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Tissue Discrimination from Impedance Spectroscopy as a Multi-objective Optimisation Problem with Weighted Naïve Bayes Classification

机译:来自阻抗光谱的组织鉴别作为加权Naïve贝叶斯分类的多目标优化问题

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Tissue classification from electrical impedance spectroscopy has several applications in diagnosis, surgical planning, and minimally invasive surgery. The method involves applying an alternating current to the sample and measuring its electric impedance at various frequencies. The spectrum is fit to a equivalent electric circuit that mimics the shape of the tissue's impedance spectrum. The model parameters are then used for classification. This paper proposes a new solution to decompose the model fitting problem into a form suitable for multi-objective optimisation, from which all the non-dominated solutions are used to form the database of parameters for a given tissue, as opposed to a single solution that is typically seen in impedance spectroscopy. The solution explores the use of the reference point dominance condition within Non-dominated Sorting Genetic Algorithm II to fit the data to the double dispersion Cole model. Each non-dominated solution contain values for the dispersion model elements. The multiple parameter value solutions from the optimiser are used as features in a weighted Naïve Bayes classifier to identify a new tissue sample. Experiments results in 3 different tissue samples shows that the method is successful in correctly labelling the data with an average accuracy of 89%.
机译:来自电阻抗光谱的组织分类在诊断,手术规划和微创手术中具有几种应用。该方法包括将交流电流施加到样品并以各种频率测量其电阻抗。光谱适合于模拟组织阻抗谱的形状的等效电路。然后将模型参数用于分类。本文提出了一种将模型拟合问题分解成适合于多目标优化的形式的新解决方案,所有非主导解决方案都用于形成给定组织的参数数据库,而不是单个解决方案通常在阻抗光谱中看到。该解决方案探讨了非主导排序遗传算法II内的参考点优势条件的使用,以将数据拟合到双色分散COLE模型。每个非主导的解决方案包含色散模型元素的值。来自优化器的多个参数值解决方案用作加权Naïve贝叶斯分类器中的特征,以识别新的组织样本。实验导致3种不同的组织样本表明该方法成功地正确地标记数据,平均精度为89%。

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