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Computer-assisted lip diagnosis on traditional Chinese medicine using multi-class support vector machines

机译:使用多级支持向量机的中药辅助唇探

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Background In Traditional Chinese Medicine (TCM), the lip diagnosis is an important diagnostic method which has a long history and is applied widely. The lip color of a person is considered as a symptom to reflect the physical conditions of organs in the body. However, the traditional diagnostic approach is mainly based on observation by doctor’s nude eyes, which is non-quantitative and subjective. The non-quantitative approach largely depends on the doctor’s experience and influences accurate the diagnosis and treatment in TCM. Developing new quantification methods to identify the exact syndrome based on the lip diagnosis of TCM becomes urgent and important. In this paper, we design a computer-assisted classification model to provide an automatic and quantitative approach for the diagnosis of TCM based on the lip images. Methods A computer-assisted classification method is designed and applied for syndrome diagnosis based on the lip images. Our purpose is to classify the lip images into four groups: deep-red, red, purple and pale. The proposed scheme consists of four steps including the lip image preprocessing, image feature extraction, feature selection and classification. The extracted 84 features contain the lip color space component, texture and moment features. Feature subset selection is performed by using SVM-RFE (Support Vector Machine with recursive feature elimination), mRMR (minimum Redundancy Maximum Relevance) and IG (information gain). Classification model is constructed based on the collected lip image features using multi-class SVM and Weighted multi-class SVM (WSVM). In addition, we compare SVM with k-nearest neighbor (kNN) algorithm, Multiple Asymmetric Partial Least Squares Classifier (MAPLSC) and Na?ve Bayes for the diagnosis performance comparison. All displayed faces image have obtained consent from the participants. Results A total of 257 lip images are collected for the modeling of lip diagnosis in TCM. The feature selection method SVM-RFE selects 9 important features which are composed of 5 color component features, 3 texture features and 1 moment feature. SVM, MAPLSC, Na?ve Bayes, kNN showed better classification results based on the 9 selected features than the results obtained from all the 84 features. The total classification accuracy of the five methods is 84%, 81%, 79% and 81%, 77%, respectively. So SVM achieves the best classification accuracy. The classification accuracy of SVM is 81%, 71%, 89% and 86% on Deep-red, Pale Purple, Red and lip image models, respectively. While with the feature selection algorithm mRMR and IG, the total classification accuracy of WSVM achieves the best classification accuracy. Therefore, the results show that the system can achieve best classification accuracy combined with SVM classifiers and SVM-REF feature selection algorithm. Conclusions A diagnostic system is proposed, which firstly segments the lip from the original facial image based on the Chan-Vese level set model and Otsu method, then extracts three kinds of features (color space features, Haralick co-occurrence features and Zernike moment features) on the lip image. Meanwhile, SVM-REF is adopted to select the optimal features. Finally, SVM is applied to classify the four classes. Besides, we also compare different feature selection algorithms and classifiers to verify our system. So the developed automatic and quantitative diagnosis system of TCM is effective to distinguish four lip image classes: Deep-red, Purple, Red and Pale. This study puts forward a new method and idea for the quantitative examination on lip diagnosis of TCM, as well as provides a template for objective diagnosis in TCM.
机译:背景技术中药(TCM),唇部诊断是一种具有悠久历史的重要诊断方法,广泛应用。人的唇色被认为是反映体内器官物理条件的症状。然而,传统的诊断方法主要基于医生裸眼的观察,这是非定量和主观的。非定量方法在很大程度上取决于医生的经验,影响中医的诊断和治疗准确。开发新的量化方法,以确定基于TCM的唇部诊断的精确综合征变得紧迫和重要。在本文中,我们设计了一种计算机辅助分类模型,以提供基于唇唇图像的TCM诊断的自动和定量方法。方法基于唇唇图像设计和应用计算机辅助分类方法,用于综合征诊断。我们的目的是将唇部图像分为四组:深红色,红色,紫色和苍白。所提出的方案包括四个步骤,包括唇像预处理,图像特征提取,特征选择和分类。提取的84个功能包含唇色空间分量,纹理和矩特征。特征子集选择是通过使用SVM-RFE(支持向量机具有递归特征消除),MRMR(最小冗余最大相关)和IG(信息增益)来执行。基于使用多级SVM和加权多级SVM(WSVM)的收集的唇唇图像特征来构建分类模型。此外,我们将SVM与K-最近邻(KNN)算法进行比较,多个非对称部分最小二乘分类器(MAPLSC)和NA ve Bayes用于诊断性能比较。所有显示的面孔图像都已从参与者获得同意。结果总共257个唇片,用于在中医中唇部诊断的建模。特征选择方法SVM-RFE选择了由5个颜色分量特征,3个纹理功能和1时刻特征组成的9个重要功能。 SVM,MAPLSC,NA?VE贝叶斯,KNN基于9所选择的特征显示出更好的分类结果,而不是从所有84个功能获得的结果。五种方法的总分类准确性分别为84%,81%,79%和81%,77%。因此SVM实现了最佳分类准确性。 SVM的分类精度分别为深红色,浅紫色,红色和唇部图像模型的81%,71%,89%和86%。虽然采用特征选择算法MRMR和IG,但WSVM的总分类精度达到了最佳的分类准确性。因此,结果表明,该系统可以实现与SVM分类器和SVM-REF特征选择算法相结合的最佳分类精度。结论提出了一种诊断系统,首先基于CHAN-VEES水平集模型和OTSU方法将唇缘从原始面部图像分段,然后提取三种特征(色彩空间功能,Haralick共同发生功能和Zernike时刻特征)在唇部图像上。同时,采用SVM-ref来选择最佳功能。最后,应用SVM来分类四个类。此外,我们还比较不同的特征选择算法和分类器来验证我们的系统。因此,TCM的发达的自动和定量诊断系统可有效区分四个唇部图像课程:深红色,紫色,红色和苍白。本研究提出了对TCM唇部诊断的定量检查的新方法和思想,并为中医的客观诊断提供了模板。

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