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Evidence for overdispersion in the distribution of malaria parasites and leukocytes in thick blood smears

机译:过度分散在患有血液涂片的疟疾寄生虫和白细胞中的过度分散的证据

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Background Microscopic examination of stained thick blood smears (TBS) is the gold standard for routine malaria diagnosis. Parasites and leukocytes are counted in a predetermined number of high power fields (HPFs). Data on parasite and leukocyte counts per HPF are of broad scientific value. However, in published studies, most of the information on parasite density (PD) is presented as summary statistics (e.g. PD per microlitre, prevalence, absolute/assumed white blood cell counts), but original data sets are not readily available. Besides, the number of parasites and the number of leukocytes per HPF are assumed to be Poisson-distributed. However, count data rarely fit the restrictive assumptions of the Poisson distribution. The violation of these assumptions commonly results in overdispersion. The objectives of this paper are to investigate and handle overdispersion in field-collected data. Methods The data comprise the records of three TBSs of 12-month-old children from a field study of Plasmodium falciparum malaria in Tori Bossito, Benin. All HPFs were examined systemically by visually scanning the film horizontally from edge to edge. The numbers of parasites and leukocytes per HPF were recorded and formed the first dataset on parasite and leukocyte counts per HPF. The full dataset is published in this study. Two sources of overdispersion in data are investigated: latent heterogeneity and spatial dependence. Unobserved heterogeneity in data is accounted for by considering more flexible models that allow for overdispersion. Of particular interest were the negative binomial model (NB) and mixture models. The dependent structure in data was modelled with hidden Markov models (HMMs). Results The Poisson assumptions are inconsistent with parasite and leukocyte distributions per HPF. Among simple parametric models, the NB model is the closest to the unknown distribution that generates the data. On the basis of model selection criteria AIC and BIC, HMMs provided a better fit to data than mixtures. Ordinary pseudo-residuals confirmed the validity of HMMs. Conclusion Failure to take overdispersion into account in parasite and leukocyte counts may entail important misleading inferences when these data are related to other explanatory variables (malariometric or environmental). Its detection is therefore essential. In addition, an alternative PD estimation method that accounts for heterogeneity and spatial dependence should be seriously considered in epidemiological studies with field-collected parasite and leukocyte data.
机译:背景技术微观检查染色厚血液涂片(TBS)是常规疟疾诊断的金标准。寄生虫和白细胞以预定数量的高功率场(HPF)计数。每HPF的寄生虫和白细胞计数的数据具有广泛的科学价值。然而,在公布的研究中,大多数关于寄生虫密度(PD)的信息被呈现为概述统计(例如,每次微血量,患病率,绝对/假设的白细胞计数),但原始数据集不易获得。此外,假设寄生虫的数量和每HPF的白细胞数量是泊松分布。然而,计数数据很少适合泊松分布的限制性假设。违反这些假设通常会导致过度分歧。本文的目标是在收集的数据中调查和处理过度分支。方法,数据包括来自贝宁疟原虫疟原虫疟疾疟疾疟疾疟疾的田野研究的三国TBS的记录。通过在从边缘到边缘水平扫描薄膜来系统地检查所有HPF。记录寄生虫和白细胞的数量,并在寄生虫和白细胞计数上形成了第一个数据集每HPF。完整的数据集在本研究中发布。调查了两个过分分解的两个过度来源:潜在的异质性和空间依赖性。通过考虑更灵活的模型,可以考虑允许过度分散的更灵活的模型来计算数据中的异质性。特别感兴趣的是负二项式模型(Nb)和混合模型。数据中的依赖结构是用隐藏的马尔可夫模型(HMMS)建模的。结果泊松假设与每HPF的寄生虫和白细胞分布不一致。在简单的参数模型中,NB模型是最接近生成数据的未知分发。在模型选择标准AIC和BIC的基础上,HMMS提供比混合物更好地适合数据。普通的伪残留证实了HMMS的有效性。结论在寄生虫和白细胞计数中未经过度分析,当这些数据与其他解释性变量(疟原体或环境)有关时,可能需要重要的误导推断。因此,它的检测是必不可少的。此外,在流行病学研究中,替代PD估计方法应在具有现场收集的寄生虫和白细胞数据的流行病学研究中认真考虑到异质性和空间依赖性。

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