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首页> 外文期刊>Journal of healthcare engineering. >Neural Network-Based Coronary Heart Disease Risk Prediction Using Feature Correlation Analysis
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Neural Network-Based Coronary Heart Disease Risk Prediction Using Feature Correlation Analysis

机译:特征相关分析的基于神经网络的冠心病风险预测

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Background. Of the machine learning techniques used in predicting coronary heart disease (CHD), neural network (NN) is popularly used to improve performance accuracy. Objective. Even though NN-based systems provide meaningful results based on clinical experiments, medical experts are not satisfied with their predictive performances because NN is trained in a “black-box” style. Method. We sought to devise an NN-based prediction of CHD risk using feature correlation analysis (NN-FCA) using two stages. First, the feature selection stage, which makes features acceding to the importance in predicting CHD risk, is ranked, and second, the feature correlation analysis stage, during which one learns about the existence of correlations between feature relations and the data of each NN predictor output, is determined. Result. Of the 4146 individuals in the Korean dataset evaluated, 3031 had low CHD risk and 1115 had CHD high risk. The area under the receiver operating characteristic (ROC) curve of the proposed model (0.749 ± 0.010) was larger than the Framingham risk score (FRS) (0.393 ± 0.010). Conclusions. The proposed NN-FCA, which utilizes feature correlation analysis, was found to be better than FRS in terms of CHD risk prediction. Furthermore, the proposed model resulted in a larger ROC curve and more accurate predictions of CHD risk in the Korean population than the FRS.
机译:背景。在用于预测冠心病(CHD)的机器学习技术中,神经网络(NN)广泛用于提高性能准确性。目的。尽管基于NN的系统基于临床实验提供了有意义的结果,但是医学专家对其预测性能并不满意,因为NN以“黑匣子”风格进行了训练。方法。我们试图通过两个阶段的特征相关分析(NN-FCA)设计一种基于NN的冠心病风险预测。首先,对特征选择阶段进行排名,该阶段使特征具有重要的CHD风险预测能力;其次,进行特征相关性分析阶段,在此阶段中,了解特征关系与每个NN预测器的数据之间存在相关性输出,确定。结果。在评估的韩国数据集中的4146位个体中,有3031位冠心病风险低,而1115位冠心病风险高。所提出的模型的接收器工作特性(ROC)曲线下的面积(0.749×±0.010)大于弗雷明汉风险评分(FRS)(0.393×±0.010)。结论。提出的利用特征相关性分析的NN-FCA在CHD风险预测方面比FRS更好。此外,与FRS相比,该模型导致了更大的ROC曲线和更准确的韩国人群CHD风险预测。

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