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SVM-Enabled Intelligent Genetic Algorithmic Model for Realizing Efficient Universal Feature Selection in Breast Cyst Image Acquired via Ultrasound Sensing Systems

机译:支持SVM的智能遗传算法模型可通过超声传感系统在乳腺囊肿图像中实现高效的通用特征选择

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摘要

In recent years, there are several cost-effective intelligent sensing systems such as ultrasound imaging systems for visualizing the internal body structures of the body. Further, such intelligent sensing systems such as ultrasound systems have been deployed by medical doctors around the globe for efficient detection of several diseases and disorders in the human body. Even though the ultrasound sensing system is a useful tool for obtaining the imagery of various body parts, there is always a possibility of inconsistencies in these images due to the variation in the settings of the system parameters. Therefore, in order to overcome such issues, this research devises an SVM-enabled intelligent genetic algorithmic model for choosing the universal features with four distinct settings of the parameters. Subsequently, the distinguishing characteristics of these features are assessed utilizing the Sorensen-Dice coefficient, -test, and Pearson’s R measure. It is apparent from the results of the SVM-enabled intelligent genetic algorithmic model that this approach aids in the effectual selection of universal features for the breast cyst images. In addition, this approach also accomplishes superior accuracy in the classification of the ultrasound image for four distinct settings of the parameters.
机译:近年来,存在几种具有成本效益的智能感测系统,例如用于使身体内部结构可视化的超声成像系统。此外,诸如超声系统之类的这种智能感测系统已被全球的医生所采用,以有效地检测人体中的几种疾病。即使超声传感系统是获得各个身体部位图像的有用工具,但由于系统参数设置的变化,这些图像中始终存在不一致的可能性。因此,为了克服这些问题,本研究设计了一种支持SVM的智能遗传算法模型,用于选择具有四个不同设置参数的通用特征。随后,利用Sorensen-Dice系数,-test和Pearson的R量度来评估这些特征的显着特征。从支持SVM的智能遗传算法模型的结果可以明显看出,这种方法有助于有效选择乳腺囊肿图像的通用特征。另外,对于参数的四个不同设置,该方法还在超声图像的分类中实现了卓越的准确性。

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