Fu Jachih J C, Yu Ya-Wen, Lin Hong-Mau, Chai Jyh-Wen, Chen Clayton Chi-Chang
Computer Aided Measurement and Diagnostic Systems Laboratory, Department of Industrial Engineering and Management, National Yunlin University of Science and Technology, No. 123, Sec. 3, University Road, Douliu City, Yunlin County 64002, Taiwan, ROC.
Computer Aided Measurement and Diagnostic Systems Laboratory, Department of Industrial Engineering and Management, National Yunlin University of Science and Technology, No. 123, Sec. 3, University Road, Douliu City, Yunlin County 64002, Taiwan, ROC.
Comput Med Imaging Graph. 2014 Jun;38(4):267-75. doi: 10.1016/j.compmedimag.2013.12.009. Epub 2014 Jan 2.
A computer-aided diagnostic system for colonoscopic imaging has been developed to classify colorectal polyps by type. The modules of the proposed system include image enhancement, feature extraction, feature selection and polyp classification. Three hundred sixty-five images (214 with hyperplastic polyps and 151 with adenomatous polyps) were collected from a branch of a medical center in central Taiwan. The raw images were enhanced by the principal component transform (PCT). The features of texture analysis, spatial domain and spectral domain were extracted from the first component of the PCT. Sequential forward selection (SFS) and sequential floating forward selection (SFFS) were used to select the input feature vectors for classification. Support vector machines (SVMs) were employed to classify the colorectal polyps by type. The classification performance was measured by the Az values of the Receiver Operating Characteristic curve. For all 180 features used as input vectors, the test data set yielded Az values of 88.7%. The Az value was increased by 2.6% (from 88.7% to 91.3%) and 4.4% (from 88.7% to 93.1%) for the features selected by the SFS and the SFFS, respectively. The SFS and the SFFS reduced the dimension of the input vector by 57.2% and 73.8%, respectively. The SFFS outperformed the SFS in both the reduction of the dimension of the feature vector and the classification performance. When the colonoscopic images were visually inspected by experienced physicians, the accuracy of detecting polyps by types was around 85%. The accuracy of the SFFS with the SVM classifier reached 96%. The classification performance of the proposed system outperformed the conventional visual inspection approach. Therefore, the proposed computer-aided system could be used to improve the quality of colorectal polyp diagnosis.
一种用于结肠镜成像的计算机辅助诊断系统已被开发出来,用于按类型对大肠息肉进行分类。该系统的模块包括图像增强、特征提取、特征选择和息肉分类。从台湾中部一家医疗中心的一个分支机构收集了365张图像(214张为增生性息肉,151张为腺瘤性息肉)。原始图像通过主成分变换(PCT)进行增强。从PCT的第一成分中提取纹理分析、空间域和光谱域的特征。使用顺序前向选择(SFS)和顺序浮动前向选择(SFFS)来选择用于分类的输入特征向量。采用支持向量机(SVM)按类型对大肠息肉进行分类。分类性能通过接收器操作特性曲线的Az值来衡量。对于用作输入向量的所有180个特征,测试数据集的Az值为88.7%。对于由SFS和SFFS选择的特征,Az值分别提高了2.6%(从88.7%提高到91.3%)和4.4%(从88.7%提高到93.1%)。SFS和SFFS分别将输入向量的维度降低了57.2%和73.8%。在特征向量维度的降低和分类性能方面,SFFS均优于SFS。当由经验丰富的医生对结肠镜图像进行目视检查时,按类型检测息肉的准确率约为85%。采用SVM分类器的SFFS的准确率达到了96%。所提出系统的分类性能优于传统的目视检查方法。因此,所提出的计算机辅助系统可用于提高大肠息肉诊断的质量。