诊断中的进一步应用。

著录项

  • 来源
    《Knowledge-Based Systems》 |2018年第15期|9-24|共16页
  • 作者单位

    Laboratory of Bioinformatics (LABI), Graduate Program in Electrical Engineering and Computer Science (PGEEC), Western Paraná State University (UNIOESTE);

    Polytechnic Institute of Leiria;

    Laboratory of Bioinformatics (LABI), Graduate Program in Electrical Engineering and Computer Science (PGEEC), Western Paraná State University (UNIOESTE);

    Laboratory of Bioinformatics (LABI), Graduate Program in Electrical Engineering and Computer Science (PGEEC), Western Paraná State University (UNIOESTE),Bioinspired Computing Laboratory, University of São Paulo;

    Laboratory of Bioinformatics (LABI), Graduate Program in Electrical Engineering and Computer Science (PGEEC), Western Paraná State University (UNIOESTE),Laboratory of Computational Intelligence, University of São Paulo;

    Laboratory of Bioinformatics (LABI), Graduate Program in Electrical Engineering and Computer Science (PGEEC), Western Paraná State University (UNIOESTE),Service of Coloproctology, University of Campinas;

    Polytechnic Institute of Leiria,Instituto de Telecomunicações - Multimedia Signal Processing Group;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Data mining; Computer-aided diagnosis; Dermoscopy; Image analysis;

    机译:机器学习;数据挖掘;计算机辅助诊断;皮肤镜检查;图像分析;

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