Université Pierre et Marie Curie-Paris 6, UMR-S 707, Paris, France.
PLoS One. 2007 May 23;2(5):e464. doi: 10.1371/journal.pone.0000464.
Few European countries conduct reactive surveillance of influenza mortality, whereas most monitor morbidity.
METHODOLOGY/PRINCIPAL FINDINGS: We developed a simple model based on Poisson seasonal regression to predict excess cases of pneumonia and influenza mortality during influenza epidemics, based on influenza morbidity data and the dominant types/subtypes of circulating viruses. Epidemics were classified in three levels of mortality burden ("high", "moderate" and "low"). The model was fitted on 14 influenza seasons and was validated on six subsequent influenza seasons. Five out of the six seasons in the validation set were correctly classified. The average absolute difference between observed and predicted mortality was 2.8 per 100,000 (18% of the average excess mortality) and Spearman's rank correlation coefficient was 0.89 (P = 0.05).
CONCLUSIONS/SIGNIFICANCE: The method described here can be used to estimate the influenza mortality burden in countries where specific pneumonia and influenza mortality surveillance data are not available.
很少有欧洲国家对流感死亡率进行被动监测,而大多数国家则监测发病率。
方法/主要发现: 我们开发了一种基于泊松季节回归的简单模型,根据流感发病率数据和流行病毒的主要类型/亚型,预测流感流行期间肺炎和流感相关死亡的超额病例。将流行情况分为三种死亡率负担水平(“高”、“中”和“低”)。该模型在 14 个流感季节进行拟合,并在随后的 6 个流感季节进行验证。验证集中有 5 个季节的分类是正确的。观察到的和预测到的死亡率之间的平均绝对差异为每 100,000 人 2.8 人(超额死亡率的 18%),Spearman 等级相关系数为 0.89(P=0.05)。
结论/意义: 对于没有特定肺炎和流感死亡率监测数据的国家,可以使用本文描述的方法来估计流感死亡率负担。