Heinrich Christian, Rehbinder Jean, Nazac André, Teig Benjamin, Pierangelo Angelo, Zallat Jihad
J Opt Soc Am A Opt Image Sci Vis. 2018 Dec 1;35(12):2046-2057. doi: 10.1364/JOSAA.35.002046.
Mueller polarimetry is increasingly recognized as a powerful modality in biomedical imaging. Nevertheless, principled statistical analysis procedures are still lacking in this field. This paper presents a complete pipeline for polarimetric bioimages, with an application to ex vivo cervical precancer detection. In the preprocessing stage, we evaluate the replacement of pixels by superpixels. In the analysis stage, we resort to decision theory to select and tune a classifier. Performances of the retained classifier are evaluated. Decision theory provides a rigorous and versatile framework, allowing generalization to other pathologies, to other imaging procedures, and to classification problems involving more than two classes.
穆勒偏振测量法在生物医学成像中越来越被认为是一种强大的模态。然而,该领域仍缺乏有原则的统计分析程序。本文提出了一个用于偏振生物图像的完整流程,并将其应用于离体宫颈癌症前期检测。在预处理阶段,我们评估用超像素替换像素的效果。在分析阶段,我们借助决策理论来选择和调整分类器。对保留的分类器的性能进行评估。决策理论提供了一个严谨且通用的框架,允许将其推广到其他病理情况、其他成像程序以及涉及两个以上类别的分类问题。