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界定恶性疟原虫寄生虫率与临床疾病之间的关系:疾病负担估计的统计模型

Defining the relationship between Plasmodium falciparum parasite rate and clinical disease: statistical models for disease burden estimation.

作者信息

Patil Anand P, Okiro Emelda A, Gething Peter W, Guerra Carlos A, Sharma Surya K, Snow Robert W, Hay Simon I

机构信息

Spatial Ecology and Epidemiology Group, Department of Zoology, University of Oxford, Oxford OX1 3PS, UK.

出版信息

Malar J. 2009 Aug 5;8:186. doi: 10.1186/1475-2875-8-186.

Abstract

BACKGROUND

Clinical malaria has proven an elusive burden to enumerate. Many cases go undetected by routine disease recording systems. Epidemiologists have, therefore, frequently defaulted to actively measuring malaria in population cohorts through time. Measuring the clinical incidence of malaria longitudinally is labour-intensive and impossible to undertake universally. There is a need, therefore, to define a relationship between clinical incidence and the easier and more commonly measured index of infection prevalence: the "parasite rate". This relationship can help provide an informed basis to define malaria burdens in areas where health statistics are inadequate.

METHODS

Formal literature searches were conducted for Plasmodium falciparum malaria incidence surveys undertaken prospectively through active case detection at least every 14 days. The data were abstracted, standardized and geo-referenced. Incidence surveys were time-space matched with modelled estimates of infection prevalence derived from a larger database of parasite prevalence surveys and modelling procedures developed for a global malaria endemicity map. Several potential relationships between clinical incidence and infection prevalence were then specified in a non-parametric Gaussian process model with minimal, biologically informed, prior constraints. Bayesian inference was then used to choose between the candidate models.

RESULTS

The suggested relationships with credible intervals are shown for the Africa and a combined America and Central and South East Asia regions. In both regions clinical incidence increased slowly and smoothly as a function of infection prevalence. In Africa, when infection prevalence exceeded 40%, clinical incidence reached a plateau of 500 cases per thousand of the population per annum. In the combined America and Central and South East Asia regions, this plateau was reached at 250 cases per thousand of the population per annum. A temporal volatility model was also incorporated to facilitate a closer description of the variance in the observed data.

CONCLUSION

It was possible to model a relationship between clinical incidence and P. falciparum infection prevalence but the best-fit models were very noisy reflecting the large variance within the observed opportunistic data sample. This continuous quantification allows for estimates of the clinical burden of P. falciparum of known confidence from wherever an estimate of P. falciparum prevalence is available.

摘要

背景

临床疟疾已被证明是一种难以精确统计的负担。许多病例未被常规疾病记录系统发现。因此,流行病学家常常通过长期对人群队列进行主动疟疾监测来解决这一问题。纵向测量疟疾的临床发病率需要耗费大量人力,且无法在全球范围内普遍开展。因此,有必要确定临床发病率与更易测量且更常用的感染率指标(即“寄生虫率”)之间的关系。这种关系有助于在卫生统计数据不足的地区,为界定疟疾负担提供依据。

方法

对通过至少每14天进行一次主动病例检测前瞻性开展的恶性疟原虫疟疾发病率调查进行了正式文献检索。对数据进行了提取、标准化处理并进行了地理定位。发病率调查在时间和空间上与从更大的寄生虫流行率调查数据库以及为全球疟疾流行地图开发的建模程序得出的感染率模拟估计值相匹配。然后,在一个具有最少生物学先验约束的非参数高斯过程模型中,指定了临床发病率与感染率之间的几种潜在关系。接着使用贝叶斯推理在候选模型之间进行选择。

结果

展示了非洲以及美洲与中亚和东南亚合并地区的建议关系及其可信区间。在这两个地区,临床发病率均随着感染率的升高而缓慢且平稳地上升。在非洲,当感染率超过40%时,临床发病率达到每年每千人口500例的平台期。在美洲与中亚和东南亚合并地区,这一平台期为每年每千人口250例。还纳入了一个时间波动模型,以便更精确地描述观测数据中的方差。

结论

有可能对临床发病率与恶性疟原虫感染率之间的关系进行建模,但最佳拟合模型噪声很大,反映出观测到的机会性数据样本中的巨大方差。这种连续量化使得在已知恶性疟原虫流行率估计值的任何地方,都能够估计出具有已知置信度的恶性疟原虫临床负担。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/633d/2746234/d140cbe6e520/1475-2875-8-186-1.jpg

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