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Deep Learning to Improve Heart Disease Risk Prediction

机译:深度学习可改善心脏病风险预测

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摘要

Disease prediction based on modeling the correlations between compounded indicator factors is a widely used technique in high incidence chronic disease prevention diagnosis. Predictive models based on personal health information have been developed historically by using simple regression fitting over relatively few factors. Regression approaches have been favored in previous prediction modeling approaches because they are simplest and do not assume any non-linearity in the model for contributions of the chosen factors. In practice, many factors are correlated and have underlying non-linear relationships to the predicted outcome. Deep learning offers a means to construct a more complex modeling approach, along with automation and adaptation. The aim of this paper is to assess the ability of a deep learning model to predict the heart disease incidence using a common benchmark dataset (University of California, Irvine (UCI) dataset). The performance of deep learning model has been compared with four popular machine learning models (two linear and two nonlinear) in predicting the incidence of heart disease using data from 567 participants from two cohorts taken from UCI database. The deep learning model was able to achieve the best accuracy of 94% and an AUC score of 0.964 when compared to other models. The performance of deep learning and nonlinear machine learning models was significantly better compared to the linear machine learning models with increase in the dataset size.
机译:基于对复合指标因子之间的相关关系进行建模的疾病预测是在高发慢性疾病预防诊断中广泛使用的技术。历史上已经通过使用相对较少的因素进行简单的回归拟合来开发基于个人健康信息的预测模型。回归方法已在以前的预测建模方法中受到青睐,因为它们最简单,并且在模型中对所选因素的贡献不假设任何非线性。实际上,许多因素是相关的,并且与预测的结果具有潜在的非线性关系。深度学习提供了一种构建更复杂的建模方法以及自动化和自适应的方法。本文的目的是使用通用基准数据集(加利福尼亚大学尔湾分校(UCI)数据集)评估深度学习模型预测心脏病发病率的能力。深度学习模型的性能已与四种流行的机器学习模型(两种线性和两种非线性)进行了比较,使用来自UCI数据库的两个队列的567名参与者的数据预测了心脏病的发病率。与其他模型相比,深度学习模型能够实现94%的最佳准确性和0.964的AUC分数。随着数据集大小的增加,深度学习和非线性机器学习模型的性能明显优于线性机器学习模型。

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