基于支持向量机和主成分分析的混合模型在高血压检测中的应用

Antony B. Almonacid, Ciro Rodríguez, Yuri Pomachagua, Diego Rodriguez
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引用次数: 2

摘要

本研究旨在通过基于支持向量机(SVM)和主成分分析(PCA)算法的混合模型来缩短动脉高血压风险的检测时间。所提出的混合模型是通过处理由70,000条记录组成的数据集来实现的,这些记录与收缩压、舒张压、胆固醇指数、葡萄糖指数、吸烟和久坐的生活方式等特征相关。混合模型的实现方法包括数据收集、数据探索、数据预处理、特征选择、模型实现和结果验证等阶段。由于该模型的实施,在检测患高血压的风险方面获得了72.18%的精度水平。
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Hybrid Model based on Support Vector Machine and Principal Component Analysis Applied to Arterial Hypertension Detection
This research aims to reduce the detection time of the risk of suffering from arterial hypertension by implementing a hybrid model based on the Support Vector Machine (SVM) and Principal Component Analysis (PCA) algorithms. The proposed hybrid model was implemented from the processing of a dataset made up of 70,000 records related to characteristics such as systolic blood pressure, diastolic blood pressure, cholesterol index, glucose index, smoking and sedentary lifestyle. The methodology for the implementation of the hybrid model consisted of the stages of data collection, data exploration, data pre-processing, selection of characteristics, and implementation of the model and the validation of results. As a result of the implementation of the model, a precision level of 72.18% was obtained in relation to the detection of the risk of suffering from arterial hypertension.
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