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首页> 外文期刊>International Journal of Knowledge-Based in Intelligent Engineering Systems >Automated recognition of cellular phenotypes by support vector machines with feature reduction
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Automated recognition of cellular phenotypes by support vector machines with feature reduction

机译:支持向量机自动识别细胞表型并减少特征

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In this paper, wrapper based feature selection by support vector machine is used for cellular multi-phenotypic mitotic analysis (MMA) in high content screening (HCS). Haralick texture feature subset and Zernike polynomial moment subset are used respectively or combined together as extracted digital feature set for original cellular images. Feature reduction is done by support vector machine based recursive feature elimination algorithm on these feature sets. With optimal feature subset selected, fuzzy support vector machine are adopted to judge the cellular phenotype. The results indicate Haralick texture feature subset is complementary with Zernike polynomial moment subset, when these two feature subsets are combined together; the cellular phase identification system achieved 99.17% accuracy, which is better than only one feature subset of them is used. The recognition accuracy with feature reduction is better than that achieved when no feature reduction done or using PCA as feature recombination tool on these datasets.
机译:在本文中,通过支持向量机基于包装的特征选择被用于高含量筛选(HCS)中的细胞多表型有丝分裂分析(MMA)。分别使用Haralick纹理特征子集和Zernike多项式矩子集或将它们组合在一起,作为原始细胞图像的提取数字特征集。通过基于支持向量机的递归特征消除算法对这些特征集进行特征约简。选择最优特征子集后,采用模糊支持向量机判断细胞表型。结果表明,当这两个特征子集组合在一起时,Haralick纹理特征子集与Zernike多项式矩子集互补。细胞相位识别系统达到了99.17%的准确性,优于仅使用其中一个特征子集。具有特征约简的识别精度要好于没有对这些数据集进行特征约简或使用PCA作为特征重组工具的情况。

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