CMEMS-UMinho Research Unit, University of Minho, Guimarães, Portugal.
Phys Med Biol. 2018 Feb 2;63(3):035031. doi: 10.1088/1361-6560/aaa3af.
Correct classification of cystoscopy images depends on the interpreter's experience. Bladder cancer is a common lesion that can only be confirmed by biopsying the tissue, therefore, the automatic identification of tumors plays a significant role in early stage diagnosis and its accuracy. To our best knowledge, the use of white light cystoscopy images for bladder tumor diagnosis has not been reported so far. In this paper, a texture analysis based approach is proposed for bladder tumor diagnosis presuming that tumors change in tissue texture. As is well accepted by the scientific community, texture information is more present in the medium to high frequency range which can be selected by using a discrete wavelet transform (DWT). Tumor enhancement can be improved by using automatic segmentation, since a mixing with normal tissue is avoided under ideal conditions. The segmentation module proposed in this paper takes advantage of the wavelet decomposition tree to discard poor texture information in such a way that both steps of the proposed algorithm segmentation and classification share the same focus on texture. Multilayer perceptron and a support vector machine with a stratified ten-fold cross-validation procedure were used for classification purposes by using the hue-saturation-value (HSV), red-green-blue, and CIELab color spaces. Performances of 91% in sensitivity and 92.9% in specificity were obtained regarding HSV color by using both preprocessing and classification steps based on the DWT. The proposed method can achieve good performance on identifying bladder tumor frames. These promising results open the path towards a deeper study regarding the applicability of this algorithm in computer aided diagnosis.
正确分类膀胱镜图像取决于解释者的经验。膀胱癌是一种常见病变,只能通过活检组织来确认,因此,肿瘤的自动识别在早期诊断及其准确性方面起着重要作用。据我们所知,目前尚未报道使用白光膀胱镜图像进行膀胱肿瘤诊断。在本文中,提出了一种基于纹理分析的方法用于膀胱肿瘤诊断,假设肿瘤会改变组织纹理。科学界普遍认为,纹理信息更多地存在于中频到高频范围内,可以通过离散小波变换(DWT)来选择。通过自动分割可以提高肿瘤的增强效果,因为在理想条件下可以避免与正常组织混合。本文提出的分割模块利用小波分解树来丢弃不良的纹理信息,使得所提出算法的分割和分类两个步骤都集中在纹理上。使用多类感知器和支持向量机,并采用分层十折交叉验证程序,使用色调-饱和度-值(HSV)、红-绿-蓝和 CIELab 颜色空间进行分类。通过使用基于 DWT 的预处理和分类步骤,HSV 颜色的灵敏度达到 91%,特异性达到 92.9%。该方法可以在识别膀胱肿瘤帧方面取得良好的性能。这些有希望的结果为该算法在计算机辅助诊断中的适用性的深入研究开辟了道路。