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首页> 外文期刊>Progress in Artificial Intelligence >Spatial distribution of people diagnosed with tuberculosis through routine and active case finding: a community-based study in Kampala, Uganda
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Spatial distribution of people diagnosed with tuberculosis through routine and active case finding: a community-based study in Kampala, Uganda

机译:通过常规和有效案例发现诊断结核病患有结核病的空间分布:乌干达坎帕拉的社区研究

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Background Routine tuberculosis (TB) notifications are geographically heterogeneous, but their utility in predicting the location of undiagnosed TB cases is unclear. We aimed to identify small-scale geographic areas with high TB notification rates based on routinely collected data and to evaluate whether these areas have a correspondingly high rate of undiagnosed prevalent TB. Methods We used routinely collected data to identify geographic areas with high TB notification rates and evaluated the extent to which these areas correlated with the location of undiagnosed cases during a subsequent community-wide active case finding intervention in Kampala, Uganda. We first enrolled all adults who lived within 35 contiguous zones and were diagnosed through routine care at four local TB Diagnosis and Treatment Units. We calculated average monthly TB notification rates in each zone and defined geographic areas of "high risk" as zones that constituted the 20% of the population with highest notification rates. We compared the observed proportion of TB notifications among residents of these high-risk zones to the expected proportion, using simulated estimates based on population size and random variation alone. We then evaluated the extent to which these high-risk zones identified areas with high burdens of undiagnosed TB during a subsequent community-based active case finding campaign using a chi-square test. Results We enrolled 45 adults diagnosed with TB through routine practices and who lived within the study area (estimated population of 49 527). Eighteen zones reported no TB cases in the 9-month period; among the remaining zones, monthly TB notification rates ranged from 3.9 to 39.4 per 100 000 population. The five zones with the highest notification rates constituted 62% (95%CI: 47-75%) of TB cases and 22% of the population-significantly higher than would be expected if population size and random chance were the only determinants of zone-to-zone variation (48%, 95% simulation interval: 40-59%). These five high-risk zones accounted for 42% (95%CI: 34-51%) of the 128 cases detected during the subsequent community-based case finding intervention, which was significantly higher than the 22% expected by chance (P < 0.001) but lower than the 62% of cases notified from those zones during the pre-intervention period (P = 0.02). Conclusions There is substantial heterogeneity in routine TB notification rates at the zone level. Using facility-based TB notification rates to prioritize high-yield areas for active case finding could double the yield of such case-finding interventions.
机译:背景技术常规结核(TB)通知是地理上的异质,但它们在预测未确诊的结核病病例的位置的实用性尚不清楚。我们旨在根据常规收集的数据,确定具有高结核通知率的小型地理区域,并评估这些区域是否具有相应高率的未确诊的普遍性TB。方法采用常规收集的数据来识别具有高结核病通知率的地理区域,并评估这些领域与未确诊病例的位置相关的程度,在乌干达坎帕拉的坎帕拉的后续社区宽的活动案例中。我们首先招收了所有住在35个连续区域内的成年人,并通过四种局部结核病诊断和治疗单位进行常规护理诊断。我们计算每个区域的平均月度结核病通知率,并定义了“高风险”的地理区域,作为构成最高通知率的人口的20%。我们将观察到的,在这些高危区的居民之间观察到的TB通知与预期比例,使用基于人口大小和随机变异的模拟估计。然后,我们在使用Chi-Square测试期间评估了在随后的基于社区的主题案例寻找活动期间未能结核结核病的强度识别这些高风险区域的区域。结果我们通过常规做法纳入了45名成人,诊断为TB,世卫组织在研究区内(估计的49 527人口)。十八区报告了9个月期间没有结核病;在剩余的区域中,每月TB通知率范围为每100 000人口的3.9至39.4。最高通知率的五个区域构成62%(95%CI:47-75%)结核病病例,22%的人口 - 如果人口规模和随机的机会是区域的唯一决定因素,可以预期区域变异(48%,95%模拟间隔:40-59%)。在随后的社区案例发现干预期间,这五个高风险区占128例检测到的128例(95%CI:34-51%),这显着高于偶然预期的22%(P <0.001) )但低于前期前期从这些区域通知的62%的病例(P = 0.02)。结论区水平的常规结核通知率具有大量的异质性。使用基于设施的TB通知率优先考虑有效案例发现的高屈服区域可以增加这种情况的结果的产量。

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