质量保证和成本效益的人口健康分析:一种深度主动学习方法

Long Chen, Jiangtao Wang, P. Thakuriah
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引用次数: 0

摘要

可靠性和成本是分析多种非传染性疾病(NCDs)人群规模流行率(PPP)的两个主要考虑因素。在本文中,我们利用不同传统感知区域(TS-A)中的疾病内和疾病间相关性,在不影响数据可靠性的情况下减少所需的分析任务分配数量。具体而言,我们提出了一种称为压缩群体健康TS-a选择(CPH-TS)的新方法,该方法在统一的深度学习框架中融合了最先进的简档推断、数据增强和主动学习。它可以在每个评测周期中主动选择最小数量的TS-a区域用于评测任务分配,同时扣除未编译区域的缺失数据,并具有可靠性的概率保证。我们在伦敦真实世界的流行率数据集上评估了我们的方法,这表明了CPH-TS的有效性。总的来说,CPH-TS分配的任务比基线少11.1-27.3%,仅分配给34.7%的子区域,而95%的周期的分析误差低于5%。
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Quality-Guaranteed and Cost-Effective Population Health Profiling: A Deep Active Learning Approach
Reliability and cost are two primary consideration for profiling population-scale prevalence (PPP) of multiple None Communicable Diseases (NCDs). In this paper, we exploit intra-disease and inter-disease correlation in different traditionally-sensed-areas (TS-A) to reduce the required number of the profiling task allocated without compromising the data reliability. Specifically, we propose a novel approach called Compressive Population Health TS-A Selection (CPH-TS), which blends the state-of-the-art profile inference, data augmentation and active learning in a unified deep learning framework. It can actively select a minimum number of TS-A regions for profiling task allocation in each profiling cycle, while deducting of the missing data of the unprofiled regions with a probabilistic guarantee of reliability. We evaluate our approach on real-world prevalence datasets of London, which shows the effectiveness of CPH-TS. In general, CPH-TS assigned 11.1-27.3% fewer tasks than baselines, assigning tasks to only 34.7% of the sub-regions while the profiling error below 5% for 95% of the cycles.
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