Trachtenberg Joel D, Kambugu Andrew D, McKellar Mehri, Semitala Fred, Mayanja-Kizza Harriet, Samore Matthew H, Ronald Allan, Sande Merle A
Division of Infectious Diseases, Department of Internal Medicine, University of Utah, Salt Lake City, UT 84124, USA.
Int J Infect Dis. 2007 Nov;11(6):524-30. doi: 10.1016/j.ijid.2007.01.014. Epub 2007 May 18.
In sub-Saharan Africa, HIV has increased the spectrum of central nervous system (CNS) infections. The etiological diagnosis is often difficult. Mortality from CNS infections is higher in sub-Saharan Africa compared to Western countries. This study examines the medical management of CNS infections in Uganda. We also propose a clinical algorithm to manage CNS infections in an effective, systematic, and resource-efficient manner.
We prospectively followed 100 consecutive adult patients who were admitted to Mulago Hospital with a suspected diagnosis of a CNS infection without any active participation in their management. From the clinical and outcome data, we created an algorithm to manage CNS infections, which was appropriate for this resource-limited, high HIV prevalence setting.
Only 32 patients had a laboratory confirmed diagnosis and 23 of these were diagnosed with cryptococcal meningitis. Overall mortality was 39%, and mortality trended upward when the diagnosis was delayed past 3 days. The initial diagnoses were made clinically without significant laboratory data in 92 of the 100 patients. Because HIV positive patients have a unique spectrum of CNS infections, we created an algorithm that identified HIV-positive patients and diagnosed those with cryptococcal meningitis. After cryptococcal infection was ruled out, previously published algorithms were used to assist in the early diagnosis and treatment of bacterial meningitis, tuberculous meningitis, and other common central nervous system infections. In retrospective comparison with current management, the CNS algorithm reduced overall time to diagnosis and initiate treatment of cryptococcal meningitis from 3.5 days to less than 1 day.
CNS infections are complex and difficult to diagnose and treat in Uganda, and are associated with high in-hospital mortality. A clinical algorithm may significantly decrease the time to diagnose and treat CNS infections in a resource-limited setting.
在撒哈拉以南非洲地区,人类免疫缺陷病毒(HIV)增加了中枢神经系统(CNS)感染的种类。病因诊断往往困难。与西方国家相比,撒哈拉以南非洲地区中枢神经系统感染的死亡率更高。本研究探讨乌干达中枢神经系统感染的医疗管理。我们还提出一种临床算法,以有效、系统且资源高效的方式管理中枢神经系统感染。
我们前瞻性地追踪了100例连续入住穆拉戈医院的成年患者,这些患者疑似诊断为中枢神经系统感染,且在其治疗过程中未积极参与管理。根据临床和结局数据,我们创建了一种管理中枢神经系统感染的算法,该算法适用于这种资源有限、HIV高流行率的环境。
仅32例患者经实验室确诊,其中23例被诊断为隐球菌性脑膜炎。总体死亡率为39%,当诊断延迟超过3天时,死亡率呈上升趋势。100例患者中有92例最初是临床诊断,没有显著的实验室数据。由于HIV阳性患者有独特的中枢神经系统感染谱,我们创建了一种算法来识别HIV阳性患者,并诊断出隐球菌性脑膜炎患者。排除隐球菌感染后,使用先前发表的算法协助早期诊断和治疗细菌性脑膜炎、结核性脑膜炎及其他常见中枢神经系统感染。与当前管理方法进行回顾性比较,中枢神经系统算法将隐球菌性脑膜炎的总体诊断和开始治疗时间从3.5天缩短至不到1天。
在乌干达,中枢神经系统感染复杂且难以诊断和治疗,与高住院死亡率相关。临床算法可能会显著缩短资源有限环境下中枢神经系统感染的诊断和治疗时间。