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A novel intelligent approach for predicting atherosclerotic individuals from big data for healthcare

机译:一种从大数据中预测动脉粥样硬化个体以用于医疗保健的新颖智能方法

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摘要

Atherosclerosis is a condition in human circulatory, where the arteries become narrowed and hardened due to accumulation of plaque around artery wall. The growth of the disease is slow and asymptomatic. Currently, imaging methods are applied for predicting the disease progression; however, they are deficient in the required resolution and sensitivity for detection. In this work, clinical observations and habits of individuals are considered for assorting the pathologic community. Intelligent machine learning technique, decision tree forest is used for assorting the individuals. A case study was made in this work regarding the atherosclerosis disease progression and crucial features were extracted. Optimised missing value imputation strategy, iterative principal component analysis for STULONG data-set and efficient feature subset selection method, hybrid fast correlation-based filter (FCBF) have been employed for extracting the relevant features and ignoring the redundant features. Further proceeding with the methodology, our work has outperformed with extreme overall accuracy of about 99.47% compared with other state-of-the-art machine learning techniques.
机译:动脉粥样硬化是人体循环系统的一种状况,由于动脉壁周围的斑块堆积,动脉变得狭窄和硬化。该病的生长缓慢且无症状。当前,成像方法被用于预测疾病进展。但是,它们缺乏所需的检测分辨率和灵敏度。在这项工作中,考虑临床观察和个人习惯来分类病理群落。智能机器学习技术,决策树森林用于对个人进行分类。在这项工作中进行了有关动脉粥样硬化疾病进展的案例研究,并提取了关键特征。优化的缺失值插补策略,STULONG数据集的迭代主成分分析和有效的特征子集选择方法,混合快速基于相关的滤波器(FCBF)已被用于提取相关特征并忽略冗余特征。与其他最先进的机器学习技术相比,在继续使用该方法的同时,我们的工作取得了卓越的整体准确性,达到了约99.47%。

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