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Classification of Normal and Diseased Liver Shapes based on Spherical Harmonics Coefficients.

机译:根据球谐系数对正常和患病的肝脏形状进行分类。

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Liver-shape analysis and quantification is still an open research subject. Quantitative assessment of the liver is of clinical importance in various procedures such as diagnosis, treatment planning, and monitoring. Liver-shape classification is of clinical importance for corresponding intra-subject and inter-subject studies. In this research, we propose a novel technique for the liver-shape classification based on Spherical Harmonics (SH) coefficients. The proposed liver-shape classification algorithm consists of the following steps: (a) Preprocessing, including mesh generation and simplification, point-set matching, and surface to template alignment; (b) Liver-shape parameterization, including surface normalization, SH expansion followed by parameter space registration; (c) Feature selection and classification, including frequency based feature selection, feature space reduction by Principal Component Analysis (PCA), and classification. The above multi-step approach is novel in the sense that registration and feature selection for liver-shape classification is proposed and implemented and validated for the normal and diseases liver in the SH domain. Various groups of SH features after applying conventional PCA and/or ordered by p-value PCA are employed in two classifiers including Support Vector Machine (SVM) and k-Nearest Neighbor (k-NN) in the presence of 101 liver data sets. Results show that the proposed specific features combined with classifiers outperform existing liver-shape classification techniques that employ liver surface information in the spatial domain. In the available data sets, the proposed method can successful classify normal and diseased livers with a correct classification rate of above 90 %. The performed result in average is higher than conventional liver-shape classification method. Several standard metrics such as Leave-one-out cross-validation and Receiver Operating Characteristic (ROC) analysis are employed in the experiments and confirm the effectiveness of the proposed liver-shape classification with respect to conventional techniques.
机译:肝形分析和定量仍然是一个开放的研究课题。在各种程序(例如诊断,治疗计划和监测)中,肝脏的定量评估具有重要的临床意义。肝形分类对于相应的受试者间和受试者间研究具有重要的临床意义。在这项研究中,我们提出了一种基于球谐(SH)系数的肝脏形状分类的新技术。提出的肝脏形状分类算法包括以下步骤:(a)预处理,包括网格生成和简化,点集匹配以及曲面到模板的对齐; (b)肝形参数化,包括表面标准化,SH扩展和参数空间配准; (c)特征选择和分类,包括基于频率的特征选择,通过主成分分析(PCA)进行特征空间缩减和分类。在针对SH领域的正常和疾病肝脏提出并实施和验证肝形状分类的注册和特征选择的意义上,上述多步骤方法是新颖的。在应用101个肝脏数据集的情况下,在应用常规PCA之后和/或按p值PCA排序的各种SH特征在两个分类器中使用,包括支持向量机(SVM)和k最近邻(k-NN)。结果表明,与分类器相结合的拟议特定特征优于在空间域中采用肝脏表面信息的现有肝脏形状分类技术。在可用的数据集中,所提出的方法可以成功分类正常和患病的肝脏,正确分类率超过90%。平均而言,执行结果要高于常规肝形分类方法。实验中采用了几种标准度量标准,如留一法交叉验证和接收者操作特征(ROC)分析,这些标准度量标准相对于常规技术证实了建议的肝脏形状分类的有效性。

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