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在印度德里建立一个模型,以预测结核分枝杆菌和人类免疫缺陷病毒合并感染患者的不良治疗结局。

Developing a model to predict unfavourable treatment outcomes in patients with tuberculosis and human immunodeficiency virus co-infection in Delhi, India.

机构信息

Evidence Action- Deworm the World Initiative, New Delhi, India.

New Delhi Tuberculosis Centre, New Delhi, India.

出版信息

PLoS One. 2018 Oct 3;13(10):e0204982. doi: 10.1371/journal.pone.0204982. eCollection 2018.

Abstract

BACKGROUND

Tuberculosis (TB) patients with human immunodeficiency virus (HIV) co-infection have worse TB treatment outcomes compared to patients with TB alone. The distribution of unfavourable treatment outcomes differs by socio-demographic and clinical characteristics, allowing for early identification of patients at risk.

OBJECTIVE

To develop a statistical model that can provide individual probabilities of unfavourable outcomes based on demographic and clinical characteristics of TB-HIV co-infected patients.

METHODOLOGY

We used data from all TB patients with known HIV-positive test results (aged ≥15 years) registered for first-line anti-TB treatment (ATT) in 2015 under the Revised National TB Control Programme (RNTCP) in Delhi, India. We included variables on demographics and pre-treatment clinical characteristics routinely recorded and reported to RNTCP and the National AIDS Control Organization. Binomial logistic regression was used to develop a statistical model to estimate probabilities of unfavourable TB treatment outcomes (i.e., death, loss to follow-up, treatment failure, transfer out of program, and a switch to drug-resistant regimen).

RESULTS

Of 55,260 TB patients registered for ATT in 2015 in Delhi, 928 (2%) had known HIV-positive test results. Of these, 816 (88%) had drug-sensitive TB and were ≥15 years. Among 816 TB-HIV patients included, 157 (19%) had unfavourable TB treatment outcomes. We developed a model for predicting unfavourable outcomes using age, sex, disease classification (pulmonary versus extra-pulmonary), TB treatment category (new or previously treated case), sputum smear grade, known HIV status at TB diagnosis, antiretroviral treatment at TB diagnosis, and CD4 cell count at ATT initiation. The chi-square p-value for model calibration assessed using the Hosmer-Lemeshow test was 0.15. The model discrimination, measured as the area under the receiver operator characteristic (ROC) curve, was 0.78.

CONCLUSION

The model had good internal validity, but should be validated with an independent cohort of TB-HIV co-infected patients to assess its performance before clinical or programmatic use.

摘要

背景

与单纯结核病患者相比,合并人类免疫缺陷病毒(HIV)感染的结核病(TB)患者的 TB 治疗结局更差。不良治疗结局的分布因社会人口统计学和临床特征而异,这使得能够早期识别处于危险中的患者。

目的

开发一种统计模型,该模型可以根据合并感染 HIV 的 TB 患者的人口统计学和临床特征提供不良结局的个体概率。

方法

我们使用了印度德里 2015 年根据修订后的国家结核病控制规划(RNTCP)登记的所有已知 HIV 阳性检测结果(年龄≥15 岁)的初治抗结核治疗(ATT)的 TB 患者的数据。我们纳入了人口统计学和治疗前临床特征的变量,这些变量是常规记录并向 RNTCP 和国家艾滋病控制组织报告的。二项逻辑回归用于开发统计模型,以估计不良 TB 治疗结局(即死亡、失访、治疗失败、转出方案和转为耐药方案)的概率。

结果

2015 年在德里登记的 55260 名接受 ATT 的 TB 患者中,有 928 名(2%)有已知的 HIV 阳性检测结果。其中,816 名(88%)患有药物敏感结核病,年龄≥15 岁。在纳入的 816 名合并感染 HIV 的 TB 患者中,有 157 名(19%)出现不良 TB 治疗结局。我们使用年龄、性别、疾病分类(肺与肺外)、TB 治疗类别(新病例或既往治疗病例)、痰涂片等级、TB 诊断时已知的 HIV 状态、TB 诊断时的抗逆转录病毒治疗以及 ATT 开始时的 CD4 细胞计数开发了预测不良结局的模型。使用 Hosmer-Lemeshow 检验评估模型校准的卡方 p 值为 0.15。作为接收者操作特征(ROC)曲线下面积衡量的模型区分度为 0.78。

结论

该模型具有良好的内部有效性,但在临床或方案使用之前,应使用合并感染 HIV 的 TB 患者的独立队列进行验证,以评估其性能。

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