Completing Missing Prevalence Rates for Multiple Chronic Diseases by Jointly Leveraging Both Intra- and Inter-Disease Population Health Data Correlations

Yujie Feng, Jiangtao Wang, Yasha Wang, A. Helal
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引用次数: 11

Abstract

Population health data are becoming more and more publicly available on the Internet than ever before. Such datasets offer a great potential for enabling a better understanding of the health of populations, and inform health professionals and policy makers for better resource planning, disease management and prevention across different regions. However, due to the laborious and high-cost nature of collecting such public health data, it is a common place to find many missing entries on these datasets, which challenges the utility of the data and hinders reliable analysis and understanding. To tackle this problem, this paper proposes a deep-learning-based approach, called Compressive Population Health (CPH), to infer and recover (to complete) the missing prevalence rate entries of multiple chronic diseases. The key insight of CPH relies on the combined exploitation of both intra-disease and inter-disease correlation opportunities. Specifically, we first propose a Convolutional Neural Network (CNN) based approach to extract and model both of these two types of correlations, and then adopt a Generative Adversarial Network (GAN) based prevalence inference model to jointly fuse them to facility the prevalence rates data recovery of missing entries. We extensively evaluate the inference model based on real-world public health datasets publicly available on the Web. Results show that our inference method outperforms other baseline methods in various settings and with a significantly improved accuracy (from 14.8% to 9.1%).
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通过联合利用疾病内和疾病间人口健康数据相关性来完成多种慢性病的缺失患病率
人口健康数据在互联网上比以往任何时候都越来越公开。这些数据集具有很大的潜力,可以更好地了解人口健康状况,并为卫生专业人员和决策者提供信息,以便在不同区域更好地进行资源规划、疾病管理和预防。然而,由于收集此类公共卫生数据的费力和高成本性质,在这些数据集中经常发现许多缺失条目,这对数据的效用提出了挑战,并阻碍了可靠的分析和理解。为了解决这一问题,本文提出了一种基于深度学习的方法,称为压缩人口健康(CPH),以推断和恢复(以完成)缺失的多种慢性疾病的患病率条目。CPH的关键洞察力依赖于疾病内和疾病间相关性机会的综合利用。具体来说,我们首先提出了一种基于卷积神经网络(CNN)的方法来提取和建模这两种类型的相关性,然后采用基于生成对抗网络(GAN)的患病率推理模型来联合融合它们,以促进缺失条目的患病率数据恢复。我们广泛评估了基于Web上公开的真实世界公共卫生数据集的推理模型。结果表明,我们的推理方法在各种设置下都优于其他基准方法,并且准确率显著提高(从14.8%提高到9.1%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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