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How to choose and optimize a classifier for your polarimetric imaging data?

机译:如何选择和优化Polarimetric Imaging Data的分类器?

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Mueller polarimetry is a powerful characterization technique for a variety of samples and a promising optical-biopsy toolfor early detection of cancer. Recent advances in Mueller imaging devices allow the collection of large ex-vivo and invivoimage databases. Although the technique is sensitive to subtle changes in the micro-organization of tissue, theMueller matrices of such complex media contain intertwined polarimetric effects and are difficult to interpret. Toidentify the polarimetric signature of a given tissue modification (cancerous or not), machine learning tools areparticularly well suited. However, a statistically sound approach is needed to make the most out of these tools and avoidcommon pitfalls. We present a global statistical framework based on decision theory. It consists of a completepreprocessing and analysis pipeline for polarimetric bioimages. In the analysis stage, we use a loss-risk-based approachto automatically select the optimal classifier among a library of classifiers. The approach allows to determine the subsetof polarimetric parameters of interest, to determine the parameters of the classifiers and to assess classifier performanceusing cross-validation. The proposed framework is illustrated with precancer detection on human ex-vivo cervicalsamples.
机译:Mueller Polarimetry是一种强大的表征技术,适用于各种样品和有前途的光学活检工具用于早期发现癌症。 Mueller成像装置的最新进展允许收集大型前体内和Invivo图像数据库。虽然该技术对微妙组织的微妙变化敏感,但是这种复杂介质的穆勒矩阵含有交织的极性效果,并且难以解释。到确定给定组织修改(癌症或不)的偏振签名,机器学习工具是特别适合。但是,需要一种统计上的声音方法来充分利用这些工具并避免常见的陷阱。我们提出了一种基于决策理论的全球统计框架。它由一个完整的组成Polarimetric BioImages的预处理和分析管道。在分析阶段,我们使用基于损失的风险方法自动选择分类器库中的最佳分类器。该方法允许确定子集偏振参数的感兴趣,确定分类器的参数并评估分类器性能使用交叉验证。所提出的框架被人体前体内宫颈的预校验检测说明了样品。

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