Socan Maja, Erculj Vanja, Lajovic Jaro
Centre for Communicable Diseases, National Institute of Public Health, Ljubljana, Slovenia.
Cent Eur J Public Health. 2012 Jun;20(2):156-62. doi: 10.21101/cejph.a3735.
Monitoring sales of medications is a potential candidate for an early signal of a seasonal influenza epidemic. To test this theory, the data from a traditional, consultation-oriented influenza surveillance system were compared to medication sales and a predictive model was developed. Weekly influenza-like incidence rates from the National Influenza Sentinel Surveillance System were compared to sales of seven groups of medications (nasal decongestants, medicines for sore throat (MST), antitussives, mucolytics, analgo-antipyretics, non-steroidal anti-inflamatory drugs (NSAIDs), betalactam antibiotics, and macrolide antibiotics) to determine the correlation of medication sales with the sentinel surveillance system - and therefore their predictive power. Poisson regression and regression tree approaches were used in the statistical analyses. The fact that NSAIDs do not exhibit any seasonality and that prescription of antibiotics requires a visit to the doctor's office makes the two medication groups inappropriate for predictive purposes. The influenza-like illness (ILI) curve is the best matched by the mucolytics and antitussives sales curves. Distinct seasonality is also observed with MST and decongestants. The model including these four medication groups performed best in prediction of ILI incidence rate using the Poisson regression model. Sales of antitussives proved to be the best single predictive variable for regression tree model. Sales of medication groups included in the model were demonstrated to have a predictive potential for early detection of influenza season. The quantitative information on medication sales proves to be a useful supplementary system, complementing the traditional consultation-oriented surveillance system.
监测药品销售情况可能是季节性流感流行早期信号的一个潜在指标。为验证这一理论,将传统的以咨询为导向的流感监测系统的数据与药品销售数据进行了比较,并建立了一个预测模型。将国家流感哨点监测系统的每周流感样发病率与七类药品(鼻减充血剂、咽痛药、镇咳药、黏液溶解剂、解热镇痛药、非甾体抗炎药、β-内酰胺类抗生素和大环内酯类抗生素)的销售情况进行比较,以确定药品销售与哨点监测系统之间的相关性,从而确定其预测能力。统计分析采用泊松回归和回归树方法。非甾体抗炎药没有表现出任何季节性,且抗生素的处方需要就医,这使得这两类药品不适合用于预测目的。黏液溶解剂和镇咳药的销售曲线与流感样疾病(ILI)曲线最匹配。咽痛药和减充血剂也观察到明显的季节性。使用泊松回归模型,包含这四类药品的模型在预测ILI发病率方面表现最佳。对于回归树模型,镇咳药的销售被证明是最佳的单一预测变量。模型中包含的药品组的销售情况被证明具有早期检测流感季节的预测潜力。药品销售的定量信息被证明是一个有用的补充系统,可补充传统的以咨询为导向的监测系统。