首页> 外文期刊>Journal of the American statistical association >Estimating the Malaria Attributable Fever Fraction Accounting for Parasites Being Killed by Fever and Measurement Error
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Estimating the Malaria Attributable Fever Fraction Accounting for Parasites Being Killed by Fever and Measurement Error

机译:估算因发热和测量误差杀死的寄生虫的疟疾归因发热分数

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摘要

Malaria is a major health problem in many tropical regions. Fever is a characteristic symptom of malaria. The fraction of fevers that are attributable to malaria, the malaria attributable fever fraction (MAFF), is an important public health measure in that the MAFF can be used to calculate the number of fevers that would be avoided if malaria was eliminated. Despite such causal interpretation, the MAFF has not been considered in the framework of causal inference. We define the MAFF using the potential outcome framework, and define causal assumptions that current estimation methods rely on. Furthermore, we demonstrate that one of the assumptionsthat the parasite density is correctly measuredgenerally does not hold because (i) fever kills some parasites and (ii) parasite density is measured with error. In the presence of these problems, we reveal that current MAFF estimators can be significantly biased. To develop a consistent estimator, we propose a novel maximum likelihood estimation method based on exponential family g-modeling. Under the assumption that the measurement error mechanism and the magnitude of the fever killing effect are known, we show that our proposed method provides approximately unbiased estimates of the MAFF in simulation studies. A sensitivity analysis is developed to assess the impact of different magnitudes of fever killing and different measurement error mechanisms. Finally, we apply our proposed method to estimate the MAFF in Kilombero, Tanzania. Supplementary materials for this article are available online.
机译:疟疾是许多热带地区的主要健康问题。发烧是疟疾的典型症状。归因于疟疾的发热比例,即归因于疟疾的疟疾比例(MAFF),是一项重要的公共卫生措施,因为MAFF可用于计算消除疟疾后应避免的发烧数量。尽管有这种因果关系的解释,但MAFF尚未在因果关系推断的框架中考虑。我们使用潜在结果框架定义MAFF,并定义当前估计方法所依赖的因果假设。此外,我们证明通常不能正确测量寄生虫密度的假设之一不成立,因为(i)发烧杀死了一些寄生虫,并且(ii)寄生虫密度被错误测量。在存在这些问题的情况下,我们揭示了当前的MAFF估计量可能存在明显偏差。为了建立一个一致的估计量,我们提出了一种基于指数族g模型​​的最大似然估计方法。在已知测量误差机制和发烧杀死效应的大小的假设下,我们证明了我们提出的方法在模拟研究中提供了MAFF的近似无偏估计。开展了敏感性分析,以评估不同程度的发烧和不同测量误差机制的影响。最后,我们应用我们提出的方法来估计坦桑尼亚基洛贝洛的MAFF。可在线获得本文的补充材料。

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