首页> 外文期刊>International Journal of Leprosy and Other Mycobacterial Diseases >Lot quality assurance sampling (LQAS) for monitoring a leprosy elimination program.
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Lot quality assurance sampling (LQAS) for monitoring a leprosy elimination program.

机译:批次质量保证抽样(LQAS),用于监测麻风消除计划。

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摘要

In a statistical sense, prevalences of leprosy in different geographical areas can be called very low or rare. Conventional survey methods to monitor leprosy control programs, therefore, need large sample sizes, are expensive, and are time-consuming. Further, with the lowering of prevalence to the near-desired target level, 1 case per 10,000 population at national or subnational levels, the program administrator's concern will be shifted to smaller areas, e.g., districts, for assessment and, if needed, for necessary interventions. In this paper, Lot Quality Assurance Sampling (LQAS), a quality control tool in industry, is proposed to identify districts/regions having a prevalence of leprosy at or above a certain target level, e.g., 1 in 10,000. This technique can also be considered for identifying districts/regions at or below the target level of 1 per 10,000, i.e., areas where the elimination level is attained. For simulating various situations and strategies, a hypothetical computerized population of 10 million persons was created. This population mimics the actual population in terms of the empirical information on rural/urban distributions and the distribution of households by size for the state of Tamil Nadu, India. Various levels with respect to leprosy prevalence are created using this population. The distribution of the number of cases in the population was expected to follow the Poisson process, and this was also confirmed by examination. Sample sizes and corresponding critical values were computed using Poisson approximation. Initially, villages/towns are selected from the population and from each selected village/town households are selected using systematic sampling. Households instead of individuals are used as sampling units. This sampling procedure was simulated 1000 times in the computer from the base population. The results in four different prevalence situations meet the required limits of Type I error of 5% and 90% Power. It is concluded that after validation under field conditions, this method can be considered for a rapid assessment of the leprosy situation.
机译:从统计意义上讲,麻风在不同地理区域的流行率可以说是非常低或很少。因此,用于监视麻风控制程序的常规调查方法需要大样本量,昂贵且费时。此外,随着患病率降低到接近期望的目标水平,即在国家或国家以下各级,每10,000人口中有1例病例,计划管理者的关注点将转移到较小的区域,例如地区,以进行评估,并在必要时进行必要的调整干预。在本文中,提出了行业质量控制工具Lot Quality Assurance Sampling(LQAS),以识别麻风流行程度达到或高于特定目标水平(例如每10,000个中的1个)的地区。还可以考虑使用此技术来识别等于或低于每10,000个目标级别(即达到消除水平的区域)的区域/地区。为了模拟各种情况和策略,假设的计算机化人口为1000万人。根据关于印度泰米尔纳德邦的农村/城市分布以及按规模划分的家庭分布的经验信息,该人口模仿了实际人口。使用该人群可产生与麻风流行有关的各种水平。预计人口中病例数的分布将遵循泊松过程,这也已通过检查得到证实。使用泊松近似计算样本大小和相应的临界值。最初,从人口中选择村庄/城镇,并使用系统抽样从每个选定的村庄/城镇家庭中选择。用住户代替个人作为抽样单位。在计算机中从基本人群中模拟了此采样过程1000次。在四种不同患病率情况下的结果均满足5%和90%功耗的I类误差的要求极限。结论是,在现场条件下进行验证之后,可以考虑使用此方法对麻风情况进行快速评估。

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