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A Model of High-Dimensional Feature Reduction Based on Variable Precision Rough Set and Genetic Algorithm in Medical Image

机译:基于可变精密粗糙集和医学图像遗传算法的高维特征减少模型

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Aiming at the shortcomings of high feature reduction using traditional rough sets, such as insensitivity with noise data and easy loss of potentially useful information, combining with genetic algorithm, in this paper, a VPRS-GA (Variable Precision Rough Set--Genetic Algorithm) model for high-dimensional feature reduction of medical image is proposed. Firstly, rigid inclusion of the lower approximation is extended to partial inclusion by classification error rate β in the traditional rough set model, and the ability dealing with noise data is improved. Secondly, some factors of feature reduction are considered, such as attribute dependency, attributes reduction length, and gene coding weight. A general framework of fitness function is put forward, and different fitness functions are constructed by using different factors such as weight and classification error rate β. Finally, 98 dimensional features of PET/CT lung tumor ROI are extracted to build decision information table of lung tumor patients. Three kinds of experiments in high-dimensional feature reduction are carried out, using support vector machine to verify the influence of recognition accuracy in different fitness function parameters and classification error rate. Experimental results show that classification accuracy is affected deeply by different weight values under the invariable classification error rate condition and by increasing classification error rate under the invariable weigh value condition. Hence, in order to achieve better recognition accuracy, different problems use suitable parameter combination.
机译:针对使用传统粗糙集的高特征减少的缺点,例如与噪声数据的不敏感,并且易于损失潜在的有用信息,与遗传算法相结合,本文是VPRS-GA(可变精密粗糙集 - 遗传算法)提出了医学图像的高维特征减少模型。首先,通过传统粗糙集模型中的分类误差率β延伸到较低近似的刚性包含,并且改善了处理噪声数据的能力。其次,考虑了一些特征减少的因素,例如属性依赖性,属性降低长度和基因编码重量。提出了一种健身功能的一般框架,通过使用权重和分类误差率β等不同的因素来构建不同的健身功能。最后,提取了98个PET / CT肺肿瘤ROI的尺寸特征,以构建肺肿瘤患者的决策信息表。使用支持向量机进行高维特征减少的三种实验,以验证不同健身功能参数和分类误差率的识别精度的影响。实验结果表明,在不变的分类误差率条件下,在不变的分类误差率条件下,分类精度受到不同权重值的影响,并通过在不变的重量条件下提高分类错误率。因此,为了实现更好的识别准确性,不同的问题使用合适的参数组合。

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