Department of Radiological Intervention, Shanghai Sixth People's Hospital East Campus Affiliated to Shanghai University of Medicine & Health Science, Shanghai, 201306, China.
Shanghai University of Traditional Chinese Medicine, Shanghai, 201203, China.
J Med Syst. 2019 Aug 14;43(9):306. doi: 10.1007/s10916-019-1429-8.
In order to improve the diagnostic accuracy of colon cancer, a novel classification algorithm based on sub-patch weight color histogram and improved SVM is proposed, which has good approximation ability for complex pathological image. Our proposed algorithm combines wavelet kernel SVM with color histogram to classify pathological image. Firstly, the pathological image is divided into non-overlapping sub-patches, and the features of sub-patch histogram are extracted. Then, the global and local features are fused by the sub-patch weighting algorithm. Then, the RelicfF based forward selection algorithm is used to integrate color features and texture features so as to enhance the characterization capabilities of the tumor cell. Finally, Morlet wavelet kernel-based least squares support vector machine method is adopted to enhance the generalization ability of the model for small sample with non-linear and high-dimensional pattern classification problems. Experimental results show that the proposed pathological diagnostic algorithm can gain higher accuracy compared with existing comparison algorithms.
为了提高结肠癌的诊断准确率,提出了一种基于子补丁加权颜色直方图和改进 SVM 的新型分类算法,该算法对复杂的病理图像具有良好的逼近能力。我们提出的算法将小波核 SVM 与颜色直方图相结合来对病理图像进行分类。首先,将病理图像分成非重叠的子补丁,并提取子补丁直方图的特征。然后,通过子补丁加权算法融合全局和局部特征。然后,采用基于 ReliefF 的前向选择算法集成颜色特征和纹理特征,以增强肿瘤细胞的表征能力。最后,采用基于 Morlet 小波核的最小二乘支持向量机方法增强模型对非线性、高维模式分类问题的小样本的泛化能力。实验结果表明,与现有的对比算法相比,所提出的病理诊断算法可以获得更高的准确率。