Department of Epidemiology of Microbial Diseases, Yale School of Public Health, New Haven, CT, USA.
Inserm UMR1219, Institut de Recherche pour le Développement EMR 271, GHiGS, University of Bordeaux, Bordeaux, France.
Lancet Child Adolesc Health. 2023 May;7(5):336-346. doi: 10.1016/S2352-4642(23)00004-4. Epub 2023 Mar 13.
Many children with pulmonary tuberculosis remain undiagnosed and untreated with related high morbidity and mortality. Recent advances in childhood tuberculosis algorithm development have incorporated prediction modelling, but studies so far have been small and localised, with limited generalisability. We aimed to evaluate the performance of currently used diagnostic algorithms and to use prediction modelling to develop evidence-based algorithms to assist in tuberculosis treatment decision making for children presenting to primary health-care centres.
For this meta-analysis, we identified individual participant data from a WHO public call for data on the management of tuberculosis in children and adolescents and referral from childhood tuberculosis experts. We included studies that prospectively recruited consecutive participants younger than 10 years attending health-care centres in countries with a high tuberculosis incidence for clinical evaluation of pulmonary tuberculosis. We collated individual participant data including clinical, bacteriological, and radiological information and a standardised reference classification of pulmonary tuberculosis. Using this dataset, we first retrospectively evaluated the performance of several existing treatment-decision algorithms. We then used the data to develop two multivariable prediction models that included features used in clinical evaluation of pulmonary tuberculosis-one with chest x-ray features and one without-and we investigated each model's generalisability using internal-external cross-validation. The parameter coefficient estimates of the two models were scaled into two scoring systems to classify tuberculosis with a prespecified sensitivity target. The two scoring systems were used to develop two pragmatic, treatment-decision algorithms for use in primary health-care settings.
Of 4718 children from 13 studies from 12 countries, 1811 (38·4%) were classified as having pulmonary tuberculosis: 541 (29·9%) bacteriologically confirmed and 1270 (70·1%) unconfirmed. Existing treatment-decision algorithms had highly variable diagnostic performance. The scoring system derived from the prediction model that included clinical features and features from chest x-ray had a combined sensitivity of 0·86 [95% CI 0·68-0·94] and specificity of 0·37 [0·15-0·66] against a composite reference standard. The scoring system derived from the model that included only clinical features had a combined sensitivity of 0·84 [95% CI 0·66-0·93] and specificity of 0·30 [0·13-0·56] against a composite reference standard. The scoring system from each model was placed after triage steps, including assessment of illness acuity and risk of poor tuberculosis-related outcomes, to develop treatment-decision algorithms.
We adopted an evidence-based approach to develop pragmatic algorithms to guide tuberculosis treatment decisions in children, irrespective of the resources locally available. This approach will empower health workers in primary health-care settings with high tuberculosis incidence and limited resources to initiate tuberculosis treatment in children to improve access to care and reduce tuberculosis-related mortality. These algorithms have been included in the operational handbook accompanying the latest WHO guidelines on the management of tuberculosis in children and adolescents. Future prospective evaluation of algorithms, including those developed in this work, is necessary to investigate clinical performance.
WHO, US National Institutes of Health.
许多患有肺结核的儿童未得到诊断和治疗,导致发病率和死亡率居高不下。最近在儿童肺结核算法开发方面取得了进展,纳入了预测模型,但迄今为止的研究规模较小且局限于局部地区,推广性有限。我们旨在评估当前使用的诊断算法的性能,并利用预测模型开发基于证据的算法,以协助在初级保健中心就诊的儿童进行肺结核治疗决策。
在这项荟萃分析中,我们从世卫组织公开呼吁提供有关儿童和青少年肺结核管理的数据以及来自儿童肺结核专家的转介中,确定了个体参与者数据。我们纳入了前瞻性招募来自高肺结核发病率国家的 10 岁以下连续参与者,在卫生保健中心进行肺结核临床评估的研究。我们汇总了包括临床、细菌学和影像学信息以及标准化的肺结核参考分类在内的个体参与者数据。使用该数据集,我们首先回顾性评估了几种现有治疗决策算法的性能。然后,我们使用数据开发了两个多变量预测模型,其中一个包含胸部 X 射线特征,另一个没有,并使用内部-外部交叉验证来研究每个模型的推广能力。两个模型的参数系数估计值被归入两个评分系统中,以达到预定的敏感性目标来分类肺结核。这两个评分系统用于开发两个实用的、基于初级保健的治疗决策算法。
在来自 12 个国家的 13 项研究中,共有 4718 名儿童,其中 1811 名(38.4%)被归类为患有肺结核:541 名(29.9%)细菌学确诊,1270 名(70.1%)未确诊。现有的治疗决策算法具有高度可变的诊断性能。纳入临床特征和胸部 X 射线特征的预测模型得出的评分系统的综合敏感性为 0.86(95%CI,0.68-0.94),特异性为 0.37(0.15-0.66),与综合参考标准相对应。仅纳入临床特征的模型得出的评分系统的综合敏感性为 0.84(95%CI,0.66-0.93),特异性为 0.30(0.13-0.56),与综合参考标准相对应。每个模型的评分系统都被置于分诊步骤之后,包括评估疾病严重程度和不良肺结核相关结局的风险,以制定治疗决策算法。
我们采用循证方法开发实用的算法,以指导高肺结核发病率和资源有限的初级保健环境中的儿童进行肺结核治疗决策。这种方法将使初级保健环境中的卫生工作者能够获得权力,使他们能够为儿童启动肺结核治疗,以改善获得护理的机会并降低肺结核相关死亡率。这些算法已被纳入世卫组织最新儿童和青少年肺结核管理指南的操作手册中。需要对算法进行前瞻性评估,包括本工作中开发的算法,以研究临床性能。
世卫组织,美国国立卫生研究院。