David Majuch Kunjok, John Gachohi Mwangi, Salome Kairu-Wanyoike, Johnson Kinyua, Susan Mambo
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Patients were recruited consecutively through census sampling and categorized into two groups: delayed diagnosis (≥21 days from symptom onset) and non-delayed (<21 days) as defined by the WHO cutoff point. Patients' residential locations were georeferenced using handheld GPS devices and captured digitally via Kobo Collect. Spatial analyses were performed using ArcGIS Pro, version, where Global Moran's I statistic was used to assess spatial autocorrelation in the distribution of TB cases.</p><p><strong>Result: </strong>Spatial analyses identified 28 statistically significant clusters of delayed TB diagnoses within Nairobi County. Spatial autocorrelation analysis using Moran's I revealed a significant clustered distribution (Moran's Index = 0.471, z-score = 3.370, p < 0.001). 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引用次数: 0
摘要
导言:肯尼亚是全球结核病负担最高的30个国家之一。结核病患病率为每10万人558例,只有46%的结核病病例得到诊断和治疗,剩下54%的病例未得到诊断并面临疾病传播的风险。本研究分析了肯尼亚内罗毕县结核病诊断延迟的空间分布及其与卫生保健可及性和社会经济不平等的关系。材料和方法:横断面研究包括222名来自肯尼亚内罗毕县Mbagathi县医院(MCH)、Mama Lucy Kibaki医院(MLKH)和Rhodes胸科诊所(RCC)的新诊断细菌学证实的结核分枝杆菌(Mtb)患者。通过人口普查抽样连续招募患者,并将其分为两组:延迟诊断(症状出现≥21天)和非延迟诊断(结果:空间分析确定了内罗毕县28个具有统计学意义的延迟结核病诊断集群)。使用Moran's I进行空间自相关分析,结果显示具有显著的聚类分布(Moran's Index = 0.471, z-score = 3.370, p < 0.001)。利用Getis-Ord Gi*统计量进行热点分析,发现非正式住区中存在高延迟集群(z > 2.58, p < 0.001)。讨论与结论:该研究揭示了内罗毕县延迟结核病诊断的显著空间聚集性,特别是在非正式定居点。相比之下,及时诊断主要集中在Lang'ata和Karen等高收入地区。这些群集与较低的家庭收入和前往卫生设施的旅行时间增加显著相关,这突出了在延误最严重的病房有针对性地实施结核病诊断服务和控制措施的必要性。
Spatial epidemiology of tuberculosis diagnostic delays, healthcare access disparities, and socioeconomic inequities in Nairobi County, Kenya.
Introduction: Kenya ranks among the top 30 countries with a high tuberculosis (TB) burden globally. With a TB prevalence of 558 per 100,000, only 46% of TB cases are diagnosed and treated, leaving 54% undiagnosed and at risk of spreading the disease. This study analyzed the spatial distribution of tuberculosis diagnostic delays and their association with health care accessibility and socioeconomic inequalities in Nairobi County, Kenya.
Materials and methods: The cross-sectional study included 222 newly diagnosed bacteriologically confirmed Mycobacterium tuberculosis (Mtb) patients from Mbagathi County Hospital (MCH), Mama Lucy Kibaki Hospital (MLKH), and Rhodes Chest Clinic (RCC) in Nairobi County, Kenya. Patients were recruited consecutively through census sampling and categorized into two groups: delayed diagnosis (≥21 days from symptom onset) and non-delayed (<21 days) as defined by the WHO cutoff point. Patients' residential locations were georeferenced using handheld GPS devices and captured digitally via Kobo Collect. Spatial analyses were performed using ArcGIS Pro, version, where Global Moran's I statistic was used to assess spatial autocorrelation in the distribution of TB cases.
Result: Spatial analyses identified 28 statistically significant clusters of delayed TB diagnoses within Nairobi County. Spatial autocorrelation analysis using Moran's I revealed a significant clustered distribution (Moran's Index = 0.471, z-score = 3.370, p < 0.001). Hotspot analysis with the Getis-Ord Gi* statistic detected high-delay clusters (z > 2.58, p < 0.001) in informal settlements.
Discussion and conclusion: The study revealed significant spatial clustering of delayed TB diagnoses in Nairobi County, particularly in informal settlements. In contrast, timely diagnoses were predominantly clustered in high-income areas like Lang'ata and Karen. These clusters were significantly associated with lower household income and increased travel time to health facilities which underscored the need for targeted implementation of TB diagnostic services and control measures in the wards with the highest delays.
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