Predicting Antimicrobial Drug Consumption using Web Search Data

N. Hansen, K. Mølbak, I. Cox, C. Lioma
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引用次数: 5

Abstract

Consumption of antimicrobial drugs, such as antibiotics, is linked with antimicrobial resistance. Surveillance of antimicrobial drug consumption is therefore an important element in dealing with antimicrobial resistance. Many countries lack sufficient surveillance systems. Usage of web mined data therefore has the potential to improve current surveillance methods. To this end, we study how well antimicrobial drug consumption can be predicted based on web search queries, compared to historical purchase data of antimicrobial drugs. We present two prediction models (linear Elastic Net, and non-linear Gaussian Processes), which we train and evaluate on almost 6 years of weekly antimicrobial drug consumption data from Denmark and web search data from Google Health Trends. We present a novel method of selecting web search queries by considering diseases and drugs linked to antimicrobials, as well as professional and layman descriptions of antimicrobial drugs, all of which we mine from the open web. We find that predictions based on web search data are marginally more erroneous but overall on a par with predictions based on purchases of antimicrobial drugs. This marginal difference corresponds to ∠1% point mean absolute error in weekly usage. Best predictions are reported when combining both web search and purchase data. This study contributes a novel alternative solution to the real-life problem of predicting (and hence monitoring) antimicrobial drug consumption, which is particularly valuable in countries/states lacking centralised and timely surveillance systems.
使用网络搜索数据预测抗菌药物的消费
抗生素等抗微生物药物的消费与抗微生物药物耐药性有关。因此,监测抗微生物药物的使用情况是处理抗微生物药物耐药性的一个重要因素。许多国家缺乏足够的监测系统。因此,使用网络挖掘数据有可能改善当前的监视方法。为此,我们研究了基于网络搜索查询的抗菌药物消费预测的效果,并与历史抗菌药物购买数据进行了比较。我们提出了两种预测模型(线性弹性网和非线性高斯过程),我们对来自丹麦的近6年的每周抗菌药物消费数据和来自谷歌健康趋势的网络搜索数据进行了训练和评估。我们提出了一种新的方法,通过考虑与抗菌药物相关的疾病和药物,以及抗菌药物的专业和外行描述来选择网络搜索查询,所有这些都是我们从开放的网络中挖掘的。我们发现,基于网络搜索数据的预测略微错误,但总体上与基于购买抗菌药物的预测相当。这一边际差异对应于每周使用的1%点平均绝对误差。当结合网络搜索和购买数据时,最好的预测报告。这项研究为预测(并因此监测)抗菌药物消费这一现实问题提供了一种新的替代解决方案,这在缺乏集中和及时监测系统的国家/州尤其有价值。
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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