Chaddad Ahmad, Desrosiers Christian, Bouridane Ahmed, Toews Matthew, Hassan Lama, Tanougast Camel
Laboratory for Imagery, Vision and Artificial Intelligence, École de Technologie Supérieure, Montréal, Québec, Canada.
Laboratory of Conception, Optimization and Modelling of Systems, University of Lorraine, Metz, Lorraine, France.
PLoS One. 2016 Feb 22;11(2):e0149893. doi: 10.1371/journal.pone.0149893. eCollection 2016.
This paper proposes to characterize the continuum of colorectal cancer (CRC) using multiple texture features extracted from multispectral optical microscopy images. Three types of pathological tissues (PT) are considered: benign hyperplasia, intraepithelial neoplasia and carcinoma.
In the proposed approach, the region of interest containing PT is first extracted from multispectral images using active contour segmentation. This region is then encoded using texture features based on the Laplacian-of-Gaussian (LoG) filter, discrete wavelets (DW) and gray level co-occurrence matrices (GLCM). To assess the significance of textural differences between PT types, a statistical analysis based on the Kruskal-Wallis test is performed. The usefulness of texture features is then evaluated quantitatively in terms of their ability to predict PT types using various classifier models.
Preliminary results show significant texture differences between PT types, for all texture features (p-value < 0.01). Individually, GLCM texture features outperform LoG and DW features in terms of PT type prediction. However, a higher performance can be achieved by combining all texture features, resulting in a mean classification accuracy of 98.92%, sensitivity of 98.12%, and specificity of 99.67%.
These results demonstrate the efficiency and effectiveness of combining multiple texture features for characterizing the continuum of CRC and discriminating between pathological tissues in multispectral images.
本文旨在利用从多光谱光学显微镜图像中提取的多种纹理特征来表征结直肠癌(CRC)的连续变化情况。研究考虑了三种类型的病理组织(PT):良性增生、上皮内瘤变和癌。
在所提出的方法中,首先使用主动轮廓分割从多光谱图像中提取包含病理组织的感兴趣区域。然后基于高斯-拉普拉斯(LoG)滤波器、离散小波(DW)和灰度共生矩阵(GLCM),利用纹理特征对该区域进行编码。为了评估不同类型病理组织之间纹理差异的显著性,进行了基于克鲁斯卡尔-沃利斯检验的统计分析。然后,根据各种分类器模型预测病理组织类型的能力,对纹理特征的有效性进行定量评估。
初步结果表明,对于所有纹理特征,不同类型病理组织之间存在显著的纹理差异(p值<0.01)。就病理组织类型预测而言,灰度共生矩阵纹理特征单独表现优于LoG和DW特征。然而,通过组合所有纹理特征可获得更高的性能,平均分类准确率为98.92%,灵敏度为98.12%,特异性为99.67%。
这些结果证明了组合多种纹理特征用于表征结直肠癌连续变化情况以及区分多光谱图像中病理组织的有效性和效率。