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Intelligent approaches for prognosticating atherosclerotic and non-atherosclerotic individuals

机译:用于预测动脉粥样硬化和非动脉粥样硬化个体的智能方法

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In human cardiovascular system, arteries plays a vital role in carrying pure blood away from the heart and supplying them to the superior and inferior parts of the body. Atherosclerosis is a condition where the arteries become narrowed and hardened due to an excessive build- up of plaque around artery wall. The growth of the disease is slow, asymptomatic, and may lead to abrupt cardiac arrest, stroke, or myocardial infarction. Currently imaging methods are applied, however they lack the required resolution and sensitivity for detection. In this work clinical observations and habits of individuals are considered. Intelligent machine learning technique, multiclass SVM is used for assorting the individuals. A case study was made in this work regarding the atherosclerosis disease progression and crucial features were selected for effectuating the performance of the classifier. The state-of-the-art technique was enhanced with efficient pre-processing technique. Optimized missing value imputation strategy, Principal Component Analysis (PCA) for STULONG dataset and efficient feature subset selection method, hybrid FCBF have been employed for extracting the relevant features and dismissing the redundant features. Further proceeding to intensify the target, our work has outperformed with utmost accuracy of about 98.97% compared with other state-of-the-art machine learning techniques.
机译:在人类的心血管系统中,动脉在将纯血从心脏带走并将其供应到身体的上,下等部位方面起着至关重要的作用。动脉粥样硬化是由于动脉壁周围斑块过多积聚而使动脉变窄和变硬的疾病。该疾病的生长缓慢,无症状,并可能导致心脏骤停,中风或心肌梗塞。当前应用了成像方法,但是它们缺乏检测所需的分辨率和灵敏度。在这项工作中,要考虑个人的临床观察和习惯。智能机器学习技术,多类支持向量机用于对个人进行分类。在这项工作中进行了一个关于动脉粥样硬化疾病进展的案例研究,并选择了关键特征来实现分类器的性能。最新的技术通过高效的预处理技术得到了增强。优化的缺失值插补策略,STULONG数据集的主成分分析(PCA)和有效的特征子集选择方法,混合FCBF用于提取相关特征并消除冗余特征。进一步加强目标,与其他最新的机器学习技术相比,我们的工作以最高的精度达到了约98.97%。

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